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Fix in composition of QAChecked output image file (Melinda S.)
[u/mrichter/AliRoot.git] / STEER / AliBaseCalibViewer.cxx
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11a2ac51 1///////////////////////////////////////////////////////////////////////////////
2// //
3// Base class for the AliTPCCalibViewer and AliTRDCalibViewer //
4// used for the calibration monitor //
5// //
6// Authors: Marian Ivanov (Marian.Ivanov@cern.ch) //
7// Jens Wiechula (Jens.Wiechula@cern.ch) //
8// Ionut Arsene (iarsene@cern.ch) //
9// //
10///////////////////////////////////////////////////////////////////////////////
11
12
13#include <iostream>
14#include <fstream>
15#include <TString.h>
16#include <TRandom.h>
17#include <TLegend.h>
18#include <TLine.h>
19//#include <TCanvas.h>
20#include <TROOT.h>
21#include <TStyle.h>
22#include <TH1.h>
23#include <TH1F.h>
24#include <TMath.h>
25#include <THashTable.h>
26#include <TObjString.h>
27#include <TLinearFitter.h>
28#include <TTreeStream.h>
29#include <TFile.h>
30#include <TKey.h>
31#include <TGraph.h>
32#include <TDirectory.h>
33#include <TFriendElement.h>
34
35#include "AliBaseCalibViewer.h"
36
37ClassImp(AliBaseCalibViewer)
38
39AliBaseCalibViewer::AliBaseCalibViewer()
40 :TObject(),
41 fTree(0),
42 fFile(0),
43 fListOfObjectsToBeDeleted(0),
44 fTreeMustBeDeleted(0),
45 fAbbreviation(0),
46 fAppendString(0)
47{
48 //
49 // Default constructor
50 //
51}
52
53//_____________________________________________________________________________
54AliBaseCalibViewer::AliBaseCalibViewer(const AliBaseCalibViewer &c)
55 :TObject(c),
56 fTree(0),
57 fFile(0),
58 fListOfObjectsToBeDeleted(0),
59 fTreeMustBeDeleted(0),
60 fAbbreviation(0),
61 fAppendString(0)
62{
63 //
64 // dummy AliBaseCalibViewer copy constructor
65 // not yet working!!!
66 //
67 fTree = c.fTree;
68 fTreeMustBeDeleted = c.fTreeMustBeDeleted;
69 fListOfObjectsToBeDeleted = c.fListOfObjectsToBeDeleted;
70 fAbbreviation = c.fAbbreviation;
71 fAppendString = c.fAppendString;
72}
73
74//_____________________________________________________________________________
75AliBaseCalibViewer::AliBaseCalibViewer(TTree* tree)
76 :TObject(),
77 fTree(0),
78 fFile(0),
79 fListOfObjectsToBeDeleted(0),
80 fTreeMustBeDeleted(0),
81 fAbbreviation(0),
82 fAppendString(0)
83{
84 //
85 // Constructor that initializes the calibration viewer
86 //
87 fTree = tree;
88 fTreeMustBeDeleted = kFALSE;
89 fListOfObjectsToBeDeleted = new TObjArray();
90 fAbbreviation = "~";
91 fAppendString = ".fElements";
92}
93
94//_____________________________________________________________________________
95AliBaseCalibViewer::AliBaseCalibViewer(const Char_t* fileName, const Char_t* treeName)
96 :TObject(),
97 fTree(0),
98 fFile(0),
99 fListOfObjectsToBeDeleted(0),
100 fTreeMustBeDeleted(0),
101 fAbbreviation(0),
102 fAppendString(0)
103
104{
105 //
106 // Constructor to initialize the calibration viewer
107 // the file 'fileName' contains the tree 'treeName'
108 //
109 fFile = new TFile(fileName, "read");
110 fTree = (TTree*) fFile->Get(treeName);
111 fTreeMustBeDeleted = kTRUE;
112 fListOfObjectsToBeDeleted = new TObjArray();
113 fAbbreviation = "~";
114 fAppendString = ".fElements";
115}
116
117//____________________________________________________________________________
118AliBaseCalibViewer & AliBaseCalibViewer::operator =(const AliBaseCalibViewer & param)
119{
120 //
121 // assignment operator - dummy
122 // not yet working!!!
123 //
124 fTree = param.fTree;
125 fTreeMustBeDeleted = param.fTreeMustBeDeleted;
126 fListOfObjectsToBeDeleted = param.fListOfObjectsToBeDeleted;
127 fAbbreviation = param.fAbbreviation;
128 fAppendString = param.fAppendString;
129 return (*this);
130}
131
132//_____________________________________________________________________________
133AliBaseCalibViewer::~AliBaseCalibViewer()
134{
135 //
136 // AliBaseCalibViewer destructor
137 // all objects will be deleted, the file will be closed, the pictures will disappear
138 //
139 if (fTree && fTreeMustBeDeleted) {
140 fTree->SetCacheSize(0);
141 fTree->Delete();
142 }
143 if (fFile) {
144 fFile->Close();
145 fFile = 0;
146 }
147
148 for (Int_t i = fListOfObjectsToBeDeleted->GetEntriesFast()-1; i >= 0; i--) {
149 delete fListOfObjectsToBeDeleted->At(i);
150 }
151 delete fListOfObjectsToBeDeleted;
152}
153
154//_____________________________________________________________________________
155void AliBaseCalibViewer::Delete(Option_t* option) {
156 //
157 // Should be called from AliBaseCalibViewerGUI class only.
158 // If you use Delete() do not call the destructor.
159 // All objects (except those contained in fListOfObjectsToBeDeleted) will be deleted, the file will be closed.
