1 | |
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2 | from sans.models.BaseComponent import BaseComponent |
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3 | from sans.models.SphereSLDModel import SphereSLDModel |
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4 | from copy import deepcopy |
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5 | from math import floor |
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6 | #from scipy.special import erf |
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7 | func_list = {'Erf(|nu|*z)':0, 'RPower(z^|nu|)':1, 'LPower(z^|nu|)':2, \ |
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8 | 'RExp(-|nu|*z)':3, 'LExp(-|nu|*z)':4} |
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9 | max_nshells = 10 |
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10 | class SphericalSLDModel(BaseComponent): |
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11 | """ |
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12 | This multi-model is based on Parratt formalism and provides the capability |
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13 | of changing the number of layers between 0 and 10. |
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14 | """ |
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15 | def __init__(self, multfactor=1): |
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16 | BaseComponent.__init__(self) |
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17 | """ |
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18 | :param multfactor: number of layers in the model, |
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19 | assumes 0<= n_shells <=10. |
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20 | """ |
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21 | |
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22 | ## Setting model name model description |
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23 | self.description="" |
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24 | model = SphereSLDModel() |
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25 | self.model = model |
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26 | self.name = "SphericalSLDModel" |
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27 | self.description=model.description |
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28 | self.n_shells = multfactor |
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29 | ## Define parameters |
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30 | self.params = {} |
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31 | |
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32 | ## Parameter details [units, min, max] |
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33 | self.details = {} |
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34 | |
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35 | # non-fittable parameters |
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36 | self.non_fittable = model.non_fittable |
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37 | |
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38 | # list of function in order of the function number |
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39 | self.fun_list = self._get_func_list() |
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40 | ## dispersion |
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41 | self._set_dispersion() |
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42 | ## Define parameters |
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43 | self._set_params() |
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44 | |
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45 | ## Parameter details [units, min, max] |
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46 | self._set_details() |
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47 | |
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48 | #list of parameter that can be fitted |
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49 | self._set_fixed_params() |
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50 | self.model.params['n_shells'] = self.n_shells |
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51 | |
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52 | ## functional multiplicity info of the model |
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53 | # [int(maximum no. of functionality),"str(Titl), |
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54 | # [str(name of function0),...], [str(x-asix name of sld),...]] |
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55 | self.multiplicity_info = [max_nshells,"No. of Shells:",[],['Radius']] |
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56 | |
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57 | |
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58 | def _clone(self, obj): |
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59 | """ |
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60 | Internal utility function to copy the internal |
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61 | data members to a fresh copy. |
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62 | """ |
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63 | obj.params = deepcopy(self.params) |
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64 | obj.non_fittable = deepcopy(self.non_fittable) |
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65 | obj.description = deepcopy(self.description) |
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66 | obj.details = deepcopy(self.details) |
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67 | obj.dispersion = deepcopy(self.dispersion) |
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68 | obj.model = self.model.clone() |
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69 | |
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70 | return obj |
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71 | |
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72 | |
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73 | def _set_dispersion(self): |
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74 | """ |
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75 | model dispersions |
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76 | """ |
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77 | ##set dispersion from model |
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78 | for name , value in self.model.dispersion.iteritems(): |
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79 | |
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80 | nshell = -1 |
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81 | if name.split('_')[0] == 'thick': |
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82 | while nshell<1: |
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83 | nshell += 1 |
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84 | if name.split('_')[1] == 'inter%s' % str(nshell): |
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85 | self.dispersion[name]= value |
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86 | else: |
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87 | continue |
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88 | else: |
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89 | self.dispersion[name]= value |
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90 | |
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91 | def _set_params(self): |
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92 | """ |
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93 | Concatenate the parameters of the model to create |
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94 | this model parameters |
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95 | """ |
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96 | # rearrange the parameters for the given # of shells |
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97 | for name , value in self.model.params.iteritems(): |
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98 | n = 0 |
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99 | pos = len(name.split('_'))-1 |
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100 | first_name = name.split('_')[0] |
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101 | last_name = name.split('_')[pos] |
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102 | if first_name == 'npts': |
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103 | self.params[name]=value |
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104 | continue |
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105 | elif first_name == 'func': |
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106 | n= -1 |
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107 | while n<self.n_shells: |
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108 | n += 1 |
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109 | if last_name == 'inter%s' % str(n): |
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110 | self.params[name]=value |
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111 | continue |
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112 | elif last_name[0:5] == 'inter': |
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113 | n= -1 |
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114 | while n<self.n_shells: |
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115 | n += 1 |
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116 | if last_name == 'inter%s' % str(n): |
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117 | self.params[name]= value |
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118 | continue |
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119 | elif last_name[0:4] == 'flat': |
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120 | while n<self.n_shells: |
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121 | n += 1 |
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122 | if last_name == 'flat%s' % str(n): |
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123 | self.params[name]= value |
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124 | continue |
