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Status Report on . C. Di Donato, B. Di Micco, M. Jacewicz. Phi-Decay WG Meeting February 9 2010. Outline. Analysis Data-MC comparison Momenta Smearing Evaluation of systematics Discussion with referee New smearing method
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Status Report on C. Di Donato, B. Di Micco, M. Jacewicz Phi-Decay WG Meeting February 9 2010
Outline • Analysis • Data-MC comparison • Momenta Smearing • Evaluation of systematics • Discussion with referee • New smearing method • Track efficiency correction applied on MC (as in the Memo343); • Cross-check with Kinematic fit • PCV EVCL vs tracks selected in the analysis
Analysis • Event Signature: • 2 Prompt Neutral Clusters: |tcl-lcl/c|<5t • Recoil photon: most energetic cluster with E250 MeV • 2 tracks closest to IP (using PCA, no vertex requirement) • Kinematical Constraints: • Two body decay kinematics to calculate E recoil • kinematics to calculate • : |Et-Pt|<10 MeV (EtPt) • Best Photon: we choose one PNC with <0.13 rad to the calculated (OPAN) • Background: main one is 0: M(M • in the 0 rest frame cos • Only barrel • TOF(Time Of Flight cut to reject bhabha background)-ANGLE
DATA-MC comparison and MC smearing Let’s go back to the smearing, starting from control sample selected to check Data-MC: • selected using reversed cut on cos • we look at missing mass from p+p-
Data – MC and smearing: first approach Missing mass on control sample We find discrepancy and try to solve smearing the Pt OLD APPROACH
After Smearing OLD APPROACH
After Smearing Only background is included All background is included Residual discrepancy on the right tail. Smearing method? Background estimation? OLD APPROACH
Data-MC comparison qpp qpp Opening angle between qpp
Data-MC comparison Mpp (MeV) Mpp (MeV) Invariant Mass Mpp (MeV)
Data-MC Pp (MeV) Pp (MeV) P Pp (MeV)
Data-MC qp qp qp
Summary on Systematics After smearing systematics for angular cuts remains practically unchanged. We look at cosand cos(OpAn) for cluster also in the transverse variable
Summary on Systematics Only transverse angle xy plane Full cos
Summary on Systematics Cos(Full OpAn ) Only transverse angle
The situation is much better, systematic reduced from 1-2% to 1-2 per mil, the price we pay is the background contamination: OPAN–Cos–ANGLE–TOF–onlybarrel: Cut Eff = 25.67% Signal events = 564765, PHI Bkg = 6.7% ETA Bkg = 30% OPAN–Cos–ANGLE–TOF–onlybarrel–EtPt: Cut Eff = 24.89% Signal events = 547759, PHI Bkg = 3% ETA Bkg = 0.2% TransOPAN–CosTrans–ANGLE–TOF–onlybarrel: Cut Eff = 24.26% Signal events = 533938, PHI Bkg = 25% ETA Bkg = 120% TransOPAN–CosTrans–ANGLE–TOF–onlybarrel–EtPt: Cut Eff = 22.98% Signal events = 505692, PHI Bkg = 11% ETA Bkg = 1% OLD CUTS: NEW CUTS:
New Systematics Transverse cos OK
New Systematics Cos(Transv. OpAn ) OK
New Systematics Et-Pt The systematic on Et-Pt doesn't change.
New Systematics E-P
Outline (II) • New data sample to “play with” • 560 pb-1 preselected with basic conditions: to study smearing effect we introduce less kinematic constraints, and ask only ≥2 Prompt Neutral Cluster, one with E≥250MeV • This sample was used for the recent study of systematics and new smearing
What’s new: Different approach for the momenta:we take into account curv from DTFS cov matrix Better fitting We use the smearing function: Full fit with 3 params: 1) Total Scale: 0.8808 2) shift: 337.8 • 10-6 3) smearing: 0.1470
Smearing: Old method versus New NEW: Full fit with 3 parameters: Total Scale, shift, smearing OLD: simple method each parameter Fitted separately
E – P cut problemEven with new smearing we do not get satisfactory comparison with MC eeg continuum Unbiased sample: only preselection Now is clear the problem is on the background estimation
We try to fit the Et-Pt (E–P) spectrum to see if the discrepancy is due to a bad Signal/Background estimation Data – MC.
Output from TFractionFitter (1200bins in the histograms) eeg continuum 2 = 1728 Ndf = 1196
After smearing and fit… • Data-MC satisfying agreement • Branching ratio stability and Systematic seems to be under control, we are reevaluating the systematics. Other checks: • kinematic fit • Prompt Charged Vertex from EVCL
Kinematic fit 21 Input Parameters: 2 PNC: 2 5 = 10 parameters 2 tracks at PCA: 2 3 = 6 parameters IP position: 3 parameters Beam info: 2 parameters 7 Constraints: Time of flight of photons: 2 4-momentum conservation: 4 invariant mass
RAD Stream • DATA-MC comparison • 2 distribution • Analysys cut: • RAD • OPAN • Cos • ANGLE • TOF • Onlybarrel • EtPt
RPI Stream • DATA-MC comparison • 2 distribution • Analysys cut: • RAD • OPAN • Cos • ANGLE • TOF • Onlybarrel • EtPt
RAD True-Rec True-Fit RAD Stream P+ (Ptrue-Pfit) (Ptrue-Prec) P- (Ptrue-Prec) (Ptrue-Pfit)
RPI True-Rec True-Fit RPI Stream P+ (Ptrue-Pfit) (Ptrue-Prec) P- (Ptrue-Prec) (Ptrue-Pfit)
PCV Check: EVCL requirement on VTX • PCV means there is the VTX as from EVCL requirement • Match means the tracks we choose are the one connected to PCV
Conclusions • DATA-MC: the agreement is satisfying; systematics and BR seems to be under control: we are recomputing • For us everithing is ok and we are ready to produce final number and documentation, if we are below 1%: TOF systematic still to be studied. • Kinematic fit does not improve resolution and background reduction, moreover the c2 distribution shows disagrement at 2-5% level (well beyond our target) • We can apply PCV requirement, in RAD stream, we do not use extra VTX info; use Roberto and Antonio work on tracks/vtx
Fitting with fraction fitter seems better (but fit probability still low)