| 1 | /* ======================================================================== *\ | 
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| 2 | ! | 
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| 3 | ! * | 
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| 4 | ! * This file is part of MARS, the MAGIC Analysis and Reconstruction | 
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| 5 | ! * Software. It is distributed to you in the hope that it can be a useful | 
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| 6 | ! * and timesaving tool in analysing Data of imaging Cerenkov telescopes. | 
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| 7 | ! * It is distributed WITHOUT ANY WARRANTY. | 
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| 8 | ! * | 
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| 9 | ! * Permission to use, copy, modify and distribute this software and its | 
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| 10 | ! * documentation for any purpose is hereby granted without fee, | 
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| 11 | ! * provided that the above copyright notice appear in all copies and | 
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| 12 | ! * that both that copyright notice and this permission notice appear | 
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| 13 | ! * in supporting documentation. It is provided "as is" without express | 
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| 14 | ! * or implied warranty. | 
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| 15 | ! * | 
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| 16 | ! | 
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| 17 | ! | 
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| 18 | !   Author(s): Markus Gaug 01/2004  <mailto:markus@ifae.es> | 
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| 19 | ! | 
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| 20 | !   Copyright: MAGIC Software Development, 2001-2004 | 
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| 21 | ! | 
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| 22 | ! | 
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| 23 | \* ======================================================================== */ | 
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| 24 |  | 
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| 25 | ////////////////////////////////////////////////////////////////////////////// | 
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| 26 | //                                                                          // | 
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| 27 | //  Fast Fourier Transforms                                                 // | 
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| 28 | //                                                                          // | 
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| 29 | //  (Most of the code is adapted from Numerical Recipies in C++, 2nd ed.,   // | 
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| 30 | //  pp. 509-563)                                                            // | 
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| 31 | //                                                                          // | 
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| 32 | //  Usage:                                                                  // | 
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| 33 | //                                                                          // | 
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| 34 | //  1) Functions RealFunctionFFT:  (FOURIER TRANSFORM)                      // | 
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| 35 | //     * Take as argument arrays of real numbers,                           // | 
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| 36 | //       in some cases the dimension of the array has to be given separately// | 
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| 37 | //     * Return a COMPLEX array with the following meaning:                 // | 
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| 38 | //       array[0]: The value of F(0) (has only real component)              // | 
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| 39 | //       array[1]: The value of F(N/2) (has only real component)            // | 
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| 40 | //       array[2i]: The real part of F(i)                                   // | 
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| 41 | //       array[2i+1]: The imaginary part of F(i)                            // | 
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| 42 | //     * Note that F(N-i)* = F(i), therefore only the positive frequency    // | 
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| 43 | //       half is stored.                                                    // | 
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| 44 | //     * The dimension MUST be an integer power of 2,                       // | 
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| 45 | //       otherwise, the array will be shortened!!                           // | 
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| 46 | //                                                                          // | 
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| 47 | //  2) Functions RealFunctionIFFT:  (INVERSER FOURIER TRANSFORM)            // | 
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| 48 | //     * Take as argument a COMPLEX array                                   // | 
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| 49 | //       of Fourier-transformed REAL numbers                                // | 
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| 50 | //       with the following meaning:                                        // | 
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| 51 | //       array[0]: The value of F(0) (has only real component)              // | 
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| 52 | //       array[1]: The value of F(N/2) (has only real component)            // | 
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| 53 | //       array[2i]: The real part of F(i)                                   // | 
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| 54 | //       array[2i+1]: The imaginary part of F(i)                            // | 
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| 55 | //     * Returns the original complex array of dimension 2N-1               // | 
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| 56 | //                                                                          // | 
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| 57 | //  3) Functions PowerSpectrumDensity:                                      // | 
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| 58 | //     * Return a histogram with the spectral density, i.e.                 // | 
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| 59 | //       P(k) = 1/(N*N) * |F(k)|*|F(k)|                                     // | 
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| 60 | //     * The histogram is ranged between 0 and 1./(2*binwidth)              // | 
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| 61 | //     * The number of bins equals N/2+1                                    // | 
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| 62 | //     * Note that histograms with unequal binwidth can not yet be treated! // | 
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| 63 | //     * If the PSD does NOT CONVERGE to 0 at the maximum bin,              // | 
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| 64 | //       you HAVE TO sample your data finer!                                // | 
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| 65 | // | 
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| 66 | // Fourier-Transformation: | 
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| 67 | // ======================= | 
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| 68 |  | 
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| 69 | // (taken from http://www.parasitaere-kapazitaeten.net/Pd/ft.htm) | 
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| 70 | // | 
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| 71 | //  The Fourier-Transformation is a mathematical function that breaks | 
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| 72 | // down a signal (like sound) into its frequency-spectrum as a set of | 
