09/06/06Predrag Krstonosic - CALOR061 Particle flow performance and detector optimization.

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09/06/06Predrag Krstonosic - CALOR061 Particle flow performance and detector optimization

09/06/06Predrag Krstonosic - CALOR062 Physics based requirement for jet energy resolution of 30% Initial design on the base of general requirements – to have best possible sub- detectors ( if affordable ) All designs made with intention to be suitable for particle flow algorithm (PFA) Introduction hardwarePFA detector PPF Optimization Performance estimates made with different level of idealization – perfect particle flow (PPF) In order to estimate real performance and ( or ) to optimize the detector we can make two side approach – from the final reconstruction performance and from calorimeter performance estimate

09/06/06Predrag Krstonosic - CALOR points chosen ( red dots in the plot numerated from left to right ) Curves- jet resolution Particle Flow Performance Initial estimate – highest level of idealization ( taking into account only component resolutions)

09/06/06Predrag Krstonosic - CALOR064 EM % HAD % Jet energy resolution ( ) Expected ( from the average energy fractions and the formulae) in blue Red rms of the calculation on the event by event basis for WW 500GeV TDR case 1 case 17

09/06/06Predrag Krstonosic - CALOR065 PPU Pure Physical Uncertainties: JFU Jet Finder Uncertainties: DG Detector Geometry Term: Jet energy resolution : Above sum depends on the particular physics process; on quality of accelerator; in particular on the beam spot size and crossing angle;on the jet finder chosen for analysis; on the detector geometry ; all of them have no deal with PFA Particle-Flow Algorithm (PFA) quality is a function of sub-detector resolutions. For PFA quality estimation one should first of all split of independent terms or remove them from analysis. Goodness of Particle-Flow or it’s comparison is possible ONLY after such splitting Particle Flow Performance

09/06/06Predrag Krstonosic - CALOR066 x xxx Full mass of the event is used to avoid jet finder algorithm, thus natural width doesn’t influence the result, events were generated without ISR and we don’t take into account luminosity spectrum. Sub-detector resolutions TPC ( with angular and momentum dependence ) ECAL HCAL Beam tube < 5degrees Minimal transverse momentum to reach TPC 0.36 GeV Exact mass assignment for hadrons or Mcharged=M(pi+) Mneutral=M(KL) Particle Flow Performance

09/06/06Predrag Krstonosic - CALOR067 Particle Flow Performance

09/06/06Predrag Krstonosic - CALOR068 Whole event resolution Particle Flow Performance

09/06/06Predrag Krstonosic - CALOR069 View of the detector quadrantdetector Two major versions implemented in G4 simulation MOKKAMOKKA Detector Detector version LDC Tag0001 Ecal R inner 160cm170cm TPC Z/2200cm250cm Ecal design N×W[mm]30 × × 2.1 N×W[mm]10 × 4.2

09/06/06Predrag Krstonosic - CALOR0610 In LDC detector there are three structures with different sampling fractions Coefficients defined by muon run in the simulation for each sampling structure The simple formula should give us an answer but events are of, and we need to “rotate” the black line to fit the energy conservation These “rotated” coefficients consist of all “properties” of whole LDC calorimeters as wall as flavor’s containment of the jets plus convoluted angular and field dependencies Calibration Method proposed by V.Morgunov at LCWS06at LCWS06

09/06/06Predrag Krstonosic - CALOR0611 The black line equation is: Where are initial energy conversion coefficients, is the slope which gives us the minimal energy width. is some constant – the line should come through the most probable value of initial energy sum. The red line equation is: energy conservation law Let us require then we got the new coefficients Where and along the most probable line will be applied on to each hit the the particular sampling regions of the calorimeter. Calibration

09/06/06Predrag Krstonosic - CALOR0612 Events were generated without luminosity curve and without ISR so the whole sum of energy in HEP record is equal of the center mass energy exactly To calculate available energy for calorimeters one should subtract the neutrino energies as well as the energy of particles that are lost due to the acceptance, and also muon energies in cases when they pass through the calorimeter leaving about 1.6GeV per muon. Estimated energy to be measured by calorimeters for each event is Using this reference energy it’s possible to make the check plots – distributions of total calorimeter energy after calibration minus available energy Events were processed using Geant 4.7.1p1 Calibration

09/06/06Predrag Krstonosic - CALOR0613

09/06/06Predrag Krstonosic - CALOR0614 using the explained calibration procedure and Marlin based reconstruction software we obtain following result reconstruction software

09/06/06Predrag Krstonosic - CALOR0615 Calibration Whole calorimeter sumCheck plots Mean [GeV]Sigma[GeV]Mean[GeV]Sigma[GeV] 1TeV TeV GeV GeV GeV GeV GeV Z pole 91.2GeV The same three calibration coefficients were used for all energies and processes

09/06/06Predrag Krstonosic - CALOR0616 Optimization 3Tesla4 Tesla LDC01LDC00LDC01LDC GeV GeV GeV tiny dependencies that are visible are on the percent level and can be fully explained by second order effects. All detector variations are equal in respect of the full calorimeter energy. Shift of energy distribution peak from the center of mass energy

09/06/06Predrag Krstonosic - CALOR0617 LDC LDC LDC LDC R inner, L Optimization dependence of the reconstructed width of Z pole events on detector size and magnetic field. R L

09/06/06Predrag Krstonosic - CALOR0618 LDC LDC LDC LDC R inner, L Optimization dependence of the reconstructed mean mass of Z pole events on detector size and magnetic field. for further details see O.Wendt CambridgeCambridge

09/06/06Predrag Krstonosic - CALOR0619 Conclusion PPF Implementation of PFA Calorimeter Sum Sigma [GeV] Z pole 91.2GeV GeV5.3? GeV5.7? GeV4.8?14.8 software performance was limiting factor in continuing the optimization since designed detector + software should give designed resolution in full range of energies up to 1TeV. On energies were it works there is no significant dependence on R, L or B to make any conclusions. Once you have software that is able to fill empty spaces in the table it’s possible to optimize the detector