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LHCb: Preparing for Data (A talk on MC events and data expectations) NIKHEF Colloquium Feb 4, 2005 Marcel Merk
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2 Contents Last year: Several excellent overviews of latest B physics results An overview of the status of the LHCb detector This talk: What does LHCb plan to do with incoming data in ~ 2008? Illustrate with a single decay mode: B s →D s h Topics: B s →D s & B s →D s K Detector Simulation Reconstruction and Trigger Event Selection and Flavour Tagging Physics Sensitivity studies
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3 The Decay B s →D s h Two decays with identical topology: B s → D s - B s -> D s ∓ K ± btbt BsBs KK KK ,K DsDs Primary vertex Experiment : Trigger on B decay of interest. Signatures: “high” Pt tracks displaced vertices pp Select the B decay and reject the background Tag the flavour of the B decay Plot the tagged decay rate as function of the decay time Physics of these two decays however is different….
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4 Dilutions: A(t) : Trigger acceptance W tag : Flavour Tagging t : Decay time Resolution Fit them together with m Physics with B s - →D s - + : m b s c s d u BsBs Ds-Ds- ++ BR~10 -4 1 year data LHCb Measure Oscillation Frequency! In the fitting procedure we use the individual decay rates
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5 Physics with B s →D s ∓ K ± : b s c s s u BsBs Ds-Ds- K+K+ BsBs s b b s Ds-Ds- b s u s s c BsBs K+K+ + BR~10 -5 V ub Introduce also: = strong phase difference ; r = ratio between amplitudes
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6 Physics with B s →D s ∓ K ± : 2 asymmetries to fit the unknown parameters: Ration between diagrams: r Strong phase: Weak phase b s c s s u BsBs Ds-Ds- K+K+ BsBs s b b s Ds-Ds- b s u s s c BsBs K+K+ + BR~10 -5 Measure Oscillation Amplitude! 4 decay rates to fit the unknown parameters: Ration between diagrams: r Strong phase: Weak phase Same experimental dilutions as in D s should be added: Use the value of A, w tag and t as obtained with D s fit… B s → D s - K + B s → D s + K -
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7 B Production @ LHC Forward (and backward) production Build a forward spectrometer bb bb O(50%) O(10%) O(40%) Pythia & hep-ph/0005110 (Sjöstrand et al)
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8 LHCb detector: a quick reminder pp ~ 200 mrad ~ 300 mrad (horizontal) 10 mrad Inner acceptance ~ 15 mrad (10 mrad conical beryllium beampipe)
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9 LHCb tracking: vertex region VELO: resolve m s oscillations in e.g. D s events
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10 Pile-Up Stations Interaction Region =5.3 cm LHCb tracking: vertex region y x y x
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11 LHCb tracking: momentum measurement B y [T] Total Bdl = 4 Tm Bdl Velo-TT=0.15 Tm Tracking: Mass resolution for background suppression in eg. D s K
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12 LHCb tracking: momentum measurement All tracking stations have four layers: 0,-5,+5,0 degree stereo angles. ~6 5 m 2 ~1.4 1.2 m 2
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13 LHCb Hadron Identification: RICH 3 radiators to cover full momentum range: Aerogel C 4 F 10 CF 4 RICH2 100 m3 CF4 n=1.0005 RICH: K/ separation e.g. to distinguish D s and D s K events. RICH1 5 cm aerogel n=1.03 4 m 3 C 4 F 10 n=1.0014
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14 LHCb calorimeters e h Calorimeter system to identify electrons, hadrons and neutrals and used in the L0 trigger: hadron P t trigger for D s h events
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15 LHCb muon detection Muon system to identify muons and used in L0 trigger e.g. unbiased trigger on “other B” for D s events