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| 73 | // sinusoidal components, converting it from the Time Domain to the | 
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| 74 | // Frequency Domain. | 
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| 75 | // | 
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| 76 | //  In the Time Domain the signal x[ ] consists of N samples, labeled | 
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| 77 | // from 0 to N-1. In the Frequency Domain the RFFT produces two signals | 
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| 78 | // (signalvectors), treated as complex numbers representing the Real Part: | 
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| 79 | // Re X[ ] and the Imaginary Part: Im X[ ]. They are seen as the Cosine- | 
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| 80 | // und Sine-Components of the base frequencies. Each of these two signals | 
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| 81 | // contains one more sample than the half of the original signal: N/2 + 1 | 
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| 82 | // samples. (this results from the fact, that the sine-components of the | 
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| 83 | // first frequency (0) and the last (nyquist, N/2) are always 0). With the | 
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| 84 | // complex Fourier-Transformation N complexe values are transformed to N | 
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| 85 | // new complex values. For both it applies to: the Frequency Domain | 
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| 86 | // contains exactly the same information as the Time-Domain. | 
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| 87 | // | 
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| 88 | //  A Real FFT over 64 samples produces values for 33 cosine- and 33 | 
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| 89 | // sine-wave-amplitudes with the frequencies 0, 1, 2, 3, ..., 30, 31, 32. | 
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| 90 | // The first value (frequency 0) is the DC (direct current), the other | 
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| 91 | // values have to be seen in practice as factors of a | 
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| 92 | // fundamental-frequency which can be calculated by dividing samplerate by | 
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| 93 | // windowsize. The highest frequency is the nyquist-frequency | 
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| 94 | // (samplerate/2). | 
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| 95 | // | 
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| 96 | ////////////////////////////////////////////////////////////////////////////// | 
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| 97 |  | 
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| 98 | #include "MFFT.h" | 
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| 99 |  | 
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| 100 | #include <TMath.h> | 
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| 101 |  | 
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| 102 | #include "MLog.h" | 
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| 103 | #include "MLogManip.h" | 
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| 104 |  | 
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| 105 | #include "MArrayD.h" | 
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| 106 | #include "MArrayF.h" | 
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| 107 | #include "MArrayI.h" | 
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| 108 |  | 
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| 109 | ClassImp(MFFT); | 
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| 110 |  | 
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| 111 | using namespace std; | 
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| 112 |  | 
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| 113 | // --------------------------------------------------------------------------- | 
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| 114 | // | 
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| 115 | //  Default Constructor | 
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| 116 | //  Initializes random number generator and default variables | 
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| 117 | // | 
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| 118 | MFFT::MFFT() : fDim(0) | 
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| 119 | { | 
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| 120 | } | 
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| 121 |  | 
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| 122 | // -------------------------------------------------------------------------- | 
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| 123 | // | 
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| 124 | //  Destructor. | 
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| 125 | // | 
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| 126 | MFFT::~MFFT() | 
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| 127 | { | 
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| 128 | } | 
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| 129 |  | 
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| 130 | void MFFT::TransformF(const Int_t isign, TArrayF &data) | 
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| 131 | { | 
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| 132 |  | 
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| 133 | UInt_t   n,mmax,m,j,istep,i; | 
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| 134 | Float_t wtemp,wr,wpr,wpi,wi,theta; | 
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| 135 | Float_t tempr,tempi; | 
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| 136 |  | 
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| 137 | Int_t nn = fDim/2; | 
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| 138 | n = nn << 1; | 
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| 139 |  | 
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| 140 | // | 
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| 141 | // The bit-reversal section of the routine: | 
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| 142 | // Exchange the two complex numbers | 
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| 143 | // | 
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| 144 | j=1; | 
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| 145 | for (i=1;i<n;i+=2) { | 
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| 146 | if (j > i) { | 
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| 147 | Swap(data[j-1],data[i-1]); | 
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| 148 | Swap(data[j],data[i]); | 
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| 149 | } | 
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| 150 | m=nn; | 
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| 151 | while (m >= 2 && j > m) { | 
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| 152 | j -= m; | 
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| 153 | m >>= 1; | 
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| 154 | } | 
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| 155 | j += m; | 
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| 156 | } | 
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| 157 | // | 
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| 158 | // Here begins the Danielson-Lanczos section of the routine | 
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| 159 | // | 
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| 160 | mmax=2; | 
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| 161 | while (n > mmax) {         // Outer loop executed log_2(nn) times | 
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| 162 |  | 
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| 163 | istep = mmax << 1; | 
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| 164 | // | 
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| 165 | // Initialize the trigonometric recurrence: | 
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| 166 | // | 
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| 167 | theta = isign*(6.28318530717959/mmax); | 
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| 168 |  | 
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| 169 | wtemp = TMath::Sin(0.5*theta); | 
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| 170 | wpr   = -2.0*wtemp*wtemp; | 
