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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\fnref{freiburg}}
38\fntext[freiburg]{Now in Physikalisches Institut, Albert-Ludwigs-Universit\"at Freiburg}
39%\ead{xavier.rouby@cern.ch}
40
41\author{V. Lema\^itre}
42
43\address{Center for Particle Physics and Phenomenology (CP3),\\
44 Universit\'e catholique de Louvain,\\
45 B-1348 Louvain-la-Neuve, Belgium}
46
47%\author{X. Rouby}
48%\ead{xavier.rouby@cern.ch}
49
50%\address{Physikalisches Institut,
51% Albert-Ludwigs-Universit\"at Freiburg,
52% D-79104 Freiburg-im-Breisgau, Germany}
53
54\begin{abstract}
55It is always delicate to know whether theoretical predictions are visible and measurable in a high energy collider experiment due to the complexity of the related detectors, data acquisition chain and software.
56We introduce here a new \texttt{C++}-based framework, \textit{Delphes}, for fast simulation of
57a general-purpose experiment. The simulation includes a tracking system, embedded into a magnetic field, calorimetry and a muon
58system, and possible very forward detectors arranged along the beamline.
59The framework is interfaced to standard file formats (e.g.\ Les Houches Event File or \texttt{HepMC}) and outputs observable objects for analysis, like missing transverse energy and collections of electrons or jets.
60The simulation of detector response takes into account the detector resolution, and usual reconstruction algorithms, such as FastJet. A simplified preselection can also be applied on processed data for trigger emulation. Detection of very forward scattered particles relies on the transport in beamlines with the \textit{Hector} software. Finally, the \textsc{FROG} 2D/3D event display is used for visualisation of the collision final states.
61An overview of \textit{Delphes} is given as well as a few \textsc{LHC} use-cases for illustration.\\ \\
62\textit{Preprint:} \texttt{CP3-09-01}, \texttt{arXiv:0903.2225 [hep-ph]}\\ \\
63%\includegraphics[scale=0.8]{DELPHESLogoSml}\\
64\includegraphics[scale=0.8]{fig0}\\
65{\bf PROGRAM SUMMARY}\\
66\begin{small}
67\noindent
68{\em Program Title:} DELPHES \\
69{\em Current version:} 1.8 \\
70{\em Journal Reference:} \\
71 %Leave blank, supplied by Elsevier.
72{\em Catalogue identifier:} \\
73 %Leave blank, supplied by Elsevier.
74%{\em Licensing provisions:} \\
75 %enter "none" if CPC non-profit use license is sufficient.
76{\em Distribution format:} tar.gz \\
77{\em Programming language:} C++ \\
78%{\em Computer:} any computer with a C++ compiler and the ROOT environment \cite{bib:Root}
79 %Computer(s) for which program has been designed.
80%{\em Operating system:} \\
81 %Operating system(s) for which program has been designed.
82%{\em RAM:} bytes \\
83 %RAM in bytes required to execute program with typical data.
84%{\em Number of processors used:} \\
85 %If more than one processor.
86%{\em Supplementary material:} \\
87 % Fill in if necessary, otherwise leave out.
88%{\em Keywords:} Keyword one, Keyword two, Keyword three, etc. \\
89 % Please give some freely chosen keywords that we can use in a
90 % cumulative keyword index.
91%{\em Classification:} \\
92 %Classify using CPC Program Library Subject Index, see (
93 % http://cpc.cs.qub.ac.uk/subjectIndex/SUBJECT_index.html)
94 %e.g. 4.4 Feynman diagrams, 5 Computer Algebra.
95{\em External routines/libraries:} ROOT environment \\
96 % Fill in if necessary, otherwise leave out.
97{\em Subprograms used:} HepMC, StdHEP, FASTJET, \textit{Hector}, FROG. All provided within \textit{Delphes} distribution. \\
98{\em URL:}\href{http://www.fynu.ucl.ac.be/delphes.html}{http://www.fynu.ucl.ac.be/delphes.html}\\
99%{\em References:}
100%\begin{refnummer}
101%\item Reference 1 % This is the reference list of the Program Summary
102%\item Reference 2 % Type references in text as [1], [2], etc.
103%\item Reference 3 % This list is different from the bibliography, which
104 % you can use in the Long Write-Up.
105%\end{refnummer}
106\end{small}
107
108\begin{keyword}
109\textit{Delphes} \sep fast simulation \sep trigger \sep event display \sep \textsc{LHC} \sep FastJet \sep \textit{Hector} \sep \textsc{FROG} \sep Les Houches Event File \sep HepMC \sep \textsc{ROOT}
110\PACS 29.85.-c \sep 07.05.Tp \sep 29.90.+r \sep 29.50.+v
111\end{keyword}
112
113\end{abstract}
114\cortext[cor1]{Corresponding author: +32.10.47.32.29.}
115\end{frontmatter}
116
117\section{Introduction}
118
119Experiments at high energy colliders are very complex systems for several reasons. Firstly, in terms of the various detector subsystems, including tracking, central calorimetry, forward calorimetry, and muon chambers. Such apparatus differ in their detection principles, technologies, geometrical acceptances, resolutions and sensitivities. Secondly, due to the requirement of a highly effective online selection (i.e.\ a \textit{trigger}), subdivided into several levels for an optimal reduction factor of ``uninteresting'' events, but based only on partially processed data. Finally, in terms of the experiment software, with different data formats (like \textit{raw} or \textit{reconstructed} data), many reconstruction algorithms and particle identification approaches.
120
121This complexity is handled by large collaborations of thousands of people, but the data and the expertise are only available to their members. Real data analyses require a full detector simulation, including transport of the primary and secondary particles through the detector material accounting for the various detector inefficiencies, the dead material, the imperfections and the geometrical details. Moreover, control of the detector calibration and alignment are crucial. Such simulation is very complicated, technical and requires a large \texttt{CPU} power. On the other hand, phenomenological studies, looking for the observability of given signals, may require only fast but realistic estimates of the expected signals and associated backgrounds.
122
123A new framework, called \textit{Delphes}~\citep{bib:delphes}, is introduced here, for the fast simulation of a general-purpose collider experiment.
124Using the framework, observables can be estimated for specific signal and background channels, as well as their production and measurement rates.
125Starting from the output of event generators, the simulation of the detector response takes into account the subdetector resolutions, by smearing the kinematic properties of the final-state particles\footnote{Throughout the paper, final-state particles refer as particles considered as stable by the event generator.}. Tracks of charged particles and deposits of energy in calorimetric cells (or \textit{calotowers}) are then created.
126
127\textit{Delphes} includes the most crucial experimental features, such as (Fig.~\ref{fig:FlowChart}):
128\begin{enumerate}
129\item the geometry of both central and forward detectors,
130\item magnetic field for tracks
131\item reconstruction of photons, leptons, jets, $b$-jets, $\tau$-jets and missing transverse energy,
132\item lepton isolation,
133\item trigger emulation,
134\item an event display.
135\end{enumerate}
136
137\begin{figure*}[!ht]
138\begin{center}
139%\includegraphics[scale=0.78]{FlowDELPHES}
140\includegraphics[scale=0.78]{fig1}
141\caption{Flow chart describing the principles behind \textit{Delphes}. Event files coming from external Monte Carlo generators are read by a converter stage (top).
142The kinematics variables of the final-state particles are then smeared according to the tunable subdetector resolutions.
143Tracks are reconstructed in a simulated solenoidal magnetic field and calorimetric towers sample the energy deposits. Based on these low-level objects, dedicated algorithms are applied for particle identification, isolation and reconstruction.
144The transport of very forward particles to the near-beam detectors is also simulated.
145Finally, an output file is written, including generator-level and analysis-object data.
146If requested, a fully parametrisable trigger can be emulated. Optionally, the geometry and visualisation files for the 3D event display can also be produced.
147All user parameters are set in the \textit{Detector/Smearing Card} and the \textit{Trigger Card}. }
148\label{fig:FlowChart}
149\end{center}
150\end{figure*}
151
152Although this kind of approach yields much realistic results than a simple ``parton-level" analysis, a fast simulation comes with some limitations. Detector geometry is idealised, being uniform, symmetric around the beam axis, and having no cracks nor dead material. Secondary interactions, multiple scatterings, photon conversion and bremsstrahlung are also neglected.
153
154Four datafile formats can be used as input in \textit{Delphes}\footnote{\texttt{[code] }See the \texttt{HEPEVTConverter}, \texttt{HepMCConverter}, \texttt{LHEFConverter} and \texttt{STDHEPConverter} classes.}. In order to process events from many different generators, 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'' (\textsc{LHEF}~\citep{bib:lhe}) and \texttt{*.root} files obtained from \texttt{*.hbook} using the \texttt{h2root} utility from the \textsc{ROOT} framework~\citep{bib:Root}.
155%Afterwards, \textit{Delphes} performs a simple trigger simulation and reconstruct "high-level objects". These informations are organised in classes and each objects are ordered with respect to the transverse momentum.
156
157\textit{Delphes} uses the \texttt{ExRootAnalysis} utility~\citep{bib:ExRootAnalysis} to create output data in a \texttt{*.root} ntuple.
158This output contains a copy of the generator-level data (\texttt{GEN} tree), the analysis data objects after reconstruction (\texttt{Analysis} tree), and possibly the results of the trigger emulation (\texttt{Trigger} tree).
159In option\footnote{\texttt{[code]} See the \texttt{FLAG\_LHCO} variable in the detector datacard. This text file format is shortly described in the user manual.}, \textit{Delphes} can produce a reduced output file in \texttt{*.LHCO} text format, which is limited to the list of the reconstructed high-level objects in the final states.
160
161The program is driven by input cards. The detector card (\texttt{data/DetectorCard.dat}) allows a large spectrum of running conditions by modifying basic detector parameters, including calorimeter and tracking coverage and resolution, thresholds or jet algorithm parameters. The trigger card (\texttt{data/TriggerCard.dat}) lists the user algorithms for the simplified online preselection. Even if \textit{Delphes} has been developped for the simulation of general-purpose detectors at the \textsc{LHC} (namely, \textsc{CMS} and \textsc{ATLAS}), the input cards allow a flexible parametrisation for other cases, e.g.\ at future linear colliders.
162
163
164\section{Detector simulation}
165
166The overall layout of the general-purpose detector simulated by \textit{Delphes} is shown in Fig.~\ref{fig:GenDet3}.
167A central tracking system (\textsc{TRACKER}) is surrounded by an electromagnetic and a hadron calorimeters (\textsc{ECAL} and \textsc{HCAL}, resp., each with a central region and two endcaps). Two forward calorimeters (\textsc{FCAL}) ensure a larger geometric coverage for the measurement of the missing transverse energy. Finally, a muon system (\textsc{MUON}) encloses the central detector volume
168The fast simulation of the detector response takes into account geometrical acceptance of sub-detectors and their finite resolution, as defined in the detector data card\footnote{\texttt{[code] }See the \texttt{RESOLution} class.}.
169If no such file is provided, predefined values based on ``typical'' \textsc{CMS} acceptances and resolutions are used\footnote{\texttt{[code] }Detector and trigger cards for the \textsc{ATLAS} and \textsc{CMS} experiments are also provided in \texttt{data/} directory.}. The geometrical coverage of the various subsystems used in the default configuration are summarised in Tab.~\ref{tab:defEta}.
170
171\begin{table*}[t]
172\begin{center}
173\caption{Default extension in pseudorapidity $\eta$ of the different subdetectors.
174Full azimuthal ($\phi$) acceptance is assumed.
175The corresponding parameter name, in the detector card, is given. \vspace{0.5cm}}
176\begin{tabular}{llcc}
177\hline
178Subdetector & & $\eta$ & $\phi$ \\
179\textsc{TRACKER} & {\verb CEN_max_tracker } & $[-2.5; 2.5]$ & $[-\pi ; \pi]$\\
180\textsc{ECAL}, \textsc{HCAL} & {\verb CEN_max_calo_cen }& $[-1.7 ; 1.7]$ & $[-\pi ; \pi]$\\
181\textsc{ECAL}, \textsc{HCAL} endcaps & {\verb CEN_max_calo_ec }& $[-3 ; -1.7] \& [1.7 ; 3]$ & $[-\pi ; \pi]$\\
182\textsc{FCAL} & {\verb CEN_max_calo_fwd } & $[-5 ; -3]$ \& $[3 ;5]$ & $[-\pi ; \pi]$\\
183\textsc{MUON} & {\verb CEN_max_mu } & $[-2.4 ; 2.4]$ & $[-\pi ; \pi]$\\ \hline
184\end{tabular}
185\label{tab:defEta}
186\end{center}
187\end{table*}
188
189\begin{figure}[!ht]
190\begin{center}
191%\includegraphics[width=\columnwidth]{Detector_DELPHES_3}
192\includegraphics[width=\columnwidth]{fig2}
193\caption{
194Profile of layout of the generic detector geometry assumed in \textit{Delphes}. The innermost layer, close to the interaction point, is a central tracking system (pink).
195It is surrounded by a central calorimeter volume (green) with both electromagnetic and hadronic sections.
196The outer layer of the central system (red) consist of a muon system. In addition, two end-cap calorimeters (blue) extend the pseudorapidity coverage of the central detector.
197The detector parameters are defined in the user-configuration card. The extension of the various subdetectors, as defined in Tab.~\ref{tab:defEta}, are clearly visible. The detector is assumed to be strictly symmetric around the beam axis (black line). Additional forward detectors are not depicted.
