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1\documentclass[preprint,times,5p,twocolumn]{elsarticle}
2\usepackage[ansinew]{inputenc}
3
4\usepackage{amsmath}
5\usepackage{epic}
6\usepackage{wrapfig}
7\usepackage{eepic}
8\usepackage{latexsym}
9\usepackage{array}
10\usepackage{multicol}
11
12\usepackage{fancyhdr}
13\usepackage{verbatim}
14\addtolength{\textwidth}{1cm} \addtolength{\hoffset}{-0.5cm}
15\usepackage[colorlinks=true, pdfstartview=FitV, linkcolor=blue, citecolor=blue, urlcolor=blue, unicode]{hyperref}
16\usepackage{ifpdf}
17\usepackage{cite}
18
19\usepackage{enumitem}
20
21\newcommand{\dollar}{\$}
22
23\usepackage{graphicx}
24\graphicspath{{figures/}}
25
26
27\journal{Computer Physics Communications}
28
29\begin{document}
30
31\begin{frontmatter}
32
33\title{Delphes, a framework for fast simulation of a generic collider experiment}
34\author{S. Ovyn\corref{cor1}}
35\ead{severine.ovyn@uclouvain.be}
36
37\author{X. Rouby}
38\author{V. Lema\^itre}
39
40\address{Center for Particle Physics and Phenomenology (CP3),\\
41 Universit\'e catholique de Louvain,\\
42 B-1348 Louvain-la-Neuve, Belgium}
43
44\begin{abstract}
45
46This paper presents a new \texttt{C++} framework, \textit{Delphes}, performing a
47fast multipurpose detector response simulation.
48The simulation includes a tracking system, embedded into a magnetic field,
49calorimeters and a muon system, and possible very forward detectors arranged
50along the beamline.
51The framework is interfaced to standard file formats (e.g.\ Les Houches Event
52File or \texttt{HepMC}) and outputs observables such as isolated leptons,
53missing transverse energy and collection of jets which can be used for dedicated
54analyses. The simulation of the detector response takes into account the effect
55of magnetic field, the granularity of the calorimeters and subdetector
56resolutions.
57A simplified preselection can also be applied on processed events for trigger
58emulation. Detection of very forward scattered particles relies on the transport
59in beamlines with the \textit{Hector} software. Finally, the \textsc{FROG} 2D/3D
60event display is used for visualisation of the collision final states.
61\\ \\
62
63
64\textit{Preprint:} \texttt{CP3-09-01}, \texttt{arXiv:0903.2225 [hep-ph]}\\ \\
65\includegraphics[scale=0.8]{fig0}\\
66{\bf PROGRAM SUMMARY}\\
67\begin{small}
68\noindent
69{\em Program Title:} DELPHES \\
70{\em Current version:} 1.8 \\
71{\em Journal Reference:} \\
72{\em Catalogue identifier:} \\
73{\em Distribution format:} tar.gz \\
74{\em Programming language:} C++ \\
75%{\em Computer:} any computer with a C++ compiler and the ROOT environment \cite{bib:Root}
76 %Computer(s) for which program has been designed.
77%{\em Operating system:} \\
78 %Operating system(s) for which program has been designed.
79%{\em RAM:} bytes \\
80 %RAM in bytes required to execute program with typical data.
81%{\em Number of processors used:} \\
82 %If more than one processor.
83%{\em Supplementary material:} \\
84 % Fill in if necessary, otherwise leave out.
85%{\em Keywords:} Keyword one, Keyword two, Keyword three, etc. \\
86 % Please give some freely chosen keywords that we can use in a
87 % cumulative keyword index.
88%{\em Classification:} \\
89 %Classify using CPC Program Library Subject Index, see (
90 % http://cpc.cs.qub.ac.uk/subjectIndex/SUBJECT_index.html)
91 %e.g. 4.4 Feynman diagrams, 5 Computer Algebra.
92{\em External routines/libraries:} ROOT environment \\
93 % Fill in if necessary, otherwise leave out.
94{\em Subprograms used:} HepMC, StdHEP, FASTJET, \textit{Hector}, FROG. All provided within \textit{Delphes} distribution. \\
95{\em URL:}\href{http://www.fynu.ucl.ac.be/delphes.html}{http://www.fynu.ucl.ac.be/delphes.html}\\
96%{\em References:}
97%\begin{refnummer}
98%\item Reference 1 % This is the reference list of the Program Summary
99%\item Reference 2 % Type references in text as [1], [2], etc.
100%\item Reference 3 % This list is different from the bibliography, which
101 % you can use in the Long Write-Up.
102%\end{refnummer}
103\end{small}
104
105\begin{keyword}
106\textit{Delphes} \sep detector simulation \sep event reconstruction \sep trigger \sep \textsc{LHC}
107\PACS 29.85.-c \sep 07.05.Tp \sep 29.90.+r \sep 29.50.+v
108\end{keyword}
109
110\end{abstract}
111\cortext[cor1]{Corresponding author: +32.10.47.32.29.}
112\end{frontmatter}
113
114\section{Introduction}
115
116Multipurpose detectors at high energy colliders are very complex systems.
117Precise data analyses require a full detector simulation, including transport of
118the primary and secondary particles through the detector material accounting for
119the various detector inefficiencies, the dead material, the imperfections and
120the geometrical details. Their simulation is in general performed by means of
121the GEANT~\citep{bib:geant} package and final observables used for analyses
122usually require sophisticated reconstruction algorithms.
123
124
125This complexity can only be handled by large collaborations.
126Phenomenological studies, looking for the observability of given signals,
127require in general only fast but realistic estimates of the expected signal
128signatures and their associated backgrounds.
129
130In this context, a new framework, called \textit{Delphes}~\citep{bib:delphes},
131has been developped, for a fast simulation of a general-purpose collider
132experiment.
133Using this framework, observables such as cross-sections and efficiencies after
134event selection can be estimated for specific reactions.
135Starting from the output of event generators, the simulation of the detector
136response takes into account the subdetector resolutions, by smearing the
137kinematics of final-state particles (i.e. those considered as stable by the
138event generator
139\footnote{In the current \textit{Delphes} version, particles other than
140electrons ($e^\pm$), photons ($\gamma$), muons ($\mu^\pm$), neutrinos ($\nu_e$,
141$\nu_\mu$ and $\nu_\tau$) and neutralinos are simulated as hadrons for their
142interactions with the calorimeters. The simulation of stable particles beyond
143the Standard Model should therefore be handled with
144care~\citep{qr:invisibleparticles}.}).
145
146
147\textit{Delphes} includes the most crucial experimental features, such as
148(Fig.~\ref{fig:FlowChart}):
149\begin{enumerate}
150\item the geometry of both central and forward detectors,
151\item the effect of magnetic field on tracks,
152\item the reconstruction of photons, leptons, jets, $b$-jets, $\tau$-jets and
153missing transverse energy,
154\item a lepton isolation,
155\item a trigger emulation,
156\item an event display.
157\end{enumerate}
158
159\begin{figure*}[!ht]
160\begin{center}
161%\includegraphics[scale=0.78]{FlowDELPHES}
162\includegraphics[scale=0.78]{fig1}
163\caption{Flow chart describing the principles behind \textit{Delphes}. Event
164files coming from external Monte Carlo generators are read by a converter stage
165(top).
166The kinematics variables of the final-state particles are then smeared
167according to the tunable subdetector resolutions.
168Tracks are reconstructed in a simulated solenoidal magnetic field and
169calorimetric cells sample the energy deposits. Based on these low-level objects,
170dedicated algorithms are applied for particle identification, isolation and
171reconstruction.
172The transport of very forward particles to the near-beam detectors is also
173simulated.
174Finally, an output file is written, including generator-level and
175analysis-object data.
176If requested, a fully parametrisable trigger can be emulated. Optionally, the
177geometry and visualisation files for the 3D event display can also be produced.
178All user parameters are set in the \textit{Detector/Smearing Card} and the
179\textit{Trigger Card}. }
180\label{fig:FlowChart}
181\end{center}
182\end{figure*}
183
184Although \textit{Delphes} yields much realistic results than a simple
185``parton-level" analysis, it has some limitations. Detector geometry is
186idealised, being uniform, symmetric around the beam axis, and having no cracks
187nor dead material. Secondary interactions, multiple scatterings, photon
188conversion and bremsstrahlung are also neglected.
189
190Several common datafile formats can be used as input in \textit{Delphes}
191\citep{qr:inputformat}, in order to process events from many different
192generators. \textit{Delphes} creates output data in a ROOT ntuple
193\citep{bib:Root}. This output contains a copy of the generator-level data, the
194analysis data objects after reconstruction, and possibly the results of the
195trigger emulation \citep{qr:outputformat}.
196In option \textit{Delphes} can produce a reduced output file in \texttt{*.lhco}
197text format, which is limited to the list of the reconstructed high-level
198objects in the final states~\citep{qr:lhco}.
199
200
201
202\section{Simulation of the detector response}
203
204The overall layout of the multipurpose detector simulated by \textit{Delphes}
205is shown in Fig.~\ref{fig:GenDet3}. It consists in a central tracking system
206(\textsc{TRACKER}) surrounded by an electromagnetic and a hadron calorimeters
207(\textsc{ECAL} and \textsc{HCAL}, each with a central region and two endcaps)
208and two forward calorimeters (\textsc{FCAL}). Finally, a muon system
209(\textsc{MUON}) encloses the central detector volume.
210
211A detector card \citep{qr:detectorcard} allows a large spectrum of running
212conditions by modifying basic detector parameters, including calorimeter and
213tracking coverage and resolution, thresholds or jet algorithm parameters.
214Even if \textit{Delphes} has been developped for the simulation of
215general-purpose detectors at the \textsc{LHC} (namely, \textsc{CMS} and
216\textsc{ATLAS}), this input parameter file interfaces a flexible parametrisation
217for other cases, e.g.\ at future linear colliders~\citep{qr:datacards}.
218The geometrical coverage of the various subsystems used in the default
219configuration are summarised in Tab.~\ref{tab:defEta}.
220
221\begin{table}[t]
222\begin{center}
223\caption{Default extension in pseudorapidity $\eta$ of the different subdetectors.
224Full azimuthal ($\phi$) acceptance is assumed.
225 \vspace{0.5cm}}
226\begin{tabular}{lcc}
227\hline
228 & $\eta$ & $\phi$ \\ \hline
229\textsc{TRACKER} & $[-2.5; 2.5]$ & $[-\pi ; \pi]$\\
230\textsc{ECAL}, \textsc{HCAL} & $[-1.7 ; 1.7]$ & $[-\pi ; \pi]$\\
231\textsc{ECAL}, \textsc{HCAL} endcaps & $[-3 ; -1.7]$ \& $[1.7 ; 3]$ & $[-\pi ; \pi]$\\
232\textsc{FCAL} & $[-5 ; -3]$ \& $[3 ;5]$ & $[-\pi ; \pi]$\\
233\textsc{MUON} & $[-2.4 ; 2.4]$ & $[-\pi ; \pi]$\\ \hline
234\end{tabular}
235\label{tab:defEta}
236\end{center}
237\end{table}
238
239\begin{figure}[!ht]
240\begin{center}
241%\includegraphics[width=\columnwidth]{Detector_DELPHES_3}
242\includegraphics[width=\columnwidth]{fig2}
243\caption{
244Profile of layout of the generic detector geometry assumed in \textit{Delphes}.
245The innermost layer, close to the interaction point, is a central tracking
246system (pink). It is surrounded by a central calorimeter volume (green) with
247both electromagnetic and hadronic sections. The outer layer of the central
248system (red) is muon system. In addition, two end-cap calorimeters (blue) extend
249the pseudorapidity coverage of the central detector.
250Additional forward detectors are not depicted.
251}
252\label{fig:GenDet3}
253\end{center}
254\end{figure}
255
256
257\subsection{Magnetic field}
258In addition to the subdetectors, the effects of a solenoidal magnetic field are
259simulated for the charged particles~\citep{qr:magneticfield}. This affects the
260position at which charged particles enter the calorimeters and their
261corresponding tracks. The field extension is limited to the tracker volume and
262is in particular not applied for muon chambers. This is not a limiting
263factor since the magnetic field is not used for the muon momentum smearing.
264
265
266\subsection{Tracks reconstruction}
267Every stable charged particle with a transverse momentum above some threshold
268and lying inside the detector volume covered by the tracker provides a track.
269By default, a track is assumed to be reconstructed with $90\%$ probability if
270its transverse momentum $p_T$ is higher than $0.9~\textrm{GeV}/c$ and if its
271pseudorapidity $|\eta| \leq 2.5$~\citep{qr:tracks}. No smearing is currently
272applied on track parameters. For each track, the positions at vertex
273$(\eta,\phi)$ and at the entry point in the calorimeter layers
274$(\eta,\phi)_{calo}$ are available.
275
276
277\subsection{Calorimetric cells}
278
279The response of the calorimeters to energy deposits of incoming particles
280depends on their segmentation and resolution, as well as on the nature of the
281particles themselves. In CMS and ATLAS detectors, for instance, the calorimeter
282characteristics are not identical in every direction, with typically finer
283resolution and granularity in the central
284regions~\citep{bib:cmsjetresolution,bib:ATLASresolution}. It is thus very
285important to compute the exact coordinates of the entry point of the particles
286into the calorimeters, in taking the magnetic field effect into account.
287
288The smallest unit for geometrical sampling of the calorimeters is a
289\textit{cell}; it segments the $(\eta,\phi)$ plane for the energy measurement.
290No longitudinal segmentation is available in the simulated
291calorimeters. \textit{Delphes} assumes that ECAL and HCAL have the same
292segmentations and that the detector is symmetric in $\phi$ and with respect to
293the $\eta=0$ plane~\citep{qr:calorimetriccells}.
294Fig.~\ref{fig:calosegmentation} illustrates the default calorimeter
295segmentation.
296
297\begin{figure}[!ht]
298\begin{center}
299%\includegraphics[width=\columnwidth]{calosegmentation}
300\includegraphics[width=\columnwidth]{fig3}
301\caption{Default segmentation of the calorimeters in the $(\eta,\phi)$ plane. Only the central detectors (\textsc{ECAL}, \textsc{HCAL}) and \textsc{FCAL} are considered. $\phi$ angles are expressed in radians.}
302\label{fig:calosegmentation}
303\end{center}
304\end{figure}
305
306
307The calorimeter response is parametrised through a Gaussian smearing of the accumulated cell energy with a variance $\sigma$:
308\begin{equation}
309\frac{\sigma}{E} = \frac{S}{\sqrt{E}} \oplus \frac{N}{E} \oplus C,
310\label{eq:caloresolution}
311\end{equation}
312where $S$, $N$ and $C$ are the \textit{stochastic}, \textit{noise} and \textit{constant} terms, respectively, and $\oplus$ stands for quadratic additions~\citep{qr:energysmearing}.\\
313
314In the default parametrisation, ECAL and HCAL are assumed to cover the
315pseudorapidity range $|\eta|<3$, and FCAL between $3.0$ and $5.0$, with
316different response to electrons and photons, or to hadrons.
317Muons and neutrinos are assumed not to interact with the
318calorimeters~\citep{qr:invisibleparticles}. The default values of the
319stochastic, noise and constant terms are given in Tab.~\ref{tab:defResol}.\\
320
321\begin{table}[!h]
322\begin{center}
323\caption{Default values for the resolution of the central and forward
324calorimeters (for both electromagnetic and hadronic parts). Resolution is
325parametrised by the \textit{stochastic} ($S$), \textit{noise} ($N$) and
326\textit{constant} ($C$) terms
327(Eq.~\ref{eq:caloresolution})~\citep{qr:resolutionterms}.
