Study of the Higgs boson coupling to the top quark and of the b jet identification with the ATLAS experiment at the Large Hadron Collider.

Similar documents
b-jet identification at High Level Trigger in CMS

ATLAS ITk Layout Design and Optimisation

MIP Reconstruction Techniques and Minimum Spanning Tree Clustering

Tracking and flavour tagging selection in the ATLAS High Level Trigger

PoS(IHEP-LHC-2011)002

PoS(ACAT08)101. An Overview of the b-tagging Algorithms in the CMS Offline Software. Christophe Saout

Precision Timing in High Pile-Up and Time-Based Vertex Reconstruction

ATLAS NOTE ATLAS-CONF July 20, Commissioning of the ATLAS high-performance b-tagging algorithms in the 7 TeV collision data

arxiv:hep-ph/ v1 11 Mar 2002

Design of the new ATLAS Inner Tracker (ITk) for the High Luminosity LHC

The ATLAS Trigger System: Past, Present and Future

PoS(EPS-HEP2017)523. The CMS trigger in Run 2. Mia Tosi CERN

Direct photon measurements in ALICE. Alexis Mas for the ALICE collaboration

Electron and Photon Reconstruction and Identification with the ATLAS Detector

CMS Conference Report

First LHCb measurement with data from the LHC Run 2

A new inclusive secondary vertex algorithm for b-jet tagging in ATLAS

Performance of Tracking, b-tagging and Jet/MET reconstruction at the CMS High Level Trigger

Parton shower matching and multijet merging at NLO

ATLAS, CMS and LHCb Trigger systems for flavour physics

Robustness Studies of the CMS Tracker for the LHC Upgrade Phase I

Tau ID systematics in the Z lh cross section measurement

Optimisation Studies for the CLIC Vertex-Detector Geometry

ATLAS NOTE. December 4, ATLAS offline reconstruction timing improvements for run-2. The ATLAS Collaboration. Abstract

A New Segment Building Algorithm for the Cathode Strip Chambers in the CMS Experiment

b-jet slice performances at L2/EF

A new inclusive secondary vertex algorithm for b- jet tagging in ATLAS

OPERA: A First ντ Appearance Candidate

The Belle II Software From Detector Signals to Physics Results

Fast pattern recognition with the ATLAS L1Track trigger for the HL-LHC

H γγ. Sean Simon UC San Diego (on behalf of the H γγ WG) Photon Workshop July 23 rd 2008

THIS paper describes vertex reconstruction in the AT-

Boosted ZHLL analysis. Wataru OKAMURA 27/12/2011

Deep Learning Photon Identification in a SuperGranular Calorimeter

PoS(High-pT physics09)036

Adding timing to the VELO

Tracking and Vertex reconstruction at LHCb for Run II

The Pandora Software Development Kit for. - Particle Flow Calorimetry. Journal of Physics: Conference Series. Related content.

Track reconstruction with the CMS tracking detector

PoS(TIPP2014)204. Tracking at High Level Trigger in CMS. Mia TOSI Universitá degli Studi di Padova e INFN (IT)

PoS(EPS-HEP2017)492. Performance and recent developments of the real-time track reconstruction and alignment of the LHCb detector.

The LHCb upgrade. Outline: Present LHCb detector and trigger LHCb upgrade main drivers Overview of the sub-detector modifications Conclusions

Tracking and Vertexing performance in CMS

HLT Hadronic L0 Confirmation Matching VeLo tracks to L0 HCAL objects

Performance of the GlueX Detector Systems

CMS FPGA Based Tracklet Approach for L1 Track Finding

Jet algoritms Pavel Weber , KIP Jet Algorithms 1/23

The CLICdp Optimization Process

Primary Vertex Reconstruction at LHCb

The LHCb Upgrade. LHCC open session 17 February Large Hadron Collider Physics (LHCP) Conference New York, 2-7 June 2014

Rivet. July , CERN

Performance of the ATLAS Inner Detector at the LHC

ATLAS PILE-UP AND OVERLAY SIMULATION

Automated reconstruction of LAr events at Warwick. J.J. Back, G.J. Barker, S.B. Boyd, A.J. Bennieston, B. Morgan, YR

THE ATLAS INNER DETECTOR OPERATION, DATA QUALITY AND TRACKING PERFORMANCE.