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16 Simulation Software: “Gaudi” Applications Event Generator: Pythia: Final state generation Evtgen: B decays Detector Simulation: Gauss: GEANT4 tracking MC particles through the detector and storing MC Hits Detector Response (“digitization”): Boole: Converting the MC Hits into a raw buffer emulating the real data format Reconstruction: Brunel: Reconstructing the tracks from the raw buffer. Physics: DaVinci: Reconstruction of B decays and flavour tags. LoKi : “Loops and Kinematics” toolkit. Visualization: Panoramix: Visualization of detector geometry and data objects
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17 Event Generation: Pythia Pythia 6.2: proton-proton interactions at √s = 14 TeV. Minimum bias includes hard QCD processes, single and double diffractive events inel = 79.2 mb bb events obtained from minimum bias events with b or b- hadron bb = 633 b Use parton-parton interaction “Model 3”, with continuous turn-off of the cross section at P T min. The value of P T min depends on the choice of Parton Density Function. Energy dependence, with “CTEQ4L” at 14 TeV: P T min =3.47 ± 0.17 GeV/c. Gives: Describes well direct fit of multiplicity data: Robustness tests…
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18 Charged multiplicity distributions at generator level In LHCb acceptance ( 1.8 < < 4.9 ) Average charged multiplicityMinimum biasb CDF tuning at 14 TeV 16.53 ± 0.0227.12 ± 0.03 LHCb tuning, default p T min 21.33 ± 0.0233.91 ± 0.03 LHCb tuning, 3 low p T min 25.46 ± 0.0342.86 ± 0.03
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19 The LHC environment pp collisions @ s=14 TeV Bunch crossing @ 40MHz 25 ns separation inelastic = 80mb At high L >>1 collision/crossing Prefer single interaction events Easier to analyze! Trigger Flavor tagging Prefer L ~ 2 x 10 32 cm -2 s -1 Simulate 10 hour lifetime,7 hour fill Beams are defocused locally Maintain optimal luminosity even when Atlas & CMS run at 10 34
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20 Simulation: Switched from GEANT3… VELO RICH1 TT T1 T2 T3
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21 …to GEANT4 (“Gauss”) Note: simulation and reconstruction use identical geometry description.
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22 Event example: detector hits
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23 Event example (Vertex region zoom)
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24 Detector Response Simulation: e.g.: the Outer Tracker Geant event display OT double layer cross section 5mm straws pitch 5.25 mm Track e-e- e-e- e-e- e-e- e-e- 1 bunch + Spill-over + Electronics + T0 calibration TDC spec.:
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25 Track finding strategy VELO seeds Long track (forward) Long track (matched) T seeds Upstream track Downstream track T track VELO track T tracks useful for RICH2 pattern recognition Long tracks highest quality for physics (good IP & p resolution) Downstream tracks needed for efficient K S finding (good p resolution) Upstream tracks lower p, worse p resolution, but useful for RICH1 pattern recognition VELO tracks useful for primary vertex reconstruction (good IP resolution)
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26 Result of track finding Typical event display: Red = measurements (hits) Blue = all reconstructed tracks Efficiency vs p :Ghost rate vs p T : Eff = 94% (p > 10 GeV) Ghost rate = 3% (for p T > 0.5 GeV) VELO TT T1 T2 T3 On average: 26 long tracks 11 upstream tracks 4 downstream tracks 5 T tracks 26 VELO tracks 20 50 hits assigned to a long track: 98.7% correctly assigned Ghosts: Negligible effect on b decay reconstruction
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27 Robustness Test: Quiet and Busy Events Monitor efficiency and ghost rate as function of n rel : “relative number of detector hits” = 1
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28 Kalman Track Fit Reconstruct tracks including multiple scattering. Main advantage: correct covariance matrix for track parameters!! z Impact parameter pull distribution: = 1.0 Momentum pull distribution: = 1.2