198}
199\label{fig:GenDet3}
200\end{center}
201\end{figure}
202
203
204\subsubsection*{Magnetic field}
205In addition to the subdetectors, the effects of a solenoidal magnetic field are simulated for the charged particles\footnote{\texttt{[code] }See the \texttt{TrackPropagation} class.}. This affects the position at which charged particles enter the calorimeters and their corresponding tracks. The field extension is limited to the tracker volume and is in particular not applied for muon chambers. Howerver, this is not a limiting factor as the resolution applied for muon reconstruction is the one expected by the experiment, which consequently includes the effects of the magnetic field within the muon system.
206
207
208
209\subsection{Tracks reconstruction}
210Every stable charged particle with a transverse momentum above some threshold and lying inside the detector volume covered by the tracker provides a track.
211By default, a track is assumed to be reconstructed with $90\%$ probability\footnote{\texttt{[code]} The reconstruction efficiency is defined in the detector datacard by the \texttt{TRACKING\_EFF} term.} if its transverse momentum $p_T$ is higher than $0.9~\textrm{GeV}/c$ and if its pseudorapidity $|\eta| \leq 2.5$.
212
213
214\subsection{Simulation of central calorimeters}
215
216The energy of each particle considered as stable in the generator particle list is smeared, with a Gaussian distribution depending on the calorimeter resolution. This resolution varies with the sub-calorimeter (\textsc{ECAL}, \textsc{HCAL}, \textsc{FCAL}) measuring the particle.
217The response of each sub-calorimeter is parametrised as a function of the energy:
218\begin{equation}
219\frac{\sigma}{E} = \frac{S}{\sqrt{E}} \oplus \frac{N}{E} \oplus C,
220\label{eq:caloresolution}
221\end{equation}
222where $S$, $N$ and $C$ are the \textit{stochastic}, \textit{noise} and \textit{constant} terms, respectively, and $\oplus$ stands for quadratic additions.\\
223
224
225The particle four-momentum $p^\mu$ are smeared with a parametrisation directly derived from typical detector technical designs\footnote{\texttt{[code] } The response of the detector is applied to the electromagnetic and the hadronic particles through the \texttt{SmearElectron} and \texttt{SmearHadron} functions.} \citep{bib:cmsjetresolution,bib:ATLASresolution}.
226In the default parametrisation, the calorimeter is assumed to cover the pseudorapidity range $|\eta|<3$ and consists in an electromagnetic and hadronic parts. Coverage between pseudorapidities of $3.0$ and $5.0$ is provided by forward calorimeters, with different response to electromagnetic objects ($e^\pm, \gamma$) or hadrons.
227Muons and neutrinos are assumed not to interact with the calorimeters\footnote{In the current \textit{Delphes} version, particles other than electrons ($e^\pm$), photons ($\gamma$), muons ($\mu^\pm$) and neutrinos ($\nu_e$, $\nu_\mu$ and $\nu_\tau$) are simulated as hadrons for their interactions with the calorimeters. The simulation of stable particles beyond the Standard Model should therefore be handled with care.}.
228The default values of the stochastic, noise and constant terms are given in Tab.~\ref{tab:defResol}.\\
229
230\begin{table}[!h]
231\begin{center}
232\caption{Default values for the resolution of the central and forward calorimeters. Resolution is parametrised by the \textit{stochastic} ($S$), \textit{noise} ($N$) and \textit{constant} ($C$) terms (Eq.~\ref{eq:caloresolution}).
233The corresponding parameter name, in the detector card, is given. \vspace{0.5cm}}
234\begin{tabular}[!h]{lllc}
235\hline
236\multicolumn{2}{c}{Resolution Term} & Card flag & Value\\\hline
237 \multicolumn{4}{l}{\textsc{ECAL}} \\
238 & $S$ (GeV$^{1/2}$) & {\verb ELG_Scen } & $0.05$ \\
239 & $N$ (GeV)& {\verb ELG_Ncen } & $0.25$ \\
240 & $C$ & {\verb ELG_Ccen } & $0.0055$ \\
241 \multicolumn{4}{l}{\textsc{ECAL}, end caps} \\
242 & $S$ (GeV$^{1/2}$) & {\verb ELG_Sec } & $0.05$ \\
243 & $N$ (GeV)& {\verb ELG_Nec } & $0.25$ \\
244 & $C$ & {\verb ELG_Cec } & $0.0055$ \\
245 \multicolumn{4}{l}{\textsc{FCAL}, electromagnetic part} \\
246 & $S$ (GeV$^{1/2}$)& {\verb ELG_Sfwd } & $2.084$ \\
247 & $N$ (GeV)& {\verb ELG_Nfwd } & $0$ \\
248 & $C$ & {\verb ELG_Cfwd } & $0.107$ \\
249 \multicolumn{4}{l}{\textsc{HCAL}} \\
250 & $S$ (GeV$^{1/2}$)& {\verb HAD_Scen } & $1.5$ \\
251 & $N$ (GeV)& {\verb HAD_Ncen } & $0$\\
252 & $C$ & {\verb HAD_Ccen } & $0.05$\\
253 \multicolumn{4}{l}{\textsc{HCAL}, end caps} \\
254 & $S$ (GeV$^{1/2}$)& {\verb HAD_Sec } & $1.5$ \\
255 & $N$ (GeV)& {\verb HAD_Nec } & $0$\\
256 & $C$ & {\verb HAD_Cec } & $0.05$\\
257 \multicolumn{4}{l}{\textsc{FCAL}, hadronic part} \\
258 & $S$ (GeV$^{1/2}$)& {\verb HAD_Sfwd } & $2.7$\\
259 & $N$ (GeV)& {\verb HAD_Nfwd } & $0$ \\
260 & $C$ & {\verb HAD_Cfwd } & $0.13$\\
261\hline
262\end{tabular}
263\label{tab:defResol}
264\end{center}
265\end{table}
266
267The energy of electrons and photons found in the particle list are smeared using the \textsc{ECAL} resolution terms. Charged and neutral final-state hadrons interact with the \textsc{ECAL}, \textsc{HCAL} and \textsc{FCAL}.
268Some long-living particles, such as the $K^0_s$ and $\Lambda$'s, with lifetime $c\tau$ smaller than $10~\textrm{mm}$ are considered as stable particles although they decay before the calorimeters. The energy smearing of such particles is performed using the expected fraction of the energy, determined according to their decay products, that would be deposited into the \textsc{ECAL} ($E_{\textsc{ECAL}}$) and into the \textsc{HCAL} ($E_{\textsc{HCAL}}$). Defining $F$ as the fraction of the energy leading to a \textsc{HCAL} deposit, the two energy values are given by
269\begin{equation}
270\left\{
271\begin{array}{l}
272E_{\textsc{HCAL}} = E \times F \\
273E_{\textsc{ECAL}} = E \times (1-F) \\
274\end{array}
275\right.
276\end{equation}
277where $0 \leq F \leq 1$. The electromagnetic part is handled the same way for the electrons and photons.
278The resulting calorimetry energy measurement given after the application of the smearing is then $E = E_{\textsc{HCAL}} + E_{\textsc{ECAL}}$. For $K_S^0$ and $\Lambda$ hadrons\footnote{\texttt{[code]} To implement different ratios for other particles, see the \texttt{BlockClasses} class.}, the energy fraction is $F$ is assumed to be $0.7$.\\
279
280\subsection{Calorimetric towers}
281
282The smallest unit for geometrical sampling of the calorimeters is a \textit{tower}; it segments the $(\eta,\phi)$ plane for the energy measurement. No longitudinal segmentation is available in the simulated calorimeters. All undecayed particles, except muons and neutrinos deposit energy in a calorimetric tower, either in \textsc{ECAL}, in \textsc{HCAL} or \textsc{FCAL}.
283As 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 towers with $\phi=0$ and $\eta>0$ (default: $40$ towers). For a given $\eta$, the size of the $\phi$ segmentation is also specified. Fig.~\ref{fig:calosegmentation} illustrates the default calorimeter segmentation, which is common for the electromagnetic and hadronic sections at a given $(\eta,\phi)$.
284
285\begin{figure}[!ht]
286\begin{center}
287%\includegraphics[width=\columnwidth]{calosegmentation}
288\includegraphics[width=\columnwidth]{fig3}
289\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.}
290\label{fig:calosegmentation}
291\end{center}
292\end{figure}
293
294The calorimetric towers directly enter in the calculation of the missing transverse energy (\textsc{MET}), and as input for the jet reconstruction algorithms. No sharing between neighbouring towers is implemented when particles enter a tower very close to its geometrical edge. Smearing is applied directly on the accumulated electromagnetic and hadronic energies of each calorimetric tower.
295
296\subsection{Very forward detector simulation}
297
298Most of the recent experiments in beam colliders have additional instrumentation along the beamline. These extend the $\eta$ coverage to higher values, for the detection of very forward final-state particles. In \textit{Delphes}, Zero Degree Calorimeters, roman pots and forward taggers have been implemented (Fig.~\ref{fig:fdets}).
299
300\begin{figure}[!ht]
301\begin{center}
302%\includegraphics[width=\columnwidth]{fdets}
303\includegraphics[width=\columnwidth]{fig4}
304\caption{Default location of the very forward detectors, including \textsc{ZDC}, \textsc{RP220} and \textsc{FP420} in the \textsc{LHC} beamline.
305Incoming (beam 1, red) and outgoing (beam 2, black) beams on one side of the fifth interaction point (\textsc{IP5}, $s=0~\textrm{m}$ on the plot).
306The Zero Degree Calorimeter is located in perfect alignment with the beamline axis at the interaction point, at $140~\textrm{m}$, the beam paths are separated. The forward taggers are near-beam detectors located at $220~\textrm{m}$ and $420~\textrm{m}$. Beamline simulation with \textit{Hector}~\citep{bib:hector}. All very forward detectors are located symmetrically around the interaction point. }
307\label{fig:fdets}
308\end{center}
309\end{figure}
310
311\begin{table*}[t]
312\begin{center}
313\caption{Default parameters for the forward detectors: distance from the interaction point and detector acceptance. The \textsc{LHC} beamline is assumed around the fifth \textsc{LHC} interaction point (\textsc{IP}). For the \textsc{ZDC}, the acceptance depends only on the pseudorapidity $\eta$ of the particle, which should be neutral and stable.
314The tagger acceptance is fully determined by the distance in the transverse plane of the detector to the real beam position~\citep{bib:hector}. It is expressed in terms of the particle energy ($E$).
315All detectors are located on both sides of the interaction point.
316\vspace{0.5cm}}
317\begin{tabular}{llcl}
318\hline
319Detector & Distance from \textsc{IP}& Acceptance & \\ \hline
320\textsc{ZDC} & $\pm 140$ m & $|\eta|> 8.3$ & for $n$ and $\gamma$\\
321\textsc{RP220} & $\pm 220$ m & $E \in [6100 ; 6880]$ (GeV) & at $2~\textrm{mm}$\\
322\textsc{FP420} & $\pm 420$ m & $E \in [6880 ; 6980]$ (GeV) & at $4~\textrm{mm}$\\
323\hline
324\end{tabular}
325\label{tab:fdetacceptance}
326\end{center}
327\end{table*}
328
329
330\subsubsection*{Zero Degree Calorimeters}
331
332In direct sight of the interaction point, on both sides of the central detector, the Zero Degree Calorimeters (\textsc{ZDC}s) are located at zero angle, i.e.\ are aligned with the beamline axis at the interaction point. They are placed beyond the point where the paths of incoming and outgoing beams separate. These allow the measurement of stable neutral particles ($\gamma$ and $n$) coming from the interaction point, with large pseudorapidities (e.g.\ $|\eta_{\textrm{n,}\gamma}| > 8.3$ in \textsc{ATLAS} and \textsc{CMS}).
333
334The trajectory of the neutrals observed in the \textsc{ZDC}s is a straight line, while charged particles are deflected away from their acceptance window by the powerful magnets located in front of them. The fact that additional charged particles may enter the \textsc{ZDC} acceptance is neglected here.
335
336The \textsc{ZDC}s have the ability to measure the time-of-flight of the particle.
337This corresponds to the delay after which the particle is observed in the detector, with respect to the bunch crossing reference time at the interaction point ($t_0$). The measured time-of-flight $t$ is simply given by:
338\begin{equation}
339 t = t_0 + \frac{1}{v} \times \Big( \frac{s-z}{\cos \theta}\Big),
340\end{equation}
341where $t_0$ is thus the true time coordinate of the vertex from which the particle originates, $v$ the particle velocity, $s$ is the \textsc{ZDC} distance to the interaction point, $z$ is the longitudinal coordinate of the vertex, $\theta$ is the particle emission angle. It is then assumed that the neutral particle observed in the \textsc{ZDC} is highly relativistic, i.e.\ travelling at the speed of light $c$. We also assume that $\cos \theta = 1$, i.e.\ $\theta \approx 0$ or equivalently $\eta$ is large. As an example, $\eta = 5$ leads to $\theta = 0.013$ and $1 - \cos \theta < 10^{-4}$.
342The formula then reduces to
343\begin{equation}
344 t = \frac{1}{c} \times (s-z).