160 //
161
162 option = option; // to avoid warnings on compiling
163 if (fTree && fTreeMustBeDeleted) {
164 fTree->SetCacheSize(0);
165 fTree->Delete();
166 }
167 if (fFile)
168 delete fFile;
169 delete fListOfObjectsToBeDeleted;
170}
171
172//_____________________________________________________________________________
173void AliBaseCalibViewer::FormatHistoLabels(TH1 *histo) const {
174 //
175 // formats title and axis labels of histo
176 // removes '.fElements'
177 //
178 if (!histo) return;
179 TString replaceString(fAppendString.Data());
180 TString *str = new TString(histo->GetTitle());
181 str->ReplaceAll(replaceString, "");
182 histo->SetTitle(str->Data());
183 delete str;
184 if (histo->GetXaxis()) {
185 str = new TString(histo->GetXaxis()->GetTitle());
186 str->ReplaceAll(replaceString, "");
187 histo->GetXaxis()->SetTitle(str->Data());
188 delete str;
189 }
190 if (histo->GetYaxis()) {
191 str = new TString(histo->GetYaxis()->GetTitle());
192 str->ReplaceAll(replaceString, "");
193 histo->GetYaxis()->SetTitle(str->Data());
194 delete str;
195 }
196 if (histo->GetZaxis()) {
197 str = new TString(histo->GetZaxis()->GetTitle());
198 str->ReplaceAll(replaceString, "");
199 histo->GetZaxis()->SetTitle(str->Data());
200 delete str;
201 }
202}
203
204//_____________________________________________________________________________
205TFriendElement* AliBaseCalibViewer::AddReferenceTree(const Char_t* filename, const Char_t* treename, const Char_t* refname){
206 //
207 // add a reference tree to the current tree
208 // by default the treename is 'tree' and the reference treename is 'R'
209 //
210 TFile *file = new TFile(filename);
211 fListOfObjectsToBeDeleted->Add(file);
212 TTree * tree = (TTree*)file->Get(treename);
213 return AddFriend(tree, refname);
214}
215
216//_____________________________________________________________________________
217TString* AliBaseCalibViewer::Fit(const Char_t* drawCommand, const Char_t* formula, const Char_t* cuts,
218 Double_t & chi2, TVectorD &fitParam, TMatrixD &covMatrix){
219 //
220 // fit an arbitrary function, specified by formula into the data, specified by drawCommand and cuts
221 // returns chi2, fitParam and covMatrix
222 // returns TString with fitted formula
223 //
224
225 TString formulaStr(formula);
226 TString drawStr(drawCommand);
227 TString cutStr(cuts);
228
229 // abbreviations:
230 drawStr.ReplaceAll(fAbbreviation, fAppendString);
231 cutStr.ReplaceAll(fAbbreviation, fAppendString);
232 formulaStr.ReplaceAll(fAbbreviation, fAppendString);
233
234 formulaStr.ReplaceAll("++", fAbbreviation);
235 TObjArray* formulaTokens = formulaStr.Tokenize(fAbbreviation.Data());
236 Int_t dim = formulaTokens->GetEntriesFast();
237
238 fitParam.ResizeTo(dim);
239 covMatrix.ResizeTo(dim,dim);
240
241 TLinearFitter* fitter = new TLinearFitter(dim+1, Form("hyp%d",dim));
242 fitter->StoreData(kTRUE);
243 fitter->ClearPoints();
244
245 Int_t entries = Draw(drawStr.Data(), cutStr.Data(), "goff");
97def841 246 if (entries == -1) {
247 delete fitter;
248 return new TString("An ERROR has occured during fitting!");
249 }
11a2ac51 250 Double_t **values = new Double_t*[dim+1] ;
251
252 for (Int_t i = 0; i < dim + 1; i++){
253 Int_t centries = 0;
254 if (i < dim) centries = fTree->Draw(((TObjString*)formulaTokens->At(i))->GetName(), cutStr.Data(), "goff");
255 else centries = fTree->Draw(drawStr.Data(), cutStr.Data(), "goff");
256
97def841 257 if (entries != centries) {
258 delete fitter;
259 delete [] values;
260 return new TString("An ERROR has occured during fitting!");
261 }
11a2ac51 262 values[i] = new Double_t[entries];
263 memcpy(values[i], fTree->GetV1(), entries*sizeof(Double_t));
264 }
265
266 // add points to the fitter
267 for (Int_t i = 0; i < entries; i++){
268 Double_t x[1000];
269 for (Int_t j=0; j<dim;j++) x[j]=values[j][i];
270 fitter->AddPoint(x, values[dim][i], 1);
271 }
272
273 fitter->Eval();
274 fitter->GetParameters(fitParam);
275 fitter->GetCovarianceMatrix(covMatrix);
276 chi2 = fitter->GetChisquare();
11a2ac51 277
278 TString *preturnFormula = new TString(Form("( %e+",fitParam[0])), &returnFormula = *preturnFormula;
279
280 for (Int_t iparam = 0; iparam < dim; iparam++) {
281 returnFormula.Append(Form("%s*(%e)",((TObjString*)formulaTokens->At(iparam))->GetName(),fitParam[iparam+1]));
282 if (iparam < dim-1) returnFormula.Append("+");
283 }
284 returnFormula.Append(" )");
285 delete formulaTokens;
286 delete fitter;
97def841 287 for (Int_t i = 0; i < dim + 1; i++) delete [] values[i];
11a2ac51 288 delete[] values;
289 return preturnFormula;
290}
291
292//_____________________________________________________________________________
293Double_t AliBaseCalibViewer::GetLTM(Int_t n, Double_t *array, Double_t *sigma, Double_t fraction){
294 //
295 // returns the LTM and sigma
296 //
297 Double_t *ddata = new Double_t[n];
298 Double_t mean = 0, lsigma = 0;
299 UInt_t nPoints = 0;
300 for (UInt_t i = 0; i < (UInt_t)n; i++) {
301 ddata[nPoints]= array[nPoints];
302 nPoints++;
303 }
304 Int_t hh = TMath::Min(TMath::Nint(fraction * nPoints), Int_t(n));
305 AliMathBase::EvaluateUni(nPoints, ddata, mean, lsigma, hh);
306 if (sigma) *sigma = lsigma;
307 delete [] ddata;
308 return mean;
309}
310
311//_____________________________________________________________________________
312Int_t AliBaseCalibViewer::GetBin(Float_t value, Int_t nbins, Double_t binLow, Double_t binUp){
313 // Returns the 'bin' for 'value'
314 // The interval between 'binLow' and 'binUp' is divided into 'nbins' equidistant bins
315 // avoid index out of bounds error: 'if (bin < binLow) bin = binLow' and vice versa
316 /* Begin_Latex
317 GetBin(value) = #frac{nbins - 1}{binUp - binLow} #upoint (value - binLow) +1
318 End_Latex
319 */
320
321 Int_t bin = TMath::Nint( (Float_t)(value - binLow) / (Float_t)(binUp - binLow) * (nbins-1) ) + 1;
322 // avoid index out of bounds:
323 if (value < binLow) bin = 0;
324 if (value > binUp) bin = nbins + 1;
325 return bin;
326
327}
328
329//_____________________________________________________________________________
330TH1F* AliBaseCalibViewer::SigmaCut(TH1F *histogram, Float_t mean, Float_t sigma, Float_t sigmaMax,
331 Float_t sigmaStep, Bool_t pm) {
332 //
333 // Creates a cumulative histogram Begin_Latex S(t, #mu, #sigma) End_Latex, where you can see, how much of the data are inside sigma-intervals around the mean value
334 // The data of the distribution Begin_Latex f(x, #mu, #sigma) End_Latex are given in 'histogram'
335 // 'mean' and 'sigma' are Begin_Latex #mu End_Latex and Begin_Latex #sigma End_Latex of the distribution in 'histogram', to be specified by the user
336 // sigmaMax: up to which sigma around the mean/median/LTM the histogram is generated (in units of sigma, Begin_Latex t #sigma End_Latex)
337 // sigmaStep: the binsize of the generated histogram, -1 means, that the maximal reasonable stepsize is used
338 // pm: Decide weather Begin_Latex t > 0 End_Latex (first case) or Begin_Latex t End_Latex arbitrary (secound case)
339 // The actual work is done on the array.
