Title: Secondary Vertex reconstruction for the D
1Secondary Vertex reconstruction for the D
- Elena Bruna, Massimo Masera, Francesco Prino
- University of Torino and INFN
ALICE Physics Week Erice, Dec. 6th 2005
2Outline
- Motivations for a good secondary vertex
reconstruction capability - Three different methods to find the secondary
vertex for D ? K-pp - Comparison between the methods ? find the
candidate for the D analysis - Future plans
3Why D ? K-pp ?
drawbacks
Advantages
- Combinatorial background for this 3-body channel
is larger than for D0 ? K-p. - The average PT of the decay product is softer (
0.7 GeV/c compared to 1 GeV/c for the D0)
- D has a long mean life (311mm compared to
123 mm of the D0) - D ? K-pp can be fully reconstructed in the
detector - D ? K-pp has a relatively large branching
ratio (BR9.2 compared to 3.8 for D0 ? K-p).
- The signal selection strategy is based on
- Good secondary vertex reconstruction capability
(c? (D) 300mm ? resolution of 200mm would be
bad, 50mm would be a dream) - Efficient system of cuts to discriminate the
signal from the background - On the single track (PT,d0,)
- On the signal candidates (invariant mass,
distance between primary and secondary vertices,)
4Simulation strategy
Our purpose exclusive reconstruction of D in
the ALICE barrel (Inner Tracking System employed
in the search for secondary vertices)
Too large statistics (108 events) would be
required to study the signal!!
Central Pb-Pb event (blt3.5 fm, dN/dy 6000,
vs5.5 TeV)
9 D/D- in ylt1
Signal and background events separately generated
with the Italian GRID
- 5000 signal events with only D decaying in Kpp
(using PYTHIA) - Check the kinematics and the reconstruction
- Optimize the vertexing algorithm
- 20000 background events (central Pb-Pb events
using HIJING) - cc pairs merged in addition in order to reproduce
the charm yield predicted by NLO pQCD
calculations ( 118 per event) - Tune the cuts (impact parameter cut,) on the
tracks to be analyzed by the vertexing algorithm - Evaluate the combinatorial background
5Straight Line Vertex finder
- Originally developed to find the primary vertex
in p-p - Based on the Straight Line Approximation of a
track (helix)
- Main steps
- The method receives N (N3 in our case) tracks as
input - Each track is approximated by a straight line in
the vicinity of the primary vertex - An estimation of the secondary vertex from each
pair of tracks is obtained evaluating the
crossing point between the 2 straight lines - The coordinates of secondary vertex are
determined averaging among all the track - pairs
track1
track3
track2
6Results with the Straight Line Vertex Finder
Straight Line
Improvements
RMS179 µm
X coord
- Add a cut (DCAcut) on the distance of closest
approach (DCA) between the two straight lines - negligible effect on RMS,
- cuts only 1 of good vertices
- to be tested on background events
- Use a weighted mean of the 2 points defining the
DCA (take into account the errors on the tracks
parameters) - improves Z resolution by 6mm
Finder- MC (mm)
Y coord
RMS183 µm
Finder- MC (mm)
RMS166 µm
Z coord
Finder- MC (mm)
7From Straight Line to Helix
Straight Line
Helix
RMS169 µm
RMS179 µm
Further development use of the track as helix,
without the straight line approximation (no
longer analytic, minimization is required)
X coord
Finder- MC (mm)
Finder- MC (mm)
Y coord
RMS171 µm
RMS183 µm
Result very small improvement (10mm) WHY?
Finder- MC (mm)
Finder- MC (mm)
RMS166 µm
Z coord
RMS162 µm
Finder- MC (mm)
Finder- MC (mm)
8Straight Line Approximation
Straight Line Approximation
Decay dist 300 mm
track
d (µm)
Secondary vertex
d (µm) is the distance between the secondary
vertex and the tangent line
Primary vertex
PT (GeV/c)
- d is of the order of tens of nm
- the small differences between Helix and Straight
Line Finder seem not to be due to the linear
approximation, but rather to the fact that in the
Helix method the errors on the track parameters
are considered in the minimization
PT 0.5 GeV/c
d (µm)
Decay dist (µm)
9New secondary vertex finder
- Straight Line Approximation used ? analytic
method - The 3 tracks are taken at the same time, no
pairs of tracks
Vertex coordinates (x0,y0,z0) from minimization
of
Where d1,d2,d3 are the distances (weighted with
the errors on the tracks) of the vertex from the
3 tracks
P1 (x1,y1,z1)
SecondaryVertex (x0,y0,z0)
sx sy
d1
10Resolution of the vertex finder
RMS x
RMS y
At high Pt of D (Ptgt5-6 GeV/c), the RMS in the
bending plane increases, instead of going down to
15µm (spatial pixel resolution) as expected.
RMS z
New method improves RMS of 40µm for D Pt
2GeV/c for x, y and z with respect to previous
Helix vertex finder based on DCA of pairs of
tracks.