Physics CMS Muon High Level Trigger: Level 3 reconstruction algorithm development and optimization

Studies of the KS and KL lifetimes and

Integrated CMOS sensor technologies for the CLIC tracker

Dijet A LL Dijet cross section 2006 Dijet A LL Preparation for Tai Sakuma MIT

Track reconstruction for the Mu3e experiment based on a novel Multiple Scattering fit Alexandr Kozlinskiy (Mainz, KPH) for the Mu3e collaboration

LArTPC Reconstruction Challenges

An SQL-based approach to physics analysis

Muon Reconstruction and Identification in CMS

Study of t Resolution Function

PoS(ACAT08)100. FROG: The Fast & Realistic OPENGL Event Displayer

Reconstruction of secondary vertices with medical imaging methods and GPUs for the ATLAS experiment at LHC

Monte Carlo programs

Simulation and Physics Studies for SiD. Norman Graf (for the Simulation & Reconstruction Team)

CMS Alignement and Calibration workflows: lesson learned and future plans

Meeting. Wataru OKAMURA 26/12/2011 Osaka ATLAS meeting

Data Reconstruction in Modern Particle Physics

b-tagging activities Aug 9, 2007

Performance of the MRPC based Time Of Flight detector of ALICE at LHC

Latest development for ME-PS matching with MadGraph/MadEvent

Deeply Virtual Compton Scattering at Jefferson Lab

Silvia Miglioranzi University College of London / Argonne National Laboratories. June 20, Abstract

The Compact Muon Solenoid Experiment. Conference Report. Mailing address: CMS CERN, CH-1211 GENEVA 23, Switzerland

First results from the LHCb Vertex Locator

Update on Energy Resolution of

Tracking POG Update. Tracking POG Meeting March 17, 2009

LHC Detector Upgrades

TORCH: A large-area detector for precision time-of-flight measurements at LHCb

Computing at the Large Hadron Collider. Frank Würthwein. Professor of Physics University of California San Diego November 15th, 2013

PoS(Vertex 2007)030. Alignment strategy for the ATLAS tracker. Tobias Golling. Lawrence Berkeley National Laboratory (LBNL)

Expected feedback from 3D for SLHC Introduction. LHC 14 TeV pp collider at CERN start summer 2008

3D-Triplet Tracking for LHC and Future High Rate Experiments

SLAC Testbeam Data Analysis: High Occupancy Tracking & FE-I4 Cluster Study

ATLAS Dr. C. Lacasta, Dr. C. Marinas

Alignment of the ATLAS Inner Detector Run I Experience

Studies of e γx and of e π0x with clas and clas12

ATLAS Simulation Computing Performance and Pile-Up Simulation in ATLAS

Early experience with the Run 2 ATLAS analysis model

LAr Event Reconstruction with the PANDORA Software Development Kit

Event reconstruction in STAR

Alignment of the CMS Silicon Tracker

Implementation of the support of arbitrary pixel geometries in an existing testbeam analysis framework

π ± Charge Exchange Cross Section on Liquid Argon

Belle II Software and Computing

Event Displays and LArg

Modules and Front-End Electronics Developments for the ATLAS ITk Strips Upgrade

Transcription:

Study of the Higgs boson coupling to the top quark and of the b jet identification with the ATLAS experiment at the Large Hadron Collider. Calvet Thomas CPPM, ATLAS group PhD day 25 novembre 2015

2 The ATLAS detector Tracker Mark the path of charged particles. Calorimeters Reconstruction of electrons, photons and jets from energy deposits. Energy balance in transverse plane Reconstruction of missing energy. Muon chambers Muon detection.

Higgs searches in LHC Run 2 3 Status after Run 1 ggf and VBF (ATLAS+CMS only) productions observed at more than 5σ. H >γγ, H >ZZ, H >WW and H >ττ (ATLAS+CMS only) decays observed at more than 5σ. Precise measurement of mass and spin. LHC Run 2 (2015) of mass energy raised at 13TeV and high luminosity ~1034cm 2s 1. Detector upgrade. Center tth production will be accessible in Run 2 for the first time.

tth production mode: motivations top quark = particle with the strongest coupling to the Higgs. Indirect t< >H coupling measure Include top quark loops. Assume no new physics in loops. tth : only channel allowing direct t< >H coupling measurement tth production rate gives a direct measurement of this coupling. Deviations from standard model, or from the indirect measurement would indicate new physics! 4

5 tth(h >bb) H >bb is the main decay channel (~58%) if mh = 125 GeV. Main background tt+jets: tt+bb: irreducible <=> same final state. tt+cc et tt+light jets: reducible. b jets identification: b tagging Fondamental for background and signal. Up to 4b jets are expected.

b tagging 6 Important input to any analysis with b jets in the final statte: Higgs physics, top physics, new physics. Aim at separating b jets from c jets and light jets (udsg).