340 /* Begin_Latex
6a1caa6b 341 f(x, #mu, #sigma) #Rightarrow S(t, #mu, #sigma) = (#int_{#mu}^{#mu + t #sigma} f(x, #mu, #sigma) dx + #int_{#mu}^{#mu - t #sigma} f(x, #mu, #sigma) dx) / (#int_{-#infty}^{+#infty} f(x, #mu, #sigma) dx), for t > 0
11a2ac51 342 or
6a1caa6b 343 f(x, #mu, #sigma) #Rightarrow S(t, #mu, #sigma) = #int_{#mu}^{#mu + t #sigma} f(x, #mu, #sigma) dx / #int_{-#infty}^{+#infty} f(x, #mu, #sigma) dx
11a2ac51 344 End_Latex
6a1caa6b 345 Begin_Macro(source)
11a2ac51 346 {
347 Float_t mean = 0;
348 Float_t sigma = 1.5;
349 Float_t sigmaMax = 4;
350 gROOT->SetStyle("Plain");
351 TH1F *distribution = new TH1F("Distribution1", "Distribution f(x, #mu, #sigma)", 1000,-5,5);
352 TRandom rand(23);
353 for (Int_t i = 0; i <50000;i++) distribution->Fill(rand.Gaus(mean, sigma));
354 Float_t *ar = distribution->GetArray();
355
6a1caa6b 356 TCanvas* macro_example_canvas = new TCanvas("cAliBaseCalibViewer", "", 350, 350);
11a2ac51 357 macro_example_canvas->Divide(0,3);
358 TVirtualPad *pad1 = macro_example_canvas->cd(1);
359 pad1->SetGridy();
360 pad1->SetGridx();
361 distribution->Draw();
362 TVirtualPad *pad2 = macro_example_canvas->cd(2);
363 pad2->SetGridy();
364 pad2->SetGridx();
365
366 TH1F *shist = AliTPCCalibViewer::SigmaCut(distribution, mean, sigma, sigmaMax);
367 shist->SetNameTitle("Cumulative","Cumulative S(t, #mu, #sigma)");
368 shist->Draw();
369 TVirtualPad *pad3 = macro_example_canvas->cd(3);
370 pad3->SetGridy();
371 pad3->SetGridx();
372 TH1F *shistPM = AliTPCCalibViewer::SigmaCut(distribution, mean, sigma, sigmaMax, -1, kTRUE);
373 shistPM->Draw();
374 return macro_example_canvas;
375 }
6a1caa6b 376 End_Macro
11a2ac51 377 */
378
379 Float_t *array = histogram->GetArray();
380 Int_t nbins = histogram->GetXaxis()->GetNbins();
381 Float_t binLow = histogram->GetXaxis()->GetXmin();
382 Float_t binUp = histogram->GetXaxis()->GetXmax();
383 return AliBaseCalibViewer::SigmaCut(nbins, array, mean, sigma, nbins, binLow, binUp, sigmaMax, sigmaStep, pm);
384}
385
386//_____________________________________________________________________________
387TH1F* AliBaseCalibViewer::SigmaCut(Int_t n, Float_t *array, Float_t mean, Float_t sigma, Int_t nbins, Float_t binLow, Float_t binUp, Float_t sigmaMax, Float_t sigmaStep, Bool_t pm){
388 //
389 // Creates a histogram Begin_Latex S(t, #mu, #sigma) End_Latex, where you can see, how much of the data are inside sigma-intervals around the mean value
390 // The data of the distribution Begin_Latex f(x, #mu, #sigma) End_Latex are given in 'array', 'n' specifies the length of the array
391 // 'mean' and 'sigma' are Begin_Latex #mu End_Latex and Begin_Latex #sigma End_Latex of the distribution in 'array', to be specified by the user
392 // 'nbins': number of bins, 'binLow': first bin, 'binUp': last bin
393 // sigmaMax: up to which sigma around the mean/median/LTM the histogram is generated (in units of sigma, Begin_Latex t #sigma End_Latex)
394 // sigmaStep: the binsize of the generated histogram
395 // Here the actual work is done.
396
397 if (TMath::Abs(sigma) < 1.e-10) return 0;
398 Float_t binWidth = (binUp-binLow)/(nbins - 1);
399 if (sigmaStep <= 0) sigmaStep = binWidth;
400 Int_t kbins = (Int_t)(sigmaMax * sigma / sigmaStep) + 1; // + 1 due to overflow bin in histograms
401 if (pm) kbins = 2 * (Int_t)(sigmaMax * sigma / sigmaStep) + 1;
402 Float_t kbinLow = !pm ? 0 : -sigmaMax;
403 Float_t kbinUp = sigmaMax;
404 TH1F *hist = new TH1F("sigmaCutHisto","Cumulative; Multiples of #sigma; Fraction of included data", kbins, kbinLow, kbinUp);
405 hist->SetDirectory(0);
406 hist->Reset();
407
408 // calculate normalization
409 Double_t normalization = 0;
410 for (Int_t i = 0; i <= n; i++) {
411 normalization += array[i];
412 }
413
414 // given units: units from given histogram
415 // sigma units: in units of sigma
416 // iDelta: integrate in interval (mean +- iDelta), given units
417 // x: ofset from mean for integration, given units
418 // hist: needs
419
420 // fill histogram
421 for (Float_t iDelta = 0; iDelta <= sigmaMax * sigma; iDelta += sigmaStep) {
422 // integrate array
423 Double_t valueP = array[GetBin(mean, nbins, binLow, binUp)];
424 Double_t valueM = array[GetBin(mean-binWidth, nbins, binLow, binUp)];
425 // add bin of mean value only once to the histogram
426 for (Float_t x = binWidth; x <= iDelta; x += binWidth) {
427 valueP += (mean + x <= binUp) ? array[GetBin(mean + x, nbins, binLow, binUp)] : 0;
428 valueM += (mean-binWidth - x >= binLow) ? array[GetBin(mean-binWidth - x, nbins, binLow, binUp)] : 0;
429 }
430
431 if (valueP / normalization > 100) printf("+++ Error, value to big: %f, normalization with %f will fail +++ \n", valueP, normalization);
432 if (valueP / normalization > 100) return hist;
433 if (valueM / normalization > 100) printf("+++ Error, value to big: %f, normalization with %f will fail +++ \n", valueM, normalization);
434 if (valueM / normalization > 100) return hist;
435 valueP = (valueP / normalization);
436 valueM = (valueM / normalization);
437 if (pm) {
438 Int_t bin = GetBin(iDelta/sigma, kbins, kbinLow, kbinUp);
439 hist->SetBinContent(bin, valueP);
440 bin = GetBin(-iDelta/sigma, kbins, kbinLow, kbinUp);
441 hist->SetBinContent(bin, valueM);
442 }
443 else { // if (!pm)
444 Int_t bin = GetBin(iDelta/sigma, kbins, kbinLow, kbinUp);
445 hist->SetBinContent(bin, valueP + valueM);
446 }
447 }
448 if (!pm) hist->SetMaximum(1.2);
449 return hist;
450}
451
452//_____________________________________________________________________________
453TH1F* AliBaseCalibViewer::SigmaCut(Int_t n, Double_t *array, Double_t mean, Double_t sigma, Int_t nbins, Double_t *xbins, Double_t sigmaMax){
454 //
455 // SigmaCut for variable binsize
456 // NOT YET IMPLEMENTED !!!
