Title: EventbyEvent Fluctuations in Heavy Ion Collisions
1Event-by-Event Fluctuations in Heavy Ion
Collisions
M. J. Tannenbaum Brookhaven National Laboratory
Upton, NY 11973 USA
2nd International Workshop on the Critical Point
and Onset of Deconfinement Bergen, Norway
April 1, 2005
2or
I dont know much about
Statistical Mechanicsbut Im really good at
Statistics!
M. J. Tannenbaum Brookhaven National Laboratory
Upton, NY 11973 USA
2nd International Workshop on the Critical Point
and Onset of Deconfinement Bergen, Norway
April 1, 2005
3A Quick Course in Statistics
- A Statistic is a quantity computed from a sample
(which is drawn at random from a population). A
statistic is any function of the observed sample
values. - In physics we also call a population a
probability density function, typically f(x)
- Two of the most popular statistics are the sum
and the average
where xi are the results of n repeated
independent trials from the same population.
- Another popular statistic is the sample variance
4A Quick Course in Probability - I
- It is important to distinguish
probability--which refers to properties or
functions of the population, from
statistics--which refers to properties or
functions of the sample, although this
distinction is often blurred (but not by
statisticians).
- The probability density functions f(x) must be
normalized so that the total probability for all
possible outcomes is 1.
- The most popular probability computation is the
expectation value or the mean
5Probability--II
- The mean or expectation value of a Statistic is
often discussed
- Of note is the biased expectation value of the
sample variance
is the standard deviation
- and the mean of the population is
- and the variance of the average is
6Probability-III-sums?convolutions
- From the theory of mathematical statistics, the
probability distribution of a random variable
S(n) which is itself the sum of n independent
random variables with a common distribution
function f(x)
is given by fn(x), the n-fold convolution of the
distribution f(x)
The mean, ?n and standard deviation, ?n ,
of the n-fold convolution obey the familiar rule
where ? and ?
are the mean and standard deviation of the
distribution f(x).
7Example-ET distributions
- ET is an event-by-event variable which is a sum
(S(n))
- The sum is over all particles emitted on an
event into a fixed but large solid angle (which
is different in every experiment)
- Measured in hadronic and electromagnetic
calorimeters and even as the sum of charged
particles ?i pTi
- Uses Gamma distribution as the pdf for ET on 1
collision2 participants
- If ET adds independently for n collisions,
participants, etc, the pdf is the n-fold
convolution of f(x) p?np b?b
8NA5 (CERN) (1980) First ET dist. pp
UA1 (1982) (C.Rubbia) ?s540 GeV. No Jets
because ET is like multiplicity (n), composed of
many soft particles near !
CERN-EP-82/122. OOPS UA2 discovers jets 5 orders
of magnitude down ET distribution!
NA5 300 GeV PLB 112, 173 (1980)
2?, -0.88e) is ? dist p 2.39 0.06
9First RHI data NA35 (NA5 Calorimeter) CERN 16OPb
?sNN19.4 GeVmidrapidity
pAu is a ? dist p3.36
Upper Edge of OPb is 16 convolutions of pAu.
WPNM!!
PLB 184, 271 (1987)
WPNWounded Projectile Nucleonprojectile
participant
10E802-OAu, OCumidrapidity at AGS
?sNN5.4GeVWPNM works in detail
PLB 197, 285 (1987) ZPC 38, 35 (1988)
- Maximum energy in OCu same as OAu--Upper
edge of OAu identical to OCu d?/dE 6
- Indicates large stopping at AGS 16O projectiles
stopped in Cu so that energy emission
(mid-rapidity) ceases
- Full OCu and OAu spectra described in detail
by WPNM based on measured pAu
11E802-AGSMidrapidity stopping!pBe pAu have
same shape at midrapidity over a wide range of ??
PRC 63, 064602 (2001)
- confirms previous measurement PRC 45, 2933
(1992) that pion distribution
from second collision shifts by 0.8 units in y,
out of aperture. Explains WPNM.