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| 171 | wpi   = TMath::Sin(theta); | 
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| 172 |  | 
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| 173 | wr=1.0; | 
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| 174 | wi=0.0; | 
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| 175 |  | 
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| 176 | for (m=1; m<mmax; m+=2) { | 
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| 177 | for (i=m; i<=n; i+=istep) { | 
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| 178 | // | 
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| 179 | // The Danielson-Lanczos formula: | 
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| 180 | // | 
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| 181 | j          = i+mmax; | 
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| 182 | tempr      = wr*data[j-1] - wi*data[j]; | 
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| 183 | tempi      = wr*data[j]   + wi*data[j-1]; | 
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| 184 | data[j-1] = data[i-1]   - tempr; | 
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| 185 | data[j]   = data[i]     - tempi; | 
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| 186 | data[i-1] += tempr; | 
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| 187 | data[i]   += tempi; | 
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| 188 | } | 
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| 189 |  | 
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| 190 | // | 
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| 191 | // Trigonometric recurrence | 
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| 192 | // | 
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| 193 | wr = (wtemp=wr)*wpr - wi*wpi+wr; | 
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| 194 | wi = wi*wpr         + wtemp*wpi+wi; | 
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| 195 |  | 
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| 196 | } | 
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| 197 | mmax=istep; | 
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| 198 | } | 
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| 199 | } | 
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| 200 |  | 
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| 201 |  | 
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| 202 | void MFFT::TransformD(const Int_t isign, TArrayD &data) | 
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| 203 | { | 
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| 204 |  | 
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| 205 | UInt_t   n,mmax,m,j,istep,i; | 
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| 206 | Double_t wtemp,wr,wpr,wpi,wi,theta; | 
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| 207 | Double_t tempr,tempi; | 
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| 208 |  | 
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| 209 | Int_t nn = fDim/2; | 
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| 210 | n = nn << 1; | 
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| 211 |  | 
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| 212 | // | 
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| 213 | // The bit-reversal section of the routine: | 
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| 214 | // Exchange the two complex numbers | 
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| 215 | // | 
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| 216 | j=1; | 
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| 217 | for (i=1;i<n;i+=2) { | 
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| 218 | if (j > i) { | 
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| 219 | Swap(data[j-1],data[i-1]); | 
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| 220 | Swap(data[j],data[i]); | 
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| 221 | } | 
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| 222 | m=nn; | 
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| 223 | while (m >= 2 && j > m) { | 
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| 224 | j -= m; | 
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| 225 | m >>= 1; | 
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| 226 | } | 
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| 227 | j += m; | 
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| 228 | } | 
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| 229 | // | 
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| 230 | // Here begins the Danielson-Lanczos section of the routine | 
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| 231 | // | 
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| 232 | mmax=2; | 
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| 233 | while (n > mmax) {         // Outer loop executed log_2(nn) times | 
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| 234 |  | 
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| 235 | istep = mmax << 1; | 
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| 236 | // | 
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| 237 | // Initialize the trigonometric recurrence: | 
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| 238 | // | 
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| 239 | theta = isign*(6.28318530717959/mmax); | 
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| 240 |  | 
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| 241 | wtemp = TMath::Sin(0.5*theta); | 
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| 242 | wpr   = -2.0*wtemp*wtemp; | 
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| 243 | wpi   = TMath::Sin(theta); | 
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| 244 |  | 
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| 245 | wr=1.0; | 
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| 246 | wi=0.0; | 
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| 247 |  | 
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| 248 | for (m=1; m<mmax; m+=2) { | 
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| 249 | for (i=m; i<=n; i+=istep) { | 
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| 250 | // | 
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| 251 | // The Danielson-Lanczos formula: | 
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| 252 | // | 
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| 253 | j          = i+mmax; | 
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| 254 | tempr      = wr*data[j-1] - wi*data[j]; | 
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| 255 | tempi      = wr*data[j]   + wi*data[j-1]; | 
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| 256 | data[j-1] = data[i-1]   - tempr; | 
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| 257 | data[j]   = data[i]     - tempi; | 
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| 258 | data[i-1] += tempr; | 
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| 259 | data[i]   += tempi; | 
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| 260 | } | 
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| 261 |  | 
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| 262 | // | 
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| 263 | // Trigonometric recurrence | 
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| 264 | // | 
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| 265 | wr = (wtemp=wr)*wpr - wi*wpi+wr; | 
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| 266 | wi = wi*wpr         + wtemp*wpi+wi; | 
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| 267 |  | 
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| 268 | } | 
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| 269 | mmax=istep; | 
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| 270 | } | 
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| 271 | } | 
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| 272 |  | 
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| 273 | // | 
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| 274 | // Calculates the Fourier transform of a set of n real-valued data points. | 
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| 275 | // Replaces this data (which is stored in array data[1..n]) by the positive | 
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| 276 | // frequency half of its complex Fourier transform. The real-valued first | 
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| 277 | // and last components of the complex transform are returned as elements | 