457 //
458 printf("SigmaCut with variable binsize, Not yet implemented\n");
459 // avoid compiler warnings:
460 n=n;
461 mean=mean;
462 sigma=sigma;
463 nbins=nbins;
464 sigmaMax=sigmaMax;
465 array=array;
466 xbins=xbins;
467
468 return 0;
469}
470
471//_____________________________________________________________________________
472Int_t AliBaseCalibViewer::DrawHisto1D(const Char_t* drawCommand, const Char_t* sector, const Char_t* cuts,
9a9e9b94 473 const Char_t *sigmas, Bool_t plotMean, Bool_t plotMedian, Bool_t plotLTM) const
474{
475 //
11a2ac51 476 // Easy drawing of data, in principle the same as EasyDraw1D
9a9e9b94 477 // Difference: A line for the mean / median / LTM is drawn
11a2ac51 478 // in 'sigmas' you can specify in which distance to the mean/median/LTM you want to see a line in sigma-units, separated by ';'
479 // example: sigmas = "2; 4; 6;" at Begin_Latex 2 #sigma End_Latex, Begin_Latex 4 #sigma End_Latex and Begin_Latex 6 #sigma End_Latex a line is drawn.
480 // "plotMean", "plotMedian" and "plotLTM": what kind of lines do you want to see?
9a9e9b94 481 //
482 Int_t oldOptStat = gStyle->GetOptStat();
483 gStyle->SetOptStat(0000000);
484 Double_t ltmFraction = 0.8;
485
486 TObjArray *sigmasTokens = TString(sigmas).Tokenize(";");
487 TVectorF nsigma(sigmasTokens->GetEntriesFast());
488 for (Int_t i = 0; i < sigmasTokens->GetEntriesFast(); i++) {
489 TString str(((TObjString*)sigmasTokens->At(i))->GetString());
490 Double_t sig = (str.IsFloat()) ? str.Atof() : 0;
491 nsigma[i] = sig;
492 }
493
494 TString drawStr(drawCommand);
495 Bool_t dangerousToDraw = drawStr.Contains(":") || drawStr.Contains(">>");
496 if (dangerousToDraw) {
497 Warning("DrawHisto1D", "The draw string must not contain ':' or '>>'.");
498 return -1;
499 }
500 drawStr += " >> tempHist";
501 Int_t entries = EasyDraw1D(drawStr.Data(), sector, cuts);
502 TH1F *htemp = (TH1F*)gDirectory->Get("tempHist");
11a2ac51 503 // FIXME is this histogram deleted automatically?
9a9e9b94 504 Double_t *values = fTree->GetV1(); // value is the array containing 'entries' numbers
505
506 Double_t mean = TMath::Mean(entries, values);
507 Double_t median = TMath::Median(entries, values);
508 Double_t sigma = TMath::RMS(entries, values);
509 Double_t maxY = htemp->GetMaximum();
510
511 TLegend * legend = new TLegend(.7,.7, .99, .99, "Statistical information");
512 //fListOfObjectsToBeDeleted->Add(legend);
513
514 if (plotMean) {
11a2ac51 515 // draw Mean
9a9e9b94 516 TLine* line = new TLine(mean, 0, mean, maxY);
517 //fListOfObjectsToBeDeleted->Add(line);
518 line->SetLineColor(kRed);
519 line->SetLineWidth(2);
520 line->SetLineStyle(1);
521 line->Draw();
522 legend->AddEntry(line, Form("Mean: %f", mean), "l");
11a2ac51 523 // draw sigma lines
9a9e9b94 524 for (Int_t i = 0; i < nsigma.GetNoElements(); i++) {
525 TLine* linePlusSigma = new TLine(mean + nsigma[i] * sigma, 0, mean + nsigma[i] * sigma, maxY);
526 //fListOfObjectsToBeDeleted->Add(linePlusSigma);
527 linePlusSigma->SetLineColor(kRed);
528 linePlusSigma->SetLineStyle(2 + i);
529 linePlusSigma->Draw();
530 TLine* lineMinusSigma = new TLine(mean - nsigma[i] * sigma, 0, mean - nsigma[i] * sigma, maxY);
531 //fListOfObjectsToBeDeleted->Add(lineMinusSigma);
532 lineMinusSigma->SetLineColor(kRed);
533 lineMinusSigma->SetLineStyle(2 + i);
534 lineMinusSigma->Draw();
535 legend->AddEntry(lineMinusSigma, Form("%i #sigma = %f",(Int_t)(nsigma[i]), (Float_t)(nsigma[i] * sigma)), "l");
536 }
537 }
538 if (plotMedian) {
11a2ac51 539 // draw median
9a9e9b94 540 TLine* line = new TLine(median, 0, median, maxY);
541 //fListOfObjectsToBeDeleted->Add(line);
542 line->SetLineColor(kBlue);
543 line->SetLineWidth(2);
544 line->SetLineStyle(1);
545 line->Draw();
546 legend->AddEntry(line, Form("Median: %f", median), "l");
11a2ac51 547 // draw sigma lines
9a9e9b94 548 for (Int_t i = 0; i < nsigma.GetNoElements(); i++) {
549 TLine* linePlusSigma = new TLine(median + nsigma[i] * sigma, 0, median + nsigma[i]*sigma, maxY);
550 //fListOfObjectsToBeDeleted->Add(linePlusSigma);
551 linePlusSigma->SetLineColor(kBlue);
552 linePlusSigma->SetLineStyle(2 + i);
553 linePlusSigma->Draw();
554 TLine* lineMinusSigma = new TLine(median - nsigma[i] * sigma, 0, median - nsigma[i]*sigma, maxY);
555 //fListOfObjectsToBeDeleted->Add(lineMinusSigma);
556 lineMinusSigma->SetLineColor(kBlue);
557 lineMinusSigma->SetLineStyle(2 + i);
558 lineMinusSigma->Draw();
559 legend->AddEntry(lineMinusSigma, Form("%i #sigma = %f",(Int_t)(nsigma[i]), (Float_t)(nsigma[i] * sigma)), "l");
560 }
561 }
562 if (plotLTM) {
11a2ac51 563 // draw LTM
9a9e9b94 564 Double_t ltmRms = 0;
565 Double_t ltm = GetLTM(entries, values, &ltmRms, ltmFraction);
566 TLine* line = new TLine(ltm, 0, ltm, maxY);
11a2ac51 567 //fListOfObjectsToBeDeleted->Add(line);
9a9e9b94 568 line->SetLineColor(kGreen+2);
569 line->SetLineWidth(2);
570 line->SetLineStyle(1);
571 line->Draw();
572 legend->AddEntry(line, Form("LTM: %f", ltm), "l");
11a2ac51 573 // draw sigma lines
9a9e9b94 574 for (Int_t i = 0; i < nsigma.GetNoElements(); i++) {
575 TLine* linePlusSigma = new TLine(ltm + nsigma[i] * ltmRms, 0, ltm + nsigma[i] * ltmRms, maxY);
11a2ac51 576 //fListOfObjectsToBeDeleted->Add(linePlusSigma);
9a9e9b94 577 linePlusSigma->SetLineColor(kGreen+2);
578 linePlusSigma->SetLineStyle(2+i);
579 linePlusSigma->Draw();
580
