#include"TF1.h" #include"TH1D.h" #include"TH2F.h" #include"TMath.h" #include"TSystem.h" #include"TCanvas.h" #include"TFile.h" #include"TGraphErrors.h" #include"AliPIDperfContainer.h" int LoadLib(); void doeffKaUser(Int_t pos,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); void doeffKa(Int_t pos=1,Float_t prob=0.1,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TH2F *GetHistoKap(Float_t pt=1,Float_t ptM=1.1,Float_t pMinkp=0,Float_t pMinkn=0.,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TH2F *GetHistoKan(Float_t pt=1,Float_t ptM=1.1,Float_t pMinkn=0,Float_t pMinkp=0.,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); void fit(TH1D *h,Float_t *a=NULL,char *opt="",char *opt2="",Float_t pt=1.5); void AddHisto(TH2F *h1,TH2F *h2,Float_t w); TH2F *GetHistoUser(Int_t pos=1,Float_t pt=1,Float_t ptM=1.1,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TH2F *GetHistoPiUser(Int_t pos=1,Float_t pt=1,Float_t ptM=1.1,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TH2F *GetHistoKaUser(Int_t pos=1,Float_t pt=1,Float_t ptM=1.1,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TH2F *GetHistoPrUser(Int_t pos=1,Float_t pt=1,Float_t ptM=1.1,Float_t etaminkp=-0.8,Float_t etamaxkp=0.8); TObject* fContPid1; TObject* fContPid2; TObject* fContUser1; TObject* fContUser2; const Int_t nBinPid = 14; // pt,eta, ptPip, ptPin, PPip, PPin, TOF3sigmaPip, TOF3sigmaPin, isPhiTrue, nsigmaPip, nsigmaPin // 0.985 < mass < 1.045 (60) and 0 < centrality < 100 (10) Int_t binPid[nBinPid] = {1/*ptPhi*/,8/*EtaPi*/,20/*pt+*/,20/*pt-*/,5/*P+*/,1/*P-*/,2/*TOFmatch+*/,2/*TOFmatch-*/,2/*istrue*/,4/*Nsigma+*/,4/*Nsigma-*/,1/*DeltaPhi+*/,1/*DeltaPhi-*/,1/*Psi*/}; Float_t xmin[nBinPid] = {1,-0.8,0.3,0.3,0,0,-0.5,-0.5,-0.5,0,0,-TMath::Pi(),-TMath::Pi(),-TMath::Pi()/2}; Float_t xmax[nBinPid] = {5,0.8,4.3,4.3,1,1,1.5,1.5,1.5,7.5,7.5,TMath::Pi(),TMath::Pi(),TMath::Pi()/2}; TF1 *fsign; TF1 *fall; TF1 *fback; Int_t ifunc=0; Float_t fitmin = 0.99; Float_t fitmax = 1.045; Int_t cmin = 1;// min 1 Int_t cmax = 10;// max 10 Float_t weightS = -0.9; Int_t rebinsize = 1; Int_t parplotted = 2; Bool_t isMC = kFALSE; // don't change this (is set automatically) Bool_t selectTrue = kTRUE; // put it to true to remove background (only for MC) Bool_t keepTrue = kFALSE; // put it to false to fit only background (only for MC) Bool_t kGoodMatch = kFALSE; // to check good matching Bool_t kSigma2vs3 = kFALSE; // to check good matching Bool_t kSigma2vs3TPC = kFALSE; // to check good matching Bool_t require5sigma = kFALSE; // don't touch this flag Bool_t bayesVsigma = kFALSE; // only to do checks Bool_t kTOFmatch = kFALSE; // for combined PID requires TOF matching Bool_t kOverAll = kFALSE; Bool_t kOverAllTOFmatch = kFALSE; Bool_t kOverAll2Sigma = kFALSE; TH2F *hmatched; TH2F *htracked; Bool_t kLoaded=kFALSE; int LoadLib(){ weightS = -0.9; require5sigma = kFALSE; if(! kLoaded){ gSystem->Load("libVMC.so"); gSystem->Load("libPhysics.so"); gSystem->Load("libTree.so"); gSystem->Load("libMinuit.so"); gSystem->Load("libSTEERBase.so"); gSystem->Load("libANALYSIS.so"); gSystem->Load("libAOD.so"); gSystem->Load("libESD.so"); gSystem->Load("libANALYSIS.so"); gSystem->Load("libANALYSISalice.so"); gSystem->Load("libCORRFW.so"); gSystem->Load("libNetx.so"); gSystem->Load("libPWGPPpid.so"); TFile *f = new TFile("AnalysisResults.root"); TList *l = (TList *) f->Get("contPhiBayes1"); TList *l2 = (TList *) f->Get("contPhiBayes2"); if(!(l && l2)) return 0; fContPid1 = (AliPIDperfContainer *) l->FindObject("contPID"); fContPid2 = (AliPIDperfContainer *) l->FindObject("contPID2"); fContUser1 = (AliPIDperfContainer *) l->FindObject("contUserPID"); fContUser2 = (AliPIDperfContainer *) l->FindObject("contUserPID2"); hmatched = (TH2F *) l2->FindObject("hMatchKa"); htracked = (TH2F *) l2->FindObject("hTrackingKa"); } kLoaded = kTRUE; // check if MC Float_t x[] = {xmin[0]+0.001,xmin[1]+0.001,xmin[2]+0.001,xmin[3]+0.001,xmin[4]+0.001,xmin[5]+0.001,xmin[6]+0.001,xmin[7]+0.001,1/*trueMC*/,xmin[9],xmin[10]}; Float_t x2[] = {xmax[0],xmax[1],xmax[2],xmax[3],xmax[4],xmax[5],xmax[6],xmax[7],xmax[8],xmax[9],xmax[10]}; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContPid1; TH1D *h = tmp->GetQA(0, x, x2)->ProjectionX("checkMC"); if(h->GetEntries()) isMC = kTRUE; else isMC=kFALSE; if(!isMC){ selectTrue = kFALSE; keepTrue = kTRUE; } else{ printf("MC truth found!!!!!!\nIt is MC!!!!!!"); } fsign = new TF1("fsign","[0]*TMath::Voigt(x-[1],[3],[2])*(x>0.987)*(x > 1.005 && x < 1.035 || [4])",fitmin,fitmax); fback = new TF1("fback","([0]*sqrt(x-0.987) + [1]*(x-0.987) + [2]*sqrt(x-0.987)*(x-0.987) +[3]*(x-0.987)*(x-0.987)+[4]*(x-0.987)*(x-0.987)*sqrt(x-0.987))*(x>0.987)",fitmin,fitmax); fall = new TF1("fall","([0]*TMath::Voigt(x-[1],[3],[2])*(x > 1.005 && x < 1.035 || [9]) + [4]*sqrt(x-0.987) + [5]*(x-0.987) + [6]*sqrt(x-0.987)*(x-0.987) +[7]*(x-0.987)*(x-0.987)+[8]*(x-0.987)*(x-0.987)*sqrt(x-0.987))*(x>0.987)",0.987,1.05); if(isMC){ fsign->SetParameter(4,0); fall->FixParameter(9,0); } else{ fsign->SetParameter(4,1); fall->FixParameter(9,1); } fsign->SetLineColor(2); fback->SetLineColor(4); if(kSigma2vs3){ kGoodMatch=kFALSE; kOverAll = 0; } if(kSigma2vs3TPC){ kGoodMatch=kFALSE; kOverAll = 0; } if(bayesVsigma){ kOverAll = 0; kGoodMatch=kFALSE; kSigma2vs3=kFALSE; kSigma2vs3TPC=kFALSE; kTOFmatch=kTRUE; weightS = -0.5; } if(kOverAll){ weightS = -0.5; } return 1; } void doeffKaUser(Int_t pos,Float_t etaminkp,Float_t etamaxkp){ Int_t nptbin = binPid[2]; Float_t minptbin = xmin[2]; Float_t maxptbin = xmax[2]; TCanvas *c1 = new TCanvas(); c1->Divide((nptbin+1)/2,2); Double_t xx[50],yyPi[50],yyKa[50],yyPr[50]; Double_t exx[50],eyyPi[50],eyyKa[50],eyyPr[50]; TH2F *hh; TH1D *h; Float_t b[100][3]; Float_t bPi[100][3]; Float_t bKa[100][3]; Float_t bPr[100][3]; char name[100]; for(Int_t i=0;i < nptbin;i++){ c1->cd(i+1); Float_t