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125 | elif name == 'n_shells': |
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126 | continue |
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127 | else: |
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128 | self.params[name]= value |
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129 | |
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130 | self.model.params['n_shells'] = self.n_shells |
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131 | |
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132 | # set constrained values for the original model params |
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133 | self._set_xtra_model_param() |
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134 | |
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135 | def _set_details(self): |
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136 | """ |
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137 | Concatenate details of the original model to create |
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138 | this model details |
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139 | """ |
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140 | for name ,detail in self.model.details.iteritems(): |
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141 | if name in self.params.iterkeys(): |
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142 | self.details[name]= detail |
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143 | |
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144 | |
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145 | def _set_xtra_model_param(self): |
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146 | """ |
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147 | Set params of original model that are hidden from this model |
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148 | """ |
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149 | # look for the model parameters that are not in param list |
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150 | for key in self.model.params.iterkeys(): |
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151 | if key not in self.params.keys(): |
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152 | if key.split('_')[0] == 'thick': |
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153 | self.model.setParam(key, 0) |
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154 | continue |
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155 | if key.split('_')[0] == 'func': |
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156 | self.model.setParam(key, 0) |
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157 | continue |
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158 | |
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159 | for nshell in range(self.n_shells,max_nshells): |
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160 | if key.split('_')[1] == 'flat%s' % str(nshell+1): |
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161 | try: |
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162 | if key.split('_')[0] == 'sld': |
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163 | value = self.model.params['sld_solv'] |
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164 | self.model.setParam(key, value) |
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165 | except: pass |
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166 | |
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167 | def _get_func_list(self): |
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168 | """ |
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169 | Get the list of functions in each layer (shell) |
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170 | """ |
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171 | #func_list = {} |
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172 | return func_list |
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173 | |
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174 | def getProfile(self): |
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175 | """ |
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176 | Get SLD profile |
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177 | |
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178 | : return: (z, beta) where z is a list of depth of the transition points |
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179 | beta is a list of the corresponding SLD values |
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180 | """ |
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181 | # max_pts for each layers |
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182 | n_sub = int(self.params['npts_inter']) |
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183 | z = [] |
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184 | beta = [] |
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185 | z0 = 0 |
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186 | sub_range = floor(n_sub/2.0) |
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187 | # two sld points for core |
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188 | z.append(0) |
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189 | beta.append(self.params['sld_core0']) |
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190 | z.append(self.params['rad_core0']) |
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191 | beta.append(self.params['sld_core0']) |
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192 | z0 += self.params['rad_core0'] |
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193 | # for layers from the core |
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194 | for n in range(1,self.n_shells+2): |
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195 | i = n |
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196 | # j=0 for interface, j=1 for flat layer |
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197 | for j in range(0,2): |
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198 | # interation for sub-layers |
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199 | for n_s in range(0,n_sub+1): |
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200 | if j==1: |
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201 | if i==self.n_shells+1: |
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202 | break |
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203 | # shift half sub thickness for the first point |
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204 | z0 -= dz#/2.0 |
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205 | z.append(z0) |
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206 | #z0 -= dz/2.0 |
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207 | z0 += self.params['thick_flat%s'% str(i)] |
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208 | |
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209 | sld_i = self.params['sld_flat%s'% str(i)] |
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210 | beta.append(self.params['sld_flat%s'% str(i)]) |
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211 | dz = 0 |
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212 | else: |
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213 | dz = self.params['thick_inter%s'% str(i-1)]/n_sub |
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214 | nu = self.params['nu_inter%s'% str(i-1)] |
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215 | # decide which sld is which, sld_r or sld_l |
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216 | if i == 1: |
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217 | sld_l = self.params['sld_core0'] |
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218 | else: |
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219 | sld_l = self.params['sld_flat%s'% str(i-1)] |
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220 | if i == self.n_shells+1: |
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221 | sld_r = self.params['sld_solv'] |
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222 | else: |
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223 | sld_r = self.params['sld_flat%s'% str(i)] |
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224 | # get function type |
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225 | func_idx = self.params['func_inter%s'% str(i-1)] |
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226 | # calculate the sld |
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227 | sld_i = self._get_sld(func_idx, n_sub, n_s, nu, |
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228 | sld_l, sld_r) |
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229 | # append to the list |
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230 | z.append(z0) |
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231 | beta.append(sld_i) |
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232 | z0 += dz |
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233 | if j==1: break |
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234 | # put sld of solvent |
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235 | z.append(z0) |
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236 | beta.append(self.params['sld_solv']) |
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237 | z_ext = z0/5.0 |
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238 | z.append(z0+z_ext) |
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239 | beta.append(self.params['sld_solv']) |
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240 | # return sld profile (r, beta) |
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241 | return z, beta |
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242 | |
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243 | def _get_sld(self, func_idx, n_sub, n_s, nu, sld_l, sld_r): |
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244 | """ |
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245 | Get the function asked to build sld profile |
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246 | : param func_idx: func type number |
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247 | : param n_sub: total number of sub_layer |
