Title: Event-by-Event physics in ALICE
1Event-by-Event physics in ALICE
- Chiara Zampolli
- ALICE-TOF
- Centro E. Fermi (Roma), INFN (Bologna)
Correlations and Fluctuations in Relativistic
Nuclear Collisions, Firenze, 7th-9th July 2006
2Outline
- Introduction
- PID performance
- Identified Particle Spectra
- Particle Ratios
- Mean pT
- Summary and Conclusions
3QGP Signatures
- The nature and the time evolution of the hot and
dense system created in a heavy-ion collision are
expected to show the characteristic behaviour of
a QGP phase transition, which could dramatically
change from one event to the other. - Apart from the very well known probes (inclusive
probes, probes related to deconfinement...), an
analysis on an Event by Event basis offers the
opportunity to study the QCD phase transition and
to get insights into the QGP. For example
Thermodynamic quantities (T,S) Energy density
fluctuations Jets and minijets DCC, Balance
function...
Properties of the system Order of phase
transition Physics of the QGP Chiral phase
transition, hadronization time...
relying on the very high particle multiplicities
produced per event (SPS, RHIC, LHC)
4Event by Event Fluctuations
FLUCTUATIONS
- Statistical
- Finite number of particles produced
- Experimental acceptance and resolution
- Dynamical
- Dynamics of the collision
- Evolution of the system
- Sources of event-by-event fluctuations
- geometrical
- energy, momentum, charge conservation
- anisotropic flow
- Bose-Einstein correlations
- resonance decays
- jets and mini-jets
- temperature fluctuations
5Some Experimental Results
Mean pT
K/p ratio
What will ALICE sensitivity be?
STAR
6ALICE E-by-E Program
Thanks to the very high charged particle
multiplicity expected per event, E-by-E studies
will be feasible with the ALICE detector for many
observables
- Temperature
- Mean pT
- Particle Ratios
- Multiplicity
- Conserved Quantities (Charge)
- HBT radii
- Balance Function
- Flow
- DCC
- ...
Particle IDentification plays a crucial role!
http//aliceinfo.cern.ch/, ALICE PPR II
7ALICE PID
separation _at_ 3s
separation _at_ 2s
(dE/dx)
8Monte Carlo Event Sample
- 300 Hijing Pb-Pb events (fully simulated and
reconstructed) - Centrality 0 10 of minbias cross section (0 lt
b lt 5 fm) - Magnetic Field B 0.5 T
- 4500
ptgt 0.15 GeV/c, -0.9 lt ? lt 0.9 p K p
average generated 6750 720 380
9Primary Track Selection
- The selection on primary tracks has been
performed relying on the quality of the
extrapolation of the tracks to the reconstructed
primary vertex, taking into account the
covariance parameters of the track as well. - The inefficiency of the cut can be due to
- reconstruction defects
- secondaries included
efficiency
10PID Performance - Definitions
- The PID performance is evaluated in terms of
N number of reconstructed particles to which
the PID procedure is applied
11Combined PID ITS TPC TOF
0.15 lt pT lt 4 GeV/c
Efficiency Efficiency Efficiency contamination contamination contamination
p K P p K p
98 78 92 3 20 4
overall efficiency overall efficiency overall efficiency
p K p
74 40 70
p K p
ID 5150 360 280
wrongly ID 155 74 13
12Generated vs Identified Spectra
Generated
Identified (t w)
Identified (w)
13p from L weak decays
p
Generated p
Reconstructed p from L
Generated p Generated L Reco p from L
385 130 8
Per event
14Fitting of the Spectra
- Correction of the identified spectra taking into
account - Limited acceptance and reconstruction efficiency
of the detectors eacc - Transverse momentum reconstruction efficiency ep
- PID efficiency ePID
- PID contamination CPID
- Event by event fitting procedure for pT spectra
exponential function
,T slope parameter, connected to the
kinetical freeze-out temperature
15Results Single Event, pT spectra
Generated
Reconstructed
i.e. corrected!
Temperature (MeV) Temperature (MeV) Temperature (MeV)
p K p
186 2 208 8 319 13
Fit range 0.25 lt pT lt 2 GeV/c
16Results T Distributions
sT/T 0.5
sT/T 7
sT/T 6
17Systematic Uncertainties on the Corrections
- Possible sources of systematic errors
- Knowledge of the acceptance and reconstruction
efficiencies, secondaries flow... - A detailed study on is to be made of systematic
uncertainties. - Nevertheless, since a level of 10 seems
reasonable, 100 virtual experiments randomly
changing the efficiency (contamination)
correction factors by 10.