12Collision Centrality MeasurementZeroDegreeCalorim
eter
PHENIX at RHIC AuAu-ZDC is biased
WA80 OAu CERN
13Extreme-Independent or Wounded Nucleon Models
- Number of Spectators (i.e. non-participants) Ns
can be measured directly in Zero Degree
Calorimeters (more complicated in Colliders)
- Enables unambiguous measurement of (projectile)
participants Ap -Ns
- For symmetric AA collision Npart2 Nprojpart
- Uncertainty principle and time dilation prevent
cascading of produced particles in relativistic
collisions ? h/mpc 10fm even at AGS energies
particle production takes place outside the
Nucleus in a pA reaction. - Thus, Extreme-Independent models separate the
nuclear geometry from the dynamics of particle
production. The Nuclear Geometry is represented
as the relative probability per BA interaction
wn for a given number of total participants
(WNM), projectile participants (WPNM), wounded
projectile quarks (AQM), or other fundamental
element of particle production. - The dynamics of the elementary underlying
process is taken from the data e.g. the measured
ET distribution for a p-p collision represents, 2
participants, 1 n-n collision, 1 wounded
projectile nucleon, a predictable convolution of
quark-nucleon collisions.
14WA80 proof of Wounded Nucleon Model at 60, 200 A
GeV using ZDC
Original Discovery by W. Busza, et al
at FNAL pA vs (Ncoll) PRD 22,
13 (1980)
PRC 44, 2736 (1991)
15ISR-BCMOR-pp,dd,?? ?sNN31GeV WNM FAILS!
WNM, AQM T.Ochiai, ZPC35,209(86)
PLB168, 158 (86)
Note WNM edge is parallel to p-p data!
16But-Gamma Dist. fits uncover Scaling in the mean
over10 decades??
p-p p2.500.06 ?-? p2.480.05
Is it Physics or a Fluke?
17Summary of Wounded Nucleon Models
- The classical Wounded Nucleon (Npart) Model
(WNM) of Bialas, Bleszynski and Czyz (NPB 111,
461 (1976) ) works only at CERN fixed target
energies, ?sNN20 GeV. - WNM overpredicts at AGS energies ?sNN 5 GeV
(WPNM works at mid-rapidity)--this is due to
stopping, second collision gives only few
particles which are far from mid-rapidity. E802 - WNM underpredicts for ?sNN 31 GeV---is it
Additive Quark Model? BCMOR
- This is the explanation of the famous kink,
well known as pA effect since QM87QM84
18i.e. The kink is a pA effect well known since
1987-seen at FNAL,ISR,AGS
19ET systematics beyond the kink
- In generic terms, dET/d? implies a measurement
corrected for
- Hadronic response---correct to E-mN for baryons,
EmN for antibaryons and E for all other
hadrons.
- ET corrected to ??2?, ??1.0, scaling linearly
in ?? x ??
- For fixed target dET/dydET/d?
- For collider at mid-rapidity dET/dy1.2 x dET/d?
- Central collisions varies from 2.5-ile to
0.5-ile in different experiments--try to correct
to average 0-5-ile (PHENIX definition)
20NA35--NA49 PbPb ?sNN17 GeV
PRL 75, 3814 (1995)
ET(2.1-3.4)-- dET/d?405 GeV_at_?sNN17 GeV
21PHENIX and E802 ET compared
?? 22.5o 2 x 22.5o 3 x 22.5o 4 x
22.5o 5 x 22.5o
E802 dET/d?128 GeV
E877 dET/d?200 GeV_at_?sNN4.8 GeV PHENIX
dET/d?606 GeV_at_?sNN200 GeV
22AuAu ET spectra at AGS and RHIC are the same
shape!!!
23dET/dy vs ?sNN for central collisions
?Bj GeV/fm3
- Lines are pp ?s dependence. Lots of systematic
issues but still kinky.
- Note that ?Bj at ?sNN20 GeV is the same in OAu
and PbPb
24ET has a dimension.Lets now consider number
distributions which are more typical of statistics
25What you have to remember
- The mean and standard deviation of an average of
n independent trials from the same population
obey the rules
where ? is the mean and ?x (or ?) is the standard
deviation of the population x .
26Moments instead of distributions
- Sometimes I will discuss the probability
distribution functions in detail, e.g. Binomial,
Negative Binomial, Gamma Distribution
- More often I, as well as most others, will just
use the first two moments, the mean and standard
deviation (or variancestd2)
- It will become important to use combinations of
moments which vanish for the case of zero
correlation. The second normalized binomial
cumulant or
vanishes for a poisson distribution, with no
correlations.
