Title: Adam Jacholkowski
1Silicon Tracking at WA97 and NA57
- introduction to WA97/NA57
- setup physics
- silicon pixels hardware aspects
- alignment
- pattern recognition track fit
- vertex finding
- summary final remarks
OUTLINE
2INTRODUCTION(1)
The NA57 Experiment
(continuation and extension of WA97)
Study of the dependence of hyperon
enhancements on
- Interaction volume - centrality down to
Nwound 50 - Collision energy - data at two beam momenta -
- 158 and 40
A GeV/c
3-4 Tb in CASTOR (mass storage)
WA97 p-Be sample used as reference data at 158 A
GeV.
3INTRODUCTION
INTRODUCTION(2)
- NA57 example of the enhancement study
- result for more see
- G. Bruno plenary talk at QM2004
systematic error
statistical error
Enhancement def.
INCREASES WITH STRANGENESS CONTENT !
central rapidity (one unit) yield
4WA97 (predecessor of NA57) set-up in the OMEGA
magnet
- Target Be, Pb
- Beam p, Pb, 158 A GeV/c momentum
- Magnetic field 1.8 T
- Silicon telescope tracking device (7 pixel and
10 microstrip planes, 5cm x 5cm) - Pad chambers lever arm
- Scintillation petals lead run centrality trigger
(40 sinel) - Multiplicity detectors off-line event centrality
analysis
L
( 0.5 M pixels)
a
d
L 30 cm d 60 cm (Pb-Pb), 90 cm (p-A) a 40
mrad (Pb-Pb), 48 mrad (p-A)
5WA97
B0 event
6 NA57 SETUP (Pb - Pb run)
( 1.0 M pixels)
1.4 T
Apparatus
X
Target 1 Pb Scintillator Petals centrality
trigger MSD multiplicity silicon
detector Tracking device silicon pixel
planes (5 x 5 cm2 cross
section) Lever arm double side mstrips
5 cm
7(No Transcript)
8(No Transcript)
9O3 pixel (single) card
O2 pixel plane (box)
5 cm
10Single pixel cell of the LHC1/?3 chip
LHC1 A semiconductor pixel detector readout chip
with internal, tunable delay providing a binary
pattern of selected events Erik H. M. Heijne et
al Nucl. Instr. Methods A 383 (1996) 55
( RD19 WA97 collaboration)
11Pixel Maps (full planes) 1
Z
O3Y
(98256 pixel cells)
Y
as seen by the beam (along X)
double length pixels (chip border)
10 000 events
12Pixel Maps (full planes) 2
O2Z
(73656 pixel cells)
only one card switched ON
10 000 events
13Dead Time (1)
LDC Local Data Collector (group of pixel cards)
ms
DT proportional to amount of fired pixels
(hits noise)
14Dead Time (2)
Risk of saturating DAQ in case of high level of
noise, but exaggerated noise suppression ?
lowering planes efficiency
compromise
Importance of masking noisy pixels and
(chips) efficiency monitoring
Data Base
15MAIN ANALYSIS STEPS
- ALIGNMENT and CALIBRATION ? DATA BASE
- GEOMETRICAL RECONSTRUCTION ? clusters, tracks
- V0 FINDING ? ? and K0 candidates
- CASCADE RECONSTRUCTION (V0s tracks)
-
- PARTICLE SIGNALS EXTRACTION (selection cuts)
- ? Gold-Plated ntuples
- CORRECTING for ACCEPTANCE and LOSSES ? EVENT-BY-
- EVENT WEIGHTING (and/or de-convolution)
- EXTRAPOLATION TO FULL Pt AND ONE UNIT OF
rapidity - NORMALIZATION (beam flux,target)
YIELDS - MULTIPLICITY RECONSTRUCTION ? CENTRALITY
THIS TALK
16ALIGNMENT(1)
- Starting point optical bench survey
measurements internal pixel ladder positions
(known from construction) - Internal pixel alignment cross checks using
strips tracks (WA97) and exploiting ladder
overlaps - Transverse longitudinal alignment using
straight tracks (special B0 and telescope in
proton beam runs) - Small correction tilt angles relative to the
telescope axis - Cross-alignment of the Z and Y planes
- Alignment data taken periodically and/or after
each intervention on the optical bench ( results
stored in the DB)
17Alignment (2)
mm
Z
Y
microns
Z
Y-plane tilt test
Single Y (vertical) ladder
18Parabolic Approximation (used in Pat. Rec.)