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| 278 | // data[1] and data[2], respectively. n must be a power of 2. This routine | 
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| 279 | // also calculates the inverse transform of a complex data array if it is | 
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| 280 | // the transform of real data. (Result in this case mus be multiplied by | 
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| 281 | // 2/n.). From NUMERICAL RECIPES IN C++. | 
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| 282 | // | 
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| 283 | void MFFT::RealFTF(const Int_t isign) | 
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| 284 | { | 
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| 285 |  | 
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| 286 | Int_t    i,i1,i2,i3,i4; | 
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| 287 | Float_t  c1=0.5,c2,h1r,h1i,h2r,h2i; | 
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| 288 | Float_t wr,wi,wpr,wpi,wtemp,theta; | 
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| 289 |  | 
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| 290 | // | 
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| 291 | // Initialize the recurrence | 
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| 292 | // | 
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| 293 | theta = TMath::Pi() / (Double_t)(fDim>>1); | 
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| 294 |  | 
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| 295 | if(isign==1) // forward transform | 
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| 296 | { | 
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| 297 | c2    = -0.5; | 
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| 298 | TransformF(1,fDataF); | 
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| 299 | } | 
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| 300 | else         // set up backward transform | 
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| 301 | { | 
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| 302 | c2    = 0.5; | 
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| 303 | theta = -theta; | 
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| 304 | } | 
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| 305 |  | 
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| 306 | wtemp = TMath::Sin(0.5*theta); | 
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| 307 | wpr   = -2.0*wtemp*wtemp; | 
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| 308 | wpi   = TMath::Sin(theta); | 
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| 309 |  | 
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| 310 | wr    = 1.0 + wpr; | 
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| 311 | wi    = wpi; | 
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| 312 |  | 
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| 313 | for(i=1;i<(fDim>>2);i++) // case i=0 done separately below | 
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| 314 | { | 
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| 315 |  | 
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| 316 | i2 = 1 + (i1 = i+i); | 
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| 317 | i4 = 1 + (i3 = fDim-i1); | 
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| 318 |  | 
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| 319 | // | 
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| 320 | // The two separate transforms are separated out of the data | 
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| 321 | // | 
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| 322 | h1r  =  c1*(fDataF[i1]+fDataF[i3]); | 
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| 323 | h1i  =  c1*(fDataF[i2]-fDataF[i4]); | 
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| 324 | h2r  = -c2*(fDataF[i2]+fDataF[i4]); | 
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| 325 | h2i  =  c2*(fDataF[i1]-fDataF[i3]); | 
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| 326 |  | 
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| 327 | // | 
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| 328 | // Here, they are recombined to from the true transform | 
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| 329 | // of the orginal real data | 
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| 330 | // | 
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| 331 | fDataF[i1] =  h1r + wr*h2r - wi*h2i; | 
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| 332 | fDataF[i2] =  h1i + wr*h2i + wi*h2r; | 
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| 333 | fDataF[i3] =  h1r - wr*h2r + wi*h2i; | 
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| 334 | fDataF[i4] = -h1i + wr*h2i + wi*h2r; | 
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| 335 |  | 
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| 336 | // | 
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| 337 | // The recurrence | 
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| 338 | // | 
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| 339 | wr = (wtemp=wr)*wpr - wi*wpi + wr; | 
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| 340 | wi =    wi*wpr   + wtemp*wpi + wi; | 
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| 341 | } | 
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| 342 |  | 
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| 343 | // | 
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| 344 | // Squeeze the first and last data together to get them all | 
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| 345 | // within the original array | 
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| 346 | // | 
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| 347 | if(isign==1) | 
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| 348 | { | 
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| 349 | fDataF[0] = (h1r=fDataF[0]) + fDataF[1]; | 
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| 350 | fDataF[1] =     h1r  -      fDataF[1]; | 
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| 351 | } | 
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| 352 | else | 
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| 353 | { | 
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| 354 |  | 
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| 355 | fDataF[0] = c1*((h1r=fDataF[0]) + fDataF[1]); | 
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| 356 | fDataF[1] = c1*(h1r-fDataF[1]); | 
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| 357 |  | 
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| 358 | // | 
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| 359 | // The inverse transform for the case isign = -1 | 
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| 360 | // | 
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| 361 | TransformF(-1,fDataF); | 
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| 362 |  | 
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| 363 | // | 
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| 364 | // normalize correctly (not done in original NR's) | 
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| 365 | // | 
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| 366 | for(i=1;i<=fDim;i++) | 
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| 367 | fDataF[i] *= (2./fDim); | 
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| 368 | } | 
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| 369 | } | 
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| 370 | void MFFT::RealFTD(const Int_t isign) | 
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| 371 | { | 
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| 372 |  | 
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| 373 | Int_t    i,i1,i2,i3,i4; | 
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| 374 | Float_t  c1=0.5,c2,h1r,h1i,h2r,h2i; | 
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| 375 | Double_t wr,wi,wpr,wpi,wtemp,theta; | 
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| 376 |  | 
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| 377 | // | 
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| 378 | // Initialize the recurrence | 
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| 379 | // | 
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| 380 | theta=3.141592653589793/(Double_t) (fDim>>1); | 
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| 381 |  | 
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| 382 | if(isign==1) // forward transform | 
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| 383 | { | 