581 TLine* lineMinusSigma = new TLine(ltm - nsigma[i] * ltmRms, 0, ltm - nsigma[i] * ltmRms, maxY);
11a2ac51 582 //fListOfObjectsToBeDeleted->Add(lineMinusSigma);
9a9e9b94 583 lineMinusSigma->SetLineColor(kGreen+2);
584 lineMinusSigma->SetLineStyle(2+i);
585 lineMinusSigma->Draw();
586 legend->AddEntry(lineMinusSigma, Form("%i #sigma = %f", (Int_t)(nsigma[i]), (Float_t)(nsigma[i] * ltmRms)), "l");
587 }
588 }
589 if (!plotMean && !plotMedian && !plotLTM) return -1;
590 legend->Draw();
591 gStyle->SetOptStat(oldOptStat);
592 return 1;
11a2ac51 593}
594
595//_____________________________________________________________________________
596Int_t AliBaseCalibViewer::SigmaCut(const Char_t* drawCommand, const Char_t* sector, const Char_t* cuts,
597 Float_t sigmaMax, Bool_t plotMean, Bool_t plotMedian, Bool_t plotLTM, Bool_t pm,
598 const Char_t *sigmas, Float_t sigmaStep) const {
599 //
600 // Creates a histogram, where you can see, how much of the data are inside sigma-intervals
601 // around the mean/median/LTM
602 // with drawCommand, sector and cuts you specify your input data, see EasyDraw
603 // sigmaMax: up to which sigma around the mean/median/LTM the histogram is generated (in units of sigma)
604 // sigmaStep: the binsize of the generated histogram
605 // plotMean/plotMedian/plotLTM: specifies where to put the center
606 //
607
608 Double_t ltmFraction = 0.8;
609
610 TString drawStr(drawCommand);
611 Bool_t dangerousToDraw = drawStr.Contains(":") || drawStr.Contains(">>");
612 if (dangerousToDraw) {
613 Warning("SigmaCut", "The draw string must not contain ':' or '>>'.");
614 return -1;
615 }
616 drawStr += " >> tempHist";
617
618 Int_t entries = EasyDraw1D(drawStr.Data(), sector, cuts, "goff");
619 TH1F *htemp = (TH1F*)gDirectory->Get("tempHist");
620 // FIXME is this histogram deleted automatically?
621 Double_t *values = fTree->GetV1(); // value is the array containing 'entries' numbers
622
623 Double_t mean = TMath::Mean(entries, values);
624 Double_t median = TMath::Median(entries, values);
625 Double_t sigma = TMath::RMS(entries, values);
626
627 TLegend * legend = new TLegend(.7,.7, .99, .99, "Cumulative");
628 //fListOfObjectsToBeDeleted->Add(legend);
629 TH1F *cutHistoMean = 0;
630 TH1F *cutHistoMedian = 0;
631 TH1F *cutHistoLTM = 0;
632
633 TObjArray *sigmasTokens = TString(sigmas).Tokenize(";");
634 TVectorF nsigma(sigmasTokens->GetEntriesFast());
635 for (Int_t i = 0; i < sigmasTokens->GetEntriesFast(); i++) {
636 TString str(((TObjString*)sigmasTokens->At(i))->GetString());
637 Double_t sig = (str.IsFloat()) ? str.Atof() : 0;
638 nsigma[i] = sig;
639 }
640
641 if (plotMean) {
642 cutHistoMean = SigmaCut(htemp, mean, sigma, sigmaMax, sigmaStep, pm);
643 if (cutHistoMean) {
644 //fListOfObjectsToBeDeleted->Add(cutHistoMean);
645 cutHistoMean->SetLineColor(kRed);
646 legend->AddEntry(cutHistoMean, "Mean", "l");
647 cutHistoMean->SetTitle(Form("%s, cumulative; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
648 cutHistoMean->Draw();
649 DrawLines(cutHistoMean, nsigma, legend, kRed, pm);
650 } // if (cutHistoMean)
651
652 }
653 if (plotMedian) {
654 cutHistoMedian = SigmaCut(htemp, median, sigma, sigmaMax, sigmaStep, pm);
655 if (cutHistoMedian) {
656 //fListOfObjectsToBeDeleted->Add(cutHistoMedian);
657 cutHistoMedian->SetLineColor(kBlue);
658 legend->AddEntry(cutHistoMedian, "Median", "l");
659 cutHistoMedian->SetTitle(Form("%s, cumulative; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
660 if (plotMean && cutHistoMean) cutHistoMedian->Draw("same");
661 else cutHistoMedian->Draw();
662 DrawLines(cutHistoMedian, nsigma, legend, kBlue, pm);
663 } // if (cutHistoMedian)
664 }
665 if (plotLTM) {
666 Double_t ltmRms = 0;
667 Double_t ltm = GetLTM(entries, values, &ltmRms, ltmFraction);
668 cutHistoLTM = SigmaCut(htemp, ltm, ltmRms, sigmaMax, sigmaStep, pm);
669 if (cutHistoLTM) {
670 //fListOfObjectsToBeDeleted->Add(cutHistoLTM);
671 cutHistoLTM->SetLineColor(kGreen+2);
672 legend->AddEntry(cutHistoLTM, "LTM", "l");
673 cutHistoLTM->SetTitle(Form("%s, cumulative; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
674 if ((plotMean && cutHistoMean) || (plotMedian && cutHistoMedian)) cutHistoLTM->Draw("same");
675 else cutHistoLTM->Draw();
676 DrawLines(cutHistoLTM, nsigma, legend, kGreen+2, pm);
677 }
678 }
679 if (!plotMean && !plotMedian && !plotLTM) return -1;
680 legend->Draw();
681 return 1;
682}
683
684//_____________________________________________________________________________
685Int_t AliBaseCalibViewer::Integrate(const Char_t* drawCommand, const Char_t* sector, const Char_t* cuts,
686 Float_t sigmaMax, Bool_t plotMean, Bool_t plotMedian, Bool_t plotLTM,
687 const Char_t *sigmas, Float_t sigmaStep) const {
688 //
689 // Creates an integrated histogram Begin_Latex S(t, #mu, #sigma) End_Latex, out of the input distribution distribution Begin_Latex f(x, #mu, #sigma) End_Latex, given in "histogram"
690 // "mean" and "sigma" are Begin_Latex #mu End_Latex and Begin_Latex #sigma End_Latex of the distribution in "histogram", to be specified by the user
691 // sigmaMax: up to which sigma around the mean/median/LTM you want to integrate
692 // if "igma == 0" and "sigmaMax == 0" the whole histogram is integrated
693 // "sigmaStep": the binsize of the generated histogram, -1 means, that the maximal reasonable stepsize is used
694 // The actual work is done on the array.