345\end{equation}
346For example, a photon takes $0.47~\mu\textrm{s}$ to reach a \textsc{ZDC} located at $s=140~\textrm{m}$, neglecting $z$ and $\theta$. For the time-of-flight measurement, a Gaussian smearing can be applied according to the detector resolution (Tab.~\ref{tab:defResolZdc}). In the current version of \textit{Delphes}, only neutrons, antineutrons and photons are assumed to be able to reach the \textsc{ZDC}s, all other particles being neglected.
347
348The \textsc{ZDC}s are composed of an electromagnetic and a hadronic sections, for the measurement of photons and neutrons, respectively. The energy of the observed neutral is smeared according to Eq.~\ref{eq:caloresolution} and the corresponding section resolutions (Tab.~\ref{tab:defResolZdc}). The \textsc{ZDC} hits do not enter in the calorimeter tower list used for reconstruction of jets and missing transverse energy.
349
350\begin{table}[!h]
351\begin{center}
352\caption{Default values for the resolution of the zero degree calorimeters. Resolution on energy measurement is parametrised by the \textit{stochastic} ($S$), \textit{noise} ($N$) and \textit{constant} ($C$) terms (Eq.~\ref{eq:caloresolution}). The time-of-flight is smeared according to a Gaussian function.
353The corresponding parameter name, in the detector card, is given. \vspace{0.5cm}}
354\begin{tabular}[!h]{lllc}
355\hline
356\multicolumn{2}{c}{Resolution Term} & Card flag & Value\\\hline
357 \multicolumn{4}{l}{\textsc{ZDC}, electromagnetic part} \\
358 & $S$ (GeV$^{1/2}$)& \texttt{ELG\_Szdc} & $0.7$ \\
359 & $N$ (GeV)& \texttt{ELG\_Nzdc} & $0.0$ \\
360 & $C$ & \texttt{ELG\_Czdc} & $0.08$ \\
361 \multicolumn{4}{l}{\textsc{ZDC}, hadronic part} \\
362 & $S$ (GeV$^{1/2}$)& \texttt{HAD\_Szdc} & $1.38$\\
363 & $N$ (GeV)& \texttt{HAD\_Nzdc} & $0$ \\
364 & $C$ & \texttt{HAD\_Czdc} & $0.13$\\
365 \multicolumn{4}{l}{\textsc{ZDC}, timing resolution} \\
366 & $\sigma_t$ (s) & \texttt{ZDC\_T\_resolution} & $0$ \\
367\hline
368\end{tabular}
369\label{tab:defResolZdc}
370\end{center}
371\end{table}
372
373\subsubsection*{Forward taggers}
374
375Forward taggers (called here \textsc{RP220}, for ``roman pots at $220~\textrm{m}$'' and \textsc{FP420} ``for forward proton taggers at $420~\textrm{m}$'', as at the \textsc{LHC}) are meant for the measurement of particles following very closely the beam path. Such devices, also used at \textsc{HERA} and Tevatron, are located very far away from the interaction point (further than $150$~m in the \textsc{LHC} case).
376
377To be able to reach these detectors, particles must have a charge identical to the beam particles, and a momentum very close to the nominal value of the beam. These taggers are near-beam detectors located a few millimetres from the true beam trajectory and this distance defines their acceptance (Tab.~\ref{tab:fdetacceptance}).
378For instance, roman pots at $220~\textrm{m}$ from the \textsc{IP} and $2~\textrm{mm}$ from the beam will detect all forward protons with an energy between $120$ and $900~\textrm{GeV}$~\citep{bib:hector}.
379In practice, in the \textsc{LHC}, only positively charged muons ($\mu^+$) and protons can reach the forward taggers as other particles with a single positive charge coming from the interaction points will decay before their possible tagging. In \textit{Delphes}, extra hits coming from the beam-gas events or secondary particles hitting the beampipe in front of the detectors are not taken into account.
380
381While neutral particles propagate along a straight line to the \textsc{ZDC}, a dedicated simulation of the transport of charged particles is needed for \textsc{RP220} and \textsc{FP420}. This fast simulation uses the \textit{Hector} software~\citep{bib:hector}, which includes the chromaticity effects and the geometrical aperture of the beamline elements of any arbitrary collider.
382
383Forward taggers are able to measure the hit positions ($x,y$) and angles ($\theta_x,\theta_y$) in the transverse plane at the location of the detector ($s$ meters away from the \textsc{IP}), as well as the time-of-flight\footnote{It should be noted that for both \textsc{CMS} and \textsc{ATLAS} experiments, the taggers located at $220$~m are not able to measure the time-of-flight, contrary to \textsc{FP420} detectors.} ($t$). Out of these the particle energy ($E$) and the momentum transfer it underwent during the interaction ($q^2$) can be reconstructed\footnote{The reconstruction of $E$ and $q^2$ are not implemeted in \textit{Delphes} but can be performed at the analysis level.}. The time-of-flight measurement can be smeared with a Gaussian distribution (default value\footnote{\texttt{[code] } The resolution is defined by the \texttt{RP220\_T\_resolution} and \texttt{RP420\_T\_resolution} parameters in the detector card.} $\sigma_t = 0~\textrm{s}$).
384
385
386
387\section{High-level object reconstruction}
388
389Analysis object data contain the final collections of particles ($e^\pm$, $\mu^\pm$, $\gamma$) or objects (light jets, $b$-jets, $\tau$-jets, $E_T^\textrm{miss}$) and are stored\footnote{\texttt{[code] }All these processed data are located under the \texttt{Analysis} tree.} in the output file created by \textit{Delphes}.
390In addition, some detector data are added: tracks, calorimetric towers and hits in \textsc{ZDC}, \textsc{RP220} and \textsc{FP420}.
391While electrons, muons and photons are easily identified, some other objects are more difficult to measure, like jets or missing energy due to invisible particles.
392
393For most of these objects, their four-momentum and related quantities are directly accessible in \textit{Delphes} output ($E$, $\vec{p}$, $p_T$, $\eta$ and $\phi$). Additional properties are available for specific objects (like the charge and the isolation status for $e^\pm$ and $\mu^\pm$, the result of application of $b$-tag for jets and time-of-flight for some detector hits).
394
395
396
397\subsection{Photon and charged lepton reconstruction}
398From here onwards, \textit{electrons} refer to both positrons ($e^+$) and electrons ($e^-$), and $\textit{charged leptons}$ refer to electrons and muons ($\mu^\pm$), leaving out the $\tau^\pm$ leptons as they decay before being detected.
399
400\subsubsection*{Electrons and photons}
401Electron ($e^\pm$) and photon candidates are reconstructed if they fall into the acceptance of the tracking system and have a transverse momentum above a threshold (default $p_T > 10~\textrm{GeV}/c$). A calorimetric tower will be seen in the detector, as electrons will leave in addition a track. Subsequently, electrons and photons create a candidate in the jet collection.
402Assuming a good measurement of the track parameters in the real experiment, the electron energy can be reasonably recovered. In \textit{Delphes}, electron energy is smeared according to the resolution of the calorimetric tower where it points to, but independently from any other deposited energy is this tower. This approach is still conservative as the calorimeter resolution is worse than the tracker one.
403
404\subsubsection*{Muons}
405Generator-level muons entering the detector acceptance are considered as candidates for the analysis level.
406The acceptance is defined in terms of a transverse momentum threshold to be overpassed that should be computed using the chosen geometry of the detector and the magnetic field considered (default : $p_T > 10~\textrm{GeV}/c$) and of the pseudorapidity coverage of the muon system (default: $-2.4 \leq \eta \leq 2.4$).
407The application of the detector resolution on the muon momentum depends on a Gaussian smearing of the $p_T$ variable\footnote{\texttt{[code]} See the \texttt{SmearMuon} method.}. Neither $\eta$ nor $\phi$ variables are modified beyond the calorimeters: no additional magnetic field is applied. Multiple scattering is neglected. This implies that low energy muons have in \textit{Delphes} a better resolution than in a real detector. Furthermore, muons leave no deposit in calorimeters. At last, the particles which might leak out of the calorimeters into the muon systems (\textit{punch-through}) will not be see
408n as muon candidates in \textit{Delphes}.
409
410\subsubsection*{Charged lepton isolation}
411\label{sec:isolation}
412
413To improve the quality of the contents of the charged lepton collections, additional criteria can be applied such as isolation. This requires that electron or muon candidates are isolated in the detector from any other particle, within a small cone. In \textit{Delphes}, charged lepton isolation demands that there is no other charged particle with $p_T>2~\textrm{GeV}/c$ within a cone of $\Delta R = \sqrt{\Delta \eta^2 + \Delta \phi^2} <0.5$ around the lepton.
414The result (i.e.\ \textit{isolated} or \textit{not}) is added to the charged lepton measured properties.
415In addition, the sum $P_T$ of the transverse momenta of all tracks but the lepton one within the isolation cone is
416provided\footnote{\texttt{[code] }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.}:
417$$ P_T = \sum_{i \neq \mu}^\textrm{tracks} p_T(i)$$
418
419No calorimetric isolation is applied, but the muon collection contains also the ratio $\rho_\mu$ between (1) the sum of the transverse energies in all calotowers in a $N \times N$ grid around the muon, and (2) the muon transverse
420momentum\footnote{\texttt{[code] }Calorimetric isolation parameters in the detector card are \texttt{ISOL\_Calo\_ET} and \texttt{ISOL\_Calo\_Grid}.}:
421$$ \rho_\mu = \frac{\Sigma_i E_T(i)}{p_T(\mu)}~,~ i\textrm{ in }N \times N \textrm { grid centred on }\mu.$$
422
423
424\subsubsection*{Forward neutrals}
425
426The zero degree calorimeter hits correspond to neutral particles with a lifetime long enough to reach these detectors (default: $c \tau \geq 140~\textrm{m}$) and very large pseudorapidities (default: $|\eta|>8.3$). In current versions of \textit{Delphes}, only photons and neutrons are considered. Photons are identified thanks to the electromagnetic section of the calorimeter, and if their energy overpasses a given threshold (def. $20$~GeV). Similarly, neutrons are reconstructed according to the resolution of the hadronic section, if their energy exceeds a threshold\footnote{\texttt{[code]} These thresholds are defined by the \texttt{ZDC\_gamma\_E} and \texttt{ZDC\_n\_E} variables in the detector card.} (def. $50$~GeV).
427
428
429
430\subsection{Jet reconstruction}
431
432A realistic analysis requires a correct treatment of particles which have hadronised. Therefore, the most widely currently used jet algorithms have been integrated into the \textit{Delphes} framework using the FastJet tools~\citep{bib:FASTJET}.
433Six different jet reconstruction schemes are available\footnote{\texttt{[code] }The choice is done by allocating the \texttt{JET\_jetalgo } input parameter in the detector card.}. The first three belong to the cone algorithm class while the last three are using a sequential recombination scheme. For all of them, the towers are used as input for the jet clustering. Jet algorithms differ in their sensitivity to soft particles or collinear splittings, and in their computing speed performances.
434By default, reconstruction uses a cone algorithm with $\Delta R=0.7$.
435Jets are stored if their transverse energy is higher\footnote{\texttt{[code] PTCUT\_jet }variable in the detector card.} than $20~\textrm{GeV}$.
436
437\subsubsection*{Cone algorithms}
438
439\begin{enumerate}
440
441\item {\it CDF Jet Clusters}~\citep{bib:jetclu}: Algorithm forming jets by associating together towers lying within a circle (default radius $\Delta R=0.7$) in the $(\eta$, $\phi)$ space.
442This so-called JetCLU cone jet algorithm is used by the \textsc{CDF} experiment in Run II.
443All towers with a transverse energy $E_T$ higher than a given threshold (default: $E_T > 1~\textrm{GeV}$) are used to seed the jet candidates.
444The existing FastJet code has been modified to allow easy modification of the tower pattern in $(\eta, \phi)$ space.
445In following versions of \textit{Delphes}, a new dedicated plug-in will be created on this purpose\footnote{\texttt{[code] }\texttt{JET\_coneradius} and \texttt{JET\_seed} variables in the detector card.}.
446
447\item {\it CDF MidPoint}~\citep{bib:midpoint}: 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.
448
449\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.
450
451\end{enumerate}
452
453\subsubsection*{Recombination algorithms}
454
455The three sequential recombination jet algorithms are safe with respect to soft radiations (\textit{infrared}) and collinear splittings. They rely on recombination schemes where calorimeter tower pairs are successively merged. The 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 towers $(i,j)$, and a variable $d_{iB}$ (\textit{beam distance}) depending on the transverse momentum of the tower $i$.