- A small relative increase of few s in the width
of the temperature distributions has been
observed in both cases (efficiency/
contamination). - The mean values of the temperatures can vary by
few s.
18Particle Ratios
K/p
R 0.106 sR 0.009
p/p
R 0.055 sR 0.006
sR/R few s
19Mean pT, all particles
476 MeV spT 7 MeV
spT/pT 1.5
The mean value depending on the relative
particle concentrations!!
20Mean pT
spT/pT 1
spT/pT 7
spT/pT 4
21Summary Conclusions
- Event by event fluctuations studies are an
important tool to explore the QCD phase diagram,
searching for the QGP, and the QCD critical
point. - Several recent experimental studies (at the SPS
-NA49- and RHIC -STAR, PHENIX...- have focused on
the studies of fluctuations in relativistic heavy
ion collisions (high temperature and energy
densities). - Thanks to its very high particle yield per event,
and to the excellent PID capabilities, ALICE will
be able to study fluctuations measuring the
identified particle spectra (p, K, p) and the
particle ratios (K/p, p/p) on an Event-by-Event
basis.
22Summary and Conclusions contd
- Temperature fluctuations statistical
fluctuations of the order of few percent for p, K
and p. - Particle ratios statistical fluctuations of the
order of few percent for both K/p and p/p. - Mean pT statistical fluctuations of the order of
few percent for p, K and p and for inclusive
spectra.
Any other contribution from dynamical
fluctuations due to new physics will result in an
increase of the observed values
- The results presented herein strongly depend on
the assumed dNch/dy. - HIJING simulation dNch/dy 4500
- RHIC results suggest a reduction by a factor
23 in the data.
E-by-E studies still feasible
23Work in Progress
- E-by-E fluctuation analysis on p-p collisions
- Multiplicity fluctuations
- Effect of Jets and Minijets
24Back-Ups
25The T-µ QCD Phase Diagram
QCD prediction _at_ very high temperatures and
energy densities, a Phase Transition from
Hadronic Matter to the QGP occurs.
What kind of phase transition? But really a phase
transition or a crossover?
LHC
- Continuous transition for small chemical
potential at - Tc 170 MeV
- ec 0.7 GeV/fm3
- Lattice calculations crossover at µb 0
- Many parameters involved
26Experiments at the LHC
CMS
LHC
Designed for high pT physics in p-p collisions
ALICE
Dedicated LHC HI experiment
9 km
ATLAS
CERN
27The ALICE Physics Program
- Heavy ion observables in ALICE
- Probes of deconfinement chiral symmetry
restoration
- Global characteristics of the fireball (Evt by
Evt)
-Multiplicities Et distributions, -HBT
Correlations, elliptic and transverse
flow, -hadron ratios and spectra, -Evt-by-Evt
fluctuations -
-Charmonium and Bottomonium states, -strangeness
enhancement, resonance modification, -jet
quenching and high pt spectra, -open Charm and
Beauty -thermal g radiation,
- p-p and p-A physics in ALICE
- Physics of ultra-peripheral heavy ion collisions
- Contribution of ALICE to cosmic-ray physics
28A Large Hadron Collider Experiment - ALICE
HMPID PID (RICH) _at_ high pT
- 5.5 TeV/NN
- Designed for
- dNch/dymax 8000
- (optimized for 4000)
- Lmax 1?1027 cm-2s-1
TOF PID
TRD Electron ID
PMD ? multiplicity
ITS Low pT tracking Vertexing
TPC Tracking, dE/dx
PHOS ?, p0
29ALICE Tracking
- Track Reconstruction has to be performed in a
high flux environment - Reconstruction at low pT very delicate (multiple
scattering and energy loss)
Tracking based on a KALMAN FILTER technique
- Simultaneous reconstruction and fitting
- Rejection of incorrect space points on the fly
- Simpler handling of multiple scattering and
energy loss effects - Easy extrapolation from one detector to the
other
30ALICE Tracking Strategy
After cluster finding, start iterative process
through the central tracking detectors,
ITSTPCTRD
dN/dy 8000 (slice 2o in q)
- Primary Vertex Finding in ITS
- Track seeding in outer TPC
HMPID
- Propagation to the vertex,
- tracking in ITS
TOF
- Back-propagation in TPC
- and in the TRD
TRD
- Extrapolation and connection
- with outer PID detectors
TPC
ITS
31ALICE Tracking Performance
Tracking Efficiency / Fraction of Fake Tracks for
dN/dy 2000, 4000, 6000, 8000
Full chain, ITS TPC TRD
- For dN/dy 2000 4000,
- efficiency gt 90,
- fake track probability lt 5!!!