328\vspace{0.5cm}}
329\begin{tabular}[!h]{lccc}
330\hline
331 & $S$ (GeV$^{1/2}$) & $N$ (GeV) & $C$ \\\hline
332 ECAL & $0.05$ & $0.25$ & $0.0055$ \\
333 ECAL, end caps & $0.05$ & $0.25$ & $0.0055$ \\
334 FCAL, e.m. part & $2.084$ & $0$ & $0.107$ \\
335 HCAL & $1.5$ & $0$ & $0.05$\\
336 HCAL, end caps & $1.5$ & $0$ & $0.05$\\
337 FCAL, had. part & $2.7$ & $0$ & $0.13$\\
338\hline
339\end{tabular}
340\label{tab:defResol}
341\end{center}
342\end{table}
343
344
345Electrons and photons are assumed to leave their energy in the electromagnetic
346parts of the calorimeters (\textsc{ECAL} and \textsc{FCAL}, e.m.), while charged
347and neutral final-state hadrons are assumed to leave their entire energy
348interactin the hadronic parts (\textsc{HCAL} and \textsc{FCAL}, had.).
349Some long-living particles, such as the $K^0_s$ and $\Lambda$'s, with lifetime
350$c\tau$ smaller than $10~\textrm{mm}$ are considered as stable particles by the
351generators although they may decay before reaching the calorimeters. The energy
352smearing of such particles is therefore performed using the expected fraction of
353the energy, determined according to their decay products, that would be
354deposited into the \textsc{ECAL} ($E_{\textsc{ECAL}}$) and into the
355\textsc{HCAL} ($E_{\textsc{HCAL}}$). Defining $F$ as the fraction of the energy
356leading to a \textsc{HCAL} deposit, the two energy values are given by
357\begin{equation}
358\left\{
359\begin{array}{l}
360E_{\textsc{HCAL}} = E \times F \\
361E_{\textsc{ECAL}} = E \times (1-F) \\
362\end{array}
363\right.
364\end{equation}
365where $0 \leq F \leq 1$. The resulting calorimetry energy measurement given
366after the application of the smearing is then $E = E_{\textsc{HCAL}} +
367E_{\textsc{ECAL}}$. For $K_S^0$ and $\Lambda$ hadrons, the energy fraction is
368$F$ is assumed to be $0.7$~\citep{qr:emhadratios}.\\
369
370
371No sharing between neighbouring cells is implemented when particles enter a
372cell very close to its geometrical edge. Due to the finite segmentation, the
373smearing, as defined in Eq.~\ref{eq:caloresolution}, is applied directly on the
374accumulated electromagnetic and hadronic energies of each calorimetric cell. The
375calorimetric cells enter in the calculation of the missing transverse energy
376(\textsc{MET}), and are used as input for the jet reconstruction algorithms.
377
378The output file created by \textit{Delphes}~\citep{qr:analysistree} stores the
379final collections of particles ($e^\pm$, $\mu^\pm$, $\gamma$) and objects (light
380jets, $b$-jets, $\tau$-jets, $E_T^\textrm{miss}$). In addition, collections of
381tracks, calorimetric cells and hits in the very forward detectors (\textsc{ZDC},
382\textsc{RP220} and \textsc{FP420}, see Sec.~\ref{sec:vfd}) are added.
383
384\section{High-level reconstruction}
385
386While electrons,
387muons and photons are easily identified, other quantities are more difficult to
388evaluate as they rely on sophisticated algorithms (e.g. jets or missing energy).
389
390For most of these objects, their four-momentum and related quantities are
391directly accessible in \textit{Delphes} output ($E$, $\vec{p}$, $p_T$, $\eta$
392and $\phi$). Additional properties are available for specific objects (like the
393charge and the isolation status for $e^\pm$ and $\mu^\pm$, the result of
394application of $b$-tag for jets and time-of-flight for some detector hits).
395
396\subsection{Photon and charged lepton}
397From here onwards, \textit{electrons} refer to both positrons ($e^+$) and
398electrons ($e^-$), and $\textit{charged leptons}$ refer to electrons and muons
399($\mu^\pm$), leaving out the $\tau^\pm$ leptons as they decay before being
400detected.
401
402The electron, muon and photon collections contains only the true final-state
403particles identified via the generator-data. In addition, these particles must
404pass fiducial cuts taking into account the magnetic field effects and some
405additional reconstruction cuts.
406
407Consequently, no fake candidates enter these collections. However, when needed,
408fake candidates can be added into the collections at the analysis level, when
409processing \textit{Delphes} output data. As effects like bremsstrahlung are not
410taken into account along the lepton propagation in the tracker, no clustering is
411needed for the electron reconstruction in \textit{Delphes}.
412
413\subsubsection*{Electrons and photons}
414Real electron ($e^\pm$) and photon candidates are associated to the final-state
415collections if they fall into the acceptance of the tracking system and have a
416transverse momentum above some threshold (default: $p_T > 10~\textrm{GeV}/c$).
417\textit{Delphes} assumes a perfect
418algorithm for clustering and Brehmstrahlung recovery. Electron energy is smeared
419according to the resolution of the calorimetric cell where it points to, but
420independently from any other deposited energy in this cell.
421Electrons and photons may create a candidate in the jet collection. The $(\eta,
422\phi)$ position at vertex corresponds to corresponding track vertex.
423
424\subsubsection*{Muons}
425Generator-level muons entering the muon detector acceptance (default: $-2.4
426\leq \eta \leq 2.4$) and overpassing some threshold (default: $p_T >
42710~\textrm{GeV}/c$) are considered as good candidates for analyses.
428The application of the detector resolution on the muon momentum depends on a
429Gaussian smearing of the $p_T$~\citep{qr:muonsmearing}.
430Neither $\eta$ nor $\phi$ variables are modified beyond the calorimeters.
431Multiple scattering is neglected. This implies that low energy muons have in
432\textit{Delphes} a better resolution than in a real detector. At last, the
433particles which might leak out of the calorimeters into the muon systems
434(\textit{punch-through}) are not considered as muon candidates in
435\textit{Delphes}.
436
437\subsubsection*{Charged lepton isolation}
438\label{sec:isolation}
439
440To improve the quality of the contents of the charged lepton collections,
441isolation criteria can be applied. This requires that electron or muon
442candidates are isolated in the detector from any other particle, within a small
443cone. In \textit{Delphes}, charged lepton isolation demands by default that
444there is no other charged particle with $p_T>2~\textrm{GeV}/c$ within a cone of
445$\Delta R = \sqrt{\Delta \eta^2 + \Delta \phi^2} <0.5$ centered on the cell
446associated to the charged lepton $\ell$, obviously taking the magnetic field
447into account.
448
449The result (i.e.\ \textit{isolated} or \textit{not}) is added to the charged lepton measured properties.
450In addition, the sum $P_T$ of the transverse momenta of all tracks but the lepton one within the isolation cone is
451provided~\citep{qr:isolflag}:
452$$ P_T = \sum_{i \neq \ell}^\textrm{tracks} p_T(i)$$
453
454No calorimetric isolation is applied, but the charged lepton collections
455contain also the ratio $\rho_\ell$ between (1) the sum of the transverse
456energies in all calorimetric cells in a $N \times N$ grid around the lepton, and
457(2) the lepton transverse momentum~\citep{qr:caloisolation}:
458$$ \rho_\ell = \frac{\Sigma_i E_T(i)}{p_T(\ell)}~,~ i\textrm{ in }N \times N
459\textrm { grid centred on }\ell.$$
460
461
462\subsection{Jet reconstruction}
463
464A realistic analysis requires a correct treatment of partons which have
465hadronised. Therefore, the most widely currently used jet algorithms have been
466integrated into the \textit{Delphes} framework using the FastJet
467tools\footnote{A more detailed description of the jet algorithms is given in the
468User Manual, in appendix.}. Six different jet reconstruction schemes are
469available~\citep{bib:FASTJET,qr:jetalgo}. For all of them, the calorimetric
470cells are used as inputs. Jet algorithms differ in their sensitivity to soft
471particles or collinear splittings, and in their computing speed performances.
472
473\subsubsection*{Cone algorithms}
474
475\begin{enumerate}
476
477\item {\it CDF Jet Clusters}~\citep{bib:jetclu}: Cone algorithm forming jets by
478combining cells lying within a circle (default radius $\Delta R=0.7$) in the
479$(\eta$, $\phi)$ space. Jets are seeded by all cells with transverse energy
480$E_T$ above a given threshold (default: $E_T >
4811~\textrm{GeV}$)~\citep{qr:jetparams}.
482
483\item {\it CDF MidPoint}~\citep{bib:midpoint}: Cone algorithm with additional
484``midpoints'' (energy barycentres) in the list of seeds.
485
486\item {\it Seedless Infrared Safe Cone}~\citep{bib:SIScone}: The
487\textsc{SISC}one algorithm is simultaneously insensitive to additional soft
488particles and collinear splittings.
489\end{enumerate}
490
491\subsubsection*{Recombination algorithms}
492
493The next three jet algorithms rely on recombination schemes where calorimeter
494cell pairs are successively merged:
495
496\begin{enumerate}[start=4]
497\item {\it Longitudinally invariant $k_t$ jet}~\citep{bib:ktjet},
498\item {\it Cambridge/Aachen jet}~\citep{bib:aachen},
499\item {\it Anti $k_t$ jet}~\citep{bib:antikt}, where hard jets are exactly
500circular in the $(y,\phi)$ plane.
501\end{enumerate}
502
503The recombination algorithms are safe with respect to soft radiations
504(\textit{infrared}) and collinear splittings. Their implementations are similar
505except for the definition of the \textit{distances} used during the merging
506procedure.
507
508By default, reconstruction uses the CDF cone algorithm. Jets are stored if their
509transverse energy is higher than $20~\textrm{GeV}$~\citep{qr:ptcutjet}.
510
511
512\subsubsection*{Energy flow}
513
514In jets, several particle can leave their energy into a given calorimetric cell,
515which broadens the jet energy resolution. However, the energy of charged
516particles associated to jets can be deduced from their associated track, thus
517providing a way to identify some of the components of cells with multiple hits.
518When the \textit{energy flow} is switched on in \textit{Delphes}, the energy of
519tracks pointing to calorimetric cells is subtracted and smeared separately,
520before running the chosen jet reconstruction algorithm. This option allows a
521better jet energy reconstruction~\citep{qr:energyflow}.
522
523\subsection{$b$-tagging}
524\label{btagging}
525
526A jet is tagged as $b$-jets if its direction lies in the acceptance of the
527tracker and if it is associated to a parent $b$-quark.
528The (mis)tagging relies on the identity of
529the most energetic parton within a cone around the jet axis, with a
530radius equal to the one used to reconstruct the jet (default: $\Delta R$ of
531$0.7$).
532By default, a $b$-tagging efficiency of $40\%$ is assumed if the jet has a
533parent $b$ quark. For $c$-jets and light jets (i.e.\ originating in $u$, $d$,
534$s$ quarks or in gluons), a fake $b$-tagging efficiency of $10 \%$ and $1 \%$
535is assumed respectively~\citep{qr:btag}. Therefore, in current version of
536\textit{Delphes}, the displacement of secondary vertices is not taken into
537account. As such, the $b$-tagging efficiency is below the expected $40\%$.
538
539\subsection{Identification of hadronic \texorpdfstring{$\tau$}{\texttau} decays}
540
541Jets originating from $\tau$-decays are identified using a procedure consistent
542with the one applied in a full detector simulation~\citep{bib:cmsjetresolution}.
543The tagging relies on two properties of the $\tau$ lepton. First, $77\%$ of the
544$\tau$ hadronic decays contain only one charged hadron associated to a few
545neutrals (\textit{1-prong}). Secondly, the particles arisen from the
546$\tau$ lepton produce narrow jets in the calorimeter (this is defined as the jet
547\textit{collimation}).
548
549\begin{figure}[!ht]
550\begin{center}
551%\includegraphics[width=0.6\columnwidth]{Tau}
552\includegraphics[width=0.80\columnwidth]{fig5}
553\caption{Illustration of the identification of $\tau$-jets ($1-$prong). The jet cone is narrow and contains only one track. The small cone serves to apply the \textit{electromagnetic collimation}, while the broader cone is used to reconstruct the jet originating from the $\tau$-decay.}
554\label{h_WW_ss_cut1}
555\end{center}
556\end{figure}
557
558
559\begin{table}[!h]
560\begin{center}
561\caption{Default values for parameters used in $\tau$-jet reconstruction algorithm. Electromagnetic collimation requirements involve the inner \textit{small} cone radius $R^\textrm{em}$, the minimum transverse energy for calorimetric cells $E_T^\textrm{cell}$ and the collimation factor $C_\tau$. Tracking isolation constrains the number of tracks with a significant transverse momentum $p_T^\textrm{tracks}$ in a cone of radius $R^\textrm{tracks}$. Finally, the $\tau$-jet collection is purified by the application of a cut on the $p_T$ of $\tau$-jet candidates~\citep{qr:taujets}.
562\vspace{0.5cm} }
563\begin{tabular}[!h]{lll}
564\hline
565\multicolumn{3}{l}{\textbf{Electromagnetic collimation}} \\
566& $R^\textrm{em}$ & $0.15$\\
567& min $E_{T}^\textrm{cell}$ & $1.0$~GeV\\
568& $C_{\tau}$ & $0.95$\\
569\multicolumn{3}{l}{\textbf{Tracking isolation}} \\
570& $R^\textrm{tracks}$ & $0.4$\\
571& min $p_T^\textrm{tracks}$ & $2$ GeV$/c$\\
572\multicolumn{3}{l}{\textbf{$\tau$-jet candidate}} \\
573& $\min p_T$ & $10$ GeV$/c$\\
574\hline
575\end{tabular}
576\label{tab:tauRef}
577\end{center}
578\end{table}
579
580
581\subsubsection*{Electromagnetic collimation}
582
583To use the narrowness of the $\tau$-jet, the \textit{electromagnetic
584collimation} $C_{\tau}$ is defined as the sum of the energy of cells in a small
585cone of radius $R^\textrm{em}$ around the jet axis, divided by the energy of the
586reconstructed jet. To be taken into account, a calorimeter cell should have a
587transverse energy $E_T^\textrm{cell}$ above a given threshold. A large fraction
588of the jet energy is expected in this small cone. This fraction, or
589\textit{collimation factor}, is represented in Fig.~\ref{fig:tau2} for the
590default values (see Tab.~\ref{tab:tauRef}).
591
592\begin{figure}[!ht]
593\begin{center}
594%\includegraphics[width=\columnwidth]{Tau2}
595\includegraphics[width=\columnwidth]{fig6}
596\caption{Distribution of the electromagnetic collimation $C_\tau$ variable for true $\tau$-jets, normalised to unity. This distribution is shown for associated $WH$ photoproduction~\citep{bib:whphotoproduction}, where the Higgs boson decays into a $W^+ W^-$ pair. Each $W$ boson decays into a $\ell \nu_\ell$ pair, where $\ell = e, \mu, \tau$.
597Events generated with MadGraph/MadEvent~\citep{bib:mgme}.
598Final state hadronisation is performed by \textit{Pythia}~\citep{bib:pythia}.
599Histogram entries correspond to true $\tau$-jets, matched with generator-level data. }
600\label{fig:tau2}
601\end{center}
602\end{figure}
603
604\subsubsection*{Tracking isolation}
605
606The tracking isolation for the $\tau$ identification requires that the number
607of tracks associated to particles with significant transverse momenta is one and
608only one in a cone of radius $R^\textrm{tracks}$ ($3-$prong $\tau$-jets are
609rejected). This cone should be entirely incorporated into the tracker to be
610taken into account. Default values of these parameters are given in
611Tab.~\ref{tab:tauRef}.