10 µ diff.
circle parabola
Sagitta L2 /8? ¼ cm (50 pixels)
19Polynomial Parameterization Fit (example)
20TRACK RECONSTRUCTION PRECISION
(3 points parabolic approximation)
s0 pitch/sqrt(12)
B in kGs, p in GeV/c, L in cm
R.L. GLUCKSTERN Nucl. Instr. Methods 24(1963)
381
21NA57 case ? 0, L 30cm, B 14kGs,X0
30cm/(9x 0.012) 277cm, pitch 50µm
meas
msc.
?p/p meas and msc errors equal at p 12.2 GeV/c
(4.5) p 12.2 ? ?f 0.25 0.17mrad ? 0.3
mrad
22Pattern Recognition(1)
Semi-combinatorial, using predefined plane
configurations of the compact part only
- Parabolic track model (very good approximation!)
in the bending plane - Starting from 3 points (e.g. in the first and the
last plane in one of the intermediate planes)
then adding other points lying within the
predetermined limits relatively to the
predictions - Constraints Npoints Nmin (for example 6-7 out
of 9-11 possible) with a requirement of a minimum
number of points in each type of pixels (Z or
Y-like)
23Pattern Recognition(2)
WA97
x
x
x
(X-)
(p-)
24Pattern Recognition (3)
- 2D - PR matching in WA97, 3D - PR in NA57
- Hit sharing level controlled according to the
chosen tolerance ambiguities resolved on the
basis of ?2 - Track finding efficiency bigger than 95, while
Kalman Filter e 50 ! ( sparse points
multiple scattering) - Ghosts kept at a negligible level (below 1 )
- PR optimization - multiplicity dependent
(different in Pb-Pb and p-Be)
25Track Fit(Quintic Spline)
H. Wind Nucl. Instr. Methods 115 (1974) 431
26ORHION reconstruction programme
- Fortran code developed under Patchy new versions
kept backward compatible (useful for reprocessing
!) - Working both on real and simulated (GEANT MC)
data - Internally split into different (main) sub
processes - OR steering
- ST pattern
recognition TF track fit
XC lever arm track improvement - V0 secondary vertices finder
- DST-output files of different formats ? input
for the analysis programs
27aspect ratio 9 !
p-Be 40 GeV/c ? event
ORHION
cm
O3YO3ZO2YO2ZO3YO2YO2ZO2Y O2Z O3YO3Y
planes sequence
28aspect ratio 9 !
p-Be 40 GeV/c ? event
ORHION
cm
O3YO3ZO2YO2ZO3YO2YO2ZO2Y O2Z O3YO3Y
planes sequence
29Vertex Finding
- Primary vertex from secondary tracks
extrapolation (the µ-strips beam telescope used
only in the WA97 p-Be run ) - - event-by-event (WA97) or
- - run-by-run (to handle more peripheral
collisions in NA57) - V0 finding pairs of oppositely charged tracks
extrapolated first to a ref. plane, then search
for the point of nearest approach using helix
parameterization - The nearest approach distance a crucial
parameter in selecting clean signals (removing
background) - a typical cut value dmax/2 (alias close)
0.04 cm
30HYPERON DETECTION
X
Plus many other associated tracks
Each hyperon (particle) assigned to a centrality
class according to MSD? Ncharged
byp
byL
31Mass Resolution ?
158 A GeV/c
40 A GeV/c
32Mass Resolution K0s
158 A GeV/c
40 A GeV/c
33Summary
- WA97 ? first application of pixel technology (O2
then O3/LHC1 chips) in conjunction with strips - NA57 ? pattern recognition and tracking entirely
based on pixel detectors - ? WA97 and NA57 experience ? pixel detectors
a powerful tool for high precision tracking (3D)
34Final Remarks (1)
Technology still in rapid evolution, future ?