7 b tagging Important input to any analysis with b jets in the final statte: Higgs physics, top physics, new physics. Aim at separating b jets from c jets and light jets (udsg). b hadron c hadron light hadron

8 b tagging Important input to any analysis with b jets in the final statte: Higgs physics, top physics, new physics. Aim at separating b jets from c jets and light jets (udsg). b hadron c hadron light hadron

9 b tagging Important input to any analysis with b jets in the final statte: Higgs physics, top physics, new physics. Aim at separating b jets from c jets and light jets (udsg). Based on large lifetime of b hadrons: ~1.5ps. Secondary vertex at B decay point. Large distance to primary vertex: Lxy~4mm. High masses: 1 à 5 GeV. Tracks incompatible with the primary vertex. Large impact parameters. Final b tagging discriminant. ATL-PHYS-PUB-2015-022

Labelling studies for b tagging 10 What is a b jet? Aim: find a definition that is coherent with what is a b jet in data. Compare two particle< >jet association schemes: ΔR<0.3 exclusif: cone based association. Ghost association: uses the clustering algorithm. ATLAS Simulation Work in progress B tagging efficiencies for each labelling category. Discrepancies pop up when 2 closed by jets One associate to the B by ΔR the other by ghost association. b tagging more efficient for ΔR jets. Tracks associated to jets using ΔR. Uses jet< >particule / jet< >traces associations correlations.

Double b tagging 11 Motivation : constrain tt+bb background. Hard to control, large theoretical errors. Need a g >bb identifier for data. bb jet tagging. ATLAS Simulation Work in progress MultiSVbb: bb jet tagger Exploit secondary vertices. Uses boosted decision trees. 2 vertions : MultiSVbb1: Only kinematics of the vertices. MultiSVbb2: Add topological variables. Need to optimize for Run 2.

12 Optimization et performance Performance : ATLAS Simulation Work in progress Rejection = 1/efficiency Gain comptuted as: rejection(run2)/rejection(run1) 1 @35% eff MultiSVbb1 MultiSVbb2 b rej/gain 19 / +5% 24 / +4% cc-rej/gain 55 / +57% 63 / +66% c-rej/gain 390 / +100% 600 / x2.5 light-rej/gain 3600 / +50% 5500 / +70% ATLAS Work in progress Software optimization: new reading structure Faster. Consume less memory.

tth(h >bb): tt+bb background modeling Motivation : constrain tt+bb background. Hard to control, large theoretical errors. New generators might help reducing tt+bb uncertainties: Higher order computations. Event generation: Compute Add diagram. jets. Directly in the diagram: ME. As radiative corrections: PS. 13

Simulations used tt+bb hard to generate. Uses ttbar for comparisons. Compare several generators: Sherpa, Powheg+Pythia. Different number of jets added to the diagram. With or without next to leading order (NLO) computations. Re weighted Powheg+Pythia ttbar: Weights computed to match 7TeV. State of the art: Sherpa ME+PS@NLO: ttbar + 0,1 jets NLO et +2,3,4 LO Reconstruct ttbar system with jets built on the fly. 14

Jets in ttbar events 15 ATL-PHYS-PUB-2014-022 HT = ΣpT(jets) using all jets (left plot), only jets not from ttbar (middle plot). Right plot: number of jets not from ttbar system More jets in Sherpa with ME+PS (expected) Not constrain by data => don't know which is the best. Sherpa ME+PS: larger HT Sherpa NLO: smaller HT Sherpa ME+PS@NLO: closest to re weighted Powheg+Pythia6.

Conclusion and outlooks b tagging studies: My studies motivated the choice of the DR scheme for Run 2. More adapted to b tagging. bb jets tagging. Optimization of both performance and algorithm. tth(h >bb) studies: Comparison of different generators. Better understanding of background modelisation. Aims to be used for systematics computation. Run 2 began. Higher center of mass energy and new algorithms. Plan for the next years: find the tth! 16

17 Backup

Important object: jets 18 Jets: Particle group coming from the hadronisation of quarks. Built out of deposit of energy in the calorimeter. Uses a clustering algorithm. Anti kt 4 : cone based algorithm. b jets: jets originating from b quarks.