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248 | : param n_s: index of sub_layer |
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249 | : param nu: coefficient of the function |
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250 | : param sld_l: sld on the left side |
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251 | : param sld_r: sld on the right side |
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252 | : return: sld value, float |
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253 | """ |
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254 | from sans.models.SLDCalFunc import SLDCalFunc |
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255 | # sld_cal init |
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256 | sld_cal = SLDCalFunc() |
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257 | # set params |
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258 | sld_cal.setParam('fun_type',func_idx) |
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259 | sld_cal.setParam('npts_inter',n_sub) |
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260 | sld_cal.setParam('shell_num',n_s) |
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261 | sld_cal.setParam('nu_inter',nu) |
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262 | sld_cal.setParam('sld_left',sld_l) |
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263 | sld_cal.setParam('sld_right',sld_r) |
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264 | # return sld value |
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265 | return sld_cal.run() |
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266 | |
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267 | def setParam(self, name, value): |
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268 | """ |
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269 | Set the value of a model parameter |
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270 | |
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271 | : param name: name of the parameter |
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272 | : param value: value of the parameter |
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273 | """ |
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274 | # set param to new model |
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275 | self._setParamHelper( name, value) |
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276 | |
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277 | ## setParam to model |
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278 | if name=='sld_solv': |
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279 | # the sld_*** model.params not in params must set to |
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280 | # value of sld_solv |
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281 | for key in self.model.params.iterkeys(): |
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282 | if key not in self.params.keys()and key.split('_')[0] == 'sld': |
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283 | self.model.setParam(key, value) |
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284 | |
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285 | self.model.setParam( name, value) |
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286 | |
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287 | def _setParamHelper(self, name, value): |
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288 | """ |
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289 | Helper function to setParam |
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290 | """ |
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291 | toks = name.split('.') |
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292 | if len(toks)==2: |
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293 | for item in self.dispersion.keys(): |
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294 | if item.lower()==toks[0].lower(): |
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295 | for par in self.dispersion[item]: |
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296 | if par.lower() == toks[1].lower(): |
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297 | self.dispersion[item][par] = value |
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298 | return |
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299 | # Look for standard parameter |
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300 | for item in self.params.keys(): |
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301 | if item.lower()==name.lower(): |
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302 | self.params[item] = value |
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303 | return |
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304 | |
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305 | raise ValueError, "Model does not contain parameter %s" % name |
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306 | |
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307 | |
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308 | def _set_fixed_params(self): |
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309 | """ |
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310 | Fill the self.fixed list with the model fixed list |
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311 | """ |
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312 | for item in self.model.fixed: |
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313 | if item.split('.')[0] in self.params.keys(): |
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314 | self.fixed.append(item) |
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315 | |
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316 | self.fixed.sort() |
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317 | pass |
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318 | |
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319 | def run(self, x = 0.0): |
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320 | """ |
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321 | Evaluate the model |
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322 | |
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323 | :param x: input q, or [q,phi] |
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324 | |
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325 | :return: scattering function P(q) |
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326 | |
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327 | """ |
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328 | |
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329 | return self.model.run(x) |
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330 | |
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331 | def runXY(self, x = 0.0): |
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332 | """ |
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333 | Evaluate the model |
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334 | |
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335 | : param x: input q-value (float or [float, float] as [qx, qy]) |
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336 | : return: scattering function value |
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337 | """ |
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338 | |
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339 | return self.model.runXY(x) |
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340 | |
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341 | ## Now (May27,10) directly uses the model eval function |
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342 | ## instead of the for-loop in Base Component. |
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343 | def evalDistribution(self, x = []): |
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344 | """ |
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345 | Evaluate the model in cartesian coordinates |
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346 | |
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347 | : param x: input q[], or [qx[], qy[]] |
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348 | : return: scattering function P(q[]) |
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349 | """ |
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350 | # set effective radius and scaling factor before run |
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351 | return self.model.evalDistribution(x) |
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352 | def calculate_ER(self): |
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353 | """ |
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354 | """ |
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355 | return self.model.calculate_ER() |
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356 | def set_dispersion(self, parameter, dispersion): |
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357 | """ |
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358 | Set the dispersion object for a model parameter |
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359 | |
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360 | : param parameter: name of the parameter [string] |
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361 | :dispersion: dispersion object of type DispersionModel |
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362 | """ |
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363 | value= None |
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364 | try: |
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365 | if parameter in self.model.dispersion.keys(): |
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366 | value= self.model.set_dispersion(parameter, dispersion) |
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367 | self._set_dispersion() |
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368 | return value |
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369 | except: |
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370 | raise |
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