[fca6936] | 1 | /** |
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| 2 | This software was developed by the University of Tennessee as part of the |
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| 3 | Distributed Data Analysis of Neutron Scattering Experiments (DANSE) |
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| 4 | project funded by the US National Science Foundation. |
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| 5 | |
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| 6 | If you use DANSE applications to do scientific research that leads to |
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| 7 | publication, we ask that you acknowledge the use of the software with the |
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| 8 | following sentence: |
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| 9 | |
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| 10 | "This work benefited from DANSE software developed under NSF award DMR-0520547." |
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| 11 | |
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| 12 | copyright 2008, University of Tennessee |
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| 13 | */ |
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| 14 | #include "parameters.hh" |
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| 15 | #include <stdio.h> |
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| 16 | #include <math.h> |
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| 17 | using namespace std; |
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| 18 | |
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| 19 | /** |
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| 20 | * TODO: normalize all dispersion weight lists |
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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 | * Weight points |
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| 26 | */ |
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| 27 | WeightPoint :: WeightPoint() { |
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| 28 | value = 0.0; |
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| 29 | weight = 0.0; |
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| 30 | } |
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| 31 | |
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| 32 | WeightPoint :: WeightPoint(double v, double w) { |
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| 33 | value = v; |
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| 34 | weight = w; |
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| 35 | } |
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| 36 | |
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| 37 | /** |
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| 38 | * Dispersion models |
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| 39 | */ |
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| 40 | DispersionModel :: DispersionModel() { |
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| 41 | npts = 1; |
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| 42 | width = 0.0; |
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| 43 | }; |
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| 44 | |
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| 45 | void DispersionModel :: accept_as_source(DispersionVisitor* visitor, void* from, void* to) { |
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| 46 | visitor->dispersion_to_dict(from, to); |
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| 47 | } |
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| 48 | void DispersionModel :: accept_as_destination(DispersionVisitor* visitor, void* from, void* to) { |
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| 49 | visitor->dispersion_from_dict(from, to); |
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| 50 | } |
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| 51 | void DispersionModel :: operator() (void *param, vector<WeightPoint> &weights){ |
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| 52 | // Check against zero width |
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| 53 | if (width<=0) { |
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| 54 | width = 0.0; |
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| 55 | npts = 1; |
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| 56 | } |
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| 57 | |
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| 58 | Parameter* par = (Parameter*)param; |
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| 59 | double value = (*par)(); |
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| 60 | |
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| 61 | if (npts<2) { |
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| 62 | weights.insert(weights.end(), WeightPoint(value, 1.0)); |
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| 63 | } else { |
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| 64 | for(int i=0; i<npts; i++) { |
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| 65 | double val = value + width * (1.0*i/float(npts-1) - 0.5); |
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| 66 | |
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| 67 | if ( ((*par).has_min==false || val>(*par).min) |
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| 68 | && ((*par).has_max==false || val<(*par).max) ) |
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| 69 | weights.insert(weights.end(), WeightPoint(val, 1.0)); |
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| 70 | } |
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| 71 | } |
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| 72 | } |
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| 73 | |
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| 74 | /** |
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| 75 | * Method to set the weights |
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| 76 | * Not implemented for this class |
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| 77 | */ |
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| 78 | void DispersionModel :: set_weights(int npoints, double* values, double* weights){} |
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| 79 | |
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| 80 | /** |
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| 81 | * Gaussian dispersion |
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| 82 | */ |
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| 83 | |
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| 84 | GaussianDispersion :: GaussianDispersion() { |
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| 85 | npts = 1; |
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| 86 | width = 0.0; |
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| 87 | nsigmas = 2; |
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| 88 | }; |
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| 89 | |
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| 90 | void GaussianDispersion :: accept_as_source(DispersionVisitor* visitor, void* from, void* to) { |
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| 91 | visitor->gaussian_to_dict(from, to); |
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| 92 | } |
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| 93 | void GaussianDispersion :: accept_as_destination(DispersionVisitor* visitor, void* from, void* to) { |
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| 94 | visitor->gaussian_from_dict(from, to); |
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| 95 | } |
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| 96 | |
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| 97 | double gaussian_weight(double mean, double sigma, double x) { |
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| 98 | double vary, expo_value; |
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| 99 | vary = x-mean; |
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| 100 | expo_value = -vary*vary/(2*sigma*sigma); |
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| 101 | //return 1.0; |
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| 102 | return exp(expo_value); |
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| 103 | } |
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| 104 | |
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| 105 | /** |
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| 106 | * Gaussian dispersion |
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| 107 | * @param mean: mean value of the Gaussian |
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| 108 | * @param sigma: standard deviation of the Gaussian |
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| 109 | * @param x: value at which the Gaussian is evaluated |
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| 110 | * @return: value of the Gaussian |
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| 111 | */ |
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| 112 | void GaussianDispersion :: operator() (void *param, vector<WeightPoint> &weights){ |
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| 113 | // Check against zero width |
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| 114 | if (width<=0) { |
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| 115 | width = 0.0; |