456
457The jet reconstruction algorithm browses the calotower 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 towers $i$ and $j$ are merged into a single tower 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 tower is declared as a final jet and is removed from the input list. This procedure is repeated until no towers 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 calotower $i$ and $\Delta R_{ij}= \sqrt{(y_i-y_j)^2+(\phi_i-\phi_j)^2}$ as the jet-radius parameter:
458
459\begin{enumerate}[start=4]
460
461\item {\it Longitudinally invariant $k_t$ jet}~\citep{bib:ktjet}:
462\begin{equation}
463\begin{array}{l}
464 d_{ij} = \min(k_{ti}^2,k_{tj}^2)\Delta R_{ij}^2/R^2 \\
465 d_{iB}=k_{ti}^2 \\
466\end{array}
467\end{equation}
468
469\item {\it Cambridge/Aachen jet}~\citep{bib:aachen}:
470\begin{equation}
471\begin{array}{l}
472d_{ij} = \Delta R_{ij}^2/R^2\\
473d_{iB}=1 \\
474\end{array}
475\end{equation}
476
477\item {\it Anti $k_t$ jet}~\citep{bib:antikt}: where hard jets are exactly circular in the $(y,\phi)$ plane
478\begin{equation}
479\begin{array}{l}
480d_{ij} = \min(1/k_{ti}^2,1/k_{tj}^2)\Delta R_{ij}^2/R^2 \\
481d_{iB}=1/k_{ti}^2 \\
482\end{array}
483\end{equation}
484\end{enumerate}
485
486\subsubsection*{Energy flow}
487
488In jets, several particle can leave their energy into a given calorimetric tower, which broadens the jet energy resolution. However, the energy of charged particles associated to jets can be deduced from their reconstructed track, thus providing a way to identify some of the components of towers with multiple hits. When the \textit{energy flow} is switched on in \textit{Delphes}\footnote{\texttt{[code]} 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.}, the energy of tracks pointing to calotowers is extracted and smeared separately, before running the chosen jet reconstruction algorithm. This option allows a better jet $E$ reconstruction.
489
490\subsection{$b$-tagging}
491\label{btagging}
492
493A jet is tagged as $b$-jets if its direction lies in the acceptance of the tracker and if it is associated to a parent $b$-quark. By default, a $b$-tagging efficiency of $40\%$ is assumed if the jet has a parent $b$ quark. For $c$-jets and light jets (i.e.\ originating in $u$, $d$, $s$ quarks or in gluons), a fake $b$-tagging efficiency of $10 \%$ and $1 \%$ respectively is assumed\footnote{\texttt{[code] }Corresponding to the \texttt{BTAG\_b}, \texttt{BTAG\_mistag\_c} and \texttt{BTAG\_mistag\_l} constants, for (respectively) the efficiency of tagging of a $b$-jet, the efficiency of mistagging a $c$-jet as a $b$-jet, and the efficiency of mistagging a light jet ($u$,$d$,$s$,$g$) as a $b$-jet.}.
494The (mis)tagging relies on the true particle identity (\textsc{PID}) of the most energetic particle within a cone around the observed $(\eta,\phi)$ region, with a radius equal to the one used to reconstruct the jet (default: $\Delta R$ of $0.7$). In current version of \textit{Delphes}, the displacement of secondary vertices is not simulated.
495
496\subsection{\texorpdfstring{$\tau$}{\texttau} identification}
497
498Jets originating from $\tau$-decays are identified using a procedure consistent with the one applied in a full detector simulation~\citep{bib:cmsjetresolution}.
499The tagging relies on two properties of the $\tau$ lepton. First, $77\%$ of the $\tau$ hadronic decays contain only one charged hadron associated to a few neutrals (Tab.~\ref{tab:taudecay}). Tracks are useful for this criterion. Secondly, the particles arisen from the $\tau$ lepton produce narrow jets in the calorimeter (this is defined as the jet \textit{collimation}).
500
501
502\begin{table}[!h]
503\begin{center}
504\caption{ Branching ratios for $\tau^-$ lepton~\citep{bib:pdg}. $h^\pm$ and $h^0$ refer to charged and neutral hadrons, respectively. $n \geq 0$ and $m \geq 0$ are integers.
505\vspace{0.5cm} }
506\begin{tabular}[!h]{ll}
507\hline
508 \multicolumn{2}{l}{\textbf{Leptonic decays}}\\
509 $ \tau^- \rightarrow e^- \ \bar \nu_e \ \nu_\tau$ & $17.9\% $ \\
510 $ \tau^- \rightarrow \mu^- \ \bar \nu_\mu \ \nu_\tau$ & $17.4\%$ \\
511 \multicolumn{2}{l}{\textbf{Hadronic decays}}\\
512 $ \tau^- \rightarrow h^-\ (n\times h^\pm) \ (m\times h^0) \ \nu_\tau$ & $64.7\%$ \\
513 $ \tau^- \rightarrow h^-\ (m\times h^0) \ \nu_\tau$ & $50.1\%$ \\
514 $ \tau^- \rightarrow h^-\ h^+ h^- (m\times h^0) \ \nu_\tau$ & $14.6\%$ \\
515\hline
516\end{tabular}
517\label{tab:taudecay}
518\end{center}
519\end{table}
520
521\begin{figure}[!ht]
522\begin{center}
523%\includegraphics[width=0.6\columnwidth]{Tau}
524\includegraphics[width=0.80\columnwidth]{fig5}
525\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.}
526\label{h_WW_ss_cut1}
527\end{center}
528\end{figure}
529
530
531\begin{table}[!h]
532\begin{center}
533\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 calotowers $E_T^\textrm{tower}$ 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.
534\vspace{0.5cm} }
535\begin{tabular}[!h]{lll}
536\hline
537Parameter & Card flag & Value\\\hline
538\multicolumn{3}{l}{\textbf{Electromagnetic collimation}} \\
539$R^\textrm{em}$ & \texttt{TAU\_energy\_scone } & $0.15$\\
540min $E_{T}^\textrm{tower}$ & {\verb JET_M_seed } & $1.0$~GeV\\
541$C_{\tau}$ & \texttt{TAU\_energy\_frac} & $0.95$\\
542\multicolumn{3}{l}{\textbf{Tracking isolation}} \\
543$R^\textrm{tracks}$ & \texttt{TAU\_track\_scone} & $0.4$\\
544min $p_T^\textrm{tracks}$ & \texttt{PTAU\_track\_pt } & $2$ GeV$/c$\\
545\multicolumn{3}{l}{\textbf{$\tau$-jet candidate}} \\
546$\min p_T$ & \texttt{TAUJET\_pt} & $10$ GeV$/c$\\
547\hline
548\end{tabular}
549\label{tab:tauRef}
550\end{center}
551\end{table}
552
553
554\subsubsection*{Electromagnetic collimation}
555
556To use the narrowness of the $\tau$-jet, the \textit{electromagnetic collimation} $C_{\tau}$ is defined as the sum of the energy of towers in a small cone of radius $R^\textrm{em}$ around the jet axis, divided by the energy of the reconstructed jet.
557To be taken into account, a calorimeter tower should have a transverse energy $E_T^\textrm{tower}$ above a given threshold.
558A large fraction of the jet energy is expected in this small cone. This fraction, or \textit{collimation factor}, is represented in Fig.~\ref{fig:tau2} for the default values (see Tab.~\ref{tab:tauRef}).
559
560\begin{figure}[!ht]
561\begin{center}
562%\includegraphics[width=\columnwidth]{Tau2}
563\includegraphics[width=\columnwidth]{fig6}
564\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 $\ell = e, \mu, \tau$.
565Events generated with MadGraph/MadEvent~\citep{bib:mgme}.
566Final state hadronisation is performed by \textit{Pythia}~\citep{bib:pythia}.
567Histogram entries correspond to true $\tau$-jets, matched with generator-level data. }
568\label{fig:tau2}
569\end{center}
570\end{figure}
571
572\subsubsection*{Tracking isolation}
573
574The tracking isolation for the $\tau$ identification requires that the number of tracks associated to particles with significant transverse momenta is one and only one in a cone of radius $R^\textrm{tracks}$ ($3-$prong $\tau$-jets are dropped).
575This cone should be entirely incorporated into the tracker to be taken into account. Default values of these parameters are given in Tab.~\ref{tab:tauRef}.
576
577
578
579\begin{figure}[!ht]
580\begin{center}
581%\includegraphics[width=\columnwidth]{Tau1}
582\includegraphics[width=\columnwidth]{fig7}
583\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}.
584Histogram entries correspond to true $\tau$-jets, matched with generator-level data.}
585\label{fig:tau1}
586\end{center}
587\end{figure}
588
589
590\subsubsection*{Purity}
591Once both electromagnetic collimation and tracking isolation are applied, a threshold on the $p_T$ of the $\tau$-jet candidate is requested to purify the collection. This procedure selects $\tau$ leptons decaying hadronically with a typical efficiency of $66\%$.
592
593\subsection{Missing transverse energy}
594In an ideal detector, momentum conservation imposes the transverse momentum of the observed final state $\overrightarrow{p_T}^\textrm{obs}$ to be equal to the $\overrightarrow{p_T}$ vector sum of the invisible particles, written $\overrightarrow{p_T}^\textrm{miss}$.
595\begin{equation}
596\overrightarrow{p_T} = \left(
597\begin{array}{c}
598p_x\\
599p_y\\
600\end{array}
601\right)
602~ \textrm{and} ~
603\left\{
604\begin{array}{l}
605 p_x^\textrm{miss} = - p_x^\textrm{obs} \\
606 p_y^\textrm{miss} = - p_y^\textrm{obs} \\
607\end{array}
608\right.
609\end{equation}
610The \textit{true} missing transverse energy, i.e.\ at generator-level, is calculated as the opposite of the vector sum of the transverse momenta of all visible particles -- or equivalently, to the vector sum of invisible particle transverse momenta.
611In a real experiment, calorimeters measure energy and not momentum. Any problem affecting the detector (dead channels, misalignment, noisy towers, cracks) worsens directly the measured missing transverse energy $\overrightarrow {E_T}^\textrm{miss}$. In this document, \textsc{MET} is based on the calorimetric towers and only muons and neutrinos are not taken into account for its evaluation\footnote{However, as tracks and calorimetric towers are available in the output file, the missing transverse energy can always be reprocessed a posteriori. }:
612\begin{equation}
613\overrightarrow{E_T}^\textrm{miss} = - \sum^\textrm{towers}_i \overrightarrow{E_T}(i)
614\end{equation}
615
616
617\section{Trigger emulation}
618
619New physics in collider experiment are often characterised in phenomenology by low cross-section values, compared to the Standard Model (\textsc{SM}) processes. %For instance at the \textsc{LHC} ($\sqrt{s}=14~\textrm{TeV}$), the cross-section of inclusive production of $b \bar b$ pairs is expected to be $10^7~\textrm{nb}$, or inclusive jets at $100~\textrm{nb}$ ($p_T > 200~\textrm{GeV}/c$), while Higgs boson cross-section within the \textsc{SM} can be as small as $2 \times 10^{-3}~\textrm{nb}$ ($pp \rightarrow WH$, $m_H=115~\textrm{GeV}/c^2$).
620
621%High statistics are required for data analyses, consequently imposing high luminosity, i.e.\ a high collision rate.
622As only a tiny fraction of the observed events can be stored for subsequent \textit{offline} analyses, a very large data rejection factor should be applied directly as the events are produced.
623This data selection is supposed to reject only well-known \textsc{SM} events\footnote{However, some bandwidth is allocated to minimum-bias and/or zero-bias (``random'') triggers that stores a small fraction of the events without any selection criteria.}.
624Dedicated algorithms of this \textit{online} selection, or \textit{trigger}, should be fast and very efficient for data rejection, in order to preserve the experiment output bandwidth. They must also be as inclusive as possible to avoid loosing interesting events.
625
626Most of the usual trigger algorithms select events containing objects (i.e.\ jets, particles, \textsc{MET}) with an energy scale above some threshold. This is often expressed in terms of a cut on the transverse momentum of one or several objects of the measured event. Logical combinations of several conditions are also possible. For instance, a trigger path could select events containing at least one jet and one electron such as $p_T^\textrm{jet} > 100~\textrm{GeV}/c$ and $p_T^e > 50~\textrm{GeV}/c$.
627
628A trigger emulation is included in \textit{Delphes}, using a fully parametrisable \textit{trigger table}\footnote{\texttt{[code] }The trigger card is the \texttt{data/TriggerCard.dat} file.}. When enabled, this trigger is applied on analysis-object data.
629In a real experiment, the online selection is often divided into several steps (or \textit{levels}).
630This splits the overall reduction factor into a product of smaller factors, corresponding to the different trigger levels.
631This is related to the architecture of the experiment data acquisition chain, with limited electronic buffers requiring a quick decision for the first trigger level.
632First-level triggers are then fast and simple but based only on partial data as not all detector front-ends are readable within the decision latency.
633Higher level triggers are more complex, of finer-but-not-final quality and based on full detector data.
634
635Real triggers are thus intrinsically based on reconstructed data with a worse resolution than final analysis data.
636On the contrary, same data are used in \textit{Delphes} for trigger emulation and for final analyses.
637
638\section{Validation}
639
640\textit{Delphes} performs a fast simulation of a collider experiment.
641Its performances in terms of computing time and data size are directly proportional to the number of simulated events and on the considered physics process. As an example, $10,000$ $pp \rightarrow t \bar t X$ events are processed in $110~\textrm{s}$ on a regular laptop and use less than $250~\textrm{MB}$ of disk space.
642The quality and validity of the output are assessed by comparing the resolutions on the reconstructed data to the expectations of both \textsc{CMS}~\citep{bib:cmsjetresolution} and \textsc{ATLAS}~\citep{bib:ATLASresolution} detectors.
643
644Electrons and muons are by construction equal to the experiment designs, as the Gaussian smearing of their kinematics properties is defined according to the detector specifications.
645Similarly, the $b$-tagging efficiency (for real $b$-jets) and misidentification rates (for fake $b$-jets) are taken directly from the expected values of the experiment.
646Unlike these simple objects, jets and missing transverse energy should be carefully cross-checked.