695 /* Begin_Latex
6a1caa6b 696 f(x, #mu, #sigma) #Rightarrow S(t, #mu, #sigma) = #int_{-#infty}^{#mu + t #sigma} f(x, #mu, #sigma) dx / #int_{-#infty}^{+#infty} f(x, #mu, #sigma) dx
11a2ac51 697 End_Latex
698 */
699
700 Double_t ltmFraction = 0.8;
701 // avoid compiler warnings:
702 sigmaMax = sigmaMax;
703 sigmaStep = sigmaStep;
704
705 TString drawStr(drawCommand);
706 Bool_t dangerousToDraw = drawStr.Contains(":") || drawStr.Contains(">>");
707 if (dangerousToDraw) {
708 Warning("Integrate", "The draw string must not contain ':' or '>>'.");
709 return -1;
710 }
711 drawStr += " >> tempHist";
712
713 Int_t entries = EasyDraw1D(drawStr.Data(), sector, cuts, "goff");
714 TH1F *htemp = (TH1F*)gDirectory->Get("tempHist");
715 TGraph *integralGraphMean = 0;
716 TGraph *integralGraphMedian = 0;
717 TGraph *integralGraphLTM = 0;
718 Double_t *values = fTree->GetV1(); // value is the array containing 'entries' numbers
719 Int_t *index = new Int_t[entries];
720 Float_t *xarray = new Float_t[entries];
721 Float_t *yarray = new Float_t[entries];
722 TMath::Sort(entries, values, index, kFALSE);
723
724 Double_t mean = TMath::Mean(entries, values);
725 Double_t median = TMath::Median(entries, values);
726 Double_t sigma = TMath::RMS(entries, values);
727
728 // parse sigmas string
729 TObjArray *sigmasTokens = TString(sigmas).Tokenize(";");
730 TVectorF nsigma(sigmasTokens->GetEntriesFast());
731 for (Int_t i = 0; i < sigmasTokens->GetEntriesFast(); i++) {
732 TString str(((TObjString*)sigmasTokens->At(i))->GetString());
733 Double_t sig = (str.IsFloat()) ? str.Atof() : 0;
734 nsigma[i] = sig;
735 }
736
737 TLegend * legend = new TLegend(.7,.7, .99, .99, "Integrated histogram");
738 //fListOfObjectsToBeDeleted->Add(legend);
739
740 if (plotMean) {
741 for (Int_t i = 0; i < entries; i++) {
742 xarray[i] = (values[index[i]] - mean) / sigma;
743 yarray[i] = float(i) / float(entries);
744 }
745 integralGraphMean = new TGraph(entries, xarray, yarray);
746 if (integralGraphMean) {
747 //fListOfObjectsToBeDeleted->Add(integralGraphMean);
748 integralGraphMean->SetLineColor(kRed);
749 legend->AddEntry(integralGraphMean, "Mean", "l");
750 integralGraphMean->SetTitle(Form("%s, integrated; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
751 integralGraphMean->Draw("alu");
752 DrawLines(integralGraphMean, nsigma, legend, kRed, kTRUE);
753 }
754 }
755 if (plotMedian) {
756 for (Int_t i = 0; i < entries; i++) {
757 xarray[i] = (values[index[i]] - median) / sigma;
758 yarray[i] = float(i) / float(entries);
759 }
760 integralGraphMedian = new TGraph(entries, xarray, yarray);
761 if (integralGraphMedian) {
762 //fListOfObjectsToBeDeleted->Add(integralGraphMedian);
763 integralGraphMedian->SetLineColor(kBlue);
764 legend->AddEntry(integralGraphMedian, "Median", "l");
765 integralGraphMedian->SetTitle(Form("%s, integrated; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
766 if (plotMean && integralGraphMean) integralGraphMedian->Draw("samelu");
767 else integralGraphMedian->Draw("alu");
768 DrawLines(integralGraphMedian, nsigma, legend, kBlue, kTRUE);
769 }
770 }
771 if (plotLTM) {
772 Double_t ltmRms = 0;
773 Double_t ltm = GetLTM(entries, values, &ltmRms, ltmFraction);
774 for (Int_t i = 0; i < entries; i++) {
775 xarray[i] = (values[index[i]] - ltm) / ltmRms;
776 yarray[i] = float(i) / float(entries);
777 }
778 integralGraphLTM = new TGraph(entries, xarray, yarray);
779 if (integralGraphLTM) {
780 //fListOfObjectsToBeDeleted->Add(integralGraphLTM);
781 integralGraphLTM->SetLineColor(kGreen+2);
782 legend->AddEntry(integralGraphLTM, "LTM", "l");
783 integralGraphLTM->SetTitle(Form("%s, integrated; Multiples of #sigma; Fraction of included data", htemp->GetTitle()));
784 if ((plotMean && integralGraphMean) || (plotMedian && integralGraphMedian)) integralGraphLTM->Draw("samelu");
785 else integralGraphLTM->Draw("alu");
786 DrawLines(integralGraphLTM, nsigma, legend, kGreen+2, kTRUE);
787 }
788 }
0dd616b4 789 delete [] index;
790 delete [] xarray;
791 delete [] yarray;
11a2ac51 792 if (!plotMean && !plotMedian && !plotLTM) return -1;
793 legend->Draw();
794 return entries;
795}
796
797//_____________________________________________________________________________
798TH1F* AliBaseCalibViewer::Integrate(TH1F *histogram, Float_t mean, Float_t sigma, Float_t sigmaMax, Float_t sigmaStep){
799 //
800 // Creates an integrated histogram Begin_Latex S(t, #mu, #sigma) End_Latex, out of the input distribution distribution Begin_Latex f(x, #mu, #sigma) End_Latex, given in "histogram"
801 // "mean" and "sigma" are Begin_Latex #mu End_Latex and Begin_Latex #sigma End_Latex of the distribution in "histogram", to be specified by the user
802 // sigmaMax: up to which sigma around the mean/median/LTM you want to integrate
803 // if "igma == 0" and "sigmaMax == 0" the whole histogram is integrated
804 // "sigmaStep": the binsize of the generated histogram, -1 means, that the maximal reasonable stepsize is used
805 // The actual work is done on the array.