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| 116 | npts = 1; |
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| 117 | } |
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| 118 | |
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| 119 | Parameter* par = (Parameter*)param; |
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| 120 | double value = (*par)(); |
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| 121 | |
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| 122 | if (npts<2) { |
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| 123 | weights.insert(weights.end(), WeightPoint(value, 1.0)); |
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| 124 | } else { |
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| 125 | for(int i=0; i<npts; i++) { |
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| 126 | // We cover 2 sigmas on each side of the mean |
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| 127 | double val = value + width * (4.0*i/float(npts-1) - 2.0); |
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| 128 | |
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| 129 | if ( ((*par).has_min==false || val>(*par).min) |
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| 130 | && ((*par).has_max==false || val<(*par).max) ) { |
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| 131 | double _w = gaussian_weight(value, width, val); |
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| 132 | weights.insert(weights.end(), WeightPoint(val, _w)); |
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| 133 | } |
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| 134 | } |
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| 135 | } |
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| 136 | } |
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| 137 | |
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| 138 | /** |
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| 139 | * Array dispersion based on input arrays |
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| 140 | */ |
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| 141 | |
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| 142 | void ArrayDispersion :: accept_as_source(DispersionVisitor* visitor, void* from, void* to) { |
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| 143 | visitor->array_to_dict(from, to); |
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| 144 | } |
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| 145 | void ArrayDispersion :: accept_as_destination(DispersionVisitor* visitor, void* from, void* to) { |
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| 146 | visitor->array_from_dict(from, to); |
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| 147 | } |
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| 148 | |
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| 149 | /** |
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| 150 | * Method to get the weights |
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| 151 | */ |
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| 152 | void ArrayDispersion :: operator() (void *param, vector<WeightPoint> &weights) { |
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| 153 | Parameter* par = (Parameter*)param; |
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| 154 | double value = (*par)(); |
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| 155 | |
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| 156 | if (npts<2) { |
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| 157 | weights.insert(weights.end(), WeightPoint(value, 1.0)); |
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| 158 | } else { |
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| 159 | for(int i=0; i<npts; i++) { |
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| 160 | if ( ((*par).has_min==false || _values[i]>(*par).min) |
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| 161 | && ((*par).has_max==false || _values[i]<(*par).max) ) |
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| 162 | weights.insert(weights.end(), WeightPoint(_values[i], _weights[i])); |
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| 163 | } |
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| 164 | } |
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| 165 | } |
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| 166 | |
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| 167 | |
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| 168 | /** |
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| 169 | * Method to set the weights |
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| 170 | */ |
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| 171 | void ArrayDispersion :: set_weights(int npoints, double* values, double* weights){ |
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| 172 | npts = npoints; |
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| 173 | _values = values; |
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| 174 | _weights = weights; |
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| 175 | } |
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| 176 | |
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| 177 | |
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| 178 | /** |
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| 179 | * Parameters |
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| 180 | */ |
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| 181 | Parameter :: Parameter() { |
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| 182 | value = 0; |
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| 183 | min = 0.0; |
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| 184 | max = 0.0; |
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| 185 | has_min = false; |
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| 186 | has_max = false; |
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| 187 | has_dispersion = false; |
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| 188 | dispersion = new GaussianDispersion(); |
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| 189 | } |
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| 190 | |
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| 191 | Parameter :: Parameter(double _value) { |
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| 192 | value = _value; |
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| 193 | min = 0.0; |
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| 194 | max = 0.0; |
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| 195 | has_min = false; |
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| 196 | has_max = false; |
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| 197 | has_dispersion = false; |
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| 198 | dispersion = new GaussianDispersion(); |
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| 199 | } |
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| 200 | |
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| 201 | Parameter :: Parameter(double _value, bool disp) { |
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| 202 | value = _value; |
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| 203 | min = 0.0; |
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| 204 | max = 0.0; |
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| 205 | has_min = false; |
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| 206 | has_max = false; |
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| 207 | has_dispersion = disp; |
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| 208 | dispersion = new GaussianDispersion(); |
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| 209 | } |
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| 210 | |
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| 211 | void Parameter :: get_weights(vector<WeightPoint> &weights) { |
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| 212 | (*dispersion)((void*)this, weights); |
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| 213 | } |
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| 214 | |
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| 215 | void Parameter :: set_min(double value) { |
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| 216 | has_min = true; |
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| 217 | min = value; |
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| 218 | } |
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| 219 | |
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| 220 | void Parameter :: set_max(double value) { |
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| 221 | has_max = true; |
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| 222 | max = value; |
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| 223 | } |
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| 224 | |
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| 225 | double Parameter :: operator()() { |
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| 226 | return value; |
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| 227 | } |
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| 228 | |
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| 229 | double Parameter :: operator=(double _value){ |
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| 230 | value = _value; |
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| 231 | } |
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