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29 Experimental Resolution p/p = 0.35% – 0.55% p spectrum B tracks IP = 14 + 35 /p T 1/p T spectrum B tracks Momentum resolution parameter resolution Impact parameter resolution
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30 Particle ID RICH 1 RICH 2 (K->K) = 88% (p->K) = 3% Example: Bs->Dsh KK BsBs KK ,K DsDs Prim vtx
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31 Trigger 40 MHz pile-up 1 MHz 40 kHz 2 kHz output Level-1: Impact parameter Rough p T ~ 20% HLT: Final state reconstruction Calorimeter Muon system Pile-up system Vertex Locator Trigger Tracker Level 0 objects Full detector information L0 Level-0: p T of , e, h, ln p T ln IP/ IP L1 Signal Min. Bias B-> Bs->DsK
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32 Trigger Acceptance function Impact parameter cuts lead to a decay time dependent efficiency function: “Acceptance” B s →D s K Acc
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33 B s →D s h Reconstruction Final state reconstruction Combine K + K - - into a D s - Good vertex + mass Combine D s - and “bachelor” into B s Good vertex + mass s Pointing Bs to primary vtx K/ separation Mass distribution: DsDs BsBs KK KK ,K d p 47 m 144 m 440 m
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34 Annual Yields and B/S Efficiency Estimation: det (%) rec/det (%) sel/rec (%) trg/sel (%) tot (%) B s →D s 5.480.625.031.10.337 B s →D s 5.482.020.629.50.269 Background Estimation: Currently assume that the only background is due to bb events Background estimates limited by available statistics DecayAnnual yieldB/S B s →D s 82k0.32 ± 0.10 B s →D s 5.4k<1.0 (90%) C.L. Estimation of B s →D s background in the B s →D s sample: B/S = 0.111 ± 0.056
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35 Decay time reconstruction: t = m d / p B decay time resolution: Pull distribution: Error distribution Measurement errors understood! As an illustration, 1 year B s →D s -
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36 Flavour tag l B0B0 B0B0 D Ds-Ds- K-K- b b s u s u Bs0Bs0 K+K+ tagging strategy: opposite side lepton tag ( b → l ) opposite side kaon tag ( b → c → s ) (RICH, hadron trigger) same side kaon tag (for B s ) opposite B vertex charge tagging 43542 eff [%] Wtag [%] tag [%] 63354 B d B s D s h Combining tags effective efficiency : eff = tag (1-2w tag ) 2 sources for wrong tags: B d -B d mixing (opposite side) b → c → l (lepton tag) conversions… Knowledge of the B flavour at production is needed for the asymmetries
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37 Sensitivity Studies Many GEANT events generated, but: How well can we measure m s with B s →D s events? How well can we measure angle with B s →D s K events? as function of m s, s, r, , , and dilutions w tag, t, …? Toy MC and Fitting program: Generator: Generate Events according to theory B decay formula An event is simply a generated B decay time + a true tag. Simulator: Assign an observed time and an error Use the full MC studies to do the smearing Fitter: Create a pdf for the experimentally observed time distribution and fit the relevant parameters
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38 Toy Generator Generate events according to the “master” formula for B decay Relevant physics parameters: For D s + K - : replace by - For D s : Simplify: r=0 B s →D s - K + B s →D s + K B s →D s + K - With:
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39 Toy Simulation Smear theoretical events ( t=t true ) into experimental events ( t rec ) and assign an experimental error ( t rec ). Method: From the full simulation make a lookup table with selected events: t true i, t rec i, t rec i Generate t true in toy and assign t rec and t rec from look-up table, such that non-Gausian effects of the full simulation are included For tag fraction of the events assign an event tag: Statistically assign 1 -w tag correct tags, and w tag wrong tags. Current studies tag = 54% w tag = 33%. Apply an acceptance function A( t rec ) by statistically accepting events according to the acceptance value for a given event time.