806 /* Begin_Latex
6a1caa6b 807 f(x, #mu, #sigma) #Rightarrow S(t, #mu, #sigma) = #int_{-#infty}^{#mu + t #sigma} f(x, #mu, #sigma) dx / #int_{-#infty}^{+#infty} f(x, #mu, #sigma) dx
11a2ac51 808 End_Latex
6a1caa6b 809 Begin_Macro(source)
11a2ac51 810 {
811 Float_t mean = 0;
812 Float_t sigma = 1.5;
813 Float_t sigmaMax = 4;
814 gROOT->SetStyle("Plain");
815 TH1F *distribution = new TH1F("Distribution2", "Distribution f(x, #mu, #sigma)", 1000,-5,5);
816 TRandom rand(23);
817 for (Int_t i = 0; i <50000;i++) distribution->Fill(rand.Gaus(mean, sigma));
818 Float_t *ar = distribution->GetArray();
819
820 TCanvas* macro_example_canvas = new TCanvas("macro_example_canvas_Integrate", "", 350, 350);
821 macro_example_canvas->Divide(0,2);
822 TVirtualPad *pad1 = macro_example_canvas->cd(1);
823 pad1->SetGridy();
824 pad1->SetGridx();
825 distribution->Draw();
826 TVirtualPad *pad2 = macro_example_canvas->cd(2);
827 pad2->SetGridy();
828 pad2->SetGridx();
829 TH1F *shist = AliTPCCalibViewer::Integrate(distribution, mean, sigma, sigmaMax);
830 shist->SetNameTitle("Cumulative","Cumulative S(t, #mu, #sigma)");
831 shist->Draw();
832
833 return macro_example_canvas_Integrate;
834 }
6a1caa6b 835 End_Macro
11a2ac51 836 */
837
838
839 Float_t *array = histogram->GetArray();
840 Int_t nbins = histogram->GetXaxis()->GetNbins();
841 Float_t binLow = histogram->GetXaxis()->GetXmin();
842 Float_t binUp = histogram->GetXaxis()->GetXmax();
843 return Integrate(nbins, array, nbins, binLow, binUp, mean, sigma, sigmaMax, sigmaStep);
844}
845
846//_____________________________________________________________________________
847TH1F* AliBaseCalibViewer::Integrate(Int_t n, Float_t *array, Int_t nbins, Float_t binLow, Float_t binUp,
848 Float_t mean, Float_t sigma, Float_t sigmaMax, Float_t sigmaStep){
849 // Creates an integrated histogram Begin_Latex S(t, #mu, #sigma) End_Latex, out of the input distribution distribution Begin_Latex f(x, #mu, #sigma) End_Latex, given in "histogram"
850 // "mean" and "sigma" are Begin_Latex #mu End_Latex and Begin_Latex #sigma End_Latex of the distribution in "histogram", to be specified by the user
851 // sigmaMax: up to which sigma around the mean/median/LTM you want to integrate
852 // if "igma == 0" and "sigmaMax == 0" the whole histogram is integrated
853 // "sigmaStep": the binsize of the generated histogram, -1 means, that the maximal reasonable stepsize is used
854 // Here the actual work is done.
855
856 Bool_t givenUnits = kTRUE;
857 if (TMath::Abs(sigma) < 1.e-10 && TMath::Abs(sigmaMax) < 1.e-10) givenUnits = kFALSE;
858 if (givenUnits) {
859 sigma = 1;
860 sigmaMax = (binUp - binLow) / 2.;
861 }
862
863 Float_t binWidth = (binUp-binLow)/(nbins - 1);
864 if (sigmaStep <= 0) sigmaStep = binWidth;
865 Int_t kbins = (Int_t)(sigmaMax * sigma / sigmaStep) + 1; // + 1 due to overflow bin in histograms
866 Float_t kbinLow = givenUnits ? binLow : -sigmaMax;
867 Float_t kbinUp = givenUnits ? binUp : sigmaMax;
868 TH1F *hist = 0;
869 if (givenUnits) hist = new TH1F("integratedHisto","Integrated Histogram; Given x; Fraction of included data", kbins, kbinLow, kbinUp);
870 if (!givenUnits) hist = new TH1F("integratedHisto","Integrated Histogram; Multiples of #sigma; Fraction of included data", kbins, kbinLow, kbinUp);
871 hist->SetDirectory(0);
872 hist->Reset();
873
874 // calculate normalization
875 // printf("calculating normalization, integrating from bin 1 to %i \n", n);
876 Double_t normalization = 0;
877 for (Int_t i = 1; i <= n; i++) {
878 normalization += array[i];
879 }
880 // printf("normalization: %f \n", normalization);
881
882 // given units: units from given histogram
883 // sigma units: in units of sigma
884 // iDelta: integrate in interval (mean +- iDelta), given units
885 // x: ofset from mean for integration, given units
886 // hist: needs
887
888 // fill histogram
889 for (Float_t iDelta = mean - sigmaMax * sigma; iDelta <= mean + sigmaMax * sigma; iDelta += sigmaStep) {
890 // integrate array
891 Double_t value = 0;
892 for (Float_t x = mean - sigmaMax * sigma; x <= iDelta; x += binWidth) {
893 value += (x <= binUp && x >= binLow) ? array[GetBin(x, nbins, binLow, binUp)] : 0;
894 }
895 if (value / normalization > 100) printf("+++ Error, value to big: %f, normalization with %f will fail +++ \n", value, normalization);
896 if (value / normalization > 100) return hist;
897 Int_t bin = GetBin(iDelta/sigma, kbins, kbinLow, kbinUp);
898 // printf("first integration bin: %i, last integration bin: %i \n", GetBin(mean - sigmaMax * sigma, nbins, binLow, binUp), GetBin(iDelta, nbins, binLow, binUp));
899 // printf("value: %f, normalization: %f, normalized value: %f, iDelta: %f, Bin: %i \n", value, normalization, value/normalization, iDelta, bin);
900 value = (value / normalization);
901 hist->SetBinContent(bin, value);
902 }
903 return hist;
904}
905
906//_____________________________________________________________________________
907void AliBaseCalibViewer::DrawLines(TH1F *histogram, TVectorF nsigma, TLegend *legend, Int_t color, Bool_t pm) const {
9a9e9b94 908 //
11a2ac51 909 // Private function for SigmaCut(...) and Integrate(...)