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| 384 | c2    = -0.5; | 
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| 385 | TransformD(1,fDataD); | 
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| 386 | } | 
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| 387 | else         // set up backward transform | 
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| 388 | { | 
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| 389 | c2    = 0.5; | 
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| 390 | theta = -theta; | 
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| 391 | } | 
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| 392 |  | 
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| 393 | wtemp = TMath::Sin(0.5*theta); | 
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| 394 | wpr   = -2.0*wtemp*wtemp; | 
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| 395 | wpi   = TMath::Sin(theta); | 
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| 396 |  | 
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| 397 | wr    = 1.0 + wpr; | 
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| 398 | wi    = wpi; | 
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| 399 |  | 
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| 400 | for(i=1;i<(fDim>>2);i++) // case i=0 done separately below | 
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| 401 | { | 
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| 402 |  | 
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| 403 | i2 = 1 + (i1 = i+i); | 
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| 404 | i4 = 1 + (i3 = fDim-i1); | 
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| 405 |  | 
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| 406 | // | 
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| 407 | // The two separate transforms are separated out of the data | 
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| 408 | // | 
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| 409 | h1r  =  c1*(fDataD[i1]+fDataD[i3]); | 
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| 410 | h1i  =  c1*(fDataD[i2]-fDataD[i4]); | 
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| 411 | h2r  = -c2*(fDataD[i2]+fDataD[i4]); | 
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| 412 | h2i  =  c2*(fDataD[i1]-fDataD[i3]); | 
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| 413 |  | 
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| 414 | // | 
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| 415 | // Here, they are recombined to from the true transform | 
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| 416 | // of the orginal real data | 
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| 417 | // | 
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| 418 | fDataD[i1] =  h1r + wr*h2r - wi*h2i; | 
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| 419 | fDataD[i2] =  h1i + wr*h2i + wi*h2r; | 
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| 420 | fDataD[i3] =  h1r - wr*h2r + wi*h2i; | 
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| 421 | fDataD[i4] = -h1i + wr*h2i + wi*h2r; | 
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| 422 |  | 
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| 423 | // | 
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| 424 | // The recurrence | 
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| 425 | // | 
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| 426 | wr = (wtemp=wr)*wpr - wi*wpi + wr; | 
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| 427 | wi =    wi*wpr   + wtemp*wpi + wi; | 
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| 428 | } | 
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| 429 |  | 
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| 430 | // | 
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| 431 | // Squeeze the first and last data together to get them all | 
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| 432 | // within the original array | 
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| 433 | // | 
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| 434 | if(isign==1) | 
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| 435 | { | 
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| 436 | fDataD[0] = (h1r=fDataD[0]) + fDataD[1]; | 
|---|
| 437 | fDataD[1] =     h1r  -      fDataD[1]; | 
|---|
| 438 | } | 
|---|
| 439 | else | 
|---|
| 440 | { | 
|---|
| 441 |  | 
|---|
| 442 | fDataD[0] = c1*((h1r=fDataD[0]) + fDataD[1]); | 
|---|
| 443 | fDataD[1] = c1*(h1r-fDataD[1]); | 
|---|
| 444 |  | 
|---|
| 445 | // | 
|---|
| 446 | // The inverse transform for the case isign = -1 | 
|---|
| 447 | // | 
|---|
| 448 | TransformD(-1,fDataD); | 
|---|
| 449 |  | 
|---|
| 450 | // | 
|---|
| 451 | // normalize correctly (not done in original NR's) | 
|---|
| 452 | // | 
|---|
| 453 | for(i=1;i<=fDim;i++) | 
|---|
| 454 | fDataD[i] *= (2./fDim); | 
|---|
| 455 | } | 
|---|
| 456 | } | 
|---|
| 457 |  | 
|---|
| 458 |  | 
|---|
| 459 | // | 
|---|
| 460 | // Fast Fourier Transform for float arrays | 
|---|
| 461 | // | 
|---|
| 462 | Float_t* MFFT::RealFunctionFFT(const Int_t n, const Float_t *data) | 
|---|
| 463 | { | 
|---|
| 464 |  | 
|---|
| 465 | fDim = n; | 
|---|
| 466 | CheckDim(n); | 
|---|
| 467 |  | 
|---|
| 468 | fDataF.Set(fDim); | 
|---|
| 469 | // | 
|---|
| 470 | // Clone the array | 
|---|
| 471 | // | 
|---|
| 472 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 473 | fDataF[i] = data[i]; | 
|---|
| 474 |  | 
|---|
| 475 | RealFTF(1); | 
|---|
| 476 |  | 
|---|
| 477 | return fDataF.GetArray(); | 
|---|
| 478 |  | 
|---|
| 479 | } | 
|---|
| 480 |  | 
|---|
| 481 | // | 
|---|
| 482 | // Fast Inverse Fourier Transform for float arrays | 
|---|
| 483 | // | 
|---|
| 484 | Float_t* MFFT::RealFunctionIFFT(const Int_t n, const Float_t *data) | 
|---|
| 485 | { | 
|---|
| 486 |  | 
|---|
| 487 | fDim = n; | 
|---|
| 488 | CheckDim(fDim); | 
|---|
| 489 |  | 
|---|
| 490 | fDataF.Set(fDim); | 
|---|
| 491 | // | 
|---|
| 492 | // Clone the array | 
|---|
| 493 | // | 
|---|
| 494 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 495 | fDataF[i] = data[i]; | 
|---|
| 496 |  | 
|---|
| 497 | RealFTF(-1); | 
|---|
| 498 |  | 
|---|
| 499 | return fDataF.GetArray(); | 
|---|
| 500 |  | 
|---|
| 501 | } | 
|---|
| 502 |  | 
|---|
| 503 | // | 
|---|
| 504 | // Fast Fourier Transform for double arrays | 
|---|
| 505 | // | 
|---|
| 506 | Double_t* MFFT::RealFunctionFFT(const Int_t n, const Double_t *data) | 
|---|
| 507 | { | 
|---|
| 508 |  | 
|---|
| 509 | fDim = n; | 
|---|
| 510 | CheckDim(n); | 
|---|
| 511 |  | 
|---|
| 512 | fDataD.Set(fDim); | 
|---|
| 513 | // | 
|---|
| 514 | // Clone the array | 
|---|
| 515 | // | 
|---|
| 516 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 517 | fDataD[i] = data[i]; | 
|---|
| 518 |  | 
|---|
| 519 | RealFTD(1); | 
|---|
| 520 |  | 
|---|
| 521 | return fDataD.GetArray(); | 
|---|
| 522 |  | 
|---|
| 523 | } | 
|---|
| 524 |  | 
|---|
| 525 | // | 
|---|
| 526 | // Fast Inverse Fourier Transform for double arrays | 
|---|
| 527 | // | 
|---|
| 528 | Double_t* MFFT::RealFunctionIFFT(const Int_t n, const Double_t *data) | 
|---|
| 529 | { | 
|---|
| 530 |  | 
|---|
| 531 | fDim = n; | 
|---|
| 532 | CheckDim(fDim); | 
|---|
| 533 |  | 
|---|
| 534 | fDataD.Set(fDim); | 
|---|
| 535 | // | 
|---|
| 536 | // Clone the array | 
|---|
| 537 | // | 
|---|
| 538 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 539 | fDataD[i] = data[i]; | 
|---|
| 540 |  | 
|---|
| 541 | RealFTD(-1); | 
|---|
| 542 |  | 
|---|
| 543 | return fDataD.GetArray(); | 
|---|
| 544 |  | 
|---|
| 545 | } | 
|---|
| 546 |  | 
|---|
| 547 | // | 
|---|
| 548 | // Fast Fourier Transform for TArrayF's | 
|---|
| 549 | // | 
|---|
| 550 | TArrayF* MFFT::RealFunctionFFT(const TArrayF *data) | 
|---|
| 551 | { | 
|---|
| 552 |  | 
|---|
| 553 | fDim = data->GetSize(); | 
|---|
| 554 | CheckDim(fDim); | 
|---|
| 555 |  | 
|---|
| 556 | fDataF.Set(fDim); | 
|---|
| 557 | // | 
|---|
| 558 | // Clone the array | 
|---|
| 559 | // | 
|---|
| 560 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 561 | fDataF[i] = data->At(i); | 
|---|
| 562 |  | 
|---|
| 563 | RealFTF(1); | 
|---|
| 564 |  | 
|---|
| 565 | return new TArrayF(fDim,fDataF.GetArray()); | 
|---|
| 566 |  | 
|---|
| 567 | } | 
|---|
| 568 |  | 
|---|
| 569 | // | 
|---|
| 570 | // Inverse Fast Fourier Transform for TArrayF's | 
|---|
| 571 | // | 
|---|
| 572 | TArrayF* MFFT::RealFunctionIFFT(const TArrayF *data) | 
|---|
| 573 | { | 
|---|
| 574 |  | 
|---|
| 575 | fDim = data->GetSize(); | 
|---|
| 576 | CheckDim(fDim); | 
|---|
| 577 |  | 
|---|
