1 | import math |
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2 | import logging |
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3 | import numpy as np |
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4 | |
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5 | from sas.qtgui.Plotting.PlotterData import Data1D |
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6 | |
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7 | PR_FIT_LABEL = r"$P_{fit}(r)$" |
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8 | PR_LOADED_LABEL = r"$P_{loaded}(r)$" |
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9 | IQ_DATA_LABEL = r"$I_{obs}(q)$" |
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10 | IQ_FIT_LABEL = r"$I_{fit}(q)$" |
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11 | IQ_SMEARED_LABEL = r"$I_{smeared}(q)$" |
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12 | GROUP_ID_IQ_DATA = r"$I_{obs}(q)$" |
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13 | GROUP_ID_PR_FIT = r"$P_{fit}(r)$" |
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14 | PR_PLOT_PTS = 51 |
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15 | |
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16 | logger = logging.getLogger(__name__) |
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17 | |
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18 | |
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19 | class InversionLogic(object): |
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20 | """ |
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21 | All the data-related logic. This class deals exclusively with Data1D/2D |
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22 | No QStandardModelIndex here. |
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23 | """ |
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24 | |
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25 | def __init__(self, data=None): |
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26 | self._data = data |
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27 | self.data_is_loaded = False |
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28 | if data is not None: |
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29 | self.data_is_loaded = True |
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30 | |
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31 | @property |
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32 | def data(self): |
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33 | return self._data |
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34 | |
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35 | @data.setter |
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36 | def data(self, value): |
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37 | """ data setter """ |
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38 | self._data = value |
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39 | self.data_is_loaded = (self._data is not None) |
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40 | |
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41 | def isLoadedData(self): |
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42 | """ accessor """ |
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43 | return self.data_is_loaded |
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44 | |
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45 | def new1DPlot(self, out, pr, q=None): |
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46 | """ |
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47 | Create a new 1D data instance based on fitting results |
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48 | """ |
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49 | |
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50 | qtemp = pr.x |
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51 | if q is not None: |
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52 | qtemp = q |
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53 | |
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54 | # Make a plot |
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55 | maxq = max(qtemp) |
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56 | |
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57 | minq = min(qtemp) |
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58 | |
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59 | # Check for user min/max |
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60 | if pr.q_min is not None and maxq >= pr.q_min >= minq: |
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61 | minq = pr.q_min |
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62 | if pr.q_max is not None and maxq >= pr.q_max >= minq: |
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63 | maxq = pr.q_max |
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64 | |
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65 | x = np.arange(minq, maxq, maxq / 301.0) |
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66 | y = np.zeros(len(x)) |
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67 | err = np.zeros(len(x)) |
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68 | for i in range(len(x)): |
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69 | value = pr.iq(out, x[i]) |
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70 | y[i] = value |
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71 | try: |
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72 | err[i] = math.sqrt(math.fabs(value)) |
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73 | except: |
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74 | err[i] = 1.0 |
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75 | logger.log(("Error getting error", value, x[i])) |
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76 | |
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77 | new_plot = Data1D(x, y) |
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78 | new_plot.name = IQ_FIT_LABEL |
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79 | new_plot.xaxis("\\rm{Q}", 'A^{-1}') |
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80 | new_plot.yaxis("\\rm{Intensity} ", "cm^{-1}") |
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81 | title = "I(q)" |
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82 | new_plot.title = title |
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83 | |
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84 | # If we have a group ID, use it |
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85 | if 'plot_group_id' in pr.info: |
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86 | new_plot.group_id = pr.info["plot_group_id"] |
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87 | new_plot.id = IQ_FIT_LABEL |
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88 | |
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89 | # If we have used slit smearing, plot the smeared I(q) too |
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90 | if pr.slit_width > 0 or pr.slit_height > 0: |
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91 | x = np.arange(minq, maxq, maxq / 301.0) |
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92 | y = np.zeros(len(x)) |
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93 | err = np.zeros(len(x)) |
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94 | for i in range(len(x)): |
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95 | value = pr.iq_smeared(pr.out, x[i]) |
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96 | y[i] = value |
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97 | try: |
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98 | err[i] = math.sqrt(math.fabs(value)) |
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99 | except: |
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100 | err[i] = 1.0 |