ptmin = minptbin+(maxptbin-minptbin)/nptbin*(i); Float_t ptmax = minptbin+(maxptbin-minptbin)/nptbin*(i+1); xx[i] = (ptmin+ptmax)/2; exx[i] = (-ptmin+ptmax)/2; hh=GetHistoUser(pos,ptmin,ptmax,etaminkp,etamaxkp); sprintf(name,"all%i",i); h = hh->ProjectionX(name,cmin,cmax); Int_t ntrial = 0; Float_t chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,b[i],"WW","",xx[i]); fit(h,b[i],"","",xx[i]); ntrial++; chi2 = b[i][2]; } printf("%i) %f +/- %f\n",i,b[i][0],b[i][1]); hh=GetHistoPiUser(pos,ptmin,ptmax,etaminkp,etamaxkp); sprintf(name,"pi%i",i); h = hh->ProjectionX(name,cmin,cmax); ntrial = 0; chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,bPi[i],"WW","",xx[i]); fit(h,bPi[i],"","",xx[i]); ntrial++; chi2 = bPi[i][2]; } printf("pi) %f +/- %f\n",bPi[i][0],bPi[i][1]); hh=GetHistoKaUser(pos,ptmin,ptmax,etaminkp,etamaxkp); sprintf(name,"ka%i",i); h = hh->ProjectionX(name,cmin,cmax); ntrial = 0; chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,bKa[i],"WW","",xx[i]); fit(h,bKa[i],"","",xx[i]); ntrial++; chi2 = bKa[i][2]; } printf("ka) %f +/- %f\n",bKa[i][0],bKa[i][1]); hh=GetHistoPrUser(pos,ptmin,ptmax,etaminkp,etamaxkp); sprintf(name,"pr%i",i); h = hh->ProjectionX(name,cmin,cmax); ntrial = 0; chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,bPr[i],"WW","",xx[i]); fit(h,bPr[i],"","",xx[i]); ntrial++; chi2 = bPr[i][2]; } printf("pr) %f +/- %f\n",bPr[i][0],bPr[i][1]); yyPi[i] = bPi[i][0] / b[i][0]; yyKa[i] = bKa[i][0] / b[i][0]; yyPr[i] = bPr[i][0] / b[i][0]; eyyPi[i] = bPi[i][1]/bPi[i][0]*yyPi[i]; eyyKa[i] = bKa[i][1]/bKa[i][0]*yyKa[i]; eyyPr[i] = bPr[i][1]/bPr[i][0]*yyPr[i]; } /*TCanvas *c2 =*/ new TCanvas(); TGraphErrors *gKa = new TGraphErrors(nptbin,xx,yyKa,exx,eyyKa); gKa->Draw("AP"); gKa->SetLineColor(1); gKa->SetMarkerColor(1); gKa->SetMarkerStyle(21); TGraphErrors *gPi = new TGraphErrors(nptbin,xx,yyPi,exx,eyyPi); gPi->Draw("P"); gPi->SetLineColor(4); gPi->SetMarkerColor(4); gPi->SetMarkerStyle(20); TGraphErrors *gPr = new TGraphErrors(nptbin,xx,yyPr,exx,eyyPr); gPr->Draw("P"); gPr->SetLineColor(2); gPr->SetMarkerColor(2); gPr->SetMarkerStyle(22); if(pos) sprintf(name,"phiUserAnalPos_%3.1f-%3.1f_%i-%i.root",etaminkp,etamaxkp,cmin,cmax); else sprintf(name,"phiUserAnalNeg_%3.1f-%3.1f_%i-%i.root",etaminkp,etamaxkp,cmin,cmax); gPi->SetName("piSelected"); gKa->SetName("kaSelected"); gPr->SetName("prSelected"); TFile *fout = new TFile(name,"RECREATE"); gPi->Write(); gKa->Write(); gPr->Write(); fout->Close(); } TH2F *GetHistoUser(Int_t pos,Float_t pt,Float_t ptM,Float_t etaminkp,Float_t etamaxkp){ // Int_t binUser[nBinUser] = {8/*Eta*/,20/*pt*/,2/*istrue*/,4/*whatSelection*/,1/*DeltaPhi*/,1/*Psi*/}; Float_t x[] = {etaminkp+0.0001,pt+0.0001,isMC,0.0001,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; Float_t x2[] = {etamaxkp-0.0001,ptM-0.0001,isMC,2.9999,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContUser1; if(!pos) tmp = (AliPIDperfContainer *) fContUser2; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{K^{0}_{s}} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } TH2F *GetHistoPiUser(Int_t pos,Float_t pt,Float_t ptM,Float_t etaminkp,Float_t etamaxkp){ // Int_t binUser[nBinUser] = {8/*Eta*/,20/*pt*/,2/*istrue*/,4/*whatSelection*/,1/*DeltaPhi*/,1/*Psi*/}; Float_t x[] = {etaminkp+0.0001,pt+0.0001,isMC,1.0001,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; Float_t x2[] = {etamaxkp-0.0001,ptM-0.0001,isMC,1.0002,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContUser1; if(!pos) tmp = (AliPIDperfContainer *) fContUser2; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{K^{0}_{s}} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } TH2F *GetHistoKaUser(Int_t pos,Float_t pt,Float_t ptM,Float_t etaminkp,Float_t etamaxkp){ // Int_t binUser[nBinUser] = {8/*Eta*/,20/*pt*/,2/*istrue*/,4/*whatSelection*/,1/*DeltaPhi*/,1/*Psi*/}; Float_t x[] = {etaminkp+0.0001,pt+0.0001,isMC,2.0001,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; Float_t x2[] = {etamaxkp-0.0001,ptM-0.0001,isMC,2.0002,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContUser1; if(!pos) tmp = (AliPIDperfContainer *) fContUser2; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{K^{0}_{s}} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } TH2F *GetHistoPrUser(Int_t pos,Float_t pt,Float_t ptM,Float_t etaminkp,Float_t etamaxkp){ // Int_t binUser[nBinUser] = {8/*Eta*/,20/*pt*/,2/*istrue*/,4/*whatSelection*/,1/*DeltaPhi*/,1/*Psi*/}; Float_t x[] = {etaminkp+0.0001,pt+0.0001,isMC,3.0001,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; Float_t x2[] = {etamaxkp-0.0001,ptM-0.0001,isMC,3.0002,-TMath::Pi(),TMath::Pi(),-TMath::Pi()/2,TMath::Pi()/2}; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContUser1; if(!pos) tmp = (AliPIDperfContainer *) fContUser2; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{K^{0}_{s}} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } void doeffKa(Int_t pos,Float_t prob,Float_t etaminkp,Float_t etamaxkp){ LoadLib(); TH1D *hm = hmatched->ProjectionX("matchingKaEff",cmin,cmax); TH1D *ht = htracked->ProjectionX("tracking",cmin,cmax); hm->GetYaxis()->SetTitle("TOF matching eff."); hm->SetTitle("Using probability as weights"); hm->Sumw2(); ht->Sumw2(); hm->Divide(hm,ht,1,1,"B"); Int_t nptbin = binPid[2]; Float_t minptbin = xmin[2]; Float_t maxptbin = xmax[2]; if(pos == 0){ nptbin = binPid[3]; minptbin = xmin[3]; maxptbin = xmax[3]; } if(prob > 0.1999){ kGoodMatch = kFALSE; kSigma2vs3 = kFALSE; kSigma2vs3TPC=kFALSE; if(! kOverAll) require5sigma = kTRUE; if(!isMC && !kOverAll) weightS = -0.9; } TCanvas *c1 = new TCanvas(); c1->Divide((nptbin+1)/2,2); TH2F *hh,*hh2; TH1D *h; char name[100]; Float_t b[50][3]; Double_t xx[50],yy[50]; Double_t exx[50],eyy[50]; for(Int_t i=0;i < nptbin;i++){ c1->cd(i+1);//->SetLogy(); Float_t ptmin = minptbin+(maxptbin-minptbin)/nptbin*(i); Float_t