647
648\subsection{Jet resolution}
649
650The majority of interesting processes at the \textsc{LHC} contain jets in the final state. The jet resolution obtained using \textit{Delphes} is therefore a crucial point for its validation, both for \textsc{CMS}- and \textsc{ATLAS}-like detectors.
651This validation is based on $pp \rightarrow gg$ events produced with MadGraph/MadEvent and hadronised using \textit{Pythia}~\citep{bib:mgme,bib:pythia}.
652
653For a \textsc{CMS}-like detector, a similar procedure as the one explained in published results is applied here.
654The events were arranged in $14$ bins of gluon transverse momentum $\hat{p}_T$. In each $\hat{p}_T$ bin, every jet in \textit{Delphes} is matched to the closest jet of generator-level particles, using the spatial separation between the two jet axes
655\begin{equation}
656\Delta R = \sqrt{ \big(\eta^\textrm{rec} - \eta^\textrm{MC} \big)^2 + \big(\phi^\textrm{rec} - \phi^\textrm{MC} \big)^2}<0.25.
657\end{equation}
658The jets made of generator-level particles, here referred as \textit{MC jets}, are obtained by applying the algorithm to all particles considered as stable after hadronisation (i.e.\ including muons).
659Jets produced by \textit{Delphes} and satisfying the matching criterion are called hereafter \textit{reconstructed jets}.
660All jets are computed with the clustering algorithm (JetCLU) with a cone radius $R$ of $0.7$.
661
662The ratio of the transverse energies of every reconstructed jet $E_T^\textrm{rec}$ to its corresponding \textsc{MC} jet $E_T^\textrm{MC}$ is calculated in each $\hat{p}_T$ bin.
663The $E_T^\textrm{rec}/E_T^\textrm{MC}$ histogram is fitted with a Gaussian distribution in the interval \mbox{$\pm 2$~\textsc{RMS}} centred around the mean value.
664The resolution in each $\hat{p}_T$ bin is obtained by the fit mean $\langle x \rangle$ and variance $\sigma^2(x)$:
665\begin{equation}
666%\frac{\sigma(R_{jet})}{\langle R_{jet} \rangle }=
667\frac{\sigma \Big (\frac{E_T^\textrm{rec}}{E_T^\textrm{MC}} \Big)_\textrm{fit}}{ \Big \langle \frac{E_T^\textrm{rec}}{E_T^\textrm{MC}} \Big \rangle_\textrm{fit}}~
668\Big( \hat{p}_T(i) \Big)\textrm{, for all }i.
669\end{equation}
670
671\begin{figure}[!ht]
672\begin{center}
673%\includegraphics[width=\columnwidth]{resolutionJet}
674\includegraphics[width=\columnwidth]{fig8}
675\caption{Resolution of the transverse energy of reconstructed jets $E_T^\textrm{rec}$ as a function of the transverse energy of the closest jet of generator-level particles $E_T^\textrm{MC}$, in a \textsc{CMS}-like detector. The jets events are reconstructed with the JetCLU clustering algorithm with a cone radius of $0.7$. The maximum separation between the reconstructed and \textsc{MC}-jets is $\Delta R= 0.25$. Dotted line is the fit result for comparison to the \textsc{CMS} resolution~\citep{bib:cmsjetresolution}, in blue. The $pp \rightarrow gg$ dijet events have been generated with MadGraph/MadEvent and hadronised with \textit{Pythia}.}
676\label{fig:jetresolcms}
677\end{center}
678\end{figure}
679
680The resulting jet resolution as a function of $E_T^\textrm{MC}$ is shown in Fig.~\ref{fig:jetresolcms}.
681This distribution is fitted with a function of the following form:
682\begin{equation}
683\frac{a}{E_T^\textrm{MC}}\oplus \frac{b}{\sqrt{E_T^\textrm{MC}}}\oplus c,
684\label{eq:fitresolution}
685\end{equation}
686where $a$, $b$ and $c$ are the fit parameters.
687It is then compared to the resolution published by the \textsc{CMS} collaboration~\citep{bib:cmsjetresolution}. The resolution curves from \textit{Delphes} and \textsc{CMS} are in good agreement.
688
689Similarly, the jet resolution is evaluated for an \textsc{ATLAS}-like detector. The $pp \rightarrow gg$ events are here arranged in $8$ adjacent bins in $p_T$. A $k_T$ reconstruction algorithm with $R=0.6$ is chosen and the maximal matching distance between the \textsc{MC}-jets and the reconstructed jets is set to $\Delta R=0.2$. The relative energy resolution is evaluated in each bin by:
690\begin{equation}
691\frac{\sigma(E)}{E} = \sqrt{~~ \Bigg \langle ~\Bigg( \frac{E^\textrm{rec} - E^\textrm{MC}}{E^\textrm{rec}} \Bigg)^2 ~ \Bigg \rangle ~ - ~ \Bigg \langle \frac{E^\textrm{rec} - E^\textrm{MC}}{ E^\textrm{rec} } \Bigg \rangle^2}.
692\end{equation}
693
694Figure~\ref{fig:jetresolatlas} shows a good agreement between the resolution obtained with \textit{Delphes}, the result of the fit with Equation~\ref{eq:fitresolution} and the corresponding curve provided by the \textsc{ATLAS} collaboration~\citep{bib:ATLASresolution}.
695
696\begin{figure}[!ht]
697\begin{center}
698\includegraphics[width=\columnwidth]{fig9}
699\caption{Relative energy resolution of reconstructed jets as a function of the energy of the closest jet of generator-level particles $E^\textrm{MC}$, in an \textsc{ATLAS}-like detector. The jets are reconstructed with the $k_T$ algorithm with a radius $R=0.6$. The maximal matching distance between \textsc{MC}- and reconstructed jets is $\Delta R=0.2$. Only central jets are considered ($|\eta|<0.5$). Dotted line is the fit result for comparison to the \textsc{ATLAS} resolution~\citep{bib:ATLASresolution}, in blue. The $pp \rightarrow gg$ di-jet events have been generated with MadGraph/MadEvent and hadronised with \textit{Pythia}.}
700\label{fig:jetresolatlas}
701\end{center}
702\end{figure}
703
704
705\subsection{MET resolution}
706
707All major detectors at hadron colliders have been designed to be as much hermetic as possible in order to detect the presence of one or more neutrinos and/or new weakly interacting particles through apparent missing transverse energy.
708The resolution of the $\overrightarrow{E_T}^\textrm{miss}$ variable, as obtained with \textit{Delphes}, is then crucial.
709
710The samples used to study the \textsc{MET} performance are identical to those used for the jet validation.
711It is worth noting that the contribution to $E_T^\textrm{miss}$ from muons is negligible in the studied sample.
712The input samples are divided in five bins of scalar $E_T$ sums $(\Sigma E_T)$. This sum, called \textit{total visible transverse energy}, is defined as the scalar sum of transverse energy in all towers.
713The quality of the \textsc{MET} reconstruction is checked via the resolution on its horizontal component $E_x^\textrm{miss}$.
714
715The $E_x^\textrm{miss}$ resolution is evaluated in the following way.
716The distribution of the difference between $E_x^\textrm{miss}$ in \textit{Delphes} and at generator-level is fitted with a Gaussian function in each $(\Sigma E_T)$ bin. The fit \textsc{RMS} gives the \textsc{MET} resolution in each bin.
717The resulting value is plotted in Fig.~\ref{fig:resolETmis} as a function of the total visible transverse
718energy, for \textsc{CMS}- and \textsc{ATLAS}-like detectors.
719
720\begin{figure}[!ht]
721\begin{center}
722%\includegraphics[width=\columnwidth]{resolutionETmis}
723\includegraphics[width=\columnwidth]{fig10}
724\includegraphics[width=\columnwidth]{fig10b}
725\caption{$\sigma(E^\textrm{mis}_{x})$ as a function on the scalar sum of all towers ($\Sigma E_T$) for $pp \rightarrow gg$ events, for a \textsc{CMS}-like detector (top) and an \textsc{ATLAS}-like detector (bottom), for di-jet events produced with MadGraph/MadEvent and hadronised with \textit{Pythia}.}
726\label{fig:resolETmis}
727\end{center}
728\end{figure}
729
730The resolution $\sigma_x$ of the horizontal component of \textsc{MET} is observed to behave like
731\begin{equation}
732\sigma_x = \alpha ~\sqrt{E_T}~~~(\mathrm{GeV}^{1/2}),
733\end{equation}
734where the $\alpha$ parameter depends on the resolution of the calorimeters.
735
736The \textsc{MET} resolution expected for the \textsc{CMS} detector for similar events is $\sigma_x = (0.6-0.7) ~ \sqrt{E_T} ~ \mathrm{GeV}^{1/2}$ with no pile-up\footnote{\textit{Pile-up} events are extra simultaneous $pp$ collision occurring at high-luminosity in the same bunch crossing.}~\citep{bib:cmsjetresolution}, which compares very well with the $\alpha = 0.63$ obtained with \textit{Delphes}. Similarly, for an \textsc{ATLAS}-like detector, a value of $0.53$ is obtained by \textit{Delphes} for the $\alpha$ parameter, while the experiment expects it in the range $[0.53~ ;~0.57]$~\citep{bib:ATLASresolution}.
737
738\subsection{\texorpdfstring{$\tau$}{\texttau}-jet efficiency}
739Due to the complexity of their reconstruction algorithm, $\tau$-jets have also to be checked.
740Table~\ref{tab:taurecoefficiency} lists the reconstruction efficiencies in \textit{Delphes} for the hadronic $\tau$-jets from $H,Z \rightarrow \tau^+ \tau^-$. The mass of the Higgs boson is set successively to $140$ and $300~\textrm{GeV}/c^2$. The inclusive gauge boson productions ($pp \rightarrow HX$ and $pp \rightarrow ZX$) are performed with MadGraph/MadEvent and the $\tau$ lepton decay and further hadronisation are handled by \textit{Pythia/Tauola}. All reconstructed $\tau$-jets are $1-$prong, and follow the definition described in section~\ref{btagging}, which is very close to an algorithm of the \textsc{CMS} experiment~\citep{bib:cmstauresolution}. At last, corresponding efficiencies published by the \textsc{CMS} and \textsc{ATLAS} experiments are quoted for comparison. The agreement is good enough at this level to validate the $\tau-$reconstruction.
741
742\begin{table}[!h]
743\begin{center}
744\caption{Reconstruction efficiencies of $\tau$-jets in $\tau^+ \tau^-$ decays from $Z$ or $H$ bosons, in \textit{Delphes}, \textsc{CMS} and \textsc{ATLAS} experiments~\citep{bib:cmstauresolution,bib:ATLASresolution}. Two scenarios for the mass of the Higgs boson are investigated. Events generated with MadGraph/MadEvent and hadronised with \textit{Pythia}. The decays of $\tau$ leptons is handled by the \textit{Tauola} version embedded in \textit{Pythia}.\vspace{0.5cm}}
745%\begin{tabular}{lll}
746%\hline
747%\multicolumn{2}{c}{\textsc{CMS}} & \\
748%$Z \rightarrow \tau^+ \tau^-$ & $38 \%$ & \\
749%$H \rightarrow \tau^+ \tau^-$ & $36 \%$ & $m_H = 150~\textrm{GeV}/c^2$ \\
750%$H \rightarrow \tau^+ \tau^-$ & $47 \%$ & $m_H = 300~\textrm{GeV}/c^2$ \\
751%\multicolumn{2}{c}{Delphes} & \\
752%$H \rightarrow \tau^+ \tau^-$ &$42 \%$ & $m_H = 140~\textrm{GeV}/c^2$ \\
753%\hline
754%\end{tabular}
755
756\begin{tabular}{lrlrl}
757\hline
758 & \textsc{CMS}&Delphes & \textsc{ATLAS}&Delphes \\
759$Z \rightarrow \tau^+ \tau^-$ & $38.2\%$ & $32.4\pm1.8\%$ & $33\%$ & $28.6\pm 1.9\%$ \\
760$H(140) \rightarrow \tau^+ \tau^-$ & $36.3\%$ & $39.9\pm1.6\%$ & & $32.8\pm 1.8\%$ \\
761$H(300) \rightarrow \tau^+ \tau^-$ & $47.3\%$ & $49.7\pm1.5\%$ & & $43.8\pm 1.6\%$ \\
762\hline
763
764\end{tabular}
765\label{tab:taurecoefficiency}
766\end{center}
767\end{table}
768
769
770\section{Visualisation}
771
772When performing an event analysis, a visualisation tool is useful to convey information about the detector layout and the event topology in a simple way. The \textit{Fast and Realistic OpenGL Displayer} \textsc{FROG}~\citep{bib:FROG} has been interfaced in \textit{Delphes}, allowing an easy display of the defined detector configuration\footnote{\texttt{[code] } To prepare the visualisation, the \texttt{FLAG\_FROG} parameter should be equal to $1$.}.
773
774% \begin{figure}[!ht]
775% \begin{center}
776% \includegraphics[width=\columnwidth]{Detector_DELPHES_1}
777% \caption{Layout of the generic detector geometry assumed in Delphes. The innermost layer, close to the interaction point, is a central tracking system (pink), embedded into a solenoidal magnetic field.
778% It is surrounded by a central calorimeter volume (green) with both electromagnetic and hadronic sections.
779% The outer layer of the central system (red) consist of a muon system.
780% In addition, two end-cap calorimeters (blue) extend the pseudorapidity coverage of the central detector.