Jets clustering and ghost association Clustering Distance between 2 particles scale as (1/pT)2. R : cut off distance. Ghost algorithm uses the distances: association: Add the hadron to the list of particles to be clustered. Hadron pt sent close to 0. Avoid that the hadron changes the jet shape. If the particle end up in the jet, they are associated. 19

Le Insertable B Layer (IBL) 20 New layer of pixels Closer to beam pipe: 3.3cm now, 5cm in Run 1. Smaller pixels: 50x250μm2 now, 50x400μm2 in Run 1. Better track resolution Crucial for primary vertex identification. Important for b jet identification. https://atlas.web.cern.ch/atlas/groups/ PHYSICS/PLOTS/IDTR-2015-003/

Gain from the IBL on impact parameters z0: longitudinal impact parameter Coordinate in z of the closest point of approach to the primary vertex. d0: transverse impact parameter Primary vertex to closest point of approach distance in the (xy) plane. σ(d0) : d0 divided by its error (same for z0). https://atlas.web.cern.ch/atlas/groups/physics/plots/idtr-2015-007/ 21

22 b tagging: algorithms Inclusive secondary vertex algorithm: Reconstruct a single secondary vertex. Discriminate jet flavors with a Log Likelihood Ratio. Multi vertex algorithm: Reconstruct the full PV >B >D chain. Uses a neural network to differentiate jet flavors. Impact parameter based algorithms: Uses impact parameter significances ( e.g.σ(d0)). Define a probability for each flavor hypothesis. Discriminate jet flavors with alog Likelihood Ratio.

b tagging: from Run 1 to Run 2 23 Comparison Run 1 Run 2 : Gain a factor 4 in light jet rejection at a 70% b jet efficiency. +10% of relative efficiency for b jets at the rejection obtained in Run 1. +40 50% acceptance on tth(h >bb). ATL-PHYS-PUB-2015-022 Gain mostly due to the IBL. Gains mostly due to new algorithms. Run 2: uses directly the properties of the reconstructed vertices. ATL-PHYS-PUB-2015-022

Labelling studies for b tagging 24 What is a b jet? Aim: find a definition that is coherent with what is a b jet in data. Efficiencies computed on simulations. Need to be as close as possible to efficiency in data. ATLAS-CONF-2014-046 Scale factor for b jets efficiency: Measured efficiency over expected efficiency ratio. Correction applied to MC. Définition des b jets doit prendre en compte la région de l'espace des phases où on peut différentier les b jets expérimentalement. The b jet definition needs to take into account the phase space region where we can discriminate b jets

25 Labelling in a ttbar simulation Comparison of particles< >jets association schemes: Ghost association: uses the jets clustering algorithm. ΔR < 0.3 exclusif: cone based association scheme of size R=0.3. If a particle matches to several jets, it is associated to the closest one. ATLAS Work in progress n(x jets)/n(jets) ATLAS Work in progress b tagging efficiency for each labelling category. ΔR identify less b jets, but those jets have a higher b tagging efficiency.

b hadron separated in close by jets 26 Jet associated to a b hadron by ΔR only: Usually close to an other jet. In 89% of the cases the other jet is associated to the b hadron by ghost association. ATLAS Simulation Work in progress b tagging is more compatible with ΔR. Why? b tagging based on tracks. Tracks associated to jets using ΔR. Uses jet< >particule / jet< >traces associations correlations.

Multiple secondary vertices Fraction of vertices in each category Number of vertices with at least two tracks: ~50% of the bb jets has 2 vertices with at least 2 tracks. Limit on MultiSVbb maximum efficiency. 27 ATLAS Simulation Work in progress ATLAS Simulation Work in progress Vertex purity: ~58% have only B tracks. Large fraction of vertices sharing tracks from the 2 b hadrons. Will decrease performances. Only few vertices without B tracks.

Boosted decision trees and MultiSVbb Aim: separate bb jets from other jet flavors Uses the properties of the vertices. Find cuts for each variables that separate signal and background. ATLAS Simulation Work in progress Two versions: MultiSVbb1: uses only vertices kinematic properties. MultiSVbb2: add topological variables. 28

tth Run 1 analysis: regions definition 29 Signal regions: Large S/B and S/ B. High jets and b jets multiplicities. Dominated by the tt+jets background. Most significant region, 6 jets and 4 b jets, dominated by tt+bb. ATLAS-CONF-2014-011

tth Run 1 analysis: systematics 30 ATLAS-CONF-2014-011 Modeling: Normalization of the tt+bb background. Re weighting of the pt of the ttbar system in tt+heavy flavor (c and b). ttbar simulation choice. ttbar and tt+v cross sections. Physics objects: Jets energy scale. Jet flavor identification.

tth(h >bb): Run 1 results and Run 2 prospects 31 tth(h >bb) combination using 8TeV data: σ/σsm < 4.1 obs (2.6exp) @ 95% CL ATLAS-CONF-2014-011 tth(h >bb) ATL-PHYS-PUB-2015-017 mainly expected in the 6 jets et 4 b jets region. Run 1 sensitivity expected with ~ 10 fb 1. We'll have this statistic next summer.

ATLAS+CMS: Higgs decay modes ATLAS-CONF-2015-044 32

ATLAS+CMS: Higgs production channels ATLAS-CONF-2015-044 33