ptmax = minptbin+(maxptbin-minptbin)/nptbin*(i+1); xx[i] = (ptmin+ptmax)/2; exx[i] = (-ptmin+ptmax)/2; Float_t pp=0.1; if(prob < 0.2) pp = 0.; if(pos) hh=GetHistoKap(ptmin,ptmax,pp,0.0,etaminkp,etamaxkp); else hh=GetHistoKan(ptmin,ptmax,pp,0.0); sprintf(name,"TOF matched: %f < p_{T} < %f GeV/#it{c}",ptmin,ptmax); hh->SetTitle(name); sprintf(name,"hNoPid%i",i); pp=prob; if(prob < 0.2) pp = 0.1; if(pos) hh2=GetHistoKap(ptmin,ptmax,pp,0.0,etaminkp,etamaxkp); else hh2=GetHistoKan(ptmin,ptmax,pp,0.0); AddHisto(hh,hh2,weightS); h = hh->ProjectionX(name,cmin,cmax); h->RebinX(rebinsize); h->Draw("ERR"); h->SetMarkerStyle(24); b[i][0]=-1; Int_t ntrial = 0; Float_t chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,b[i],"WW","",xx[i]); c1->Update(); // getchar(); fit(h,b[i],"","",xx[i]); ntrial++; chi2 = b[i][2]; printf("chi2 = %f\n",chi2); c1->Update(); // getchar(); } yy[i] = fall->GetParameter(parplotted); eyy[i] = fall->GetParError(parplotted); } TGraphErrors *gpar = new TGraphErrors(nptbin,xx,yy,exx,eyy); c1->cd(8); // gpar->Draw("AP"); gpar->SetMarkerStyle(20); TCanvas *c2 = new TCanvas(); c2->Divide((nptbin+1)/2,2); Float_t b2[50][3]; for(Int_t i=0;i < nptbin;i++){ c2->cd(i+1); Float_t ptmin = minptbin+(maxptbin-minptbin)/nptbin*(i); Float_t ptmax = minptbin+(maxptbin-minptbin)/nptbin*(i+1); Float_t pp=prob; if(prob < 0.2) pp = 0.1; if(pos) hh=GetHistoKap(ptmin,ptmax,pp,0.0,etaminkp,etamaxkp); else hh=GetHistoKan(ptmin,ptmax,pp,0.0); sprintf(name,"P_{TOF} > 0.8: %f < p_{T} < %f GeV/#it{c}",ptmin,ptmax); hh->SetTitle(name); sprintf(name,"hPid60_%i",i); h = hh->ProjectionX(name,cmin,cmax); h->RebinX(rebinsize); h->Draw("ERR"); h->SetMarkerStyle(24); b2[i][0]=-1; Int_t ntrial = 0; Float_t chi2 = 10000; while(ntrial < 3 && (chi2 > 20 + 1000*selectTrue)){ fit(h,b2[i],"WW",""); fit(h,b2[i],"",""); ntrial++; chi2 = b2[i][2]; printf("chi2 = %f\n",chi2); } yy[i] = fall->GetParameter(parplotted); eyy[i] = fall->GetParError(parplotted); } TGraphErrors *gpar2 = new TGraphErrors(nptbin,xx,yy,exx,eyy); c2->cd(8); // gpar2->Draw("AP"); gpar2->SetMarkerStyle(20); Double_t xpt[50],expt[50],eff[50],efferr[50]; for(Int_t i=0;i 1)efferr[i]=1; } new TCanvas(); TGraphErrors *geff = new TGraphErrors(nptbin,xpt,eff,expt,efferr); geff->Draw("AP"); char flag[100]; flag[0] = '\0'; if(isMC){ if(selectTrue) sprintf(flag,"true"); else if(!keepTrue) sprintf(flag,"back"); } char flag2[100]; flag2[0] = '\0'; Bool_t kWriteME = kFALSE; char etarange[100]; sprintf(etarange,"_%.1f-%.1f_",etaminkp,etamaxkp); if(kGoodMatch) sprintf(flag2,"GM"); if(bayesVsigma) sprintf(flag2,"BayesVsSigma"); if(kSigma2vs3) sprintf(flag2,"Sigma2vs3"); if(kSigma2vs3TPC) sprintf(flag2,"Sigma2vs3TPC"); if(kOverAll) sprintf(flag2,"OverAll"); if(kOverAllTOFmatch) sprintf(flag2,"OverAllTOF"); if(kOverAll2Sigma) sprintf(flag2,"OverAll2sigma"); if(pos){ if(prob >=0.2) sprintf(name,"kaonPos%sP%iEff%i_%i%s%s.root",etarange,Int_t(prob*100),(cmin-1)*10,cmax*10,flag,flag2); else{ sprintf(name,"kaonPos%sMatchEff%i_%i%s%s.root",etarange,(cmin-1)*10,cmax*10,flag,flag2); if(!