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101 | logger.log(("Error getting error", value, x[i])) |
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102 | |
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103 | new_plot = Data1D(x, y) |
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104 | new_plot.name = IQ_SMEARED_LABEL |
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105 | new_plot.xaxis("\\rm{Q}", 'A^{-1}') |
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106 | new_plot.yaxis("\\rm{Intensity} ", "cm^{-1}") |
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107 | # If we have a group ID, use it |
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108 | if 'plot_group_id' in pr.info: |
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109 | new_plot.group_id = pr.info["plot_group_id"] |
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110 | new_plot.id = IQ_SMEARED_LABEL |
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111 | new_plot.title = title |
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112 | |
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113 | new_plot.symbol = 'Line' |
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114 | new_plot.hide_error = True |
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115 | |
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116 | return new_plot |
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117 | |
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118 | def newPRPlot(self, out, pr, cov=None): |
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119 | """ |
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120 | """ |
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121 | # Show P(r) |
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122 | x = np.arange(0.0, pr.d_max, pr.d_max / PR_PLOT_PTS) |
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123 | |
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124 | y = np.zeros(len(x)) |
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125 | dy = np.zeros(len(x)) |
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126 | |
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127 | total = 0.0 |
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128 | pmax = 0.0 |
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129 | cov2 = np.ascontiguousarray(cov) |
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130 | |
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131 | for i in range(len(x)): |
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132 | if cov2 is None: |
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133 | value = pr.pr(out, x[i]) |
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134 | else: |
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135 | (value, dy[i]) = pr.pr_err(out, cov2, x[i]) |
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136 | total += value * pr.d_max / len(x) |
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137 | |
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138 | # keep track of the maximum P(r) value |
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139 | if value > pmax: |
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140 | pmax = value |
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141 | |
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142 | y[i] = value |
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143 | |
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144 | if cov2 is None: |
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145 | new_plot = Data1D(x, y) |
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146 | else: |
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147 | new_plot = Data1D(x, y, dy=dy) |
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148 | new_plot.name = PR_FIT_LABEL |
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149 | new_plot.xaxis("\\rm{r}", 'A') |
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150 | new_plot.yaxis("\\rm{P(r)} ", "cm^{-3}") |
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151 | new_plot.title = "P(r) fit" |
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152 | new_plot.id = PR_FIT_LABEL |
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153 | new_plot.scale = "linear" |
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154 | new_plot.group_id = GROUP_ID_PR_FIT |
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155 | |
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156 | return new_plot |
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157 | |
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158 | def add_errors(self, sigma=0.05): |
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159 | """ |
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160 | Adds errors to data set is they are not available. |
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161 | Uses $\Delta y = \sigma | y |$. |
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162 | """ |
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163 | self._data.dy = sigma * np.fabs(self._data.y) |
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164 | |
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165 | def computeDataRange(self): |
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166 | """ |
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167 | Wrapper for calculating the data range based on local dataset |
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168 | """ |
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169 | return self.computeRangeFromData(self.data) |
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170 | |
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171 | def computeRangeFromData(self, data): |
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172 | """ |
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173 | Compute the minimum and the maximum range of the data |
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174 | return the npts contains in data |
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175 | """ |
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176 | qmin, qmax = None, None |
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177 | if isinstance(data, Data1D): |
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178 | try: |
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179 | qmin = min(data.x) |
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180 | qmax = max(data.x) |
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181 | except (ValueError, TypeError): |
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182 | msg = "Unable to find min/max/length of \n data named %s" % \ |
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183 | self.data.filename |
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184 | raise ValueError(msg) |
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185 | |
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186 | else: |
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187 | qmin = 0 |
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188 | try: |
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189 | x = max(np.fabs(data.xmin), np.fabs(data.xmax)) |
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190 | y = max(np.fabs(data.ymin), np.fabs(data.ymax)) |
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191 | except (ValueError, TypeError): |
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192 | msg = "Unable to find min/max of \n data named %s" % \ |
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193 | self.data.filename |
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194 | raise ValueError(msg) |
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195 | qmax = np.sqrt(x * x + y * y) |
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196 | return qmin, qmax |
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