- Most people use the normalized variance
which is 1 for a poisson. It has its purpose, but
not what everybody thinks.
27Charged particle number fluctuations
-
All
Particle number fluctuations in a canonical
ensemble V.V. Begun et al, PRC70, 034901 (2004)
NA49-BariConf-JPConf 5 (2005) 74
28Binomial Distribution
- A Binomial distribution is the result of
repeated independent trials, each with the same
two possible outcomes success, with probability
p, and failure, with probability q1-p. The
probability for m successes on n trials (m,n? 0)
is
- Example distributing a total number of
particles N onto a limited acceptance. Note that
if p? 0 with ?npconstant we get a
29Poisson Distribution
- A Poisson distribution is the limit of the
Binomial Distribution for a large number of
independent trials, n, with small probability of
success p such that the expectation value of the
number of successes ?np remains constant,
i.e. the probability of m counts when you expect
?.
- Example The Poisson Distribution is intimately
linked to the exponential law of Radioactive
Decay of Nuclei, the time distribution of nuclear
disintegration counts, giving rise to the common
usage of the term statistical fluctuations to
describe the Poisson statistics of such counts.
The only assumptions are that the decay
probability/time of a nucleus is constant, is the
same for all nuclei and is independent of the
decay of other nuclei.
30Negative Binomial Distribution
- For statisticians, the Negative Binomial
Distribution represents the first departure from
statistical independence of rare events, i.e. the
presence of correlations. There is a second
parameter 1/k, which represents the correlation
NBD ? Poisson as k ??, 1/k?0
- The n-th convolution of NBD is an NBD with k ?
nk, ? ? n? such that ?/k remains constant. Hence
constant ?2/? vs Npart means multiplicity added
by each participant is independent.
- Example Multiplicity Distributions in pp are
Negative Binomial
31UA5--Multiplicity Distributions in (small)
intervals ?UA5 PLB 160, 193,199 (1985) 167, 476 (1986)
Distributions are Negative
Binomial, NOT POISSON implies correlations
?s540 GeV
32k vs ??2?c and ?s
- Distributions are never poisson at any ?s and ??
- Something fishy with NA49 pp result
33NBD in OCu central collisions at AGS vs ??
central collisions defined by zero spectators
(ZDC)Correlations due to to B-E dont vanish
PRC 52, 2663 (1995)
- No studies yet at RHIC. Also centrality cut not
as good at collider
34k(??) linear with non-zero intercept in pp and
Light Ion reactions.
Also see MJT PLB 347, 431(1995)
- This killed intermittency but dont ask, see
E802 PRC52,2663 (1995)
35Charged particle number fluctuations
-
All
Particle number fluctuations in a canonical
ensemble V.V. Begun et al, PRC70, 034901 (2004)
NA49-BariConf-JPConf 5 (2005) 74
- This is the right way to do it but more work is
needed!
36But Net-Charge fluctuations are studied Instead
- I really dislike net charge fluctuations
compared to -,, all.
- Because net-charge QN - N- is conserved. You
have to do some work to make it
fluctuate--distribute the net charge on small
intervals - But then you just get binomial statistics
- To make matters worse, ok interesting, a
theorist who obviously never took a statistics
course proposed to study the variable Rn/n-
- However, statisticians NEVER take , which
is divergent if there is any finite probability,
no matter how infinitesimal, that n-0. This is
especially dumb since you have to go to small p
(n-N-p?0) to get some flucuations. - See e.g. the work of our chairman for further
details.
J. Nystrand, E. Stenlund, H. Tydesjo, PRC 68,
034902 (2003)
37The idea of net charge fluctuations as a QGP
signature didnt work
- The idea was that fractional charges represent
more particles fluctuating than unit charged
hadrons so that the normalized variance 1/n
should be smaller. All experiments just see the
standard random binomial unit-charged hadron
fluctuations, with a small effect due to
correlations from resonances, e.g. ????-
PHENIX PRL89, 082301(2002)
NA49 PRC 70, 064903 (2004)
CERES JPhysG30, S1371(2004)
38Event-by-Event Average pT
- For events with n charged particles of
transverse momentum pTi, MpT is just the sum
divided by a constant and so has most of the same
properties as ET distributions including being
described by the convolutions of a Gamma
Distribution. - By its definition but you must work
hard to make sure that your data has this
property to - The random background is usually defined by
mixed events. You must ensure that your mixed
event sample is produced with exactly the same n
distribution as the data events. Also no two
tracks from the same event can appear in a mixed
event.