| 578 | fDataF.Set(fDim); | 
|---|
| 579 | // | 
|---|
| 580 | // Clone the array | 
|---|
| 581 | // | 
|---|
| 582 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 583 | fDataF[i] = data->At(i); | 
|---|
| 584 |  | 
|---|
| 585 | RealFTF(-1); | 
|---|
| 586 |  | 
|---|
| 587 | return new TArrayF(fDim,fDataF.GetArray()); | 
|---|
| 588 | } | 
|---|
| 589 |  | 
|---|
| 590 |  | 
|---|
| 591 | // | 
|---|
| 592 | // Fast Fourier Transform for TArrayD's | 
|---|
| 593 | // | 
|---|
| 594 | TArrayD* MFFT::RealFunctionFFT(const TArrayD *data) | 
|---|
| 595 | { | 
|---|
| 596 |  | 
|---|
| 597 | fDim = data->GetSize(); | 
|---|
| 598 | CheckDim(fDim); | 
|---|
| 599 |  | 
|---|
| 600 | fDataD.Set(fDim); | 
|---|
| 601 | // | 
|---|
| 602 | // Clone the array | 
|---|
| 603 | // | 
|---|
| 604 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 605 | fDataD[i] = data->At(i); | 
|---|
| 606 |  | 
|---|
| 607 | RealFTD(1); | 
|---|
| 608 |  | 
|---|
| 609 | return new TArrayD(fDim,fDataD.GetArray()); | 
|---|
| 610 |  | 
|---|
| 611 | } | 
|---|
| 612 |  | 
|---|
| 613 | // | 
|---|
| 614 | // Inverse Fast Fourier Transform for TArrayD's | 
|---|
| 615 | // | 
|---|
| 616 | TArrayD* MFFT::RealFunctionIFFT(const TArrayD *data) | 
|---|
| 617 | { | 
|---|
| 618 |  | 
|---|
| 619 | fDim = data->GetSize(); | 
|---|
| 620 | CheckDim(fDim); | 
|---|
| 621 |  | 
|---|
| 622 | fDataD.Set(fDim); | 
|---|
| 623 | // | 
|---|
| 624 | // Clone the array | 
|---|
| 625 | // | 
|---|
| 626 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 627 | fDataD[i] = data->At(i); | 
|---|
| 628 |  | 
|---|
| 629 | RealFTD(-1); | 
|---|
| 630 |  | 
|---|
| 631 | return new TArrayD(fDim,fDataD.GetArray()); | 
|---|
| 632 | } | 
|---|
| 633 |  | 
|---|
| 634 | //---------------------------------------------------------- | 
|---|
| 635 | // | 
|---|
| 636 | // Power Spectrum Density Calculation | 
|---|
| 637 | // | 
|---|
| 638 | TH1D* MFFT::PowerSpectrumDensity(const TH1D *hist) | 
|---|
| 639 | { | 
|---|
| 640 |  | 
|---|
| 641 | TH1D *newhist = (TH1D*)CheckHist(hist,1); | 
|---|
| 642 |  | 
|---|
| 643 | fDataD.Set(fDim); | 
|---|
| 644 | // | 
|---|
| 645 | // Copy the hist into an array | 
|---|
| 646 | // | 
|---|
| 647 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 648 | fDataD[i] = hist->GetBinContent(i); | 
|---|
| 649 |  | 
|---|
| 650 | RealFTD(1); | 
|---|
| 651 |  | 
|---|
| 652 | Int_t dim2 = fDim*fDim; | 
|---|
| 653 | Double_t c02; | 
|---|
| 654 | Double_t ck2; | 
|---|
| 655 | Double_t cn2; | 
|---|
| 656 | // | 
|---|
| 657 | // Fill the new histogram: | 
|---|
| 658 | // | 
|---|
| 659 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 660 | //    (stored in fData{0]) | 
|---|
| 661 | // | 
|---|
| 662 | c02 = fDataD[0]*fDataD[0]; | 
|---|
| 663 | newhist->Fill(c02/dim2); | 
|---|
| 664 | // | 
|---|
| 665 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)| + |C(N-k)|*|C(N-k)|) | 
|---|
| 666 | // | 
|---|
| 667 | for (Int_t k=2;k<fDim-2;k+=2) | 
|---|
| 668 | { | 
|---|
| 669 |  | 
|---|
| 670 | Int_t ki  = k+1; | 
|---|
| 671 | ck2 = (fDataD[k]*fDataD[k] + fDataD[ki]*fDataD[ki]); | 
|---|
| 672 | newhist->Fill(ck2/dim2); | 
|---|
| 673 | } | 
|---|
| 674 | // | 
|---|
| 675 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 676 | //    (stored in fData[1]) | 
|---|
| 677 | // | 
|---|
| 678 | cn2 = (fDataD[1]*fDataD[1]); | 
|---|
| 679 | newhist->Fill(cn2/dim2); | 
|---|
| 680 |  | 
|---|
| 681 | return newhist; | 
|---|
| 682 | } | 
|---|
| 683 |  | 
|---|
| 684 | // ------------------------------------------------- | 
|---|
| 685 | // | 
|---|
| 686 | // Power Spectrum Density calculation for TArrayF | 
|---|
| 687 | // | 
|---|
| 688 | TArrayF* MFFT::PowerSpectrumDensity(const TArrayF *array) | 
|---|
| 689 | { | 
|---|
| 690 |  | 
|---|
| 691 | fDim = array->GetSize(); | 
|---|
| 692 | CheckDim(fDim); | 
|---|
| 693 |  | 
|---|
| 694 | fDataF.Set(fDim); | 
|---|
| 695 | // | 
|---|
| 696 | // Copy the hist into an array | 
|---|
| 697 | // | 
|---|
| 698 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 699 | fDataF[i] = array->At(i); | 
|---|
| 700 |  | 
|---|
| 701 | RealFTF(1); | 
|---|
| 702 |  | 
|---|
| 703 | const Int_t dim2  = fDim*fDim; | 
|---|
| 704 | const Int_t dim05 = fDim/2; | 
|---|
| 705 | Float_t c02; | 
|---|
| 706 | Float_t ck2; | 
|---|
| 707 | Float_t cn2; | 
|---|
| 708 |  | 
|---|
| 709 | TArrayF *newarray = new TArrayF(dim05); | 
|---|
| 710 |  | 
|---|
| 711 | // | 
|---|
| 712 | // Fill the new histogram: | 
|---|
| 713 | // | 
|---|
| 714 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 715 | // | 
|---|
| 716 | c02 = (fDataF[0]*fDataF[0]); | 
|---|
| 717 | newarray->AddAt(c02/dim2,0); | 
|---|
| 718 | // | 
|---|
| 719 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
|---|
| 720 | // | 
|---|
| 721 | for (Int_t k=1;k<dim05-1;k++) | 
|---|
| 722 | { | 
|---|
| 723 | const Int_t k2 = k+k; | 
|---|
| 724 | ck2 = (fDataF[k2]*fDataF[k2] + fDataF[k2+1]*fDataF[k2+1]); | 
|---|
| 725 | newarray->AddAt(ck2/dim2,k); | 
|---|
| 726 | } | 
|---|
| 727 | // | 
|---|
| 728 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 729 | // | 
|---|
| 730 | cn2 = (fDataF[1]*fDataF[1]); | 
|---|
| 731 | newarray->AddAt(cn2,dim05-1); | 
|---|
| 732 |  | 
|---|
| 733 | return newarray; | 
|---|
| 734 | } | 
|---|
| 735 |  | 
|---|
| 736 | // ------------------------------------------------- | 
|---|
| 737 | // | 
|---|
| 738 | // Power Spectrum Density calculation for TArrayI | 
|---|
| 739 | // | 
|---|
| 740 | TArrayF* MFFT::PowerSpectrumDensity(const TArrayI *array) | 
|---|
| 741 | { | 
|---|
| 742 |  | 
|---|
| 743 | fDim = array->GetSize(); | 
|---|
| 744 | CheckDim(fDim); | 
|---|
| 745 |  | 
|---|
| 746 | fDataF.Set(fDim); | 
|---|
| 747 | // | 
|---|
| 748 | // Copy the hist into an array | 
|---|
| 749 | // | 
|---|
| 750 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 751 | fDataF[i] = (Float_t)array->At(i); | 
|---|
| 752 |  | 
|---|
| 753 | RealFTF(1); | 
|---|
| 754 |  | 
|---|
| 755 | const Int_t dim2  = fDim*fDim; | 
|---|
| 756 | const Int_t dim05 = fDim/2; | 
|---|
| 757 | Float_t c02; | 
|---|
| 758 | Float_t ck2; | 
|---|
| 759 | Float_t cn2; | 
|---|
| 760 |  | 
|---|
| 761 | TArrayF *newarray = new TArrayF(dim05); | 
|---|
| 762 |  | 
|---|
| 763 | // | 
|---|
| 764 | // Fill the new histogram: | 
|---|
| 765 | // | 
|---|
| 766 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 767 | // | 
|---|
| 768 | c02 = (fDataF[0]*fDataF[0]); | 
|---|
| 769 | newarray->AddAt(c02/dim2,0); | 
|---|
| 770 | // | 
|---|
| 771 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
|---|
| 772 | // | 
|---|
| 773 | for (Int_t k=1;k<dim05-1;k++) | 
|---|
| 774 | { | 
|---|
| 775 | const Int_t k2 = k+k; | 
|---|
| 776 | ck2 = (fDataF[k2]*fDataF[k2] + fDataF[k2+1]*fDataF[k2+1]); | 
|---|
| 777 | newarray->AddAt(ck2/dim2,k); | 
|---|
| 778 | } | 
|---|
| 779 | // | 
|---|
| 780 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 781 | // | 
|---|
| 782 | cn2 = (fDataF[1]*fDataF[1]); | 
|---|
| 783 | newarray->AddAt(cn2,dim05-1); | 
|---|
| 784 |  | 
|---|
| 785 | return newarray; | 
|---|
| 786 | } | 
|---|
| 787 |  | 
|---|
| 788 |  | 
|---|
| 789 | // ------------------------------------------------- | 
|---|
| 790 | // | 
|---|
| 791 | // Power Spectrum Density calculation for TArrayD | 
|---|
| 792 | // | 
|---|
| 793 | TArrayD* MFFT::PowerSpectrumDensity(const TArrayD *array) | 
|---|
| 794 | { | 
|---|
| 795 |  | 
|---|
| 796 | fDim = array->GetSize(); | 
|---|
| 797 | CheckDim(fDim); | 
|---|
| 798 |  | 
|---|
| 799 | fDataD.Set(fDim); | 
|---|
| 800 | // | 
|---|
| 801 | // Copy the hist into an array | 
|---|
| 802 | // | 
|---|
| 803 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 804 | fDataD[i] = array->At(i); | 
|---|
| 805 |  | 
|---|
| 806 | RealFTD(1); | 
|---|
| 807 |  | 
|---|
| 808 | const Int_t dim2  = fDim*fDim; | 
|---|
| 809 | const Int_t dim05 = fDim/2; | 
|---|
| 810 | Float_t c02; | 
|---|
| 811 | Float_t ck2; | 
|---|
| 812 | Float_t cn2; | 
|---|
| 813 |  | 
|---|
| 814 | TArrayD *newarray = new TArrayD(dim05); | 
|---|
| 815 |  | 
|---|
| 816 | // | 
|---|
| 817 | // Fill the new histogram: | 
|---|
| 818 | // | 
|---|
| 819 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 820 | // | 
|---|
| 821 | c02 = (fDataD[0]*fDataD[0]); | 
|---|
| 822 | newarray->AddAt(c02/dim2,0); | 
|---|
| 823 | // | 
|---|
| 824 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
|---|
| 825 | // | 
|---|
| 826 | for (Int_t k=1;k<dim05-1;k++) | 
|---|
| 827 | { | 
|---|
| 828 | const Int_t k2 = k+k; | 
|---|
| 829 | ck2 = (fDataD[k2]*fDataD[k2] + fDataD[k2+1]*fDataD[k2+1]); | 
|---|
| 830 | newarray->AddAt(ck2/dim2,k); | 
|---|
| 831 | } | 
|---|
| 832 | // | 
|---|
| 833 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 834 | // | 