781% The actual detector granularity and extension is defined in the detector card.
782% The detector is assumed to be strictly symmetric around the beam axis (black line).
783% Additional forward detectors are not depicted.}
784% \label{fig:GenDet}
785% \end{center}
786% \end{figure}
787
788Two and three-dimensional representations of the detector configuration can be used for communication purposes, as they clearly illustrate the geometric coverage of the different detector subsystems.
789As an example, the generic detector geometry assumed in this paper is shown in Fig.~\ref{fig:GenDet3}
790%, \ref{fig:GenDet}
791 and~\ref{fig:GenDet2}.
792The extensions of the central tracking system, the central calorimeters and both forward calorimeters are visible.
793Note that only the geometrical coverage is depicted and that the calorimeter segmentation is not taken into account in the drawing of the detector. Moreover, both the radius and the length of each sub-detectors are just display parameters and are not relevant for the physics simulation.
794
795\begin{figure}[!ht]
796\begin{center}
797%\includegraphics[width=\columnwidth]{Detector_DELPHES_2b}
798\includegraphics[width=\columnwidth]{fig11}
799\caption{Layout of the generic detector geometry assumed in \textit{Delphes}. Open 3D-view of the detector with solid volumes. Same colour codes as for Fig.~\ref{fig:GenDet3} are applied. Additional forward detectors are not depicted.}
800\label{fig:GenDet2}
801\end{center}
802\end{figure}
803
804Deeper understanding of interesting physics processes is possible by displaying the events themselves.
805The visibility of each set of objects ($e^\pm$, $\mu^\pm$, $\tau^\pm$, jets, transverse missing energy) is enhanced by a colour coding.
806Moreover, kinematics information of each object is visible by a simple mouse action.
807As an illustration, an associated photoproduction of a $W$ boson and a $t$ quark is shown in Fig.~\ref{fig:wt}.
808This corresponds to a $pp(\gamma p \rightarrow Wt)pX$ process, where the $Wt$ couple is induced by an incoming photon emitted by one of the colliding proton~\citep{bib:wtphotoproduction}.
809This leading proton survives after photon emission and is present in the final state.
810As the energy and virtuality of the emitted photon are low, the surviving proton does not leave the beam and escapes from the central detector without being detected.
811The experimental signature is a lack of hadronic activity in the forward hemisphere where the surviving proton escapes.
812The $t$ quark decays into a $W$ boson and a $b$ quark.
813Both $W$ bosons decay into leptons ($W \rightarrow \mu \nu_\mu$ and $W \rightarrow e \nu_e$).
814The balance between the missing transverse energy and the charged lepton pair is clear, as well as the presence of an empty forward region. It is interesting to notice that the reconstruction algorithms build a fake $\tau$-jet around the electron.
815
816\begin{figure}[!ht]
817\begin{center}
818%%\includegraphics[width=\columnwidth]{Events_DELPHES_1}
819%\includegraphics[width=\columnwidth]{DisplayWt}
820\includegraphics[width=\columnwidth]{fig12}
821\caption{Example of $pp(\gamma p \rightarrow Wt)pY$ event display in different orientations, with $t \rightarrow Wb$.
822One $W$ boson decays into a $\mu \nu_\mu$ pair and the second one into a $e \nu_e$ pair.
823The surviving proton leaves a forward hemisphere with no hadronic activity.
824The isolated muon is shown as the dark blue vector.
825Around the electron, in red, is reconstructed a fake $\tau$-jet (green vector surrounded by a blue cone), while the reconstructed missing energy (in grey) is very small. One jet is visible in one forward region, along the beamline axis, opposite to the direction of the escaping proton.}
826\label{fig:wt}
827\end{center}
828\end{figure}
829
830For comparison, Fig.~\ref{fig:gg} depicts an inclusive gluon pair production $pp \rightarrow ggX$.
831The event final state contains more jets, in particular along the beam axis, which is expected as the interacting protons are destroyed by the collision. Two muon candidates and large missing transverse energy are also visible.
832
833\begin{figure}[!ht]
834\begin{center}
835%%\includegraphics[width=\columnwidth]{Events_DELPHES_1}
836%\includegraphics[width=\columnwidth]{Displayppgg}
837\includegraphics[width=\columnwidth]{fig13}
838\caption{Example of inclusive gluon pair production $pp \rightarrow ggX$. Many jets are visible in the event, in particular along the beam axis. Two muons (in blue) are produced and the missing transverse energy is significant in this event (grey vector).}
839\label{fig:gg}
840\end{center}
841\end{figure}
842
843
844\section{Conclusion and perspectives}
845
846% \subsection{version 1}
847% We have described here the major features of the \textit{Delphes} framework, introduced for the fast simulation of a collider experiment.
848% It has already been used for several phenomenological studies, in particular in photon interactions at the \textsc{LHC}.
849%
850% \textit{Delphes} takes the output of event generators, in various formats, and yields analysis-object data.
851% The simulation applies the resolutions of central and forward detectors by smearing the kinematical properties of final state particles.
852% It yields tracks in a solenoidal magnetic field and calorimetric towers.
853% Realistic reconstruction algorithms are run, including the FastJet package, to produce collections of $e^\pm$, $\mu^\pm$, jets and $\tau$-jets. $b$-tag and missing transverse energy are also evaluated.
854% The output is validated by comparing to the \textsc{CMS} expected performances.
855% A trigger stage can be emulated on the output data.
856% At last, event visualisation is possible through the \textsc{FROG} 3D event display.
857%
858%
859% \textit{Delphes} has been developped using the parameters of the \textsc{CMS} experiment but can be easily extended to \textsc{ATLAS} and other non-\textsc{LHC} experiments, as at Tevatron or at the \textsc{ILC}. Further developments include a more flexible design for the subdetector assembly and possibly the implementation of an event mixing module for pile-up event simulation.
860%
861%
862% \subsection{version 2}
863We have described here the major features of the \textit{Delphes} framework, introduced for the fast simulation of a collider experiment. This framework is a tool meant for feasibility studies in phenomenology, gauging the observability of model predictions in collider experiments.
864
865\textit{Delphes} takes as an input the output of event-generators and yields analysis-object data in the form of \texttt{TTree} in a \texttt{*.root} file.
866The simulation includes central and forward detectors to produce realistic observables using standard reconstruction algorithms.
867Moreover, the framework allows trigger emulation and 3D event visualisation.
868
869\textit{Delphes} has been developed using the parameters of the \textsc{CMS} experiment but can be easily extended to \textsc{ATLAS} and other non-\textsc{LHC} experiments, as at Tevatron or at the \textsc{ILC}. Further developments include a more flexible design for the subdetector assembly and possibly the implementation of an event mixing module for pile-up event simulation.
870
871This framework has already been used for several analyses, in particular in photon-induced interactions at the \textsc{LHC}~\citep{bib:wtphotoproduction, bib:papierquisortirajamais, bib:papiersimon}.
872
873
874\section*{Acknowledgements}
875\addcontentsline{toc}{section}{Acknowledgements}
876The 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.
877Part of this work was supported by the Belgian Federal Office for Scientific, Technical and Cultural Affairs through the Interuniversity Attraction Pole P6/11.
878
879
880\begin{thebibliography}{99}
881\addcontentsline{toc}{section}{References}
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920
921%\bibitem{bib:papiersimon} ``Phenomenology of a twisted two-Higgs-doublet model'', Simon de Visscher, Jean-Marc Gerard, Michel Herquet, Vincent Lema\^itre, Fabio Maltoni, to be published.
922\bibitem{bib:papiersimon} S. de Visscher, J.M. Gerard, M. Herquet, V. Lema\^itre, F. Maltoni, arXiv:\href{http://arxiv.org/abs/0904.0705}{0904.0705}[hep-ph].
923
924\bibitem{bib:mcfio} P. Lebrun, L. Garren, Copyright (c) 1994-1995 Universities Research Association, Inc.
925
926
927\end{thebibliography}
928
929\onecolumn
930\appendix
931
932\section{User manual}
933
934The 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}.
935In 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/}.
936
937\subsection{Getting started}
938
939In order to run \textit{Delphes} on your system, first download its sources and compile them:\\
940\texttt{wget http://www.fynu.ucl.ac.be/users/s.ovyn/Delphes/files/Delphes\_V\_*.tar.gz}\\
941Replace the \texttt{*} symbol by the proper version number\footnote{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)}.
942
943\begin{quote}
944\begin{verbatim}
945me@mylaptop:~$ tar -xvf Delphes_V_*.tar.gz
946me@mylaptop:~$ cd Delphes_V_*.*
947me@mylaptop:~$ ./genMakefile.tcl > Makefile
948me@mylaptop:~$ make
949\end{verbatim}
950\end{quote}
951Due 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:
952\begin{quote}
953\begin{verbatim}
954me@mylaptop:~$ Delphes has been compiled
955me@mylaptop:~$ Ready to run
956\end{verbatim}
957\end{quote}
958
959\subsection{Running \textit{Delphes} on your events}
960
961In 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).
962
963\begin{quote}
964\begin{verbatim}
965me@mylaptop:~$ ./Delphes inputlist.list OutputRootFileName.root
966\end{verbatim}
967\end{quote}
968
969\subsubsection{Setting up the configuration}
970
971The 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.
972
973\begin{enumerate}
974\item{\bf The detector card }
975It contains all pieces of information needed to run \textit{Delphes}:
976\begin{itemize}
977 \item detector parameters, including calorimeter and tracking coverage and resolutions, transverse energy thresholds for object reconstruction and jet algorithm parameters.
978 \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).
979 \end{itemize}
980
981If no datacard is provided by the user, the default smearing and running parameters are used:
982\begin{quote}
983\begin{verbatim}
984# Detector extension, in pseudorapidity units (|eta|)
985CEN_max_tracker 2.5 // Maximum tracker coverage
986CEN_max_calo_cen 1.7 // central calorimeter coverage
987CEN_max_calo_ec 3.0 // calorimeter endcap coverage
988CEN_max_calo_fwd 5.0 // forward calorimeter pseudorapidity coverage
989CEN_max_mu 2.4 // muon chambers pseudorapidity coverage
990
991# Energy resolution for electron/photon in central/endcap/fwd/zdc calos
992# \sigma/E = C + N/E + S/\sqrt{E}, E in GeV
993ELG_Scen 0.05 // S term for central ECAL
994ELG_Ncen 0.25 // N term
995ELG_Ccen 0.005 // C term
996ELG_Sec 0.05 // S term for ECAL endcap
997ELG_Nec 0.25 // N term
998ELG_Cec 0.005 // C term
999ELG_Sfwd 2.084 // S term for FCAL
1000ELG_Nfwd 0. // N term
1001ELG_Cfwd 0.107 // C term
1002ELG_Szdc 0.70 // S term for ZDC
1003ELG_Nzdc 0. // N term
1004ELG_Czdc 0.08 // C term
1005
1006# Energy resolution for hadrons in central/endcap/fwd/zdc calos
1007# \sigma/E = C + N/E + S/\sqrt{E}, E in GeV
1008HAD_Scen 1.5 // S term for central HCAL
1009HAD_Ncen 0. // N term
1010HAD_Ccen 0.05 // C term
1011HAD_Sec 1.5 // S term for HCAL endcap
1012HAD_Nec 0. // N term
1013HAD_Cec 0.05 // C term
1014HAD_Sfwd 2.7 // S term for FCAL
1015HAD_Nfwd 0. // N term
1016HAD_Cfwd 0.13 // C term
1017HAD_Szdc 1.38 // S term for ZDC
1018HAD_Nzdc 0. // N term
1019HAD_Czdc 0.13 // C term
1020
1021# Time resolution for ZDC/RP220/RP420
1022ZDC_T_resolution 0 // in s
1023RP220_T_resolution 0 // in s
1024RP420_T_resolution 0 // in s
1025
1026# Muon smearing
1027MU_SmearPt 0.01 // transverse momentum Pt in GeV/c
1028
1029# Tracking efficiencies
1030TRACK_ptmin 0.9 // minimal pT
1031TRACK_eff 90 // efficiency associated to the tracking (%)
1032\end{verbatim}
1033\end{quote}
1034
1035\begin{quote}
1036\begin{verbatim}
1037# Calorimetric towers
1038TOWER_number 40
1039### list of the edges of each tower in eta for eta>0 assuming
1040###a symmetric detector in eta<0
1041### the list starts with the lower edge of the most central tower
1042### the list ends with the higher edged of the most forward tower
1043### there should be NTOWER+1 values
1044TOWER_eta_edges 0. 0.087 0.174 0.261 0.348 0.435 0.522 0.609 0.696 0.783
1045 0.870 0.957 1.044 1.131 1.218 1.305 1.392 1.479 1.566 1.653
1046 1.740 1.830 1.930 2.043 2.172 2.322 2.500 2.650 2.868 2.950
1047 3.125 3.300 3.475 3.650 3.825 4.000 4.175 4.350 4.525 4.700
1048 5.000
1049
1050### list of the tower size in phi (in degrees), assuming that all
1051### towers are similar in phi for a given eta value
1052### the list starts with the phi-size of the most central tower (eta=0)
1053### the list ends with the phi-size of the most forward tower
1054### there should be NTOWER values
1055TOWER_dphi 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 5 10
1056 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 10 20 20
1057\end{verbatim}
1058\end{quote}
1059
1060\begin{quote}
1061\begin{verbatim}
1062# Thresholds for reconstructed objects, in GeV/c
1063PTCUT_elec 10.0
1064PTCUT_muon 10.0
1065PTCUT_jet 20.0
1066PTCUT_gamma 10.0
1067PTCUT_taujet 10.0
1068
1069# Thresholds for reconstructed objects in ZDC, E in GeV
1070ZDC_gamma_E 20
1071ZDC_n_E 50
1072
1073# Charged lepton isolation. Pt and Et in GeV
1074ISOL_PT 2.0 //minimal pt of tracks for isolation criteria
1075ISOL_Cone 0.5 //Cone for isolation criteria
1076ISOL_Calo_Cone 0.4 //Cone for calorimetric isolation
1077ISOL_Calo_ET 2.0 //minimal tower E_T for isolation criteria. 1E99 means "off"
1078ISOL_Calo_Grid 3 //Grid size (N x N) for calorimetric isolation
1079
1080# General jet variable
1081JET_coneradius 0.7 // generic jet radius
1082JET_jetalgo 1 // 1 for Cone algorithm,
1083 // 2 for MidPoint algorithm,
1084 // 3 for SIScone algorithm,
1085 // 4 for kt algorithm
1086 // 5 for Cambridge/Aachen algorithm
1087 // 6 for anti-kt algorithm
1088JET_seed 1.0 // minimum seed to start jet reconstruction, in GeV
1089JET_Eflow 1 // Energy flow: perfect energy assumed in the tracker coverage.