612
613
614
615\begin{figure}[!ht]
616\begin{center}
617%\includegraphics[width=\columnwidth]{Tau1}
618\includegraphics[width=\columnwidth]{fig7}
619\caption{Distribution of the number of tracks $N^\textrm{tracks}$ within a small jet cone for true $\tau$-jets, normalised to unity. Photoproduced $WH$ events, where $W$ bosons decay leptonically ($e,\mu,\tau$), as in Fig.~\ref{fig:tau2}.
620Histogram entries correspond to true $\tau$-jets, matched with generator-level data.}
621\label{fig:tau1}
622\end{center}
623\end{figure}
624
625
626\subsubsection*{Purity}
627Once both electromagnetic collimation and tracking isolation are applied, a
628threshold on the $p_T$ of the $\tau$-jet candidate is requested to purify the
629collection. This procedure selects $\tau$ leptons decaying hadronically with a
630typical efficiency of $66\%$.
631
632\subsection{Missing transverse energy}
633In an ideal detector, momentum conservation imposes the transverse momentum of
634the observed final state $\overrightarrow{p_T}^\textrm{obs}$ to be equal and
635in opposite direction to the $\overrightarrow{p_T}$ vector sum of the
636invisible particles, written $\overrightarrow{p_T}^\textrm{miss}$.
637The \textit{true} missing transverse energy, i.e.\ at generator-level, is
638calculated as the opposite of the vector sum of the transverse momenta of all
639visible particles -- or equivalently, to the vector sum of invisible particle
640transverse momenta.
641In a real experiment, calorimeters measure energy and not momentum. Any problem
642affecting the detector (dead channels, misalignment, noisy cells, cracks)
643worsens directly the measured missing transverse energy $\overrightarrow
644{E_T}^\textrm{miss}$. In \textit{Delphes}, \textsc{MET} is based on the
645calorimetric cells only. Muons and neutrinos are therefore
646not taken into account for its evaluation:
647\begin{equation}
648\overrightarrow{E_T}^\textrm{miss} = - \sum^\textrm{cells}_i \overrightarrow{E_T}(i)
649\end{equation}
650However, as muon candidates, tracks and calorimetric cells are available in the
651output file, the missing transverse energy can always be reprocessed a
652posteriori with more specialised algorithms.
653
654\section{Trigger emulation}
655
656Most of the usual trigger algorithms select events containing leptons, jets, and
657\textsc{MET} with an energy scale above some threshold. This is often expressed
658in terms of a cut on the transverse momentum of one or several objects of the
659measured event. Logical combinations of several conditions are also possible.
660For instance, a trigger path could select events containing at least one jet and
661one electron such as $p_T^\textrm{jet} > 100~\textrm{GeV}/c$ and $p_T^e >
66250~\textrm{GeV}/c$.
663
664A trigger emulation is included in \textit{Delphes}, using a fully
665parametrisable \textit{trigger table} \citep{qr:triggercard}. When enabled, this
666trigger is applied on analysis-object data. In a real experiment, the online
667selection is often divided into several steps (or \textit{levels}).
668corresponding to the different trigger levels.
669First-level triggers are fast and simple but based only on partial data as not
670all detector front-ends are readable within the decision latency.
671Higher level triggers are more complex, of finer-but-not-final quality and
672based on full detector data.
673
674Real triggers are thus intrinsically based on reconstructed data with a worse
675resolution than final analysis information. On the contrary, the same
676information is used in \textit{Delphes} for the trigger emulation and for final
677analyses.
678
679\section{\label{sec:vfd}Very forward detector simulation}
680
681Collider experiments often have additional instrumentation along the beamline.
682These extend the $\eta$ coverage to higher values, for the detection of very
683forward final-state particles. In \textit{Delphes}, Zero Degree Calorimeters,
684roman pots and forward taggers have been implemented (Fig.~\ref{fig:fdets}),
685similarly as for CMS and ATLAS collaborations~\citep{bib:cmsjetresolution,
686bib:ATLASresolution}.
687
688\begin{figure}[!ht]
689\begin{center}
690%\includegraphics[width=\columnwidth]{fdets}
691\includegraphics[width=\columnwidth]{fig4}
692\caption{Default location of the very forward detectors, including
693\textsc{ZDC}, \textsc{RP220} and \textsc{FP420} in the \textsc{LHC} beamline.
694Incoming (beam 1, red) and outgoing (beam 2, black) beams on one side of the
695fifth interaction point (\textsc{IP5}, $s=0~\textrm{m}$ on the plot).
696The Zero Degree Calorimeter is located in perfect alignment with the beamline
697axis at the interaction point, at $140~\textrm{m}$, where the beam paths are
698well separated. The forward taggers are near-beam detectors located at
699$220~\textrm{m}$ and $420~\textrm{m}$. Beamline simulation with
700\textit{Hector}~\citep{bib:hector}. All very forward detectors are located
701symmetrically around the interaction point. }
702\label{fig:fdets}
703\end{center}
704\end{figure}
705
706\begin{table}[t]
707\begin{center}
708\caption{Default parameters for the forward detectors: distance from the
709interaction point and detector acceptance. The \textsc{LHC} beamline is assumed
710around the fifth \textsc{LHC} interaction point (\textsc{IP}). For the
711\textsc{ZDC}, the acceptance depends only on the pseudorapidity $\eta$ of the
712particle, which should be neutral and stable.
713It is expressed in terms of the particle energy ($E$).
714All detectors are located on both sides of the interaction point.
715\vspace{0.5cm}}
716\begin{tabular}{llcl}
717\hline
718Detector & Distance & Acceptance & \\ \hline
719\textsc{ZDC} & $\pm 140$ m & $|\eta|> 8.3$ & for $n$ and $\gamma$\\
720\textsc{RP220} & $\pm 220$ m & $E \in [6100 ; 6880]$ (GeV) & at $2~\textrm{mm}$\\
721\textsc{FP420} & $\pm 420$ m & $E \in [6880 ; 6980]$ (GeV) & at $4~\textrm{mm}$\\
722\hline
723\end{tabular}
724\label{tab:fdetacceptance}
725\end{center}
726\end{table}
727
728
729\subsection{Zero Degree Calorimeters}
730
731In direct sight of the interaction point, on both sides of the central
732detector, the Zero Degree Calorimeters (\textsc{ZDC}s) are located at zero
733angle, i.e.\ are aligned with the beamline axis at the interaction point. They
734are placed beyond the point where the paths of incoming and outgoing beams
735separate. These allow the measurement of stable neutral particles ($\gamma$ and
736$n$) coming from the interaction point, with large pseudorapidities (e.g.\
737$|\eta_{\textrm{n,}\gamma}| > 8.3$ in \textsc{ATLAS} and \textsc{CMS}).
738
739The trajectory of the neutrals observed in the \textsc{ZDC}s is a straight
740line, while charged particles are deflected away from their acceptance window by
741the powerful magnets located in front of them. The fact that additional charged
742particles may enter the \textsc{ZDC} acceptance is neglected in the current
743versions of \textit{Delphes}.
744
745The \textsc{ZDC}s have the ability to measure the time-of-flight of the particle.
746This corresponds to the delay $t$ after which the particle is observed in the
747detector, with respect to the bunch crossing reference time at the interaction
748point ($t_0$):
749\begin{equation}
750 t = t_0 + \frac{1}{v} \times \Big( \frac{s-z}{\cos \theta}\Big) \approx \frac{1}{c} \times (s-z),
751\end{equation}
752where $t_0$ is thus the true time coordinate of the vertex from which the
753particle originates, $v$ the particle velocity, $s$ is the \textsc{ZDC} distance
754to the interaction point, $z$ is the longitudinal coordinate of the vertex,
755$\theta$ is the particle emission angle. It is assumed that the neutral particle
756observed in the \textsc{ZDC} is highly relativistic and very forward.
757For the time-of-flight measurement, a Gaussian smearing can be applied according
758to the detector resolution
759(Tab.~\ref{tab:defResolZdc})~\citep{qr:resolutionterms}.
760
761
762The \textsc{ZDC}s are composed of an electromagnetic and a hadronic sections,
763for the measurement of photons and neutrons, respectively. The energy of the
764observed neutral is smeared according to Eq.~\ref{eq:caloresolution} and the
765corresponding section resolutions (Tab.~\ref{tab:defResolZdc}). The \textsc{ZDC}
766hits do not enter in the calorimeter cell list used for reconstruction of jets
767and missing transverse energy.
768
769\begin{table}[!h]
770\begin{center}
771\caption{Default values for the resolution of the zero degree calorimeters.
772Resolution on energy measurement is parametrised by the \textit{stochastic}
773($S$), \textit{noise} ($N$) and \textit{constant} ($C$) terms
774(Eq.~\ref{eq:caloresolution})~\citep{qr:resolutionterms}. The time-of-flight is
775smeared according to a Gaussian function.
776\vspace{0.5cm}}
777\begin{tabular}[!h]{llcc}
778\hline
779 \multicolumn{3}{l}{\textsc{ZDC}, electromagnetic part} & hadronic part \\
780 & $S$ (GeV$^{1/2}$) & $0.7$ & $1.38$\\
781 & $N$ (GeV) & $0$ & $0$ \\
782 & $C$ & $0.08$& $0.13$ \\
783 \multicolumn{4}{l}{\textsc{ZDC}, timing resolution} \\
784 & $\sigma_t$ (s) & $0$ & \\
785\hline
786\end{tabular}
787\label{tab:defResolZdc}
788\end{center}
789\end{table}
790
791The reconstructed ZDC hits correspond to neutral particles with a lifetime long
792enough to reach these detectors (default: $c \tau \geq 140~\textrm{m}$) and very
793large pseudorapidities (default: $|\eta|>8.3$).
794Photons and neutrons are identified if their energy overpasses a given threshold
795(def. $E_\gamma \leq 20$~GeV and $E_n \leq 50$~GeV)~\citep{qr:fwdneutrals}.
796
797
798
799\subsection{Forward taggers}
800
801Forward taggers (called here \textsc{RP220}, for ``roman pots at
802$220~\textrm{m}$'' and \textsc{FP420} for ``forward proton taggers at
803$420~\textrm{m}$'', as at the \textsc{LHC}) are meant for the measurement of
804particles following very closely the beam path. Such devices, also used at
805\textsc{HERA} and Tevatron, are located very far away from the interaction point
806(further than $150$~m in the \textsc{LHC} case).
807
808To be able to reach these detectors, particles must have a charge identical to
809the beam particles, and a momentum very close to the nominal value of the beam
810particules. These taggers are near-beam detectors located a few millimetres from
811the true beam trajectory and this distance defines their acceptance
812(Tab.~\ref{tab:fdetacceptance}). For instance, roman pots at $220~\textrm{m}$
813from the \textsc{IP} and $2~\textrm{mm}$ from the beam will detect all forward
814protons with an energy between $120$ and $900~\textrm{GeV}$~\citep{bib:hector}.
815In \textit{Delphes}, extra hits coming from the beam-gas events or
816secondary particles hitting the beampipe in front of the detectors are not taken
817into account.
818
819While neutral particles propagate along a straight line to the \textsc{ZDC}, a
820dedicated simulation of the transport of charged particles is needed for
821\textsc{RP220} and \textsc{FP420}. This fast simulation uses the \textit{Hector}
822software~\citep{bib:hector}, which includes the chromaticity effects and the
823geometrical aperture of the beamline elements of any arbitrary collider.
824
825Forward taggers are able to measure the hit positions ($x,y$) and angles
826($\theta_x,\theta_y$) in the transverse plane at the location of the detector
827($s$ meters away from the \textsc{IP}), as well as the
828time-of-flight\footnote{It is worth noting that for both \textsc{CMS} and
829\textsc{ATLAS} experiments, the taggers located at $220$~m are not able to
830measure the time-of-flight, contrary to \textsc{FP420} detectors.} ($t$). Out of
831these the particle energy ($E$) and the momentum transfer it underwent during
832the interaction ($q^2$) can be reconstructed at the analysis level (it is not
833implemented in the current versions of \textit{Delphes}). The time-of-flight
834measurement can be smeared with a Gaussian distribution (default value
835$\sigma_t = 0~\textrm{s}$)~\citep{qr:protontaggers}.
836
837
838
839\section{Validation}
840
841\textit{Delphes} performs a fast simulation of a collider experiment.
842Its performances in terms of computing time and data size are directly
843proportional to the number of simulated events and on the considered physics
844process. As an example, $10,000$ $pp \rightarrow t \bar t X$ events are
845processed in $110~\textrm{s}$ on a regular laptop and use less than
846$250~\textrm{MB}$ of disk space.
847The quality and validity of the output are assessed by comparing the
848resolutions on the reconstructed data to the expectations of both
849\textsc{CMS}~\citep{bib:cmsjetresolution} and
850\textsc{ATLAS}~\citep{bib:ATLASresolution} detectors.
851
852Electrons and muons resolutions in \textit{Delphes} match by construction the
853experiment designs, as the Gaussian smearing of their kinematics properties is
854defined according to the detector specifications. Similarly, the $b$-tagging
855efficiency (for real $b$-jets) and misidentification rates (for fake $b$-jets)
856are taken directly from the expected values of the experiment. Unlike these
857simple objects, jets and missing transverse energy should be carefully
858cross-checked.
859
860\subsection{Jet resolution}
861
862The majority of interesting processes at the \textsc{LHC} contain jets in the
863final state. The jet resolution obtained using \textit{Delphes} is therefore a
864crucial point for its validation, both for \textsc{CMS}- and \textsc{ATLAS}-like
865detectors. This validation is based on $pp \rightarrow gg$ events produced with
866MadGraph/MadEvent and hadronised
867using \textit{Pythia}~\citep{bib:mgme,bib:pythia}.
868
869For a \textsc{CMS}-like detector, a similar procedure as the one explained in
870published results is applied here. The events were arranged in $14$ bins of
871gluon transverse momentum $\hat{p}_T$. In each $\hat{p}_T$ bin, every jet in
872\textit{Delphes} is matched to the closest jet of generator-level particles,
873using the spatial separation between the two jet axes
874\begin{equation}
875\Delta R = \sqrt{ \big(\eta^\textrm{rec} - \eta^\textrm{MC} \big)^2 +
876\big(\phi^\textrm{rec} - \phi^\textrm{MC} \big)^2}<0.25.
877\end{equation}
878The jets made of generator-level particles, here referred as \textit{MC jets},
879are obtained by applying the algorithm to all particles considered as stable
880after hadronisation. Jets produced by \textit{Delphes}
881and satisfying the matching criterion are called hereafter \textit{reconstructed
882jets}. All jets are computed with the clustering algorithm (JetCLU) with a cone
883radius $R$ of $0.7$.
884
885The ratio of the transverse energies of every reconstructed jet
886$E_T^\textrm{rec}$ to its corresponding \textsc{MC} jet $E_T^\textrm{MC}$ is
887calculated in each $\hat{p}_T$ bin. The $E_T^\textrm{rec}/E_T^\textrm{MC}$
888histogram is fitted with a Gaussian distribution in the interval \mbox{$\pm
8892$~\textsc{RMS}} centred around the mean value. The resolution in each
890$\hat{p}_T$ bin is obtained by the fit mean $\langle x \rangle$ and variance
891$\sigma^2(x)$:
892\begin{equation}
893\frac{\sigma \Big (\frac{E_T^\textrm{rec}}{E_T^\textrm{MC}} \Big)_\textrm{fit}}{
894\Big \langle \frac{E_T^\textrm{rec}}{E_T^\textrm{MC}} \Big
895\rangle_\textrm{fit}}~
896\Big( \hat{p}_T(i) \Big)\textrm{, for all }i.