910 // Draws lines into the given histogram, specified by "nsigma", the lines are addeed to the legend
9a9e9b94 911 //
912
11a2ac51 913 // start to draw the lines, loop over requested sigmas
9a9e9b94 914 for (Int_t i = 0; i < nsigma.GetNoElements(); i++) {
915 if (!pm) {
916 Int_t bin = histogram->GetXaxis()->FindBin(nsigma[i]);
917 TLine* lineUp = new TLine(nsigma[i], 0, nsigma[i], histogram->GetBinContent(bin));
11a2ac51 918 //fListOfObjectsToBeDeleted->Add(lineUp);
9a9e9b94 919 lineUp->SetLineColor(color);
920 lineUp->SetLineStyle(2 + i);
921 lineUp->Draw();
922 TLine* lineLeft = new TLine(nsigma[i], histogram->GetBinContent(bin), 0, histogram->GetBinContent(bin));
11a2ac51 923 //fListOfObjectsToBeDeleted->Add(lineLeft);
9a9e9b94 924 lineLeft->SetLineColor(color);
925 lineLeft->SetLineStyle(2 + i);
926 lineLeft->Draw();
927 legend->AddEntry(lineLeft, Form("Fraction(%f #sigma) = %f",nsigma[i], histogram->GetBinContent(bin)), "l");
928 }
929 else { // if (pm)
930 Int_t bin = histogram->GetXaxis()->FindBin(nsigma[i]);
931 TLine* lineUp1 = new TLine(nsigma[i], 0, nsigma[i], histogram->GetBinContent(bin));
11a2ac51 932 //fListOfObjectsToBeDeleted->Add(lineUp1);
9a9e9b94 933 lineUp1->SetLineColor(color);
934 lineUp1->SetLineStyle(2 + i);
935 lineUp1->Draw();
936 TLine* lineLeft1 = new TLine(nsigma[i], histogram->GetBinContent(bin), histogram->GetBinLowEdge(0)+histogram->GetBinWidth(0), histogram->GetBinContent(bin));
11a2ac51 937 //fListOfObjectsToBeDeleted->Add(lineLeft1);
9a9e9b94 938 lineLeft1->SetLineColor(color);
939 lineLeft1->SetLineStyle(2 + i);
940 lineLeft1->Draw();
941 legend->AddEntry(lineLeft1, Form("Fraction(+%f #sigma) = %f",nsigma[i], histogram->GetBinContent(bin)), "l");
942 bin = histogram->GetXaxis()->FindBin(-nsigma[i]);
943 TLine* lineUp2 = new TLine(-nsigma[i], 0, -nsigma[i], histogram->GetBinContent(bin));
11a2ac51 944 //fListOfObjectsToBeDeleted->Add(lineUp2);
9a9e9b94 945 lineUp2->SetLineColor(color);
946 lineUp2->SetLineStyle(2 + i);
947 lineUp2->Draw();
948 TLine* lineLeft2 = new TLine(-nsigma[i], histogram->GetBinContent(bin), histogram->GetBinLowEdge(0)+histogram->GetBinWidth(0), histogram->GetBinContent(bin));
11a2ac51 949 //fListOfObjectsToBeDeleted->Add(lineLeft2);
9a9e9b94 950 lineLeft2->SetLineColor(color);
951 lineLeft2->SetLineStyle(2 + i);
952 lineLeft2->Draw();
953 legend->AddEntry(lineLeft2, Form("Fraction(-%f #sigma) = %f",nsigma[i], histogram->GetBinContent(bin)), "l");
954 }
955 } // for (Int_t i = 0; i < nsigma.GetNoElements(); i++)
11a2ac51 956}
957
958//_____________________________________________________________________________
959void AliBaseCalibViewer::DrawLines(TGraph *graph, TVectorF nsigma, TLegend *legend, Int_t color, Bool_t pm) const {
9a9e9b94 960 //
11a2ac51 961 // Private function for SigmaCut(...) and Integrate(...)
962 // Draws lines into the given histogram, specified by "nsigma", the lines are addeed to the legend
9a9e9b94 963 //
964
11a2ac51 965 // start to draw the lines, loop over requested sigmas
9a9e9b94 966 for (Int_t i = 0; i < nsigma.GetNoElements(); i++) {
967 if (!pm) {
968 TLine* lineUp = new TLine(nsigma[i], 0, nsigma[i], graph->Eval(nsigma[i]));
11a2ac51 969 //fListOfObjectsToBeDeleted->Add(lineUp);
9a9e9b94 970 lineUp->SetLineColor(color);
971 lineUp->SetLineStyle(2 + i);
972 lineUp->Draw();
973 TLine* lineLeft = new TLine(nsigma[i], graph->Eval(nsigma[i]), 0, graph->Eval(nsigma[i]));
11a2ac51 974 //fListOfObjectsToBeDeleted->Add(lineLeft);
9a9e9b94 975 lineLeft->SetLineColor(color);
976 lineLeft->SetLineStyle(2 + i);
977 lineLeft->Draw();
978 legend->AddEntry(lineLeft, Form("Fraction(%f #sigma) = %f",nsigma[i], graph->Eval(nsigma[i])), "l");
979 }
980 else { // if (pm)
981 TLine* lineUp1 = new TLine(nsigma[i], 0, nsigma[i], graph->Eval(nsigma[i]));
11a2ac51 982 //fListOfObjectsToBeDeleted->Add(lineUp1);
9a9e9b94 983 lineUp1->SetLineColor(color);
984 lineUp1->SetLineStyle(2 + i);
985 lineUp1->Draw();
986 TLine* lineLeft1 = new TLine(nsigma[i], graph->Eval(nsigma[i]), graph->GetHistogram()->GetXaxis()->GetBinLowEdge(0), graph->Eval(nsigma[i]));
11a2ac51 987 //fListOfObjectsToBeDeleted->Add(lineLeft1);
9a9e9b94 988 lineLeft1->SetLineColor(color);
989 lineLeft1->SetLineStyle(2 + i);
990 lineLeft1->Draw();
991 legend->AddEntry(lineLeft1, Form("Fraction(+%f #sigma) = %f",nsigma[i], graph->Eval(nsigma[i])), "l");
992 TLine* lineUp2 = new TLine(-nsigma[i], 0, -nsigma[i], graph->Eval(-nsigma[i]));
11a2ac51 993 //fListOfObjectsToBeDeleted->Add(lineUp2);
9a9e9b94 994 lineUp2->SetLineColor(color);
995 lineUp2->SetLineStyle(2 + i);
996 lineUp2->Draw();
997 TLine* lineLeft2 = new TLine(-nsigma[i], graph->Eval(-nsigma[i]), graph->GetHistogram()->GetXaxis()->GetBinLowEdge(0), graph->Eval(-nsigma[i]));
11a2ac51 998 //fListOfObjectsToBeDeleted->Add(lineLeft2);
9a9e9b94 999 lineLeft2->SetLineColor(color);
1000 lineLeft2->SetLineStyle(2 + i);
1001 lineLeft2->Draw();
1002 legend->AddEntry(lineLeft2, Form("Fraction(-%f #sigma) = %f",nsigma[i], graph->Eval(-nsigma[i])), "l");
1003 }
1004 } // for (Int_t i = 0; i < nsigma.GetNoElements(); i++)
11a2ac51 1005}