1090 // 1 is 'on' ; 0 is 'off'
1091\end{verbatim}
1092\end{quote}
1093
1094\begin{quote}
1095\begin{verbatim}
1096# Tagging definition
1097BTAG_b 40 // b-tag efficiency (%)
1098BTAG_mistag_c 10 // mistagging (%)
1099BTAG_mistag_l 1 // mistagging (%)
1100
1101# FLAGS
1102FLAG_bfield 1 //1 to run the bfield propagation else 0
1103FLAG_vfd 1 //1 to run the very forward detectors else 0
1104FLAG_RP 1 //1 to run the very forward detectors else 0
1105FLAG_trigger 1 //1 to run the trigger selection else 0
1106FLAG_FROG 1 //1 to run the FROG event display
1107FLAG_LHCO 1 //1 to run the LHCO
1108
1109# In case BField propagation allowed
1110TRACK_radius 129 // radius of the BField coverage, in cm
1111TRACK_length 300 // length of the BField coverage, in cm
1112TRACK_bfield_x 0 // X component of the BField, in T
1113TRACK_bfield_y 0 // Y component of the BField, in T
1114TRACK_bfield_z 3.8 // Z component of the BField, in T
1115
1116# Very forward detector extension, in pseudorapidity
1117# if allowed
1118VFD_min_zdc 8.3 // Zero-Degree neutral Calorimeter
1119VFD_s_zdc 140 // distance of the ZDC, from the IP, in [m]
1120\end{verbatim}
1121\end{quote}
1122
1123
1124\begin{quote}
1125\begin{verbatim}
1126#\textit{Hector} parameters
1127RP_220_s 220 // distance of the RP to the IP, in meters
1128RP_220_x 0.002 // distance of the RP to the beam, in meters
1129RP_420_s 420 // distance of the RP to the IP, in meters
1130RP_420_x 0.004 // distance of the RP to the beam, in meters
1131RP_beam1Card data/LHCB1IR5_v6.500.tfs // beam optics file, beam 1
1132RP_beam2Card data/LHCB2IR5_v6.500.tfs // beam optics file, beam 2
1133RP_IP_name IP5 // tag for IP in \textit{Hector} ; 'IP1' for ATLAS
1134RP_offsetEl_x 0.097 // horizontal separation between both beam, in meters
1135RP_offsetEl_y 0 // vertical separation between both beam, in meters
1136RP_offsetEl_s 120 // distance of beam separation point, from IP
1137RP_cross_x -500 // IP offset in horizontal plane, in micrometers
1138RP_cross_y 0 // IP offset in vertical plane, in micrometers
1139RP_cross_ang_x 142.5 // half-crossing angle in horizontal plane, in microrad
1140RP_cross_ang_y 0 // half-crossing angle in vertical plane, in microrad
1141
1142
1143# In case FROG event display allowed
1144NEvents_FROG 100
1145# Number of events to process
1146NEvents -1 // -1 means 'all'
1147
1148
1149# input PDG tables
1150PdgTableFilename data/particle.tbl // table with particle pid,mass,charge,...
1151\end{verbatim}
1152\end{quote}
1153
1154In general, energies, momenta and masses are expressed in GeV, GeV$/c$, GeV$/c^2$ respectively, and magnetic fields in T.
1155Geometrical 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.
1156
1157\item{\bf The trigger card }
1158
1159This 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:
1160
1161\begin{quote}
1162\begin{tabular}{ll}
1163{\it Trigger code} & {\it Corresponding object}\\
1164{\verb ELEC_PT } & electron \\
1165{\verb IElec_PT } & isolated electron \\
1166{\verb MUON_PT } & muon \\
1167{\verb IMuon_PT } & isolated muon \\
1168{\verb JET_PT } & jet \\
1169{\verb TAU_PT } & $\tau$-jet \\
1170{\verb ETMIS_PT } & missing transverse energy \\
1171{\verb GAMMA_PT } & photon \\
1172{\verb Bjet_PT } & $b$-jet \\
1173\end{tabular}
1174\end{quote}
1175
1176Each line in the trigger datacard is allocated to exactly one trigger-bit and starts with the name of the corresponding trigger.
1177Logical 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.
1178The 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}.
1179An example of trigger table consistent with the previous rules is given here:
1180\begin{quote}
1181\begin{verbatim}
1182SingleJet >> JET_PT: '200'
1183DoubleElec >> ELEC_PT: '20' && ELEC_PT: '10'
1184SingleElec and Single Muon >> ELEC_PT: '20' && MUON_PT: '15'
1185\end{verbatim}
1186\end{quote}
1187\end{enumerate}
1188
1189\subsubsection{Running the code}
1190
1191First, create the detector and trigger cards (\texttt{data/DetectorCard.dat} and \texttt{data/TriggerCard.dat}). \\
1192Then, 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}).
1193To run the code, type the following command (in one line)
1194\begin{quote}
1195\begin{verbatim}
1196me@mylaptop:~$ ./Delphes inputlist.list OutputRootFileName.root
1197 data/DetectorCard.dat data/TriggerCard.dat
1198\end{verbatim}
1199\end{quote}
1200As a reminder, typing the \texttt{./Delphes} command simply displays the correct usage:
1201
1202\begin{quote}
1203\begin{verbatim}
1204me@mylaptop:~$ ./Delphes
1205 Usage: ./Delphes input_file output_file [detector_card] [trigger_card]
1206 input_list - list of files in Ntpl, StdHep, HepMC or LHEF format,
1207 output_file - output file.
1208 detector_card - Card containing resolution variables for detector simulation (optional)
1209 trigger_card - Card containing the trigger algorithms (optional)
1210\end{verbatim}
1211\end{quote}
1212
1213
1214\subsection{Getting the \textit{Delphes} information}
1215
1216\subsubsection{Contents of the \textit{Delphes} ROOT trees}
1217
1218The \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.
1219
1220Here is the exhaustive list of \textit{branches} availables in these \textit{trees}, together with their corresponding physical objet and \texttt{ExRootAnalysis} C++ class name:
1221\begin{quote}
1222\begin{tabular}{lll}
1223\textbf{GEN \texttt{Tree}} & &\\
1224~~~Particle & generator particles from \textsc{hepevt} & {\verb GenParticle }\\
1225\multicolumn{3}{l}{}\\
1226\textbf{Trigger \texttt{Tree}} & &\\
1227~~~TrigResult & Acceptance of different trigger-bits & {\verb TRootTrigger }\\
1228\multicolumn{3}{l}{}\\
1229\textbf{Analysis \texttt{Tree}} & & \\
1230~~~Tracks & Collection of tracks & {\verb TRootTracks }\\
1231~~~CaloTower & Calorimetric towers & {\verb TRootCalo }\\
1232~~~Electron & Collection of electrons & {\verb TRootElectron }\\
1233~~~Photon & Collection of photons & {\verb TRootPhoton }\\
1234~~~Muon & Collection of muons & {\verb TRootMuon }\\
1235~~~Jet & Collection of jets & {\verb TRootJet }\\
1236~~~TauJet & Collection of jets tagged as $\tau$-jets & {\verb TRootTauJet }\\
1237~~~ETmis & Transverse missing energy information & {\verb TRootETmis }\\
1238~~~ZDChits & Hits in the Zero Degree Calorimeters & {\verb TRootZdcHits }\\
1239~~~RP220hits & Hits in the first proton taggers & {\verb TRootRomanPotHits }\\
1240~~~FP420hits & Hits in the next proton taggers & {\verb TRootRomanPotHits }\\
1241\end{tabular}
1242\end{quote}
1243The third column shows the names of the corresponding classes to be written in a \textsc{ROOT} tree.
1244The 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.
1245In \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}):
1246\begin{quote}
1247\begin{tabular}{ll}
1248\multicolumn{2}{l}{\textbf{Most common leaves}}\\
1249 \texttt{~~~float E; }&\texttt{ // particle energy in GeV }\\
1250 \texttt{~~~float Px; }&\texttt{ // particle momentum vector (x component) in GeV$/c$ }\\
1251 \texttt{~~~float Py; }&\texttt{ // particle momentum vector (y component) in GeV$/c$ }\\
1252 \texttt{~~~float Pz; }&\texttt{ // particle momentum vector (z component) in GeV$/c$ }\\
1253 \texttt{~~~float PT; }&\texttt{ // particle transverse momentum in GeV$/c$ }\\
1254 \texttt{~~~float Eta; }&\texttt{ // particle pseudorapidity }\\
1255 \texttt{~~~float Phi; }&\texttt{ // particle azimuthal angle in rad }\\
1256\end{tabular}
1257\end{quote}
1258
1259In addition to their kinematics, some additional properties are available for specific objects:
1260\begin{quote}
1261\begin{tabular}{ll}
1262\multicolumn{2}{l}{{\bf Leaves in the \texttt{Particle} branch (\texttt{GEN} tree)}} \\
1263 \texttt{~~~int PID; }&\texttt{ // particle HEP ID number }\\
1264 \texttt{~~~int Status; }&\texttt{ // particle status }\\
1265 \texttt{~~~int M1; }&\texttt{ // particle 1st mother }\\
1266 \texttt{~~~int M2; }&\texttt{ // particle 2nd mother }\\
1267 \texttt{~~~int D1; }&\texttt{ // particle 1st daughter }\\
1268 \texttt{~~~int D2; }&\texttt{ // particle 2nd daughter }\\
1269 \texttt{~~~float Charge; }&\texttt{ // electrical charge in units of e}\\
1270 \texttt{~~~float T; }&\texttt{ // particle vertex position (t component, in mm$/c$) }\\
1271 \texttt{~~~float X; }&\texttt{ // particle vertex position (x component, in mm) }\\
1272 \texttt{~~~float Y; }&\texttt{ // particle vertex position (y component, in mm) }\\
1273 \texttt{~~~float Z; }&\texttt{ // particle vertex position (z component, in mm) }\\
1274 \texttt{~~~float M; }&\texttt{ // particle mass in GeV$/c^2$}\\
1275\end{tabular}
1276\end{quote}
1277\begin{quote}
1278\begin{tabular}{ll}
1279\multicolumn{2}{l}{\textbf{Additional leaves in \texttt{Electron} and \texttt{Muon} branches} (\texttt{Analysis} tree)} \\
1280 \texttt{~~~int Charge } &\texttt{ // particle Charge }\\
1281 \texttt{~~~bool IsolFlag } &\texttt{ // stores the result of the tracking isolation test }\\
1282 \texttt{~~~float IsolPt } &\texttt{ // sum of all track pt in isolation cone (GeV/c) }\\
1283 \texttt{~~~float EtaCalo } &\texttt{ // particle pseudorapidity when entering the calo }\\
1284 \texttt{~~~float PhiCalo } &\texttt{ // particle azimuthal angle in rad when entering the calo }\\
1285 \texttt{~~~float EHoverEE }&\texttt{ // hadronic energy over electromagnetic energy }\\
1286 \texttt{~~~float EtRatio } &\texttt{ // calo Et in NxN-tower grid around the muon over the muon Et }\\
1287\end{tabular}
1288\end{quote}
1289\begin{quote}
1290\begin{tabular}{ll}
1291\multicolumn{2}{l}{\textbf{Additional leaf in the \texttt{Jet} branch (\texttt{Analysis} tree)}} \\
1292 \texttt{~~~bool Btag } &\texttt{ // stores the result of the b-tagging }\\
1293 \texttt{~~~int NTracks }&\texttt{ // number of tracks associated to the jet }\\
1294 \texttt{~~~float EHoverEE }&\texttt{ // hadronic energy over electromagnetic energy }\\
1295\end{tabular}
1296\end{quote}
1297\begin{quote}
1298\begin{tabular}{ll}
1299\multicolumn{2}{l}{\textbf{Leaves in the \texttt{Tracks} branch (\texttt{Analysis} tree)}}\\
1300 \texttt{~~~float Eta } &\texttt{ // pseudorapidity at the beginning of the track }\\
1301 \texttt{~~~float Phi } &\texttt{ // azimuthal angle at the beginning of the track }\\
1302 \texttt{~~~float EtaOuter }&\texttt{ // pseudorapidity at the end of the track }\\
1303 \texttt{~~~float PhiOuter }&\texttt{ // azimuthal angle at the end of the track }\\
1304 \texttt{~~~float PT } &\texttt{ // track transverse momentum in GeV$/c$ }\\
1305 \texttt{~~~float E } &\texttt{ // track energy in GeV }\\
1306 \texttt{~~~float Px } &\texttt{ // track momentum vector (x component) in GeV$/c$ }\\
1307 \texttt{~~~float Py } &\texttt{ // track momentum vector (y component) in GeV$/c$ }\\
1308 \texttt{~~~float Pz } &\texttt{ // track momentum vector (z component) in GeV$/c$ }\\
1309 \texttt{~~~float Charge } &\texttt{ // track charge in units of $e$ }\\
1310\end{tabular}
1311\end{quote}
1312\begin{quote}
1313\begin{tabular}{ll}
1314\multicolumn{2}{l}{\textbf{Leaves in the \texttt{CaloTower} branch (\texttt{Analysis} tree)}}\\
1315 \texttt{~~~float Eta } &\texttt{ // pseudorapidity of the tower }\\
1316 \texttt{~~~float Phi } &\texttt{ // azimuthal angle of the tower in rad }\\
1317 \texttt{~~~float E } &\texttt{ // tower energy in GeV }\\
1318 \texttt{~~~float E\_em } &\texttt{ // electromagnetic component of the tower energy in GeV}\\
1319 \texttt{~~~float E\_had } &\texttt{ // hadronic component of the tower energy in GeV}\\
1320 \texttt{~~~float ET } &\texttt{ // tower transverse energy in GeV }\\
1321& \\
1322\multicolumn{2}{l}{\textbf{Leaves in the \texttt{ETmis} branch (\texttt{Analysis} tree)}}\\
1323 \texttt{~~~float Phi } &\texttt{ // azimuthal angle of the transverse missing energy in rad }\\
1324 \texttt{~~~float ET } &\texttt{ // transverse missing energy in GeV }\\
1325 \texttt{~~~float Px } &\texttt{ // x component of the transverse missing energy in GeV }\\
1326 \texttt{~~~float Py } &\texttt{ // y component of the transverse missing energy in GeV }\\
1327\end{tabular}
1328\end{quote}
1329
1330The 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).