897\end{equation}
898
899\begin{figure}[!ht]
900\begin{center}
901%\includegraphics[width=\columnwidth]{resolutionJet}
902\includegraphics[width=\columnwidth]{fig8}
903\caption{Resolution of the transverse energy of reconstructed jets
904$E_T^\textrm{rec}$ as a function of the transverse energy of the closest jet of
905generator-level particles $E_T^\textrm{MC}$, in a \textsc{CMS}-like detector.
906The jets events are reconstructed with the JetCLU clustering algorithm with a
907cone radius of $0.7$. The maximum separation between the reconstructed and
908\textsc{MC}-jets is $\Delta R= 0.25$. Dotted line is the fit result for
909comparison to the \textsc{CMS} resolution~\citep{bib:cmsjetresolution}, in blue.
910The $pp \rightarrow gg$ dijet events have been generated with MadGraph/MadEvent
911and hadronised with \textit{Pythia}.}
912\label{fig:jetresolcms}
913\end{center}
914\end{figure}
915
916The resulting jet resolution as a function of $E_T^\textrm{MC}$ is shown in
917Fig.~\ref{fig:jetresolcms}.
918This distribution is fitted with a function of the following form:
919\begin{equation}
920\frac{a}{E_T^\textrm{MC}}\oplus \frac{b}{\sqrt{E_T^\textrm{MC}}}\oplus c,
921\label{eq:fitresolution}
922\end{equation}
923where $a$, $b$ and $c$ are the fit parameters.
924It is then compared to the resolution published by the \textsc{CMS}
925collaboration~\citep{bib:cmsjetresolution}. The resolution curves from
926\textit{Delphes} and \textsc{CMS} are in good agreement.
927
928Similarly, the jet resolution is evaluated for an \textsc{ATLAS}-like detector.
929The $pp \rightarrow gg$ events are here arranged in $8$ adjacent bins in $p_T$.
930A $k_T$ reconstruction algorithm with $R=0.6$ is chosen and the maximal matching
931distance between the \textsc{MC}-jets and the reconstructed jets is set to
932$\Delta R=0.2$. The relative energy resolution is evaluated in each bin by:
933\begin{equation}
934\frac{\sigma(E)}{E} = \sqrt{~~ \Bigg \langle ~\Bigg( \frac{E^\textrm{rec} -
935E^\textrm{MC}}{E^\textrm{rec}} \Bigg)^2 ~ \Bigg \rangle ~ - ~ \Bigg \langle
936\frac{E^\textrm{rec} - E^\textrm{MC}}{ E^\textrm{rec} } \Bigg \rangle^2}.
937\end{equation}
938
939Figure~\ref{fig:jetresolatlas} shows a good agreement between the resolution
940obtained with \textit{Delphes}, the result of the fit with
941Equation~\ref{eq:fitresolution} and the corresponding curve provided by the
942\textsc{ATLAS} collaboration~\citep{bib:ATLASresolution}.
943
944\begin{figure}[!ht]
945\begin{center}
946\includegraphics[width=\columnwidth]{fig9}
947\caption{Relative energy resolution of reconstructed jets as a function of the
948energy of the closest jet of generator-level particles $E^\textrm{MC}$, in an
949\textsc{ATLAS}-like detector. The jets are reconstructed with the $k_T$
950algorithm with a radius $R=0.6$. The maximal matching distance between
951\textsc{MC}- and reconstructed jets is $\Delta R=0.2$. Only central jets are
952considered ($|\eta|<0.5$). Dotted line is the fit result for comparison to the
953\textsc{ATLAS} resolution~\citep{bib:ATLASresolution}, in blue. The $pp
954\rightarrow gg$ di-jet events have been generated with MadGraph/MadEvent and
955hadronised with \textit{Pythia}.}
956\label{fig:jetresolatlas}
957\end{center}
958\end{figure}
959
960
961\subsection{MET resolution}
962
963All major detectors at hadron colliders have been designed to be as hermetic as
964possible in order to detect the presence of one or more neutrinos and/or new
965weakly interacting particles through apparent missing transverse energy.
966The resolution of the $\overrightarrow{E_T}^\textrm{miss}$ variable, as
967obtained with \textit{Delphes}, is then crucial.
968
969The samples used to study the \textsc{MET} performance are identical to those
970used for the jet validation. It is worth noting that the contribution to
971$E_T^\textrm{miss}$ from muons is negligible in the studied sample.
972The input samples are divided in five bins of scalar $E_T$ sums $(\Sigma E_T)$.
973This sum, called \textit{total visible transverse energy}, is defined as the
974scalar sum of transverse energy in all cells. The quality of the \textsc{MET}
975reconstruction is checked via the resolution on its horizontal component
976$E_x^\textrm{miss}$.
977
978The $E_x^\textrm{miss}$ resolution is evaluated in the following way. The
979distribution of the difference between $E_x^\textrm{miss}$ in \textit{Delphes}
980and at generator-level is fitted with a Gaussian function in each $(\Sigma E_T)$
981bin. The fit \textsc{RMS} gives the \textsc{MET} resolution in each bin.
982The resulting value is presented in Fig.~\ref{fig:resolETmis} as a function of
983the total visible transverse
984energy, for \textsc{CMS}- and \textsc{ATLAS}-like detectors.
985
986\begin{figure}[!ht]
987\begin{center}
988%\includegraphics[width=\columnwidth]{resolutionETmis}
989\includegraphics[width=\columnwidth]{fig10}
990\includegraphics[width=\columnwidth]{fig10b}
991\caption{$\sigma(E^\textrm{mis}_{x})$ as a function on the scalar sum of all
992cells ($\Sigma E_T$) for $pp \rightarrow gg$ events, for a \textsc{CMS}-like
993detector (top) and an \textsc{ATLAS}-like detector (bottom), for di-jet events
994produced with MadGraph/MadEvent and hadronised with \textit{Pythia}.}
995\label{fig:resolETmis}
996\end{center}
997\end{figure}
998
999The resolution $\sigma_x$ of the horizontal component of \textsc{MET} is
1000observed to behave like
1001\begin{equation}
1002\sigma_x = \alpha ~\sqrt{E_T}~~~(\mathrm{GeV}^{1/2}),
1003\end{equation}
1004where the $\alpha$ parameter depends on the resolution of the calorimeters.
1005
1006The \textsc{MET} resolution expected for the \textsc{CMS} detector for similar
1007events is $\sigma_x = (0.6-0.7) ~ \sqrt{E_T} ~ \mathrm{GeV}^{1/2}$ with no
1008pile-up (i.e. extra simultaneous $pp$ collision occurring at high-luminosity in
1009the same bunch crossing)~\citep{bib:cmsjetresolution}, which compares very well
1010with the $\alpha = 0.63$ obtained with \textit{Delphes}. Similarly, for an
1011\textsc{ATLAS}-like detector, a value of $0.53$ is obtained by \textit{Delphes}
1012for the $\alpha$ parameter, while the experiment expects it in the range $[0.53~
1013;~0.57]$~\citep{bib:ATLASresolution}.
1014
1015\subsection{\texorpdfstring{$\tau$}{\texttau}-jet efficiency}
1016Table~\ref{tab:taurecoefficiency} lists the reconstruction efficiencies in
1017\textit{Delphes} for the hadronic $\tau$-jets from $H,Z \rightarrow \tau^+
1018\tau^-$. The mass of the Higgs boson is set successively to $140$ and
1019$300~\textrm{GeV}/c^2$. The inclusive gauge boson productions ($pp \rightarrow
1020HX$ and $pp \rightarrow ZX$) are performed with MadGraph/MadEvent and the $\tau$
1021lepton decay and further hadronisation are handled by \textit{Pythia/Tauola}.
1022All reconstructed $\tau$-jets are $1-$prong, and follow the definition described
1023in section~\ref{btagging}, which is very close to an algorithm of the
1024\textsc{CMS} experiment~\citep{bib:cmstauresolution}. At last, corresponding
1025efficiencies published by the \textsc{CMS} and \textsc{ATLAS} experiments are
1026quoted for comparison. The level of agreement is satisfactory provided possible
1027differences due to the event generation chain and the detail of reconstruction
1028algorithms.
1029
1030\begin{table}[!h]
1031\begin{center}
1032\caption{Reconstruction efficiencies of $\tau$-jets in $\tau^+ \tau^-$ decays
1033from $Z$ or $H$ bosons, in \textit{Delphes}, \textsc{CMS} and \textsc{ATLAS}
1034experiments~\citep{bib:cmstauresolution,bib:ATLASresolution}. Two scenarios for
1035the mass of the Higgs boson are investigated. Events generated with
1036MadGraph/MadEvent and hadronised with \textit{Pythia}. The decays of $\tau$
1037leptons is handled by the \textit{Tauola} version embedded in
1038\textit{Pythia}.\vspace{0.5cm}}
1039\begin{tabular}{lrlrl}
1040\hline
1041 & \textsc{CMS}&Delphes & \textsc{ATLAS}&Delphes
1042\\
1043$Z \rightarrow \tau^+ \tau^-$ & $38.2\%$ & $32.4\pm1.8\%$ & $33\%$ & $28.6\pm 1.9\%$ \\
1044$H(140) \rightarrow \tau^+ \tau^-$ & $36.3\%$ & $39.9\pm1.6\%$ & & $32.8\pm 1.8\%$ \\
1045$H(300) \rightarrow \tau^+ \tau^-$ & $47.3\%$ & $49.7\pm1.5\%$ & & $43.8\pm 1.6\%$ \\
1046\hline
1047
1048\end{tabular}
1049\label{tab:taurecoefficiency}
1050\end{center}
1051\end{table}
1052
1053
1054\section{Visualisation}
1055
1056When performing an analysis, a visualisation tool is useful to convey
1057information about the detector layout and the event topology in a simple way.
1058The \textit{Fast and Realistic OpenGL Displayer} \textsc{FROG}~\citep{bib:FROG}
1059has been interfaced in \textit{Delphes}, allowing an easy display of the defined
1060detector configuration~\citep{qr:frog}.
1061
1062Two and three-dimensional representations of the detector configuration can be
1063used for communication purposes, as they clearly illustrate the geometric
1064coverage of the different detector subsystems.
1065As an example, the generic detector geometry assumed in this paper is shown in
1066Fig.~\ref{fig:GenDet3} and~\ref{fig:GenDet2}. The extensions of the central
1067tracking system, the central calorimeters and both forward calorimeters are
1068visible. Note that only the geometrical coverage is depicted and that the
1069calorimeter segmentation is not taken into account in the drawing of the
1070detector.
1071
1072\begin{figure}[!ht]
1073\begin{center}
1074%\includegraphics[width=\columnwidth]{Detector_DELPHES_2b}
1075\includegraphics[width=\columnwidth]{fig11}
1076\caption{Layout of the generic detector geometry assumed in \textit{Delphes}.
1077Open 3D-view of the detector with solid volumes. Same colour codes as for
1078Fig.~\ref{fig:GenDet3} are applied. Additional forward detectors are not
1079depicted.}
1080\label{fig:GenDet2}
1081\end{center}
1082\end{figure}
1083
1084Deeper understanding of interesting physics processes is possible by displaying
1085the events themselves. The visibility of each set of objects ($e^\pm$,
1086$\mu^\pm$, $\tau^\pm$, jets, transverse missing energy) is enhanced by a colour
1087coding. Moreover, kinematics information of each object is visible by a simple
1088mouse action. As an illustration, an associated photoproduction of a $W$ boson
1089and a $t$ quark~\citep{bib:wtphotoproduction} is shown in Fig.~\ref{fig:wt}.
1090
1091% This corresponds to a $pp(\gamma p \rightarrow Wt)pX$ process, where the $Wt$
1092% couple is induced by an incoming photon emitted by one of the colliding
1093% proton. This leading proton survives after photon emission and is present in
1094% the final state. As the energy and virtuality of the emitted photon are low,
1095% the surviving proton does not leave the beam and escapes from the central
1096% detector without being detected. The experimental signature is a lack of
1097% hadronic activity in the forward hemisphere where the surviving proton
1098% escapes.
1099% The $t$ quark decays into a $W$ boson and a $b$ quark. Both $W$ bosons decay
1100% into leptons ($W \rightarrow \mu \nu_\mu$ and $W \rightarrow e \nu_e$). The
1101% balance between the missing transverse energy and the charged lepton pair is
1102% clear, as well as the presence of an empty forward region. It is interesting
1103% to notice that the reconstruction algorithms build a fake $\tau$-jet around
1104% the electron.
1105
1106\begin{figure}[!ht]
1107\begin{center}
1108%%\includegraphics[width=\columnwidth]{Events_DELPHES_1}
1109%\includegraphics[width=\columnwidth]{DisplayWt}
1110\includegraphics[width=0.6\columnwidth]{fig12}
1111\caption{Example of $pp(\gamma p \rightarrow Wt)pY$ event display in
1112transverse view, with $t \rightarrow Wb$. One
1113$W$ boson decays into a $\mu \nu_\mu$ pair and the second one into a $e \nu_e$
1114pair. The surviving proton leaves a forward hemisphere with no hadronic
1115activity. The isolated muon is shown as the dark blue vector. Around the
1116electron, in red, is reconstructed a fake $\tau$-jet (blue cone surrounding a
1117green arrow). The reconstructed missing energy is visible in grey. }
1118\label{fig:wt}
1119\end{center}
1120\end{figure}
1121
1122For comparison, Fig.~\ref{fig:gg} depicts an inclusive gluon pair production
1123$pp \rightarrow ggX$. The event final state contains more jets, in particular
1124along the beam axis, which is expected as the interacting protons are destroyed
1125by the collision.
1126
1127\begin{figure}[!ht]
1128\begin{center}
1129%%\includegraphics[width=\columnwidth]{Events_DELPHES_1}
1130%\includegraphics[width=\columnwidth]{Displayppgg}
1131\includegraphics[width=0.6\columnwidth]{fig13}
1132\caption{Example of inclusive gluon pair production $pp \rightarrow ggX$. Many
1133jets are present in the event, in particular along the beam axis (black line).}
1134\label{fig:gg}
1135\end{center}
1136\end{figure}
1137
1138
1139\section{Conclusion and perspectives}
1140
1141We have described here the major features of the \textit{Delphes} framework,
1142introduced for the fast simulation of a collider experiment. This framework is a
1143tool meant for feasibility studies in phenomenology, gauging the observability
1144of model predictions in collider experiments.
1145
1146\textit{Delphes} takes as an input the output of event-generators and yields
1147analysis-object data in the form of \texttt{TTree} in a \texttt{*.root} file.
1148The simulation includes central and forward detectors to produce realistic
1149observables using standard reconstruction algorithms.
1150Moreover, the framework allows trigger emulation and 3D event visualisation.
1151
1152\textit{Delphes} has been developed using the parameters of the \textsc{CMS}
1153experiment but can be easily extended to \textsc{ATLAS} and other
1154non-\textsc{LHC} experiments, as at Tevatron or at the \textsc{ILC}. Further
1155developments include a more flexible design for the subdetector assembly, a
1156better $b$-tag description and possibly the implementation of an event mixing
1157module for pile-up event simulation. This framework has already been used for
1158several analyses~\citep{bib:wtphotoproduction, bib:papierquisortirajamais,
1159bib:papiersimon}, in particular in photon-induced interactions at the
1160\textsc{LHC}.
1161
1162
1163\section*{Acknowledgements}
1164\addcontentsline{toc}{section}{Acknowledgements}
1165The authors would like to thank Jer\^ome de Favereau, Christophe Delaere, Muriel Vander Donckt and David d'Enterria for useful discussions and comments, and Loic Quertenmont for support in interfacing \textsc{FROG}. We are also really grateful to Alice Dechambre and Simon de Visscher for being beta testers of the complete package.
