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Track reconstruction challenges for future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC

Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

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Page 1: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Track reconstruction challenges for future linear colliders

CTD2015, LBNL February 10, 2015

Norman Graf SLAC

Page 2: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Linear Collider Environment

• Detectors designed to exploit physics discovery potential of e+e- collisions at √s ~ 0.5 – 1(3)TeV.

• Perform precision measurements of complex final states with well-defined initial state:

– Tunable energy – Momentum constraints – Known quantum numbers

• e , e+ polarization

– Very small interaction region • “Democracy” of processes and

lower cross sections, plus precision measurements, require sensitivity to all decay channels. – W/Z separation in hadronic decays – Jet flavor tagging

2 √s (GeV)

σ(f

b)

Page 3: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILC Beam Structure

• Beam structure allows for power pulsing – reduce power between bunch “trains” – reduces cooling needs

• Beam structure requires bunch disambiguation – multiple readouts during train – time-stamping of subdetector hits – detectors and algorithms capable of handling full train

3

366 ns

2625x

0.2 s

0.96 ms Multiple collisions

CLIC (3TeV) 312 bunches 0.5 ns 50Hz

Page 4: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILC Beam

4

R (c

m)

Z (cm)

5 Tesla

“Pinch” of beams increases luminosity, but disruption creates pairs via beamstrahlung.

High field required to stay clear of “cone of death”.

Page 5: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Detector Requirements

• Precision invariant mass resolution – Higgs recoil measurement for Z → e+e- , µ+µ-

– Fully reconstruct hadronic final states for W/Z ID & separation • Tag quark flavor with high efficiency and purity.

– top quark Yukawa coupling ( 8 jets, 4 b), higgs self-coupling • Excellent missing energy/mass sensitivity.

– SUSY LSP • Require:

– Excellent vertexing capabilities: σrϕ ≈ σrz ≈ 5 ⊕ 10/(psin3/2ϑ)µm • Inner radius close to beampipe, high precision, time resolved

– Exceptional momentum resolution: σ(1/ pT ) = 2 ×10−5 (GeV −1) • High magnetic field, low-mass precision tracker

– Precision calorimetry: σEjet / Ejet ≈ 3% • “Particle Flow”, imaging sampling calorimeter

– Hermeticity: Ω = 4π • Minimal supports, on-detector readout.

• Affordable! → cost-constrained optimized design

5

Page 6: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Momentum Resolution Driver

6

Recoil Mass

Tagged sample of Higgs events. Provides sensitivity even to invisible decays. Goal is δp⊥/p⊥

2 ~ 2x10-5

Two complementary solutions: Large number of lower resolution hits or small number of precise hits. ILD SiD

Page 7: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILD

7

Page 8: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILD Tracking System

8

TPC

SET

VTX/SIT

ETD

FTD

3.5T

Page 9: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Clupatra TPC pattern recognition

• NN cluster in pad row ranges → clean track stubs – Extend inward /outward using Kalman Filter

• Repair split tracks / merge segments

9

Page 10: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Silicon, Forward and Full Tracking

• Silicon Tracking – brute force triplet search in stereo angle sectors based on a set of seed-

layer-triplets – road search based on helix fit – attach leftover hits – refit

• Forward Tracking – Cellular Automaton for track finding – Hopfield Networks to arbitrate between candidates with mutual hits – Subset processor to find consistent set with tracks from Silicon

Tracking • Full Tracking

– combines track from TPC-Silicon-Forward tracking based on track parameter compatibility

– adds spurious leftover hits – final track fit

10

Page 11: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILD Track Efficiency

• e+e-→ttbar events: primary particles from within 10 mm of IP that leave at least 4 hits in detector and reach the calorimeter

• included full background from incoherent pair production - O(106) hits in VXD !

11

Page 12: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILD Track Resolutions

12

5 3

1/2 10 1 10

sinTpTGeV p

σθ

− −× ×= ⊕ 3/2

105( )sinr m m

p GeVϕσ µ µθ

= ⊕

Page 13: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Silicon Detector (SiD)

13

Page 14: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Design Concept

• Although mechanically and technologically distinct, the vertex detector and outer tracker are being designed as an integrated system.

• Expect best performance with a uniform technology • Si and CF support allows for uniform material • Also allows for easy optimization of the design • Superior point resolution • Provides single bunch crossing timing • Robust against beam backgrounds and field

nonuniformities 14

Page 15: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Tracking Detectors

15

Vertex: 5 barrel + 7 disk inner pixel detector 20µm x 20µm Tracker: 5 barrel (axial strip) 4 disk (stereo strips) 5T Central Field

Page 16: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Tracking Detectors

• Material budget X/X0 < 0.1 in central region, <0.2 throughout the tracking volume.

• Uniform coverage of a minimum of 10 hits per track down to small angles. 16

Page 17: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Track Finding Strategy

• Circle fit to three “seed” layers provides initial track fit

• “Confirm” layer provides fast fail • “Extend” layers add remaining hits • StrategyBuilder creates list of topological sets of

“seed” and “confirm” layers. – Developed using MC training samples – Run as many strategies as are needed

• Inside-out strategies currently being used – two innermost vertex layers excluded due to high

occupancies 17

Page 18: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Track Efficiencies

• 1TeV Z’ → qqbar + pairs + γγ→hadrons

18

Page 19: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Track Resolutions

19

5 3

1/1.5 10 2.2 10

sinTpTGeV p

σθ

− −× ×= ⊕ 2D impact parameter < 2µm

Page 20: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Non-prompt Tracks

• Decays of K0S, Λ, conversion, long-lived exotics,…

• Calorimeter Assisted Tracking (garfield) • Fine-grained Ecal (30 layers, 3.5mm pixels provides excellent MIP

tracking. • Find MIP-stubs, extend into tracker

20

Page 21: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

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Page 22: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

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Page 23: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

CLIC Tracker Optimization

• Efforts currently underway to optimize tracker layout – R=1.25m → 1.5m – Adding extra endcap disks – Longer Barrel (L/2=1.6m → 2.3m) – Layer layout optimization – Revisiting timing and occupancy – Studying effects of inhomogeneous field

• Basically, the design proposed for 0.5 – 1 TeV proved workable.