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40 Dilutions in B s →D s Plot the MC toy decay rate with the following situation: 1 year data B s →D s - + Experimental Situation: Ideal resolution and tag
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41 Dilutions in B s →D s Plot the MC toy decay rate with the following situation: 1 year data B s →D s - + Experimental Situation: Ideal resolution and tag Realistic tag
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42 Dilutions in B s →D s Plot the MC toy decay rate with the following situation: 1 year data B s →D s - + Experimental Situation: Ideal resolution and tag Realistic tag Realistig tag and resolution
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43 Dilutions in B s →D s Plot the MC toy decay rate with the following situation: 1 year data B s →D s - + Experimental Situation: Ideal resolution and tag Realistic tag Realistig tag and resolution Realistic tag + reso + background
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44 Dilutions in B s →D s Plot the MC toy decay rate with the following situation: Experimental Situation: Ideal resolution and tag Realistic tag Realistig tag and resolution Realistic tag + reso + background Realistic tag+reso+bg+acceptance 1 year data B s →D s - +
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45 The signal for D s and D s K 5 years data: B s → D s - B s → D s - K + m s = 20) The CP signal is not self-evident Use full statistical power in the data
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46 Fitting time dependent decay rates Why use complicated Likelihood fit method? Weigh precisely measured events differently from badly measured events Rely on the reconstructed event error Allow for a scale factor in the analysis Error distr Pull distr
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47 Likelihood Fitter (general idea) The likelihood that nature produces an event at a given time t = The probability that this event is reconstructed (i.e. observed) at a reconstructed time t rec with measurement error t rec = Thus the likelihood of observing an event ( t rec, t rec ) = Fit the physics parameters ( m, ,…) in R such that the likelihood is maximal:.i.e. maximize:
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48 Likelihood Fitter (for the die-hard) Maximize an unbinned likelihood describing the best theory curves simultaneously matching simultaneously the 4 decay rates for Bs->Ds and 4 decay rates for Bs-> Ds K Normalization of the Likelihood is interesting! See also LHCb note…LHCb 2003-124 (Include information of the relative overall rates) (Slow computation!) Event probab: Normalization of the probability: Create the Likelihood: Fit parameters: -Physics: -Experimental: 1 year data: B s -> D s - + B s -> D s - K +
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49 Strategy for D s / D s K fits It turns out to be difficult to fit simultaneously the wrong tag fraction, resolution and acceptance function. A small bias in the acceptance function biases the resolution fit A possible solution could be a 4 step procedure: 1.Calibrate the experimental time resolution 2.Fit the acceptance function on the untagged sample of B s ->D s events 3.Fit simultaneously the values of m s, w tag with D s events. 4.Fit the values of the r, , with the D s K sample
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50 1.Fitting the measurement errors Resolution can be determined from the negative tail of the lifetime distribution. Fit with 10% of 1 year data: S· t rec. => S = 0.99 ± 0.04 Can L1 trigger be tuned to provide unbiased B s -> D s events? What would be the required bandwidth for this? In any case unbiased samples of J/ events are foreseen. S=0.99+- 0.04 L1 trigger t rec 10% of 1 year untagged B s →D s
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51 2. Fitting the acceptance function The acceptance function is modelled as: The function can easily be determined using the unbiased sample 1 year untagged B s →D s t rec Acc
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52 3. + 4. Fit the Physics parameters Use the 4 tagged (B) and (B) D s decay rates to fit m s and W tag fraction Use the 4 tagged D s K events to fit r, , 5 years data: B s → D s - B s → D s - K + m s = 20) Actually perform the D s and D s K fits simultaneous For each setting of the parameters repeat ~100 toy experiments A task for the GRID
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53 The sensitivity of m s after 1 year The sensitivity for m s Amplitude fit method analogous to LEP Curves contain 5 different assumptions for the decay time resol. 55 Sensitivity: m s = 68 ps -1 msms 15202530 (ms)(ms) 0.0090.0110.0130.016 Precision on m s in ps -1 ~1000 jobs
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54 CP Sensitivity for many parameter settings ++ 5565758595105 (+)(+) 14.514.215.0 15.1 -20-100+10+20 (+)(+) 13.914.114.214.514.6 msms 15202530 (+)(+) 12.114.216.218.3 s s / s 0 0.10.2 (+) (+) 12.1 14.216.2 Precision on angle after one year with 1 year data: 10 o Dependence on backgroundDependence on resolution (Ab-)using the GRID
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55 (My) Conclusions The decay B s →D s can provide an observation of m s oscillations in the first year of data taking. Important are: A working hadronic trigger A good tagging procedure Fairly good resolution The decay B s →D s K can provide an observation of angle in subsequent years. Important are: Very good mass resolution for background suppression Full understanding of time resolution and tagging for systematics An efficient K/ separation
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56 Outlook A possible scenario before the LHCb measurement of
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57 Outlook A possible scenario after the LHCb measurement of
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58 The End
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