1166Part of this work was supported by the Belgian Federal Office for Scientific, Technical and Cultural Affairs through the Interuniversity Attraction Pole P6/11.
1167
1168
1169\begin{thebibliography}{99}
1170\addcontentsline{toc}{section}{References}
1171
1172\bibitem{bib:geant} J. Allison, et al., Nucl. Inst. \& Meth. in \textbf{Phys. Res. A} \href{http://dx.doi.org/10.1016/S0168-9002(03)01368-8}{506 (2003) 250-303}; \textbf{IEEE Trans. on Nucl. Sc.} \href{http://dx.doi.org/10.1109/TNS.2006.869826}{53:1 (2006) 270-278}.
1173
1174\bibitem{bib:delphes} \textit{Delphes}, \href{http://www.fynu.ucl.ac.be/delphes.html}{www.fynu.ucl.ac.be/delphes.html}
1175\bibitem{bib:Root} %\textsc{ROOT}, \textit{An Object Oriented Data Analysis Framework},
1176R. Brun, F. Rademakers, Nucl. Inst. \& Meth. in \textbf{Phys. Res. A} \href{http://dx.doi.org/10.1016/S0168-9002(97)00048-X}{389 (1997) 81-86}.
1177\bibitem{bib:ExRootAnalysis} %\textit{The} \textsc{ExRootAnalysis} \textit{analysis steering utility},
1178P. Demin, (2006), unpublished. Now part of MadGraph/MadEvent.
1179\bibitem{bib:cmsjetresolution} The \textsc{CMS} Collaboration, \textbf{CERN/LHCC} \href{http://documents.cern.ch/cgi-bin/setlink?base=LHCc&categ=public&id=LHCc-2006-001}{2006-001}.
1180\bibitem{bib:ATLASresolution} The \textsc{ATLAS} Collaboration, \textbf{CERN-OPEN} 2008-020, \\arXiv:\href{http://arxiv.org/abs/arxiv:0901.0512}{0901.0512v1}[hep-ex].
1181\bibitem{bib:hector} %\textit{Hector}, \textit{a fast simulator for the transport of particles in beamlines},
1182X. Rouby, J. de Favereau, K. Piotrzkowski, \textbf{JINST} \href{http://www.iop.org/EJ/abstract/1748-0221/2/09/P09005}{2 P09005 (2007)}.
1183\bibitem{bib:FASTJET} %\textit{The} FastJet \textit{package},
1184M. Cacciari, G.P. Salam, \textbf{Phys. Lett. B} \href{http://dx.doi.org/10.1016/j.physletb.2006.08.037}{641 (2006) 57}.
1185\bibitem{bib:jetclu} %\textsc{CDF} Run I legacy algorithm,
1186F. Abe et al. (CDF Coll.), \textbf{Phys. Rev. D} \href{http://link.aps.org/doi/10.1103/PhysRevD.45.1448}{45 (1992) 1448}.
1187\bibitem{bib:midpoint} %Run II Jet Physics: Proceedings of the Run II QCD and Weak Boson Physics Workshop,
1188G.C. Blazey, et al., arXiv:\href{http://arxiv.org/abs/hep-ex/0005012}{0005012}[hep-ex].
1189\bibitem{bib:SIScone} %\textsc{SISC}one, \textit{A practical Seedless Infrared-Safe Cone jet algorithm},
1190G.P. Salam, G. Soyez, \textbf{JHEP} \href{http://dx.doi.org/10.1088/1126-6708/2007/05/086}{05 (2007) 086}.
1191\bibitem{bib:ktjet} S. Catani, Y.L. Dokshitzer, M.H. Seymour, B.R. Webber, \textbf{Nucl. Phys. B} \href{http://dx.doi.org/10.1016/0550-3213(93)90166-M}{406 (1993) 187}; S.D. Ellis, D.E. Soper, \textbf{Phys. Rev. D} \href{http://link.aps.org/doi/10.1103/PhysRevD.48.3160}{48 (1993) 3160}.
1192\bibitem{bib:aachen} Y.L. Dokshitzer, G.D. Leder, S. Moretti, B.R. Webber, \textbf{JHEP} \href{http://dx.doi.org/10.1088/1126-6708/1998/01/011}{08} \href{http://dx.doi.org/10.1088/1126-6708/1998/01/011}{(1997) 001}; M. Wobisch, T. Wengler, arXiv:\href{http://arxiv.org/abs/hep-ph/9907280}{9907280}[hep-ph].
1193\bibitem{bib:antikt} %\textit{The anti-kt jet clustering algorithm},
1194M. Cacciari, G.P. Salam, G. Soyez, \textbf{JHEP} \href{http://dx.doi.org/10.1088/1126-6708/2008/04/063}{04 (2008) 063}.
1195\bibitem{bib:pdg} C. Amsler et al. (Particle Data Group), \textbf{Phys. Lett. B} \href{http://dx.doi.org/10.1016/j.physletb.2008.07.018}{667 (2008) 1}.
1196\bibitem{bib:whphotoproduction} S. Ovyn, \textbf{Nucl. Phys. Proc. Suppl.} \href{http://dx.doi.org/10.1016/j.nuclphysbps.2008.07.034}{179-180 (2008) 269-276}.
1197\bibitem{bib:mgme} %\textsc{MadGraph/MadEvent v4}, \textit{The New Web Generation},
1198J. Alwall, et al., \textbf{JHEP} \href{http://dx.doi.org/10.1088/1126-6708/2007/09/028}{09 (2007) 028}.
1199\bibitem{bib:pythia} %\textsc{Pythia 6.4}, \textit{Physics and Manual},
1200T. Sjostrand, S. Mrenna, P. Skands, \textbf{JHEP} \href{http://dx.doi.org/10.1088/1126-6708/2006/05/026}{05 (2006) 026}.
1201\bibitem{bib:cmstauresolution} %\textit{Study of $\tau$-jet identification in CMS},
1202R. Kinnunen, A.N. Nikitenko, \textbf{CMS NOTE} \href{http://cdsweb.cern.ch/record/687274}{1997/002}.
1203\bibitem{bib:FROG} L. Quertenmont, V. Roberfroid, \textbf{CMS CR} \href{http://cms.cern.ch/iCMS/jsp/openfile.jsp?type=CR&year=2009&files=CR2009_028.pdf}{2009/028}, arXiv:\href{http://arxiv.org/abs/0901.2718}{0901.2718v1}[hep-ex].
1204\bibitem{bib:wtphotoproduction} J. de Favereau de Jeneret, S. Ovyn,
1205\textbf{Nucl. Phys. Proc. Suppl.}
1206\href{http://dx.doi.org/10.1016/j.nuclphysbps.2008.07.040}{179-180 (2008)}
1207\href{http://dx.doi.org/10.1016/j.nuclphysbps.2008.07.040}{277-284}; S. Ovyn, J.
1208de Favereau de Jeneret, \href{http://dx.doi.org/10.1393/ncb/i2008-10684-5}{Nuovo
1209Cimento B}, arXiv:0806.4841[hep-ph].
1210
1211\bibitem{bib:papierquisortirajamais}J. de Favereau~et~al, \href{http://arxiv.org/abs/0908.2020}{arXiv:0908.2020v1} [hep-ph] (2008), to be published in EPJ.
1212
1213\bibitem{bib:papiersimon} S. de Visscher, J.M. Gerard, M. Herquet, V.
1214Lema\^itre, F. Maltoni, \textbf{JHEP}
1215\href{http://dx.doi.org/10.1088/1126-6708/2009/08/042}{08 (2009) 042}.
1216
1217\bibitem{bib:mcfio} P. Lebrun, L. Garren, Copyright (c) 1994-1995 Universities Research Association, Inc.
1218\bibitem{bib:stdhep} L.A. Garren, M. Fischler, \href{http://cepa.fnal.gov/psm/stdhep/c++}{cepa.fnal.gov/psm/stdhep/c++}
1219\bibitem{bib:hepmc} M. Dobbs and J.B. Hansen, \textbf{Comput. Phys. Commun.} \href{http://dx.doi.org/10.1016/S0010-4655(00)00189-2}{134 (2001) 41}.
1220\bibitem{bib:lhe} J. Alwall, et al., \textbf{Comput. Phys. Commun.} \href{http://dx.doi.org/10.1016/j.cpc.2006.11.010}{176:300-304,2007}.
1221
1222\end{thebibliography}
1223
1224
1225
1226% references to code
1227\renewcommand\refname{Internal code references}
1228\begin{thebibliography}{2}
1229\addcontentsline{toc}{section}{Internal code references}
1230
1231\bibitem[a]{qr:inputformat} The standard Monte Carlo event structures \texttt{StdHEP}~\citep{bib:stdhep} and \texttt{HepMC}~\citep{bib:hepmc} can be used as an input. Besides, \textit{Delphes} can also provide detector response for events read in ``Les Houches Event Format'' (LHEF~\citep{bib:lhe}) and \texttt{*.root} files obtained from \texttt{*.hbook} using the \texttt{h2root} utility from the ROOT framework~\citep{bib:Root}.
1232See the following classes: \texttt{HEPEVTConverter}, \texttt{HepMCConverter}, \texttt{LHEFConverter}, \texttt{STDHEPConverter} and \texttt{DelphesRootConverter}.
1233
1234\bibitem[b]{qr:outputformat} The ROOT output files are created using the \texttt{ExRootAnalysis} utility~\citep{bib:ExRootAnalysis}. Generator-level data are located under the \texttt{GEN} tree, the analysis data objects after reconstruction under the \texttt{Analysis} tree, and the results of the trigger emulation under the \texttt{Trigger} tree.
1235
1236\bibitem[c]{qr:lhco} Set the \texttt{FLAG\_LHCO} variable to $1$ or $0$ in the detector card to switch on/off the creation of \texttt{*.lhco} output file.
1237
1238\bibitem[d]{qr:invisibleparticles} The list of particles considered as invisible is accessible in the \texttt{PdgParticle} class. This list currently contains the PIDs 12, 14, 16, 1000022, 1000023, 1000025, 1000035 and 1000045, in absolute values.
1239
1240\bibitem[e]{qr:detectorcard}The detector card is the \texttt{data/DetectorCard.dat} file. This file is parsed by the \texttt{SmearUtil} class.
1241
1242\bibitem[f]{qr:datacards} Detector and trigger cards for the \textsc{ATLAS} and \textsc{CMS} experiments are also provided in \texttt{data/} directory.
1243
1244\bibitem[g]{qr:resolutionterms}The resolution terms in the detector card are named \texttt{ELG\_Xyyy} or \texttt{HAD\_Xyyy}, refering to electromagnetic and hadronic terms (resp.); \texttt{X} is replaced by \texttt{S}, \texttt{N}, \texttt{C} for the stochastic, noise and constant terms; and finally \texttt{yyy} is \texttt{cen} for central part, \texttt{ec} for end-caps, \texttt{fwd} for the forward calorimeters and \texttt{zdc} for the zero-degree calorimeters.
1245
1246\bibitem[h]{qr:magneticfield} See the \texttt{TrackPropagation} class.
1247
1248\bibitem[i]{qr:tracks} See the \texttt{TRACK\_eff} and \texttt{TRACK\_ptmin} terms in the detector card.
1249
1250\bibitem[j]{qr:energysmearing} The response of the detector is applied to the electromagnetic and the hadronic particles through the \texttt{SmearElectron} and \texttt{SmearHadron} methods in the \texttt{SmearUtil} class.
1251
1252\bibitem[k]{qr:emhadratios} To implement different ratios for other particles, see the \texttt{BlockClasses} class.
1253
1254\bibitem[l]{qr:calorimetriccells} As the detector is assumed to be cylindrical (e.g.\ symmetric in $\phi$ and with respect to the $\eta=0$ plane), the detector card stores the number of calorimetric cells with $\phi=0$ and $\eta>0$ (default: $40$ cells). For a given $\eta$, the size of the $\phi$ segmentation is also specified. See the \texttt{TOWER\_number}, \texttt{TOWER\_eta\_edges} and \texttt{TOWER\_dphi} variables in the detector card.
1255
1256\bibitem[m]{qr:analysistree} All these processed data are located under the \texttt{Analysis} tree.
1257
1258\bibitem[n]{qr:muonsmearing} See the \texttt{SmearMuon} method in the \texttt{SmearUtil} class.
1259
1260\bibitem[o]{qr:isolflag} See the \texttt{IsolFlag} and \texttt{IsolPt} values in the \texttt{Electron} or \texttt{Muon} collections in the \texttt{Analysis} tree, as well as the \texttt{ISOL\_PT} and \texttt{ISOL\_Cone} variables in the detector card.
1261
1262\bibitem[p]{qr:caloisolation} Calorimetric isolation parameters in the detector card are \texttt{ISOL\_Calo\_ET} and \texttt{ISOL\_Calo\_Grid} in the detector card.
1263
1264\bibitem[q]{qr:fwdneutrals} These thresholds are defined by the \texttt{ZDC\_gamma\_E} and \texttt{ZDC\_n\_E} variables in the detector card.
1265
1266\bibitem[r]{qr:jetalgo} The choice is done by allocating the \texttt{JET\_jetalgo } input parameter in the detector card.
1267
1268\bibitem[s]{qr:ptcutjet} See the \texttt{PTCUT\_jet }variable in the detector card.
1269
1270\bibitem[t]{qr:jetparams} See the \texttt{JET\_coneradius} and \texttt{JET\_seed} variables in the detector card. The existing FastJet code has been modified to allow easy modification of the cell pattern in $(\eta, \phi)$ space.
1271In following versions of \textit{Delphes}, a new dedicated plug-in will be created on this purpose.
1272
1273\bibitem[u]{qr:energyflow} Set \texttt{JET\_Eflow} to $1$ or $0$ in the detector card in order to switch on or off the energy flow for jet reconstruction.
1274
1275\bibitem[v]{qr:btag} Corresponding to the \texttt{BTAG\_b}, \texttt{BTAG\_mistag\_c} and \texttt{BTAG\_mistag\_l} constants, for the efficiency of tagging of a $b$-jet, the efficiency of mistagging a $c$-jet as a $b$-jet, and the
1276efficiency of mistagging a light jet ($u$,$d$,$s$,$g$) as a $b$-jet.
1277
1278\bibitem[w]{qr:taujets} See the following parameters in the detector card:\\
1279\texttt{TAU\_energy\_scone } for $R^\textrm{em}$; \texttt{JET\_M\_seed } for min $E_{T}^\textrm{cell}$;
1280\texttt{TAU\_energy\_frac} for $C_{\tau}$; \texttt{TAU\_track\_scone} for $R^\textrm{tracks}$;
1281 \texttt{PTAU\_track\_pt } for min $p_T^\textrm{tracks}$ and \texttt{TAUJET\_pt} for $\min p_T$.
1282
1283
1284\bibitem[x]{qr:triggercard} The trigger card is the \texttt{data/TriggerCard.dat} file. Default trigger files are also available for CMS-like and ATLAS-like detectors
1285
1286\bibitem[y]{qr:protontaggers} The resolution is defined by the \texttt{RP220\_T\_resolution} and \texttt{RP420\_T\_resolution} parameters in the detector card.
1287
1288\bibitem[z]{qr:frog} To prepare the visualisation, the \texttt{FLAG\_FROG} parameter should be equal to $1$.