(kOverAll || bayesVsigma || kGoodMatch || kSigma2vs3 || kSigma2vs3TPC)) kWriteME = kTRUE; } } else{ if(prob >=0.2) sprintf(name,"kaonNeg%sP%iEff%i_%i%s%s.root",etarange,Int_t(prob*100),(cmin-1)*10,cmax*10,flag,flag2); else sprintf(name,"kaonNeg%sMatchEff%i_%i%s%s.root",etarange,(cmin-1)*10,cmax*10,flag,flag2); } geff->SetTitle("K efficiency (from #phi);p_{T} (GeV/#it{c};efficiency"); TFile *fout = new TFile(name,"RECREATE"); geff->Write(); if(kWriteME) hm->Write(); fout->Close(); if(kWriteME) hm->Draw("SAME"); } TH2F *GetHistoKap(Float_t pt,Float_t ptM,Float_t pMinkp,Float_t pMinkn,Float_t etaminkp,Float_t etamaxkp){ Float_t x[] = {xmin[0]+0.001,etaminkp+0.001,pt+0.001,xmin[3]+0.001,pMinkp+0.001,pMinkn+0.001,(pMinkp>0.09)+0.001,kTOFmatch+0.001,selectTrue,xmin[9],xmin[10],xmin[11],xmin[12],xmin[13]}; Float_t x2[] = {xmax[0],etamaxkp-0.001,ptM-0.001,xmax[3],xmax[4],xmax[5],xmax[6],xmax[7],keepTrue,xmax[9],xmax[10],xmax[11],xmax[12],xmax[13]}; if(kOverAll){ x[6] = 0.0001; x2[9] = 4.9; } if(kOverAllTOFmatch && pMinkp > 0.19){ x[6] = 1.0001; } if(kOverAll2Sigma && pMinkp > 0.09){ x2[9] = 2; x[6] = 1.0001; } if(kGoodMatch){ x[6] = 1.0001; if(pMinkp > 0) x2[9] = 4.9; } if(kTOFmatch){ x[6] = 1.0001; } if(kSigma2vs3){ x[6] = 1.0001; x2[9] = 3; if(pMinkp > 0) x2[9] = 2; } if(kSigma2vs3TPC){ x[6] = 0.0001; x2[6] = 0.0002; x2[9] = 3; if(pMinkp > 0) x2[9] = 2; } if(bayesVsigma){ if(pMinkp > 0){ x[4] = 0.2001; x2[9] = 5; } else{ x2[9] = 3; } } if(require5sigma) x2[9] = 4.9; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContPid1; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{#phi} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } TH2F *GetHistoKan(Float_t pt,Float_t ptM,Float_t pMinkn,Float_t pMinkp,Float_t etaminkp,Float_t etamaxkp){ Float_t x[] = {xmin[0]+0.001,etaminkp+0.001,xmin[2]+0.001,pt+0.001,pMinkp+0.001,pMinkn+0.001,kTOFmatch+0.001,(pMinkn>0.09)+0.001,selectTrue,xmin[9],xmin[10],xmin[11],xmin[12],xmin[13]}; Float_t x2[] = {xmax[0],etamaxkp-0.001,xmax[2],ptM-0.001,xmax[4],xmax[5],xmax[6],xmax[7],keepTrue,xmax[9],xmax[10],xmax[11],xmax[12],xmax[13]}; if(kOverAll){ x[7] = 0.0001; x2[10] = 4.9; } if(kOverAllTOFmatch && pMinkn > 0.19){ x[7] = 1.0001; } if(kOverAll2Sigma && pMinkn > 0.09){ x2[10] = 2; x[7] = 1.0001; } if(kGoodMatch){ x[7] = 1.0001; if(pMinkn > 0) x2[10] = 4.9; } if(kTOFmatch){ x[7] = 1.0001; } if(kSigma2vs3){ x[7] = 1.0001; x2[10] = 3; if(pMinkn > 0) x2[10] = 2; } if(kSigma2vs3TPC){ x[7] = 0.0001; x2[7] = 0.0002; x2[10] = 3; if(pMinkn > 0) x2[10] = 2; } if(bayesVsigma){ if(pMinkn > 0){ x[5] = 0.2001; x2[10] = 5; } else{ x2[10] = 3; } } if(require5sigma) x2[10] = 4.9; AliPIDperfContainer *tmp = (AliPIDperfContainer *) fContPid2; TH2F *h = tmp->GetQA(0, x, x2); h->GetXaxis()->SetTitle("M_{#phi} (GeV/#it{c}^{2})"); h->GetYaxis()->SetTitle("centrality [%]"); return h; } void fit(TH1D *h,Float_t *a,char *opt,char *opt2,Float_t pt){ if(h->GetEntries() < 1){ if(a){ a[0]=0.01; a[1]=1; } return; } fall->SetParameter(0,100); fall->SetParameter(0,1.01898 + 2.4e-04*pt); fall->SetParameter(2,0.0044); fall->SetParameter(3,0.0015); fall->SetParLimits(0,-100,100000); fall->SetParLimits(1,1.01898 + 2.4e-04*pt-1e-03,1.01898 + 2.4e-04*pt+1e-03); fall->SetParLimits(2,0.0005,0.006); fall->SetParLimits(3,0.001,0.0017); fall->FixParameter(1,1.01884 + 2.9891e-04*pt); fall->FixParameter(2,0.0044); fall->FixParameter(3,7.57574e-04 + 3.85408e-04*pt); fall->ReleaseParameter(4); fall->ReleaseParameter(5); fall->ReleaseParameter(6); fall->ReleaseParameter(7); fall->ReleaseParameter(8); if(!kGoodMatch && !kSigma2vs3){ if(pt > 1.5){ fall->FixParameter(7,0); fall->FixParameter(8,0); } if(pt > 1.7){ fall->FixParameter(6,0); } } if(selectTrue){ fall->FixParameter(4,0); fall->FixParameter(5,0); fall->FixParameter(6,0); fall->FixParameter(7,0); fall->FixParameter(8,0); } char name[100]; TF1 *ftmp=fall; TF1 *ftmp2=new TF1(*fsign); sprintf(name,"fsign%i",ifunc); ftmp2->SetName(name); TF1 *ftmp3=new TF1(*fback); sprintf(name,"ftmp3%i",ifunc); ftmp3->SetName(name); ifunc++; h->Fit(ftmp,opt,opt2,fitmin,fitmax); h->Draw("ERR"); ftmp2->SetParameter(0,ftmp->GetParameter(0)); ftmp2->SetParameter(1,ftmp->GetParameter(1)); ftmp2->SetParameter(2,ftmp->GetParameter(2)); ftmp2->SetParameter(3,ftmp->GetParameter(3)); ftmp2->Draw("SAME"); ftmp3->SetParameter(0,ftmp->GetParameter(4)); ftmp3->SetParameter(1,ftmp->GetParameter(5)); ftmp3->SetParameter(2,ftmp->GetParameter(6)); ftmp3->SetParameter(3,ftmp->GetParameter(7)); ftmp3->SetParameter(4,ftmp->GetParameter(8)); ftmp3->Draw("SAME"); Float_t mean = ftmp->GetParameter(1); Float_t sigma = 0.0044;//TMath::Abs(ftmp->GetParameter(2)); Float_t signI = ftmp2->Integral(mean-10*sigma,mean+10*sigma)/h->GetBinWidth(1); Float_t backI = ftmp3->Integral(mean-3*sigma,mean+3*sigma)/h->GetBinWidth(1); Float_t errI = TMath::Sqrt(ftmp->GetParError(0)*ftmp->GetParError(0)/(0.001+ftmp->GetParameter(0))/(0.001+ftmp->GetParameter(0))); printf("signal(5 sigma) = %f +/- %f(fit) +/- %f(stat)\n",signI,errI*signI,TMath::Sqrt(signI)); printf("backgr(3sigma) = %f\n",backI); printf("significance(3 sigma) = %f\n",signI/sqrt(signI+backI)); if(a){ a[0]=signI; a[1]=signI*errI*signI*errI + signI; a[1] = TMath::Sqrt(a[1]); if(ftmp->GetNDF()) a[2] = ftmp->GetChisquare()/ftmp->GetNDF(); if(selectTrue){ a[0] = h->Integral(1,h->GetNbinsX()); a[1] = TMath::Sqrt(a[0]); } } } void AddHisto(TH2F *h1,TH2F *h2,Float_t w){ Int_t nbinx = h1->GetNbinsX(); Int_t nbiny = h1->GetNbinsY(); for(Int_t i=1;i<=nbinx;i++){ for(Int_t j=1;j<=nbiny;j++){ Double_t val = h1->GetBinContent(i,j) + h2->GetBinContent(i,j)*w; Float_t err = TMath::Min(TMath::Sqrt(val),val); h1->SetBinContent(i,j,val); h1->SetBinError(i,j,err); } } }