11Resolution at high Pt
In the signal events, as the Pt of the D
increases, the daughters become more and more
co-linear, resulting in a worse resolution along
the D direction.
p
p
K-
bending plane
D
12Resolution in the rotated frame
Along the Pt of the D (x coord.)
Orthogonal to the Pt of the D (y coord.)
? Along the Pt of the D as Pt increases (for
Ptgt5-6 GeV/c) the angles between the decay
tracks become smaller in this coordinate the RMS
increases ? Orthogonal to the Pt of the D the
RMS decreases as expected
- Checks with events only made of pions show that
the RMS on the bending plane - Decreases down to 50 µm if the 3 tracks have Pt
2 GeV/c - Reaches a value of 20 µm (in agreement with
spatial pixel resolution) if the 3 tracks have Pt
100 GeV/c
13Track dispersion cut on fSigma
(for X coordinate)
Accepted Vertices / Tot Vertices (True vertices)
Fake vertices (tracks coming from 3
different D vertices)
- fSigma lt 0.7 cm cuts 1 of the events and gives
a RMS of 115 µm
- fSigma lt 0.4 cm cuts 30 of the events and
gives a RMS of 100 µm
14Conclusions on the finders
- The Straight Line vertex finder
- DCA cut negligible effect on the RMS of the
residual distributions, slightly reduced number
of good vertices (1) - The use of a weighted mean improves Z resolution
by 6 mm - Cutting on the dispersion fSigma improves the
resolution (by 30mm)
- The Helix vertex finder
- Has better resolution w.r.t. Straight Line
finder (by approximately 10 mm) - DRAWBACK the DCA between helices is obtained by
minimization - Weighted mean improves Z resolution by 8 mm
- fSigma cut improves the resolution (by 30 mm)
- The Minimum Distance vertex finder
- Has better resolution w.r.t. Helix finder (by
approximately 40 mm) - Has less overflows and underflows w.r.t.
previous finders - Is an analytic method
- Weighted mean and fSigma cut improve the
resolution (by 20mm) - Is presently THE candidate for first D analysis
A cut on fSigma has to be tuned (it can be done
at analysis level)
15Future Plans Tuning the cuts
GOAL tune the cuts on both signal and background
events and find the cuts giving the best S/B.
(S/B 11 was found for the D0?K-p)
- CUT TIPOLOGIES
- On the single tracks used to feed the vertexer
(Particle Identification, pT, track impact
parameter) - ? reduce the number af all the possible
combinations of track-triplets in a central Pb-Pb
collision ( 1010 without any initial cut!!). It
MUST be cut by 4-5 orders of magnitude before
using the more time-consuming vertexer. - In progress.
- Once the triplets are combined, additional cuts
(invariant mass, Dalitz plots and, possibly,
impact parameter based) are mandatory before
using the vertexer. These cuts are done on the
triplets. - To be done.
- The third kind of cuts is applied on the quality
of the secondary vertices found (vertex
dispersion-fSigma, distance between primary and
secondary vertices, pointing angle,) - To be done.
16Single track cuts
GOAL find a compromise between the number of
background triplets and the number of signals we
want to take
HOW for each triplet (both signal and bkg) a
loop on all the possible cuts (d0,Pt p,Pt K) is
done
Cut on the track impact parameter (d0)
Particle Id. given by the generation initial
approach
The number of BKG triplets is reduced by a factor
of 100 when doing the cut on the Invariant Mass
within 3s
17Backup slides
18Track dispersions/1
?R dist (Vertex FOUND Vertex MC)
?R lt 1000 µm
1000lt?R lt3000 µm
3000lt?R lt5000 µm
?R gt 5000 µm
fSigma bigger for not well found vertices
19Resolution at high Pt /1
- Checks with events only made of pions show that
the RMS on the bending plane - Decreases down to 50 µm if the 3 tracks have Pt
2 GeV/c - Reaches a value of 20 µm (in agreement with
spatial pixel resolution) if the 3 tracks have Pt
100 GeV/c
3 pion vertex RMS in the bending plane vs. Pt
20Before tuning the cuts /1
Reconstructed signal events D invariant mass
Mean
Integrated over PT
MEAN 1.867 GeV/c2 RMS 0.019 GeV/c2
this is not a complete
reconstruction of the signal tracks are grouped
by means of info. stored at generation time.
MINV Resolution (SIGMA of the gaussian fit)
Knowledge of MINV resolution vs PT is important
when selecting the signal candidates
21Single track cuts /2
The number of BKG triplets is reduced by a factor
of 100 when doing the cut on the Invariant Mass
within 3s (see slide 37)
BkgTriplets
No cut on the track impact parameter (d0)
Cut on d0 ? lower cuts on Pt (useful up to Bkg
105)
Particle Id. given by the generation initial
approach
22Tuning the single track cuts
When tuning a cut, one has to keep in mind how
the Pt distribution of the D is modified
Pt reconstructed D Mean2.5 GeV/c
Pt reconstructed D Pt cut (p) 0.75 GeV/c Pt
cut (K) 0.6 GeV/c Mean4.7 GeV/c
Ratio With cut / Wo cut