1289
1290\end{thebibliography}
1291
1292
1293
1294
1295\onecolumn
1296\appendix
1297
1298\section{User manual}
1299
1300The available \texttt{C++}-code is compressed in a zipped tar file which contains everything needed to run the \textit{Delphes} package, assuming a running \textsc{ROOT} installation. The package includes \texttt{ExRootAnalysis}~\citep{bib:ExRootAnalysis}, \textit{Hector}~\citep{bib:hector}, FastJet~\citep{bib:FASTJET}, and \textsc{FROG}~\citep{bib:FROG}, as well as the conversion codes to read standard \mbox{StdHEP} input files (\texttt{mcfio} and \texttt{stdhep})~\citep{bib:mcfio} and HepMC~\citep{bib:hepmc}.
1301In order to visualise the events with the \textsc{FROG} software, a few additional external libraries may be required, as explained in \href{http://projects.hepforge.org/FROG/}{http://projects.hepforge.org/FROG/}.
1302
1303\subsection{Getting started}
1304
1305In order to run \textit{Delphes} on your system, first download its sources and compile them:\\
1306\begin{quote}\texttt{wget http://www.fynu.ucl.ac.be/users/s.ovyn/Delphes/files/Delphes\_V\_*.tar.gz}\end{quote}
1307Replace the \texttt{*} symbol by the proper version number. Always refer to the download page on the \textit{Delphes} website \href{http://www.fynu.ucl.ac.be/users/s.ovyn/Delphes/download.html}{http://www.fynu.ucl.ac.be/users/s.ovyn/Delphes/download.html}. Current version of Delphes for this manual is V 1.8 (July 2009).
1308
1309\begin{quote}
1310\begin{verbatim}
1311me@mylaptop:~$ tar -xvf Delphes_V_*.tar.gz
1312me@mylaptop:~$ cd Delphes_V_*.*
1313me@mylaptop:~$ ./genMakefile.tcl > Makefile
1314me@mylaptop:~$ make
1315\end{verbatim}
1316\end{quote}
1317Due to the large number of external utilities, the number of printed lines during the compilation can be high. The user should not pay attention to possible warning messages, which are due to the external packages used by \textit{Delphes}. When compilation is completed, the following message is printed:
1318\begin{quote}
1319\begin{verbatim}
1320me@mylaptop:~$ Delphes has been compiled
1321me@mylaptop:~$ Ready to run
1322\end{verbatim}
1323\end{quote}
1324
1325\subsection{Running \textit{Delphes} on your events}
1326
1327In this sub-appendix, we will explain how to use \textit{Delphes} to perform a fast simulation of a general-purpose detector on your event files. The first step to use \textit{Delphes} is to create the list of input event files (e.g.\ {\verb inputlist.list }). It is important to notice that all the files comprised in the list file should have the same of extension (\texttt{*.hep}, \texttt{*.lhe}, \texttt{*.hepmc} or \texttt{*.root}). In the simplest way to run \textit{Delphes}, you need this input file and you need to specify the name of the output file that will contain the generator-level data (\texttt{GEN} tree), the analysis data objects after reconstruction (\texttt{Analysis} tree), and the results of the trigger emulation (\texttt{Trigger} tree).
1328
1329\begin{quote}
1330\begin{verbatim}
1331me@mylaptop:~$ ./Delphes inputlist.list OutputRootFileName.root
1332\end{verbatim}
1333\end{quote}
1334
1335\subsubsection{Setting up the configuration}
1336
1337The program is driven by two datacards (default cards are {\verb data/DetectorCard.dat } and {\verb data/TriggerCard.dat }) which allow the user to choose among a large spectrum of running conditions. Please note that if the user does not provide these datacards, the running will be done using the default parameters defined in the constructor of the class \texttt{RESOLution} (see next). If you choose a different detector or running configuration, you will need to edit the datacards accordingly. Detector and trigger cards are provided in the \texttt{data/} subdirectory for the \textsc{CMS} and \textsc{ATLAS} experiments.
1338
1339\begin{enumerate}
1340\item{\bf The detector card }
1341It contains all pieces of information needed to run \textit{Delphes}:
1342\begin{itemize}
1343 \item detector parameters, including calorimeter and tracking coverage and resolutions, transverse energy thresholds for object reconstruction and jet algorithm parameters.
1344 \item six flags ({\verb FLAG_bfield }, {\verb FLAG_vfd }, {\verb FLAG_RP }, {\verb FLAG_trigger }, {\verb FLAG_FROG } and {\verb FLAG_LHCO }), should be set in order to configure the magnetic field propagation, the very forward detectors simulation, the use of very forward taggers, the trigger selection, the preparation for \textsc{FROG} display and the creation of an output file in \texttt{*.LHCO} text format (respectively).
1345 \end{itemize}
1346
1347If no datacard is provided by the user, the default smearing and running parameters are used (corresponding to tables~\ref{tab:defEta},~\ref{tab:defResol}).\\
1348Definition of the sub-detector extensions:
1349\begin{quote}
1350\begin{verbatim}
1351CEN_max_tracker 2.5 // Maximum tracker coverage
1352CEN_max_calo_cen 1.7 // central calorimeter coverage
1353CEN_max_calo_ec 3.0 // calorimeter endcap coverage
1354CEN_max_calo_fwd 5.0 // forward calorimeter pseudorapidity coverage
1355CEN_max_mu 2.4 // muon chambers pseudorapidity coverage
1356\end{verbatim}
1357\end{quote}
1358Definition of the sub-detector resolutions:
1359\begin{quote}
1360\begin{verbatim}
1361# Energy resolution for electron/photon in central/endcap/fwd/zdc calos
1362# \sigma/E = C + N/E + S/\sqrt{E}, E in GeV
1363ELG_Scen 0.05 // S term for central ECAL
1364ELG_Ncen 0.25 // N term
1365ELG_Ccen 0.005 // C term
1366ELG_Sec 0.05 // S term for ECAL endcap
1367ELG_Nec 0.25 // N term
1368ELG_Cec 0.005 // C term
1369ELG_Sfwd 2.084 // S term for FCAL
1370ELG_Nfwd 0. // N term
1371ELG_Cfwd 0.107 // C term
1372ELG_Szdc 0.70 // S term for ZDC
1373ELG_Nzdc 0. // N term
1374ELG_Czdc 0.08 // C term
1375
1376# Energy resolution for hadrons in central/endcap/fwd/zdc calos
1377# \sigma/E = C + N/E + S/\sqrt{E}, E in GeV
1378HAD_Scen 1.5 // S term for central HCAL
1379HAD_Ncen 0. // N term
1380HAD_Ccen 0.05 // C term
1381HAD_Sec 1.5 // S term for HCAL endcap
1382HAD_Nec 0. // N term
1383HAD_Cec 0.05 // C term
1384HAD_Sfwd 2.7 // S term for FCAL
1385HAD_Nfwd 0. // N term
1386HAD_Cfwd 0.13 // C term
1387HAD_Szdc 1.38 // S term for ZDC
1388HAD_Nzdc 0. // N term
1389HAD_Czdc 0.13 // C term
1390
1391# Time resolution for ZDC/RP220/RP420
1392ZDC_T_resolution 0 // in s
1393RP220_T_resolution 0 // in s
1394RP420_T_resolution 0 // in s
1395
1396# Muon smearing
1397MU_SmearPt 0.01 // transverse momentum Pt in GeV/c
1398
1399# Tracking efficiencies
1400TRACK_ptmin 0.9 // minimal pT
1401TRACK_eff 90 // efficiency associated to the tracking (%)
1402\end{verbatim}
1403\end{quote}
1404Definitions related to the calorimetric cells:
1405\begin{quote}
1406\begin{verbatim}
1407# Calorimetric towers
1408TOWER_number 40
1409TOWER_eta_edges 0. 0.087 0.174 0.261 0.348 0.435 0.522 0.609 0.696 0.783
1410 0.870 0.957 1.044 1.131 1.218 1.305 1.392 1.479 1.566 1.653
1411 1.740 1.830 1.930 2.043 2.172 2.322 2.500 2.650 2.868 2.950
1412 3.125 3.300 3.475 3.650 3.825 4.000 4.175 4.350 4.525 4.700
1413 5.000
1414
1415TOWER_dphi 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 10
1416 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 20 20
1417\end{verbatim}
1418\end{quote}
1419\texttt{TOWER\_eta\_edges} is the list of the edges in $\eta$ of all cells, in the $\eta>0$ hemisphere (the detector is supposed to be symmetric with respect to the $\eta=0$ plane, as well as around the $z$-axis). Starts with the lower edge of the most central tower (default: $\eta = 0$) and ends with the higher edge of the most forward tower.
1420\texttt{TOWER\_dphi} lists the tower size in $\phi$ (in degree), assuming that all cells are similar in $\phi$ for a given $\eta$.\\
1421Thresholds applied for storing the reconstructed objects in the final collections:
1422\begin{quote}
1423\begin{verbatim}
1424# Thresholds for reconstructed objects, in GeV/c
1425PTCUT_elec 10.0
1426PTCUT_muon 10.0
1427PTCUT_jet 20.0
1428PTCUT_gamma 10.0
1429PTCUT_taujet 10.0
1430
1431# Thresholds for reconstructed objects in ZDC, E in GeV
1432ZDC_gamma_E 20
1433ZDC_n_E 50
1434\end{verbatim}
1435\end{quote}
1436Definitions of variables related to the charged lepton isolation:
1437\begin{quote}
1438\begin{verbatim}
1439# Charged lepton isolation. Pt and Et in GeV
1440ISOL_PT 2.0 //minimal pt of tracks for isolation criteria
1441ISOL_Cone 0.5 //Cone for isolation criteria
1442ISOL_Calo_Cone 0.4 //Cone for calorimetric isolation
1443ISOL_Calo_ET 2.0 //minimal tower E_T for isolation criteria. 1E99 means "off"
1444ISOL_Calo_Grid 3 //Grid size (N x N) for calorimetric isolation
1445\end{verbatim}
1446\end{quote}
1447Definitions of variables related to the jet reconstruction:
1448\begin{quote}
1449\begin{verbatim}
1450# General jet variable
1451JET_coneradius 0.7 // generic jet radius
1452JET_jetalgo 1 // 1 for Cone algorithm,
1453 // 2 for MidPoint algorithm,
1454 // 3 for SIScone algorithm,
1455 // 4 for kt algorithm
1456 // 5 for Cambridge/Aachen algorithm
1457 // 6 for anti-kt algorithm
1458JET_seed 1.0 // minimum seed to start jet reconstruction, in GeV
1459JET_Eflow 1 // Energy flow: perfect energy assumed in the tracker coverage.
1460 // 1 is 'on' ; 0 is 'off'
1461
1462# Tagging definition
1463BTAG_b 40 // b-tag efficiency (%)
1464BTAG_mistag_c 10 // mistagging (%)
1465BTAG_mistag_l 1 // mistagging (%)
1466\end{verbatim}
1467\end{quote}
1468Switches for options
1469\begin{quote}
1470\begin{verbatim}
1471# FLAGS
1472FLAG_bfield 1 //1 to run the bfield propagation else 0
1473FLAG_vfd 1 //1 to run the very forward detectors else 0
1474FLAG_RP 1 //1 to run the very forward detectors else 0
1475FLAG_trigger 1 //1 to run the trigger selection else 0
1476FLAG_FROG 1 //1 to run the FROG event display
1477FLAG_LHCO 1 //1 to run the LHCO
1478\end{verbatim}
1479\end{quote}
1480Parameters for the magnetic field simulation:
1481\begin{quote}
1482\begin{verbatim}
1483# In case BField propagation allowed
1484TRACK_radius 129 // radius of the BField coverage, in cm
1485TRACK_length 300 // length of the BField coverage, in cm
1486TRACK_bfield_x 0 // X component of the BField, in T
1487TRACK_bfield_y 0 // Y component of the BField, in T
1488TRACK_bfield_z 3.8 // Z component of the BField, in T
1489\end{verbatim}
1490\end{quote}
1491Parameters related to the very forward detectors
1492\begin{quote}
1493\begin{verbatim}
1494# Very forward detector extension, in pseudorapidity
1495# if allowed
1496VFD_min_zdc 8.3 // Zero-Degree neutral Calorimeter
1497VFD_s_zdc 140 // distance of the ZDC, from the IP, in [m]
1498
1499#\textit{Hector} parameters
1500RP_220_s 220 // distance of the RP to the IP, in meters
1501RP_220_x 0.002 // distance of the RP to the beam, in meters
1502RP_420_s 420 // distance of the RP to the IP, in meters
1503RP_420_x 0.004 // distance of the RP to the beam, in meters
1504RP_beam1Card data/LHCB1IR5_v6.500.tfs // beam optics file, beam 1
1505RP_beam2Card data/LHCB2IR5_v6.500.tfs // beam optics file, beam 2
1506RP_IP_name IP5 // tag for IP in \textit{Hector} ; 'IP1' for ATLAS
1507RP_offsetEl_x 0.097 // horizontal separation between both beam, in meters
1508RP_offsetEl_y 0 // vertical separation between both beam, in meters
1509RP_offsetEl_s 120 // distance of beam separation point, from IP
1510RP_cross_x -500 // IP offset in horizontal plane, in micrometers
1511RP_cross_y 0 // IP offset in vertical plane, in micrometers
1512RP_cross_ang_x 142.5 // half-crossing angle in horizontal plane, in microrad
1513RP_cross_ang_y 0 // half-crossing angle in vertical plane, in microrad
1514\end{verbatim}
1515\end{quote}
1516Others parameters:
1517\begin{quote}
1518\begin{verbatim}
1519# In case FROG event display allowed
1520NEvents_FROG 100
1521# Number of events to process
1522NEvents -1 // -1 means 'all'
1523
1524# input PDG tables
1525PdgTableFilename data/particle.tbl // table with particle pid,mass,charge,...
1526\end{verbatim}
1527\end{quote}
1528
1529In general, energies, momenta and masses are expressed in GeV, GeV$/c$, GeV$/c^2$ respectively, and magnetic fields in T.
1530Geometrical extension are often referred in terms of pseudorapidity $\eta$, as the detectors are supposed to be symmetric in $\phi$. From version 1.8 onwards, the number of events to run is also be included in the detector card (\texttt{NEvents}). For version 1.7 and earlier, the parameters related to the calorimeter endcaps (\texttt{CEN\_max\_calo\_ec}, \texttt{ELG\_Sec}, \texttt{ELG\_Nec}, \texttt{ELG\_Cec}, \texttt{HAD\_Sec}, \texttt{HAD\_Nec} and \texttt{HAD\_Cec}) did not exist in the detector cards; in addition, some other variables had different names (\texttt{HAD\_Scen} was \texttt{HAD\_Sfcal}, \texttt{HAD\_Ncen} was \texttt{HAD\_Nfcal}, \texttt{HAD\_Ccen} was \texttt{HAD\_Cfcal}, \texttt{HAD\_Sfwd} was \texttt{HAD\_Shf}, \texttt{HAD\_Nfwd} was \texttt{HAD\_Nhf}, \texttt{HAD\_Cfwd} was \texttt{HAD\_Chf}). However, these cards are still completely compatible with new versions of \textit{Delphes}. In such a case, the calorimeter endcaps are simply assumed to be located at the edge of the central calorimeter volumes, with the same resolution values.
1531
1532\item{\bf The trigger card }
1533
1534This card contains the definitions of all trigger-bits. Cuts can be applied on the transverse momentum $p_T$ of electrons, muons, jets, $\tau$-jets, photons and the missing transverse energy. The following codes should be used so that \textit{Delphes} can correctly translate the input list of trigger-bits into selection algorithms:
1535
1536\begin{quote}
1537\begin{tabular}{ll}
1538{\it Trigger code} & {\it Corresponding object}\\
1539{\verb ELEC_PT } & electron \\
1540{\verb IElec_PT } & isolated electron \\
1541{\verb MUON_PT } & muon \\
1542{\verb IMuon_PT } & isolated muon \\
1543{\verb JET_PT } & jet \\
1544{\verb TAU_PT } & $\tau$-jet \\
1545{\verb ETMIS_PT } & missing transverse energy \\
1546{\verb GAMMA_PT } & photon \\
1547{\verb Bjet_PT } & $b$-jet \\
1548\end{tabular}
1549\end{quote}
1550
1551Each line in the trigger datacard is allocated to exactly one trigger-bit and starts with the name of the corresponding trigger.