|---|
| 835 | cn2 = (fDataD[1]*fDataD[1]); | 
|---|
| 836 | newarray->AddAt(cn2,dim05-1); | 
|---|
| 837 |  | 
|---|
| 838 | return newarray; | 
|---|
| 839 | } | 
|---|
| 840 |  | 
|---|
| 841 | // ------------------------------------------------- | 
|---|
| 842 | // | 
|---|
| 843 | // Power Spectrum Density calculation for MArrayF | 
|---|
| 844 | // The difference to the TArrayF versions is that | 
|---|
| 845 | // the resulting array has two entries less, namely | 
|---|
| 846 | // the first and last one are skipped! | 
|---|
| 847 | // | 
|---|
| 848 | MArrayF* MFFT::PowerSpectrumDensity(const MArrayF *array) | 
|---|
| 849 | { | 
|---|
| 850 |  | 
|---|
| 851 | fDim = array->GetSize(); | 
|---|
| 852 | CheckDim(fDim); | 
|---|
| 853 |  | 
|---|
| 854 | fDataF.Set(fDim); | 
|---|
| 855 | // | 
|---|
| 856 | // Copy the hist into an array | 
|---|
| 857 | // | 
|---|
| 858 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 859 | fDataF[i] = array->At(i); | 
|---|
| 860 |  | 
|---|
| 861 | RealFTF(1); | 
|---|
| 862 |  | 
|---|
| 863 | const Int_t dim2  = fDim*fDim; | 
|---|
| 864 | const Int_t dim05 = fDim/2; | 
|---|
| 865 | Float_t ck2; | 
|---|
| 866 |  | 
|---|
| 867 | MArrayF *newarray = new MArrayF(dim05-2); | 
|---|
| 868 |  | 
|---|
| 869 | // | 
|---|
| 870 | // Fill the new histogram: | 
|---|
| 871 | // | 
|---|
| 872 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 873 | // | 
|---|
| 874 | //  c02 = (fDataF[0]*fDataF[0]); | 
|---|
| 875 | //  newarray->AddAt(c02/dim2,0); | 
|---|
| 876 | // | 
|---|
| 877 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
|---|
| 878 | // | 
|---|
| 879 | for (Int_t k=1;k<dim05-1;k++) | 
|---|
| 880 | { | 
|---|
| 881 | const Int_t k2 = k+k; | 
|---|
| 882 | ck2 = (fDataF[k2]*fDataF[k2] + fDataF[k2+1]*fDataF[k2+1]); | 
|---|
| 883 | newarray->AddAt(ck2/dim2,k-1); | 
|---|
| 884 | } | 
|---|
| 885 | // | 
|---|
| 886 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 887 | // | 
|---|
| 888 | //  cn2 = (fDataF[1]*fDataF[1]); | 
|---|
| 889 | //  newarray->AddAt(cn2,dim05-1); | 
|---|
| 890 |  | 
|---|
| 891 | return newarray; | 
|---|
| 892 | } | 
|---|
| 893 |  | 
|---|
| 894 | //----------------------------------------------------- | 
|---|
| 895 | // | 
|---|
| 896 | // Power Spectrum Density calculation for MArrayI | 
|---|
| 897 | // The difference to the TArrayI versions is that | 
|---|
| 898 | // the resulting array has two entries less, namely | 
|---|
| 899 | // the first and last one are skipped! | 
|---|
| 900 | // | 
|---|
| 901 | MArrayF* MFFT::PowerSpectrumDensity(const MArrayI *array) | 
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| 902 | { | 
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| 903 |  | 
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| 904 | fDim = array->GetSize(); | 
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| 905 | CheckDim(fDim); | 
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| 906 |  | 
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| 907 | fDataF.Set(fDim); | 
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| 908 | // | 
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| 909 | // Copy the hist into an array | 
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| 910 | // | 
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| 911 | for (Int_t i=0;i<fDim;i++) | 
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| 912 | fDataF[i] = (Float_t)array->At(i); | 
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| 913 |  | 
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| 914 | RealFTF(1); | 
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| 915 |  | 
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| 916 | const Int_t dim2  = fDim*fDim; | 
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| 917 | const Int_t dim05 = fDim/2; | 
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| 918 | Float_t ck2; | 
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| 919 |  | 
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| 920 | MArrayF *newarray = new MArrayF(dim05-2); | 
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| 921 |  | 
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| 922 | // | 
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| 923 | // Fill the new histogram: | 
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| 924 | // | 
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| 925 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
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| 926 | // | 
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| 927 | //  c02 = (fDataF[0]*fDataF[0]); | 
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| 928 | //  newarray->AddAt(c02/dim2,0); | 
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| 929 | // | 
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| 930 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
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| 931 | // | 
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| 932 | for (Int_t k=1;k<dim05-1;k++) | 
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| 933 | { | 
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| 934 | const Int_t k2 = k+k; | 
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| 935 | ck2 = (fDataF[k2]*fDataF[k2] + fDataF[k2+1]*fDataF[k2+1]); | 
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| 936 | newarray->AddAt(ck2/dim2,k-1); | 
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| 937 | } | 
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| 938 | // | 
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| 939 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
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| 940 | // | 
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| 941 | //  cn2 = (fDataF[1]*fDataF[1]); | 
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| 942 | //  newarray->AddAt(cn2,dim05-1); | 
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| 943 |  | 
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| 944 | return newarray; | 
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| 945 | } | 
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| 946 |  | 
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| 947 | // ------------------------------------------------- | 
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| 948 | // | 
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| 949 | // Power Spectrum Density calculation for MArrayD | 
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| 950 | // The difference to the TArrayI versions is that | 
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| 951 | // the resulting array has two entries less, namely | 
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| 952 | // the first and last one are skipped! | 
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| 953 | // | 
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| 954 | MArrayD* MFFT::PowerSpectrumDensity(const MArrayD *array) | 
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| 955 | { | 
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| 956 |  | 
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| 957 | fDim = array->GetSize(); | 
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| 958 | CheckDim(fDim); | 
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| 959 |  | 
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| 960 | fDataD.Set(fDim); | 
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| 961 | // | 
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| 962 | // Copy the hist into an array | 
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| 963 | // | 
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| 964 | for (Int_t i=0;i<fDim;i++) | 
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| 965 | fDataD[i] = array->At(i); | 
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| 966 |  | 
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| 967 | RealFTD(1); | 
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| 968 |  | 
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| 969 | const Int_t dim2  = fDim*fDim; | 
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| 970 | const Int_t dim05 = fDim/2; | 
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| 971 | Float_t ck2; | 
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| 972 |  | 
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| 973 | MArrayD *newarray = new MArrayD(dim05-2); | 
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| 974 |  | 
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| 975 | // | 
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| 976 | // Fill the new histogram: | 