• No major change in pattern recognition needed. – Investigating cellular automaton & minivectors

23

Page 24: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Are we done?

• Both ILD and SiD at the ILC and the CLIC detector have demonstrated (with MC) that they can achieve the required detector performance using existing pattern recognition algorithms.

• Tracking results are predicated on being able to maintain the material budgets currently envisioned – Need to ensure robustness against material creep

• Development work ongoing to improve algorithms or CPU performance

24

Page 25: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

ILD Tracking Developments

• Investigating Fine Pixel CCDs (5µm pixels) in vertex detector to reduce occupancy accumulated during one train.

• Work ongoing to develop algorithms to identify clusters arising from low pT backgrounds.

• Investigating application of Cellular Automaton to central Si-Tracking. – higher efficiencies at lower CPU look promising

• Smarter seeding in outer Si layers to improve CPU

25

Page 26: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

SiD Tracking Developments

• Optimizing tracker and vertex layout: number, lengths and positions of layers.

• Replacing forward shallow stereo with pixel layers – Removes ghost hits, reduces material

• Investigating strixels for outer tracker • Investigating all-pixel tracker • More, better 3D spacepoints will allow adoption of

different pattern recognition algorithms – e.g. conformal mapping

• Implementing non-uniform field handling 26

Page 27: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Tracking Software Plans

• LC Community shares a common event data model and persistency format (LCIO) – Makes exchange of software easier – Fortran event generator, Java tracking, C++ PFA,

python analysis… • Work ongoing within AIDA (⇒ Horizon2020) to

provide a common geometry system (DD4hep) and common tracking software infrastructure (AidaTT)

• Refactoring, rewriting, incorporating new ideas – Perfect time to contribute!

27

Page 28: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

And much more…

• Additional pattern recognition problems being tackled within the LC community include:

• Flavor-tagging using displaced vertices – LCFIPlus

• Calorimeter clustering and track-cluster association – PandoraPFA

28

Page 29: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Flavor Tagging

• Tagging of charm and bottom quarks important for many studies including Higgs branching ratios.

• Flavor-tagging of jets based on displaced vertices • LCFI package based on SLD’s ZVTOP

topological algorithm. – Required jet-finding to provide direction

– Flavor tagging based on Neural Networks

29

Page 30: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

LCFIPlus

• Multivariate analysis: • BDT in place of NN • Separated by # of vertices • Vertex position/mass/tracks • Impact parameters of tracks • ~ 20 variables

• c-tag depends on vertex resolution

30

• Vertices built up from complete set of tracks • Does not require jet direction (avoid jet

ambiguity) better in multi-jet environments (ZHH etc.)

• Single track can be assigned to second vertex to identify b-c cascade decay IP

Secondary vertex

Single track vertex (nearest point)

Vertex-IP line

track

D θ

Page 31: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Jet Energy Resolution

• Many interesting physics processes involve multi-jet final states.

• Reconstruction of dijet invariant mass important for event reconstruction and ID (e.g. WW vs ZZ)

31

• Beamstrahlung reduces value of kinematic fits, puts premium on intrinsic detector resolution

Page 32: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Individual Particle Reconstruction

• ~60% of jet energy from charged particles • ~30% photons • ~10% neutral hadrons • Highly granular “imaging” calorimeters should enable

unambiguous association of showers with individual particles.

• Associating clusters with charged tracks allows momentum measurement of tracker to be used instead of energy measurement of calorimeter

• Photons measured in Ecal ~20% • Remaining neutral hadrons measured in Hadron calorimeter • Reducing “confusion” term relies on excellent calorimeter

granularity and tracking + flexible set of sophisticated clustering and cluster-track association algorithms 32

Page 33: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

PandoraPFA

• Developed by Mark Thomson and John Marshall at Cambridge for ILD, subsequently applied to SiD and CLIC detectors. Delivers 3-4% energy resolution →2.5σ W/Z sep

• Now finding application outside of collider detectors.

33

Page 34: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Reconstruction

34

Page 35: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Reconstruction

35

Page 36: Track reconstruction challenges for future linear collidersfor future linear colliders CTD2015, LBNL February 10, 2015 Norman Graf SLAC . Linear Collider Environment • Detectors

Conclusion

• Two complementary approaches have been adopted in the LC community to provide tracking – ILD’s large TPC with Si envelope and vertex tracker – SiD’s all-silicon strip + pixel system

• Both have been shown to provide the performance required by the aggressive ILC (.5–1 TeV) physics program.

• CLIC has demonstrated the applicability of the all-silicon approach at higher energies (3TeV)

• Ongoing program to improve the software, adopt new algorithms and attack new problems.

• Tracking results feed into both flavor-tagging and PFA, both areas of active algorithm development.

• We look to learn from existing experiments and expect to contribute to new efforts. 36