1552Logical combination of several conditions is also possible. If the trigger-bit requires the presence of multiple identical objects, the order of their $p_T$ thresholds is very important: they must be defined in \textit{decreasing} order. The transverse momentum $p_T$ is expressed in \mbox{GeV/$c$}. Finally, the different requirements on the objects must be separated by a {\verb && } flag.
1553The default trigger card can be found in the data repository of \textit{Delphes} (\texttt{data/TriggerCard.dat}), as well as for both \textsc{CMS} and \textsc{ATLAS} experiments at the \textsc{LHC}.
1554An example of trigger table consistent with the previous rules is given here:
1555\begin{quote}
1556\begin{verbatim}
1557SingleJet >> JET_PT: '200'
1558DoubleElec >> ELEC_PT: '20' && ELEC_PT: '10'
1559SingleElec and Single Muon >> ELEC_PT: '20' && MUON_PT: '15'
1560\end{verbatim}
1561\end{quote}
1562\end{enumerate}
1563
1564\subsubsection{Running the code}
1565
1566First, create the detector and trigger cards (\texttt{data/DetectorCard.dat} and \texttt{data/TriggerCard.dat}). \\
1567Then, create a text file containing the list of input files that will be used by \textit{Delphes} (with extension \texttt{*.lhe}, \texttt{*.hepmc}, \texttt{*.root} or \texttt{*.hep}).
1568To run the code, type the following command (in one line)
1569\begin{quote}
1570\begin{verbatim}
1571me@mylaptop:~$ ./Delphes inputlist.list OutputRootFileName.root
1572 data/DetectorCard.dat data/TriggerCard.dat
1573\end{verbatim}
1574\end{quote}
1575As a reminder, typing the \texttt{./Delphes} command simply displays the correct usage:
1576
1577\begin{quote}
1578\begin{verbatim}
1579me@mylaptop:~$ ./Delphes
1580 Usage: ./Delphes input_file output_file [detector_card] [trigger_card]
1581 input_list - list of files in Ntpl, StdHep, HepMC or LHEF format,
1582 output_file - output file.
1583 detector_card - Card containing resolution variables for detector simulation (optional)
1584 trigger_card - Card containing the trigger algorithms (optional)
1585\end{verbatim}
1586\end{quote}
1587
1588
1589\subsection{Getting the \textit{Delphes} information}
1590
1591\subsubsection{Contents of the \textit{Delphes} ROOT trees}
1592
1593The \textit{Delphes} output file (\texttt{*.root}) is subdivided into three \textit{trees}, corresponding to generator-level data, analysis-object data and trigger output. These \textit{trees} are structures that organise the output data into \textit{branches} containing data (or \textit{leaves}) related with each others, like the kinematics properties ($E$, $p_x$, $\eta$, $\ldots$) of a given particle.
1594
1595Here is the exhaustive list of \textit{branches} availables in these \textit{trees}, together with their corresponding physical objet and \texttt{ExRootAnalysis} C++ class name:
1596\begin{quote}
1597\begin{tabular}{lll}
1598\textbf{GEN \texttt{Tree}} & &\\
1599~~~Particle & generator particles from \textsc{hepevt} & {\verb GenParticle }\\
1600\multicolumn{3}{l}{}\\
1601\textbf{Trigger \texttt{Tree}} & &\\
1602~~~TrigResult & Acceptance of different trigger-bits & {\verb TRootTrigger }\\
1603\multicolumn{3}{l}{}\\
1604\textbf{Analysis \texttt{Tree}} & & \\
1605~~~Tracks & Collection of tracks & {\verb TRootTracks }\\
1606~~~CaloTower & Calorimetric cells & {\verb TRootCalo }\\
1607~~~Electron & Collection of electrons & {\verb TRootElectron }\\
1608~~~Photon & Collection of photons & {\verb TRootPhoton }\\
1609~~~Muon & Collection of muons & {\verb TRootMuon }\\
1610~~~Jet & Collection of jets & {\verb TRootJet }\\
1611~~~TauJet & Collection of jets tagged as $\tau$-jets & {\verb TRootTauJet }\\
1612~~~ETmis & Transverse missing energy information & {\verb TRootETmis }\\
1613~~~ZDChits & Hits in the Zero Degree Calorimeters & {\verb TRootZdcHits }\\
1614~~~RP220hits & Hits in the first proton taggers & {\verb TRootRomanPotHits }\\
1615~~~FP420hits & Hits in the next proton taggers & {\verb TRootRomanPotHits }\\
1616\end{tabular}
1617\end{quote}
1618The third column shows the names of the corresponding classes to be written in a \textsc{ROOT} tree.
1619The bin number in the unique leaf in the \texttt{trigger} tree (namely, \texttt{TrigResult.Accepted}) corresponds to the trigger number in the provided list. In addition, the result of the global trigger decision upon each event (i.e.\ the logical \texttt{OR} of all trigger conditions) is stored in the first bin (number 0) of this leaf.
1620In \texttt{Analysis} tree, all classes except \texttt{TRootTracks}, \texttt{TRootCalo}, \texttt{TRootTrigger}, \texttt{TRootETmis} and \texttt{TRootRomanPotHits} inherit from the class \texttt{TRootParticle} which includes the following data members (stored as \textit{leaves} in \textit{branches} of the \textit{trees}):
1621\begin{quote}
1622\begin{tabular}{ll}
1623\multicolumn{2}{l}{\textbf{Most common leaves}}\\
1624 \texttt{~~~float E; }&\texttt{ // particle energy in GeV }\\
1625 \texttt{~~~float Px; }&\texttt{ // particle momentum vector (x component) in GeV$/c$ }\\
1626 \texttt{~~~float Py; }&\texttt{ // particle momentum vector (y component) in GeV$/c$ }\\
1627 \texttt{~~~float Pz; }&\texttt{ // particle momentum vector (z component) in GeV$/c$ }\\
1628 \texttt{~~~float PT; }&\texttt{ // particle transverse momentum in GeV$/c$ }\\
1629 \texttt{~~~float Eta; }&\texttt{ // particle pseudorapidity }\\
1630 \texttt{~~~float Phi; }&\texttt{ // particle azimuthal angle in rad }\\
1631\end{tabular}
1632\end{quote}
1633
1634In addition to their kinematics, some additional properties are available for specific objects:
1635\begin{quote}
1636\begin{tabular}{ll}
1637\multicolumn{2}{l}{{\bf Leaves in the \texttt{Particle} branch (\texttt{GEN} tree)}} \\
1638 \texttt{~~~int PID; }&\texttt{ // particle HEP ID number }\\
1639 \texttt{~~~int Status; }&\texttt{ // particle status }\\
1640 \texttt{~~~int M1; }&\texttt{ // particle 1st mother }\\
1641 \texttt{~~~int M2; }&\texttt{ // particle 2nd mother }\\
1642 \texttt{~~~int D1; }&\texttt{ // particle 1st daughter }\\
1643 \texttt{~~~int D2; }&\texttt{ // particle 2nd daughter }\\
1644 \texttt{~~~float Charge; }&\texttt{ // electrical charge in units of e}\\
1645 \texttt{~~~float T; }&\texttt{ // particle vertex position (t component, in mm$/c$) }\\
1646 \texttt{~~~float X; }&\texttt{ // particle vertex position (x component, in mm) }\\
1647 \texttt{~~~float Y; }&\texttt{ // particle vertex position (y component, in mm) }\\
1648 \texttt{~~~float Z; }&\texttt{ // particle vertex position (z component, in mm) }\\
1649 \texttt{~~~float M; }&\texttt{ // particle mass in GeV$/c^2$}\\
1650\end{tabular}
1651\end{quote}
1652\begin{quote}
1653\begin{tabular}{ll}
1654\multicolumn{2}{l}{\textbf{Additional leaves in \texttt{Electron} and \texttt{Muon} branches} (\texttt{Analysis} tree)} \\
1655 \texttt{~~~int Charge } &\texttt{ // particle Charge }\\
1656 \texttt{~~~bool IsolFlag } &\texttt{ // stores the result of the tracking isolation test }\\
1657 \texttt{~~~float IsolPt } &\texttt{ // sum of all track pt in isolation cone (GeV/c) }\\
1658 \texttt{~~~float EtaCalo } &\texttt{ // particle pseudorapidity when entering the calo }\\
1659 \texttt{~~~float PhiCalo } &\texttt{ // particle azimuthal angle in rad when entering the calo }\\
1660 \texttt{~~~float EHoverEE }&\texttt{ // hadronic energy over electromagnetic energy }\\
1661 \texttt{~~~float EtRatio } &\texttt{ // calo Et in NxN-cell grid around the muon over the muon Et }\\
1662\end{tabular}
1663\end{quote}
1664\begin{quote}
1665\begin{tabular}{ll}
1666\multicolumn{2}{l}{\textbf{Additional leaf in the \texttt{Jet} branch (\texttt{Analysis} tree)}} \\
1667 \texttt{~~~bool Btag } &\texttt{ // stores the result of the b-tagging }\\
1668 \texttt{~~~int NTracks }&\texttt{ // number of tracks associated to the jet }\\
1669 \texttt{~~~float EHoverEE }&\texttt{ // hadronic energy over electromagnetic energy }\\
1670\end{tabular}
1671\end{quote}
1672\begin{quote}
1673\begin{tabular}{ll}
1674\multicolumn{2}{l}{\textbf{Leaves in the \texttt{Tracks} branch (\texttt{Analysis} tree)}}\\
1675 \texttt{~~~float Eta } &\texttt{ // pseudorapidity at the beginning of the track }\\
1676 \texttt{~~~float Phi } &\texttt{ // azimuthal angle at the beginning of the track }\\
1677 \texttt{~~~float EtaOuter }&\texttt{ // pseudorapidity at the end of the track }\\
1678 \texttt{~~~float PhiOuter }&\texttt{ // azimuthal angle at the end of the track }\\
1679 \texttt{~~~float PT } &\texttt{ // track transverse momentum in GeV$/c$ }\\
1680 \texttt{~~~float E } &\texttt{ // track energy in GeV }\\
1681 \texttt{~~~float Px } &\texttt{ // track momentum vector (x component) in GeV$/c$ }\\
1682 \texttt{~~~float Py } &\texttt{ // track momentum vector (y component) in GeV$/c$ }\\
1683 \texttt{~~~float Pz } &\texttt{ // track momentum vector (z component) in GeV$/c$ }\\
1684 \texttt{~~~float Charge } &\texttt{ // track charge in units of $e$ }\\
1685\end{tabular}
1686\end{quote}
1687\begin{quote}
1688\begin{tabular}{ll}
1689\multicolumn{2}{l}{\textbf{Leaves in the \texttt{CaloTower} branch (\texttt{Analysis} tree)}}\\
1690 \texttt{~~~float Eta } &\texttt{ // pseudorapidity of the cell }\\
1691 \texttt{~~~float Phi } &\texttt{ // azimuthal angle of the cell in rad }\\
1692 \texttt{~~~float E } &\texttt{ // cell energy in GeV }\\
1693 \texttt{~~~float E\_em } &\texttt{ // electromagnetic component of the cell energy in GeV}\\
1694 \texttt{~~~float E\_had } &\texttt{ // hadronic component of the cell energy in GeV}\\
1695 \texttt{~~~float ET } &\texttt{ // cell transverse energy in GeV }\\
1696& \\
1697\multicolumn{2}{l}{\textbf{Leaves in the \texttt{ETmis} branch (\texttt{Analysis} tree)}}\\
1698 \texttt{~~~float Phi } &\texttt{ // azimuthal angle of the transverse missing energy in rad }\\
1699 \texttt{~~~float ET } &\texttt{ // transverse missing energy in GeV }\\
1700 \texttt{~~~float Px } &\texttt{ // x component of the transverse missing energy in GeV }\\
1701 \texttt{~~~float Py } &\texttt{ // y component of the transverse missing energy in GeV }\\
1702\end{tabular}
1703\end{quote}
1704
1705The hits in very forward detector (\textsc{ZDC, RP220, FP420}) have some common data. In particular, the \texttt{side} variable tells in which detector (left:-1 or right:+1 of the interaction point) the hit has been seen. Moreover, some generator level data is provided for information, as the correspondance with the contents of the \texttt{GEN} tree is not possible. These generator-level data correspond to the particle kinematics (energy, momentum, angle) and identification (pid).
1706
1707\begin{quote}
1708\begin{tabular}{ll}
1709\multicolumn{2}{l}{\textbf{Common leaves for ZDC, RP220, FP420}}\\
1710 \texttt{~~~float T } &\texttt{ // time of flight in s }\\
1711 \texttt{~~~float E } &\texttt{ // measured/smeared energy in GeV }\\
1712 \texttt{~~~int side }&\texttt{ // -1 or +1 }\\
1713\multicolumn{2}{l}{Generator level data}\\
1714 \texttt{~~~int pid; }&\texttt{ // particle ID }\\
1715 \texttt{~~~float genPx; }&\texttt{ // particle momentum vector (x component) in GeV$/c$ }\\
1716 \texttt{~~~float genPy; }&\texttt{ // particle momentum vector (y component) in GeV$/c$ }\\
1717 \texttt{~~~float genPz; }&\texttt{ // particle momentum vector (z component) in GeV$/c$ }\\
1718 \texttt{~~~float genPT; }&\texttt{ // particle transverse momentum in GeV$/c$ }\\
1719 \texttt{~~~float genEta; }&\texttt{ // particle pseudorapidity }\\
1720 \texttt{~~~float genPhi; }&\texttt{ // particle azimuthal angle in rad }\\
1721\end{tabular}
1722\end{quote}
1723
1724\begin{quote}
1725\begin{tabular}{ll}
1726\multicolumn{2}{l}{\textbf{Additional leaves in the \texttt{ZDChits} branch (\texttt{Analysis} tree)}}\\
1727 \texttt{~~~int hadronic\_hit} &\texttt{// 0(is not hadronic) or 1(is hadronic) }
1728\end{tabular}
1729\end{quote}
1730
1731\begin{quote}
1732\begin{tabular}{ll}
1733\multicolumn{2}{l}{\textbf{Additional leaves in the \texttt{RP220hits} and \texttt{FP420hits} branches (\texttt{Analysis} tree)}}\\
1734 \texttt{~~~flaot S } &\texttt{ // detector position from IP in m } \\
1735 \texttt{~~~float X } &\texttt{ // hit horizontal position in m } \\
1736 \texttt{~~~float Y } &\texttt{ // hit vertical position in m } \\
1737 \texttt{~~~float TX } &\texttt{ // hit horizontal angle in rad } \\
1738 \texttt{~~~float TY } &\texttt{ // hit vertical angle in rad } \\
1739 \texttt{~~~float q2 } &\texttt{ // reconstructed momentum transfer in GeV$^2$ }
1740\end{tabular}
1741\end{quote}
1742The hit position is computed from the center of the beam position, not from the edge of the detector.
1743
1744\subsection{Deeper description of jet algorithms}
1745
1746In this section, we briefly describe the differences between the six jet algorithms interfaced in \textit{Delphes}, via the FastJet utiliy~\citep{bib:FASTJET}. Jet algorithms differ in their sensitivity to soft particles or collinear splittings, and in their computing speed performances. The first three belong to the cone algorithm class while the last three are using a sequential recombination scheme. For all of them, the calorimetric cells are used as inputs for the jet clustering.