CERN LHC experiments/NA60
35Message to CBM
Final Remarks (2)
PIXEL TECHNOLOGY is a powerful tool for
physics once good care is taken of all
necessary elements of hardware (calibration) and
software (alignment, noise and efficiency
control) environment
36THE NA57 COLLABORATION
Physics Department, University of Athens,
Greece Dipartimento IA di Fisica dell'Università
e del Politecnico di Bari and INFN, Bari, Italy
Fysisk Institutt , Universitetet i Bergen,
Bergen, Norway Høgskolen i Bergen, Bergen,
Norway University of Birmingham, Birmingham, UK
Comenius University, Bratislava, Slovakia
University of Catania and INFN, Catania, Italy
CERN, European Laboratory for Particle Physics,
Geneva, Switzerland Institute of Experimental
Physics Slovak Academy of Science, Kosice,
Slovakia P.J. Safárik University, Kosice,
Slovakia Fysisk institutt, Universitetet i Oslo,
Oslo, Norway University of Padua and INFN,
Padua, Italy Collège de France, Paris, France
Institute of Physics, Prague, Czech Republic
University La Sapienza'' and INFN, Rome, Italy
Dipartimento di Scienze Fisiche E.R.
Caianiello'' dell'Università and INFN, Salerno,
Italy State University of St. Petersburg, St.
Petersburg, Russia IReS/ULP, Strasbourg, France
Utrecht University and NIKHEF, Utrecht, The
Netherlands.
37CENTRAL RAPIDITY YIELD MEASUREMENT
INTRODUCTION
FULL Pt RANGE
ONE UNIT OF RAPIDITY
T from Max-Log-Likelihood
38Hyperon reconstruction?(cowboy) acceptance
d
?
X-
p-
39Pixel maps (single cards)
Importance of masking noisy pixels and
(chips) efficiency monitoring
Data Base
(36828 pixel cells)
(49128 pixel cells)
40EXAMPLE OF ORHION PROCESSING(Pb-Pb 2000
Background)
- Background data representative sample of all
data - (each 200th event 5), 24 files
- Parallel running at CERN (Linux Batch) ? overall
- 1 day and 1 night human time
- About 3-4 NCU hours per file
- 1440-1920 NCU hours
of full 2000 - data ( 230 Mevts ) ORHION processing
- (distributed between all labs !!)
Slightly less for Pb-Pb at 40 GeV/c, then still
less for p-Be (one week)
41Selection of Hyperons (and KS0)
- Cleaning of the signals via geometrical cuts
close
? impact
X-? vertex
42WEIGHTING PARTICLES
- A weight is associated with each selected
particle to - correct for acceptance, efficiencies and cuts
( few thousands)
spread
2 different selections (cuts)
43WEIGHTING PROCEDURE (2)
- Weights are calculated by Monte Carlo
- - generated hyperons (Ngen) are traced
through a - GEANT simulation of the NA57 apparatus
- - track hits are merged with true events
- - resulting events are processed through the
- reconstruction and analysis chain
- - reconstructed hyperons are counted
(Nrec) - Simulation thoroughly checked against real data
44WEIGHT STATISTICS at 158 GeV/c
Particle
3340 2350 2718 6444 936 432 192
weighted
x400 x400 x50 x1 x1 x1
x1
collected
Most expensive cascade particles1-3 NCU hours
on LXPLUS, 10000 ?s and 10000 K0s ? about 40K
NCU hours, alias 1 working month (estimate)
- 2001 p-Be data weighting ( 4000 ?s only) just
in one week at CERN
45DECONVOLUTION
An alternative method to weighting (which is
precise but CPU expensive), applicable to high
statistics samples
F. Antinori et al Transverse mass spectra of
strange and multi-strange particles in Pb-Pb
collisions at 158 A GeV/c Eur. Phys. J. C 14,
633-641 (2000)
46Energy multiplicity dependence
logarithmic scaling