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| 977 | // | 
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| 978 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
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| 979 | // | 
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| 980 | //  c02 = (fDataD[0]*fDataD[0]); | 
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| 981 | //  newarray->AddAt(c02/dim2,0); | 
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| 982 | // | 
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| 983 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
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| 984 | // | 
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| 985 | for (Int_t k=1;k<dim05-1;k++) | 
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| 986 | { | 
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| 987 | const Int_t k2 = k+k; | 
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| 988 | ck2 = (fDataD[k2]*fDataD[k2] + fDataD[k2+1]*fDataD[k2+1]); | 
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| 989 | newarray->AddAt(ck2/dim2,k-1); | 
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| 990 | } | 
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| 991 | // | 
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| 992 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
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| 993 | // | 
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| 994 | //  cn2 = (fDataD[1]*fDataD[1]); | 
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| 995 | //  newarray->AddAt(cn2,dim05-1); | 
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| 996 |  | 
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| 997 | return newarray; | 
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| 998 | } | 
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| 999 |  | 
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| 1000 | // ----------------------------------------------- | 
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| 1001 | // | 
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| 1002 | // Power Spectrum Density calculation for TH1 | 
|---|
| 1003 | // | 
|---|
| 1004 | TH1F* MFFT::PowerSpectrumDensity(const TH1 *hist) | 
|---|
| 1005 | { | 
|---|
| 1006 |  | 
|---|
| 1007 | TH1F *newhist = (TH1F*)CheckHist(hist,0); | 
|---|
| 1008 |  | 
|---|
| 1009 | fDataF.Set(fDim); | 
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| 1010 | // | 
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| 1011 | // Copy the hist into an array | 
|---|
| 1012 | // | 
|---|
| 1013 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 1014 | fDataF[i] = hist->GetBinContent(i); | 
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| 1015 |  | 
|---|
| 1016 | RealFTF(1); | 
|---|
| 1017 |  | 
|---|
| 1018 | Int_t dim2 = fDim*fDim; | 
|---|
| 1019 | Float_t c02; | 
|---|
| 1020 | Float_t ck2; | 
|---|
| 1021 | Float_t cn2; | 
|---|
| 1022 | // | 
|---|
| 1023 | // Fill the new histogram: | 
|---|
| 1024 | // | 
|---|
| 1025 | // 1) P(0) = 1/(N*N) |C(0)|*|C(0)| | 
|---|
| 1026 | // | 
|---|
| 1027 | c02 = (fDataF[0]*fDataF[0]); | 
|---|
| 1028 | newhist->Fill(0.,c02/dim2); | 
|---|
| 1029 | // | 
|---|
| 1030 | // 2) P(k) = 1/(N*N) (|C(k)|*|C(k)|)) | 
|---|
| 1031 | // | 
|---|
| 1032 | for (Int_t k=2;k<fDim;k+=2) | 
|---|
| 1033 | { | 
|---|
| 1034 | ck2 = (fDataF[k]*fDataF[k] + fDataF[k+1]*fDataF[k+1]); | 
|---|
| 1035 | newhist->Fill(k/2.,ck2/dim2); | 
|---|
| 1036 | } | 
|---|
| 1037 | // | 
|---|
| 1038 | // 3) P(N) = 1/(N*N) (|C(n/2)|*|C(n/2)|) | 
|---|
| 1039 | // | 
|---|
| 1040 | cn2 = (fDataF[1]*fDataF[1]); | 
|---|
| 1041 | newhist->Fill(fDim/2.-1.,cn2/dim2); | 
|---|
| 1042 |  | 
|---|
| 1043 | return newhist; | 
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| 1044 | } | 
|---|
| 1045 |  | 
|---|
| 1046 |  | 
|---|
| 1047 | // | 
|---|
| 1048 | // Power Spectrum Density calculation for TH1I | 
|---|
| 1049 | // | 
|---|
| 1050 | TH1F* MFFT::PowerSpectrumDensity(const TH1F *hist) | 
|---|
| 1051 | { | 
|---|
| 1052 | return PowerSpectrumDensity((TH1*)hist); | 
|---|
| 1053 | } | 
|---|
| 1054 |  | 
|---|
| 1055 | // | 
|---|
| 1056 | // Power Spectrum Density calculation for TH1I | 
|---|
| 1057 | // | 
|---|
| 1058 | TH1F* MFFT::PowerSpectrumDensity(const TH1I *hist) | 
|---|
| 1059 | { | 
|---|
| 1060 | return PowerSpectrumDensity((TH1*)hist); | 
|---|
| 1061 | } | 
|---|
| 1062 |  | 
|---|
| 1063 |  | 
|---|
| 1064 | void MFFT::CheckDim(Int_t a) | 
|---|
| 1065 | { | 
|---|
| 1066 |  | 
|---|
| 1067 | // If even number, return 0 | 
|---|
| 1068 | if (a==2)  return; | 
|---|
| 1069 |  | 
|---|
| 1070 | // If odd number, return the closest power of 2 | 
|---|
| 1071 | if (a & 1) | 
|---|
| 1072 | { | 
|---|
| 1073 | Int_t b = 1; | 
|---|
| 1074 | while (b < fDim/2+1) | 
|---|
| 1075 | b <<= 1; | 
|---|
| 1076 |  | 
|---|
| 1077 | fDim = b; | 
|---|
| 1078 | //      gLog << warn << "Dimension of Data is not a multiple of 2, will take only first " | 
|---|
| 1079 | //           << fDim << " entries! " << endl; | 
|---|
| 1080 | return; | 
|---|
| 1081 | } | 
|---|
| 1082 |  | 
|---|
| 1083 | CheckDim(a>>1); | 
|---|
| 1084 | } | 
|---|
| 1085 |  | 
|---|
| 1086 | TH1* MFFT::CheckHist(const TH1 *hist, const Int_t flag) | 
|---|
| 1087 | { | 
|---|
| 1088 |  | 
|---|
| 1089 | // number of entries | 
|---|
| 1090 | fDim = hist->GetNbinsX(); | 
|---|
| 1091 | CheckDim(fDim); | 
|---|
| 1092 |  | 
|---|
| 1093 | // Step width | 
|---|
| 1094 | Double_t delta = hist->GetBinWidth(1); | 
|---|
| 1095 |  | 
|---|
| 1096 | // Nyquist frequency | 
|---|
| 1097 | Axis_t fcrit = 1./(2.*delta); | 
|---|
| 1098 | Axis_t low = -0.5; | 
|---|
| 1099 | Axis_t up  = fcrit; | 
|---|
| 1100 |  | 
|---|
| 1101 | switch (flag) | 
|---|
| 1102 | { | 
|---|
| 1103 | case 0: | 
|---|
| 1104 | return new TH1F(Form("%s%s",hist->GetName()," PSD"), | 
|---|
| 1105 | Form("%s%s",hist->GetTitle()," - Power Spectrum Density"), | 
|---|
| 1106 | fDim/2,low,up); | 
|---|
| 1107 | break; | 
|---|
| 1108 | case 1: | 
|---|
| 1109 | return new TH1D(Form("%s%s",hist->GetName()," PSD"), | 
|---|
| 1110 | Form("%s%s",hist->GetTitle()," - Power Spectrum Density"), | 
|---|
| 1111 | fDim/2,low,up); | 
|---|
| 1112 | break; | 
|---|
| 1113 | default: | 
|---|
| 1114 | return new TH1F(Form("%s%s",hist->GetName()," PSD"), | 
|---|
| 1115 | Form("%s%s",hist->GetTitle()," - Power Spectrum Density"), | 
|---|
| 1116 | fDim/2,low,up); | 
|---|
| 1117 | break; | 
|---|
| 1118 | } | 
|---|
| 1119 | } | 
|---|
| 1120 |  | 
|---|
| 1121 | // | 
|---|
| 1122 | // Real function spectrum with data windowing | 
|---|
| 1123 | // | 
|---|
| 1124 | TArrayF* MFFT::RealFunctionSpectrum(const TArrayF *data) | 
|---|
| 1125 | { | 
|---|
| 1126 |  | 
|---|
| 1127 | fDim = data->GetSize(); | 
|---|
| 1128 | CheckDim(fDim); | 
|---|
| 1129 |  | 
|---|
| 1130 | fDataF.Set(fDim); | 
|---|
| 1131 | // | 
|---|
| 1132 | // Copy the hist into an array | 
|---|
| 1133 | // | 
|---|
| 1134 | for (Int_t i=0;i<fDim;i++) | 
|---|
| 1135 | fDataF[i] = data->At(i); | 
|---|
| 1136 |  | 
|---|
| 1137 | fWindowF.Set(fDim); | 
|---|
| 1138 |  | 
|---|
| 1139 | Int_t dim2 = fDim/2; | 
|---|
| 1140 |  | 
|---|
| 1141 | TArrayF *power = new TArrayF(dim2); | 
|---|
| 1142 |  | 
|---|
| 1143 | // | 
|---|
| 1144 | // Start program spctrm from NR's | 
|---|
| 1145 | // | 
|---|
| 1146 | Float_t w, facp, facm, sumw=0.; | 
|---|
| 1147 |  | 
|---|
| 1148 | facm = dim2; | 
|---|
| 1149 | facp = 1./dim2; | 
|---|
| 1150 |  | 
|---|
| 1151 | for (Int_t j=0;j<dim2;j++) | 
|---|
| 1152 | { | 
|---|
| 1153 | Int_t j2 = j+j; | 
|---|
| 1154 | w     = ApplyWindow(j,facm,facp); | 
|---|
| 1155 | sumw += w*w; | 
|---|
| 1156 | fWindowF[j2]   = fDataF[j]*w; | 
|---|
| 1157 | fWindowF[j2+1] = fDataF[dim2+j]*w; | 
|---|
| 1158 | } | 
|---|
| 1159 |  | 
|---|
| 1160 | TransformF(1,fWindowF); | 
|---|
| 1161 |  | 
|---|
| 1162 | power->AddAt(fWindowF[0]*fWindowF[0] + fWindowF[1]*fWindowF[1],0); | 
|---|
| 1163 |  | 
|---|
| 1164 | //  power->AddAt(fWindowF[0]*fWindowF[0],0); | 
|---|
| 1165 | //  power->AddAt(fWindowF[1]*fWindowF[1],dim2-1); | 
|---|
| 1166 |  | 
|---|
| 1167 |  | 
|---|
| 1168 | for (Int_t j=1;j<dim2;j++) | 
|---|
| 1169 | //  for (Int_t j=1;j<dim2;j++) | 
|---|
| 1170 | { | 
|---|
| 1171 | Int_t j2 = j+j; | 
|---|
| 1172 | Float_t buf = fWindowF[j2+1]     *fWindowF[j2+1] | 
|---|
| 1173 | + fWindowF[j2  ]     *fWindowF[j2  ] | 
|---|
| 1174 | + fWindowF[fDim-j2+1]*fWindowF[fDim-j2+1] | 
|---|
| 1175 | + fWindowF[fDim-j2  ]*fWindowF[fDim-j2  ] ; | 
|---|
| 1176 | power->AddAt(buf/sumw/(fDim+fDim),j); | 
|---|
| 1177 | } | 
|---|
| 1178 |  | 
|---|
| 1179 | return power; | 
|---|
| 1180 |  | 
|---|
| 1181 | } | 
|---|