1331
1332\begin{quote}
1333\begin{tabular}{ll}
1334\multicolumn{2}{l}{\textbf{Common leaves for ZDC, RP220, FP420}}\\
1335 \texttt{~~~float T } &\texttt{ // time of flight in s }\\
1336 \texttt{~~~float E } &\texttt{ // measured/smeared energy in GeV }\\
1337 \texttt{~~~int side }&\texttt{ // -1 or +1 }\\
1338\multicolumn{2}{l}{Generator level data}\\
1339 \texttt{~~~int pid; }&\texttt{ // particle ID }\\
1340 \texttt{~~~float genPx; }&\texttt{ // particle momentum vector (x component) in GeV$/c$ }\\
1341 \texttt{~~~float genPy; }&\texttt{ // particle momentum vector (y component) in GeV$/c$ }\\
1342 \texttt{~~~float genPz; }&\texttt{ // particle momentum vector (z component) in GeV$/c$ }\\
1343 \texttt{~~~float genPT; }&\texttt{ // particle transverse momentum in GeV$/c$ }\\
1344 \texttt{~~~float genEta; }&\texttt{ // particle pseudorapidity }\\
1345 \texttt{~~~float genPhi; }&\texttt{ // particle azimuthal angle in rad }\\
1346\end{tabular}
1347\end{quote}
1348
1349\begin{quote}
1350\begin{tabular}{ll}
1351\multicolumn{2}{l}{\textbf{Additional leaves in the \texttt{ZDChits} branch (\texttt{Analysis} tree)}}\\
1352 \texttt{~~~int hadronic\_hit} &\texttt{// 0(is not hadronic) or 1(is hadronic) }
1353\end{tabular}
1354\end{quote}
1355
1356\begin{quote}
1357\begin{tabular}{ll}
1358\multicolumn{2}{l}{\textbf{Additional leaves in the \texttt{RP220hits} and \texttt{FP420hits} branches (\texttt{Analysis} tree)}}\\
1359 \texttt{~~~flaot S } &\texttt{ // detector position from IP in m } \\
1360 \texttt{~~~float X } &\texttt{ // hit horizontal position in m } \\
1361 \texttt{~~~float Y } &\texttt{ // hit vertical position in m } \\
1362 \texttt{~~~float TX } &\texttt{ // hit horizontal angle in rad } \\
1363 \texttt{~~~float TY } &\texttt{ // hit vertical angle in rad } \\
1364 \texttt{~~~float q2 } &\texttt{ // reconstructed momentum transfer in GeV$^2$ }
1365\end{tabular}
1366\end{quote}
1367The hit position is computed from the center of the beam position, not from the edge of the detector.
1368
1369
1370\subsection{Running an analysis on your \textit{Delphes} events}
1371
1372To 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.
1373As an example, here is a simple overview of a \texttt{myoutput.root} file created by \textit{Delphes}:
1374\begin{quote}
1375\begin{verbatim}
1376me@mylaptop:~$ root -l myoutput.root
1377root [0]
1378Attaching file myoutput.root as _file0...
1379root [1] .ls
1380TFile** myoutput.root
1381 TFile* myoutput.root
1382 KEY: TTree GEN;1 Analysis tree
1383 KEY: TTree Analysis;1 Analysis tree
1384 KEY: TTree Trigger;1 Analysis tree
1385root [2] TBrowser t;
1386root [3] Analysis->GetEntries()
1387(const Long64_t)200
1388root [4] GEN->GetListOfBranches()->ls()
1389OBJ: TBranchElement Event Event_ : 0 at: 0x9108f30
1390OBJ: TBranch Event_size Event_size/I : 0 at: 0x910cfd0
1391OBJ: TBranchElement Particle Particle_ : 0 at: 0x910c6b0
1392OBJ: TBranch Particle_size Particle_size/I : 0 at: 0x9111c58
1393root [5] Trigger->GetListOfLeaves()->ls()
1394OBJ: TLeafElement TrigResult_ TrigResult_ : 0 at: 0x90f90a0
1395OBJ: TLeafElement TrigResult.Accepted Accepted[TrigResult_] : 0 at: 0x90f9000
1396OBJ: TLeafI TrigResult_size TrigResult_size : 0 at: 0x90fb860
1397\end{verbatim}
1398\end{quote}
1399The \texttt{.ls} command lists the current keys available and in particular the three \textit{tree} names.
1400\mbox{\texttt{TBrowser t}} launches a browser and the \texttt{GetEntries()} method outputs the number of data in the corresponding \textit{tree}.
1401The 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{*}):
1402\begin{quote}
1403\begin{verbatim}
1404root [6] Analysis->GetListOfLeaves()->ls("*.E")
1405OBJ: TLeafElement Jet.E E[Jet_] : 0 at: 0xa08bc68
1406OBJ: TLeafElement TauJet.E E[TauJet_] : 0 at: 0xa148910
1407OBJ: TLeafElement Electron.E E[Electron_] : 0 at: 0xa1d8a50
1408OBJ: TLeafElement Muon.E E[Muon_] : 0 at: 0xa28ac80
1409OBJ: TLeafElement Photon.E E[Photon_] : 0 at: 0xa33cd88
1410OBJ: TLeafElement Tracks.E E[Tracks_] : 0 at: 0xa3cced0
1411OBJ: TLeafElement CaloTower.E E[CaloTower_] : 0 at: 0xa4ba188
1412OBJ: TLeafElement ZDChits.E E[ZDChits_] : 0 at: 0xa54a3c8
1413OBJ: TLeafElement RP220hits.E E[RP220hits_] : 0 at: 0xa61e648
1414OBJ: TLeafElement FP420hits.E E[FP420hits_] : 0 at: 0xa6d0920
1415\end{verbatim}
1416\end{quote}
1417
1418To 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}.
1419\begin{quote}
1420\begin{verbatim}
1421root [7] Trigger->Draw("TrigResult.Accepted");
1422\end{verbatim}
1423\end{quote}
1424Mathematical operations on several \textit{leaves} are possible within a given \textit{tree}, following the C++ syntax:
1425\begin{quote}
1426\begin{verbatim}
1427root [8] Analysis->Draw("Muon.Px * Muon.Px");
1428root [9] Analysis->Draw("sqrt(pow(Muon.E,2) - pow(Muon.Pz,2) + pow(Muon.PT,2))");
1429\end{verbatim}
1430\end{quote}
1431Finally, 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:
1432\begin{quote}
1433\begin{verbatim}
1434root [10] Trigger->MakeClass()
1435Info in <TTreePlayer::MakeClass>: Files: Trigger.h and
1436 Trigger.C generated from TTree: Trigger
1437\end{verbatim}
1438\end{quote}
1439For 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.
1440
1441To 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.
1442 \begin{quote}
1443\begin{verbatim}
1444me@mylaptop:~$ ./Analysis_Ex input_file.list output_file.root
1445\end{verbatim}
1446 \end{quote}
1447One can easily edit, modify and compile (\texttt{make}) changes in this file.
1448
1449\subsubsection{Adding the trigger information}
1450The \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.
1451The trigger datacard is also necessary. To run the code:
1452 \begin{quote}
1453\begin{verbatim}
1454me@mylaptop:~$ ./Trigger_Only input_file.root data/TriggerCard.dat
1455\end{verbatim}
1456 \end{quote}
1457
1458\subsection{Running the FROG event display}
1459
1460\begin{itemize}
1461\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}.
1462\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).
1463\item Go back into the main directory and type
1464\begin{quote}
1465\texttt{me@mylaptop:~\$ ./Utilities/FROG/FROG}
1466\end{quote}
1467\end{itemize}
1468
1469\subsection{LHCO file format}
1470 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.
1471Only 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.
1472
1473\begin{verbatim}
1474 # typ eta phi pt jmas ntrk btag had/em dum1 dum2
1475 0 57 0
1476 1 0 1.392 -2.269 19.981 0.000 0.000 0.000 4.605 0.000 0.000
1477 2 3 1.052 2.599 29.796 3.698 -1.000 0.000 0.320 0.000 0.000
1478 3 4 1.542 -2.070 84.308 41.761 7.000 0.000 1.000 0.000 0.000
1479 4 4 1.039 0.856 58.992 34.941 1.000 0.000 1.118 0.000 0.000
1480 5 4 1.052 2.599 29.796 3.698 0.000 0.000 0.320 0.000 0.000
1481 6 4 0.431 -2.190 22.631 3.861 0.000 0.000 1.000 0.000 0.000
1482 7 6 0.000 0.845 62.574 0.000 0.000 0.000 0.000 0.000 0.000
1483\end{verbatim}
1484Each row in an event starts with a unique number (i.e.\ in first column).
1485Row \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}.).
1486Subsequent rows list the reconstructed high-level objects.
1487Each row is organised in columns, which details the object kinematics as well as more specific information, such as isolation criteria or $b$-tagging.
1488
1489\paragraph{1st column (\texttt{\#})}
1490The 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.
1491
1492\paragraph{2nd column (\texttt{typ})}
1493The second column gives the object identification code, or \textit{type}.
1494The different object types are:\\
1495\begin{tabular}{ll}
1496 \texttt{0}& for a photon ($\gamma$)\\
1497 \texttt{1}& for an electron ($e^\pm$)\\
1498 \texttt{2}& for a muon ($\mu^\pm$)\\
1499 \texttt{3}& for a hadronically-decaying tau ($\tau$-jet)\\
1500 \texttt{4}& for a jet\\
1501 \texttt{6}& for a missing transverse energy ($E_T^\textrm{miss}$)\\
1502\end{tabular}\\
1503Object type \texttt{5} is not defined.
1504An event always ends with the row corresponding to the missing transverse energy (type \texttt{6}).
1505
1506\paragraph{3rd (\texttt{eta}) and 4th (\texttt{phi}) columns}
1507The third and forth columns gives the object pseudorapidity $\eta$ and azimuth $\phi$. This latter quantity is expressed in radians, ranging from $-\pi$ to $\pi$.
1508
1509\paragraph{5th (\texttt{pt}) and 6th (\texttt{jmass}) columns}
1510The 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.
1511
1512\paragraph{7th column (\texttt{ntrk})}
1513The 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.
1514
1515\paragraph{8th column (\texttt{btag})}
1516The eighth column tells whether a jet is tagged as a $b$-jet (\texttt{1}) or not (\texttt{0}).
1517This is always \texttt{0} for electrons, photons and missing transverse energy.
1518For 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.
1519
1520\paragraph{9th column (\texttt{had/em})}
1521For jets, electrons and photons, the ninth column is the ration between hadronic and electromagnetic energies in the calorimetric towers associated to the object. This is always \texttt{0} for missing transverse energy.
1522For 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 $\rho_\mu$.
1523
1524
1525\paragraph{10th and 11th columns (\texttt{dum1} and \texttt{dum2})}
1526The last two columns are currently not used.
1527
1528\paragraph{Warning}
1529Inherently 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.
1530
1531\end{document}
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