39Inclusive pT spectra are Gamma Distributions
40NA49-First Measurement of MpT distribution
NA49 PbPb central measurement PLB 459, 679 (1999)
- Pointsdata histmixed minimal, if any,
difference
- Very nice paper, gives all the relevant
information
41Statistics at Work--Analytical Formula for MpT
for statistically independent Emission
It depends on the 4 semi-inclusive parameters
b, p of the pT distribution (Gamma) ,
1/k (NBD), which are derived from the quoted
means and standard deviations of the
semi-inclusive pT and multiplicity distributions.
The result is in excellent agreement with the
NA49 PbPb central measurement PLB 459, 679 (1999)
See M.J.Tannenbaum PLB 498, 29 (2001)
42 Average pT Fluctuations
From one of Jeff Mitchells talks
PHENIX
43 PHENIX MpT vs centrality
200 GeV AuAu PRL 93, 092301 (04)
- compare Data to Mixed events for random.
- Must use exactly the same n distribution for
data and mixed events and match inclusive to
- best fit of real to mixed is statistically
unacceptable
- deviation expressed as
- FpT ?MpTdata / ?MpTmixed -1 few
MpT (GeV/c)
MpT (GeV/c)
44Large Improvement at ?sNN 200 GeV Compared to
?sNN 130 GeV results
PRL 93, 092301 (2004)
- 3 times larger solid angle
- better tracking
- more statistics
?sNN130 GeV PRC 66 024901 (2002)
45Fluctuation is a few percent of ?MpT
Interesting variation with Npart and pTmax
Errors are totally systematic from run-run r.m.s
variations
n 3 0.2 0.2 GeV/c PHENIX nucl-ex/0310005 PRL 93, 092301 (2004)
46Npart and pTmax dependences explained by jet
correlations with measured jet suppression
Other explanations proposed include percolation
of color strings E.G.Ferreiro, et al, PRC69,
034901 (2004)
20-25 centrality
47What e-by-e tells you that you dont learn from
the inclusive average
- e-by-e averages separate classes of events with
different average properties, for instance 17 of
events could be all kaons, and 83 all
pions---see C. Roland QM2004, e-by-e K/?
consistent with random.
- A nice example I like is by R. Korus, et al, PRC
64, 054908 (2004) The temperature T1/b varies
event by event with ?T? and ?T.
48Assuming all fluctuations are from ?T/?T? Very
small and relatively constant with ?sNN
CERES tabulation H.Sako, et al, JPG 30, S1371
(04)
Where is the critical point?
?T/?T?
49What Have We Learned
- In central heavy ion collisions, the huge
correlations in p-p collisions are washed out.
The remaining correlations are
- Jets
- Bose-Einstein correlations
- These correlations saturate the fluctuation
measurements. No other sources of non-random
fluctuations are observed. This puts a severe
constraint on the critical fluctuations that were
expected for a sharp phase transition but is
consistent with the present expectation from
lattice QCD that the transition is a smooth
crossover.
50What e-by-e tells you that you dont learn from
the inclusive average
51Specific Heat
- Korus, et al, PRC 64, 054908 (2004) discuss
specific heat
n represents the measured particles while Ntot is
all the particles, so n/Ntot is a simple
geometrical factor for all experiments
52Something New cV/T3
- Gavai, et al, hep-lat/0412036 call this same
quantity cV/T3 and predict in quenched QCD at
2Tc and 3Tc that it differs significantly from
the ideal gas. Can this be measured?
- In PHENIX, n/Ntot1/20, so FpT 0.33 for
cV/T315. This may be possible if we go to low
pTmax out of the region where jets contribute.
53Worth Trying
0.2 GeV/c
54Summary---Mortadella Redux
- No matter how you slice it---its still ....
..resonance matter for ?sNN3-20 GeV
55Mortadella-NYTimes 2/10/2000
56(No Transcript)
57BACKUP
58IV-Moments, Cumulants, Correlations
59RHIC 2-3 times more ET than WNM but
60Are upper edge fluctuations random?
61contd
Korus
Gavai
62Begun-nuclth0411003
I understand this 1/b1/6 but I dont understand
the rest