1747
1748\subsubsection*{Cone algorithms}
1749
1750\begin{enumerate}
1751
1752\item {\it CDF Jet Clusters}~\citep{bib:jetclu}: Basic cone reconstruction algorithm used by the \textsc{CDF} experiment in Run II). All cells lying in a circular cone around the jet axis with a transverse energy $E_T$ higher than a given threshold are used to seed the jet candidates. This algorithm is fast but sensitive to both soft particles and collinear splittings.
1753
1754\item {\it CDF MidPoint}~\citep{bib:midpoint}: Cone reconstruction algorithm developed for the \textsc{CDF} Run II to reduce infrared and collinear sensitivities compared to purely seed-based cone by adding `midpoints' (energy barycentres) in the list of cone seeds.
1755
1756\item {\it Seedless Infrared Safe Cone}~\citep{bib:SIScone}: The \textsc{SISC}one algorithm is simultaneously insensitive to additional soft particles and collinear splittings, and fast enough to be used in experimental analysis.
1757
1758\end{enumerate}
1759
1760
1761\subsubsection*{Recombination algorithms}
1762
1763The three sequential recombination jet algorithms are safe with respect to soft radiations (\textit{infrared}) and collinear splittings. They rely on recombination schemes where calorimeter cell pairs are successively merged.
1764The definitions of the jet algorithms are similar except for the definition of the \textit{distances} $d$ used during the merging procedure. Two such variables are defined: the distance $d_{ij}$ between each pair of cells $(i,j)$, and a variable $d_{iB}$ (\textit{beam distance}) depending on the transverse momentum of the cell $i$.
1765The jet reconstruction algorithm browses the calorimetric cell list. It starts by finding the minimum value $d_\textrm{min}$ of all the distances $d_{ij}$ and $d_{iB}$. If $d_\textrm{min}$ is a $d_{ij}$, the cells $i$ and $j$ are merged into a single cell with a four-momentum $p^\mu = p^\mu (i) + p^\mu (j)$ (\textit{E-scheme recombination}). If $d_\textrm{min}$ is a $d_{iB}$, the cell is declared as a final jet and is removed from the input list. This procedure is repeated until no cells are left in the input list. Further information on these jet algorithms is given here below, using $k_{ti}$, $y_{i}$ and $\phi_i$ as the transverse momentum, rapidity and azimuth of calorimetric cell $i$ and $\Delta R_{ij}= \sqrt{(y_i-y_j)^2+(\phi_i-\phi_j)^2}$ as the jet-radius parameter:
1766
1767\begin{enumerate}[start=4]
1768
1769\item {\it Longitudinally invariant $k_t$ jet}~\citep{bib:ktjet}, with
1770 $d_{ij} = \min(k_{ti}^2,k_{tj}^2) \times \frac{\Delta R_{ij}^2}{R^2}$ and $d_{iB}=k_{ti}^2$,
1771\item {\it Cambridge/Aachen jet}~\citep{bib:aachen}, with $d_{ij} = \frac{\Delta R_{ij}^2}{R^2}$ and $d_{iB}=1$,
1772\item {\it Anti $k_t$ jet}~\citep{bib:antikt}, where hard jets are exactly circular in the $(y,\phi)$ plane:
1773$d_{ij} = \min(1/k_{ti}^2,1/k_{tj}^2) \times \frac{\Delta R_{ij}^2}{R^2}$ and $d_{iB}=\frac{1}{k_{ti}^2}$.
1774\end{enumerate}
1775
1776
1777\subsection{Running an analysis on your \textit{Delphes} events}
1778
1779To analyse the \textsc{ROOT} ntuple produced by \textit{Delphes}, the simplest way is to use the {\verb Analysis_Ex.cpp } code which is coming in the {\verb Examples } repository of \textit{Delphes}. Note that all of this is optional and done to facilitate the analyses, as the output from \textit{Delphes} is viewable with the standard \textsc{ROOT} \texttt{TBrowser} and can be analysed using the \texttt{MakeClass} facility.
1780As an example, here is a simple overview of a \texttt{myoutput.root} file created by \textit{Delphes}:
1781\begin{quote}
1782\begin{verbatim}
1783me@mylaptop:~$ root -l myoutput.root
1784root [0]
1785Attaching file myoutput.root as _file0...
1786root [1] .ls
1787TFile** myoutput.root
1788 TFile* myoutput.root
1789 KEY: TTree GEN;1 Analysis tree
1790 KEY: TTree Analysis;1 Analysis tree
1791 KEY: TTree Trigger;1 Analysis tree
1792root [2] TBrowser t;
1793root [3] Analysis->GetEntries()
1794(const Long64_t)200
1795root [4] GEN->GetListOfBranches()->ls()
1796OBJ: TBranchElement Event Event_ : 0 at: 0x9108f30
1797OBJ: TBranch Event_size Event_size/I : 0 at: 0x910cfd0
1798OBJ: TBranchElement Particle Particle_ : 0 at: 0x910c6b0
1799OBJ: TBranch Particle_size Particle_size/I : 0 at: 0x9111c58
1800root [5] Trigger->GetListOfLeaves()->ls()
1801OBJ: TLeafElement TrigResult_ TrigResult_ : 0 at: 0x90f90a0
1802OBJ: TLeafElement TrigResult.Accepted Accepted[TrigResult_] : 0 at: 0x90f9000
1803OBJ: TLeafI TrigResult_size TrigResult_size : 0 at: 0x90fb860
1804\end{verbatim}
1805\end{quote}
1806The \texttt{.ls} command lists the current keys available and in particular the three \textit{tree} names.
1807\mbox{\texttt{TBrowser t}} launches a browser and the \texttt{GetEntries()} method outputs the number of data in the corresponding \textit{tree}.
1808The list of \textit{branches} or \textit{leaves} can be displayed with the \texttt{GetListOfBranches()} and \texttt{GetListOfLeaves()} methods, pointing to the \texttt{ls()} one. In particular, it is possible to shown only parts of the output, using wildcard characters (\texttt{*}):
1809\begin{quote}
1810\begin{verbatim}
1811root [6] Analysis->GetListOfLeaves()->ls("*.E")
1812OBJ: TLeafElement Jet.E E[Jet_] : 0 at: 0xa08bc68
1813OBJ: TLeafElement TauJet.E E[TauJet_] : 0 at: 0xa148910
1814OBJ: TLeafElement Electron.E E[Electron_] : 0 at: 0xa1d8a50
1815OBJ: TLeafElement Muon.E E[Muon_] : 0 at: 0xa28ac80
1816OBJ: TLeafElement Photon.E E[Photon_] : 0 at: 0xa33cd88
1817OBJ: TLeafElement Tracks.E E[Tracks_] : 0 at: 0xa3cced0
1818OBJ: TLeafElement CaloTower.E E[CaloTower_] : 0 at: 0xa4ba188
1819OBJ: TLeafElement ZDChits.E E[ZDChits_] : 0 at: 0xa54a3c8
1820OBJ: TLeafElement RP220hits.E E[RP220hits_] : 0 at: 0xa61e648
1821OBJ: TLeafElement FP420hits.E E[FP420hits_] : 0 at: 0xa6d0920
1822\end{verbatim}
1823\end{quote}
1824
1825To draw a particular leaf, either double-click on the corresponding name in the \texttt{TBrowser} or use the \texttt{Draw} method of the corresponding \textit{tree}.
1826\begin{quote}
1827\begin{verbatim}
1828root [7] Trigger->Draw("TrigResult.Accepted");
1829\end{verbatim}
1830\end{quote}
1831Mathematical operations on several \textit{leaves} are possible within a given \textit{tree}, following the C++ syntax:
1832\begin{quote}
1833\begin{verbatim}
1834root [8] Analysis->Draw("Muon.Px * Muon.Px");
1835root [9] Analysis->Draw("sqrt(pow(Muon.E,2) - pow(Muon.Pz,2) + pow(Muon.PT,2))");
1836\end{verbatim}
1837\end{quote}
1838Finally, to prepare an deeper analysis, the \texttt{MakeClass} method is useful. It creates two files (\texttt{*.h} and \texttt{*.C}) with automatically generated code that allows the access to all branches and leaves of the corresponding tree:
1839\begin{quote}
1840\begin{verbatim}
1841root [10] Trigger->MakeClass()
1842Info in <TTreePlayer::MakeClass>: Files: Trigger.h and
1843 Trigger.C generated from TTree: Trigger
1844\end{verbatim}
1845\end{quote}
1846For more information, refer to ROOT documentation. Moreover, an example of code (based on the output of \texttt{MakeClass}) is provided in the \texttt{Examples/} directory.
1847
1848To run the \texttt{Examples/Analysis\_Ex.cpp} code, the two following arguments are required: a text file containing the input \textit{Delphes} \texttt{root} files to run, and the name of the output \texttt{root} file.
1849 \begin{quote}
1850\begin{verbatim}
1851me@mylaptop:~$ ./Analysis_Ex input_file.list output_file.root
1852\end{verbatim}
1853 \end{quote}
1854One can easily edit, modify and compile (\texttt{make}) changes in this file.
1855
1856\subsubsection{Adding the trigger information}
1857The \texttt{Examples/Trigger\_Only.cpp} code permits to run the trigger selection separately from the general detector simulation on output \textit{Delphes} root files. A \textit{Delphes} \texttt{root} file is mandatory as an input argument for the \texttt{Trigger\_Only} routine. The new \textit{tree} containing the trigger result data will be appended to this file.
1858The trigger datacard is also necessary. To run the code:
1859 \begin{quote}
1860\begin{verbatim}
1861me@mylaptop:~$ ./Trigger_Only input_file.root data/TriggerCard.dat
1862\end{verbatim}
1863 \end{quote}
1864
1865\subsection{Running the FROG event display}
1866
1867\begin{itemize}
1868\item If the { \verb FLAG_FROG } was switched on in the smearing card, two files have been created during the running of \textit{Delphes}: \texttt{DelphesToFROG.vis} and \texttt{DelphesToFROG.geom }. They contain all the needed pieces of information to run \textsc{FROG}.
1869\item To display the events and the geometry, you first need to compile \textsc{FROG}. Go to the {\verb Utilities/FROG } and type {\verb make }. This compilation is done once for all, with this geometry (i.e.\ as long as the \texttt{*vis} and \texttt{*geom} files do not change).
1870\item Go back into the main directory and type
1871\begin{quote}
1872\texttt{me@mylaptop:~\$ ./Utilities/FROG/FROG}
1873\end{quote}
1874\end{itemize}
1875
1876\subsection{LHCO file format}
1877 The \texttt{*LHCO} file format is a text-\textsc{ASCII} data format briefly discussed here. An exhaustive description is provided on \href{http://v1.jthaler.net/olympicswiki}{http://v1.jthaler.net/olympicswiki}. This section is based on this webpage.
1878Only final high-level objects are available in the \texttt{LHCO} format, and their properties are arranged in columns. Each row corresponds to an object in the event and all events are written after each other. Comment-lines starts with a hash \texttt{\#} symbol.
1879
1880\begin{verbatim}
1881 # typ eta phi pt jmas ntrk btag had/em dum1 dum2
1882 0 57 0
1883 1 0 1.392 -2.269 19.981 0.000 0.000 0.000 4.605 0.000 0.000
1884 2 3 1.052 2.599 29.796 3.698 -1.000 0.000 0.320 0.000 0.000
1885 3 4 1.542 -2.070 84.308 41.761 7.000 0.000 1.000 0.000 0.000
1886 4 4 1.039 0.856 58.992 34.941 1.000 0.000 1.118 0.000 0.000
1887 5 4 1.052 2.599 29.796 3.698 0.000 0.000 0.320 0.000 0.000
1888 6 4 0.431 -2.190 22.631 3.861 0.000 0.000 1.000 0.000 0.000
1889 7 6 0.000 0.845 62.574 0.000 0.000 0.000 0.000 0.000 0.000
1890\end{verbatim}
1891Each row in an event starts with a unique number (i.e.\ in first column).
1892Row \texttt{0} contains the event number (here: \texttt{57}) and some trigger information (here: \texttt{0}. This very particular trigger encoding is not implemented in \textit{Delphes}.).
1893Subsequent rows list the reconstructed high-level objects.
1894Each row is organised in columns, which details the object kinematics as well as more specific information, such as isolation criteria or $b$-tagging.
1895
1896\paragraph{1st column (\texttt{\#})}
1897The first column is the line number in the event. Each event starts with a 0 and contains as many lines as needed to list all high-level objects.
1898
1899\paragraph{2nd column (\texttt{typ})}
1900The second column gives the object identification code, or \textit{type}.
1901The different object types are:\\
1902\begin{tabular}{ll}
1903 \texttt{0}& for a photon ($\gamma$)\\
1904 \texttt{1}& for an electron ($e^\pm$)\\
1905 \texttt{2}& for a muon ($\mu^\pm$)\\
1906 \texttt{3}& for a hadronically-decaying tau ($\tau$-jet)\\
1907 \texttt{4}& for a jet\\
1908 \texttt{6}& for a missing transverse energy ($E_T^\textrm{miss}$)\\
1909\end{tabular}\\
1910Object type \texttt{5} is not defined.
1911An event always ends with the row corresponding to the missing transverse energy (type \texttt{6}).
1912
1913\paragraph{3rd (\texttt{eta}) and 4th (\texttt{phi}) columns}
1914The third and forth columns gives the object pseudorapidity $\eta$ and azimuth $\phi$. This latter quantity is expressed in radians, ranging from $-\pi$ to $\pi$.
1915
1916\paragraph{5th (\texttt{pt}) and 6th (\texttt{jmass}) columns}
1917The fifth column provides the object transverse momentum ($p_T$ in GeV$/c$) or energy ($E_T$ in GeV), while the invariant mass ($M$ in GeV/$c^2$) is in the sixth column.
1918
1919\paragraph{7th column (\texttt{ntrk})}
1920The seventh column reports the total number of tracks associated to the objects. This is \texttt{0} for photons, \texttt{$\pm$ 1} for charged leptons including taus (where the sign reports the lepton measured charge) and a positive number (\texttt{$\geq$ 0}) for jets.
1921
1922\paragraph{8th column (\texttt{btag})}
1923The eighth column tells whether a jet is tagged as a $b$-jet (\texttt{1}) or not (\texttt{0}).
1924This is always \texttt{0} for electrons, photons and missing transverse energy.
1925For muons, the closest jet in searched for, in terms of $\Delta R$. The integer-part of the quoted number is the row-number (column 1) of this jet.
1926
1927\paragraph{9th column (\texttt{had/em})}
1928For jets, electrons and photons, the ninth column is the ration between hadronic and electromagnetic energies in the calorimetric cells associated to the object. This is always \texttt{0} for missing transverse energy.
1929For muons, this number (\texttt{aaa.bb}) reports two values related to the muon isolation (section \ref{sec:isolation}). The integer part (\texttt{aaa}) is transverse momentum sum $P_T$ (in GeV/$c$) and the fractional part (\texttt{bb}) is the energy ratio $\rho_\mu$.
1930
1931
1932\paragraph{10th and 11th columns (\texttt{dum1} and \texttt{dum2})}
1933The last two columns are currently not used.
1934
1935\paragraph{Warning}
1936Inherently to the data format itself, the \texttt{*LHCO} output contains only a fraction of the available data. Moreover, dealing with text file may have various drawbacks, such as the output file size and the time needed for its creation. Whenever possible, working on the \texttt{*root} output file should be preferred.
1937
1938\end{document}
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