32PT Resolution
33ALICE Inner Tracking System ITS
Six Layers of silicon detectors for precision
tracking in ?lt 0.9
Three tecnhnologies
SPD - Silicon Pixel SDD - Silicon Drift SSD -
Silicon Strip
- 3-D reconstruction (lt 100mm) of the Primary
Vertex
- Secondary vertex Finding (Hyperons, D and B
mesons)
- Particle identification via dE/dx for momenta lt
1 GeV
- TrackingStandalone reconstruction of very low
momentum tracks
34ALICE Time Projection Chamber TPC
Conventional TPC optimized for extreme track
densities
- Efficient (gt90) tracking in ? lt 0.9
- s(p)/p lt 2.5 up to 10 GeV/c
- Two-track resolution lt 10 MeV/c
- PID with dE/dx resolution lt 10
Space-Point resolution 0.8 (1.2) mm in xy,(z),
occupancy from 40 to 15
35ALICE Time Of Flight TOF
Large array at R 3.7 m, covering ? lt 0.9 and
full f
122 cm
- TOF basic element
- double-stack Multigap RPC strip
- Occupancy lt 15 (O(105) readout channels)
Readout pads 3.5x2.5 cm2
2x5 gas gaps of 250mm
- Extensive RD, from TB data
- Intrinsic Resolution 40 ps
- Efficiency gt 99
36PID with the ITS
PID in the 1/b2 region
central PbPb events
- 2 measurements out of 4 Layers (SSD, SDD) used in
the truncated mean - s(dE/dx) 10
dE/dx (MIP units)
p (GeV/c)
37PID with the TPC
central PbPb events
- Use maximum signal in cluster, shared
clusters not included - Truncated mean with 60 lowest signals
protons
dE/dx (MIP units)
Also some separation in the relativistic rise
kaons
Pions, 0.4ltplt0.5 GeV/c
pions
p (GeV/c)
- Well described by gaussians (_at_ fixed pT)
- dE/dx resolution 6.8 at dN/dy8000 (5.5 for
isolated tracks, or pp collisions)
dE/dx (a.u.)
38PID with the TOF
Total System resolution (including track
reconstruction) 90 ps
Mass p(t2TOF/L2-1)1/2
P (GeV/c)
? k p
Mass (GeV/c2)
Pions
TOF response gaussian in (tTOF texp ),
- tTOF measured time of flight
- texp time calculated from tracking
- for a given mass hypothesis
39ALICE PID Performance ()
Central Pb Pb HIJING events kaon case
Combining the PID information from different
detectors allows a weaker momentum dependence of
the efficiency (contamination) which stays higher
(lower) or at least equal than with stand-alone
detectors!!!
p dependence of
efficiency
contamination
40ALICE PID Approach
- A common BAYESIAN approach is adopted by every
ALICE detector performing PID - The probability w(is) to be a particle of type i
(i e, m, p, ...) if a signal s (dE/dx, TOF,...)
is detected, is
r(si) conditional pdf to get a PID signal s in a
detector, if a particle of type i is detected
Ci a priori probability to find a particle of
type i in the detector
Combined PID combining (multiplying) the r(si)
from different dets
- Weaker momentum dependence of the efficiency
(contamination) - Efficiency (contamination) higher (lower) or at
least equal than with stand-alone detectors
41Results T Distributions
sT/T 2
sT/T 7
sT/T 7
42Efficiency Correction Variation
No significant change!
43Contamination Correction Variation
No significant change!
44ITS PID
p K p
ID 5200 330 270
wrongly ID 315 125 30
Efficiency Efficiency Efficiency contamination contamination contamination
p K P p K p
97 63 85 6 38 13
overall efficiency overall efficiency overall efficiency
p K p
73 31 65
45TPC PID
Efficiency Efficiency Efficiency contamination contamination contamination
p K P p K p
gt99 50 76 6 15 3
overall efficiency overall efficiency overall efficiency
p K p
75 25 58
p K P
ID 5380 220 225
wrongly ID 310 35 6
46TPC ITS PID
Efficiency Efficiency Efficiency contamination contamination contamination
p K P p K p
98 32 85 4 25 6
overall efficiency overall efficiency overall efficiency
p K p
74 33 65
p K p
ID 5200 310 260
wrongly ID 230 75 15
47TOF PID
overall efficiency overall efficiency overall efficiency
p K p
75 39 66
Efficiency Efficiency Efficiency contamination contamination contamination
p K P p K p
98 76 86 2 22 5
p K p
ID 5200 360 260
wrongly ID 100 80 10
48E-by-E Fluctuations Observables
- Mean Transverse Momentum
- Mean Energy
- Charge Fluctuations
- Particle Ratios
- Identified Particle Spectra
Particle IDentification plays a crucial role!