source: sasview/sansmodels/src/sans/models/test/validate_2D_3axes_shape_model.py @ bdc25e2

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Last change on this file since bdc25e2 was 4628e31, checked in by Jae Cho <jhjcho@…>, 14 years ago

changed the unit of angles into degrees

  • Property mode set to 100644
File size: 5.2 KB
Line 
1#!/usr/bin/env python
2"""
3    Class to validate a given 2D model w/ 3 axes by averaging it
4    and comparing to 1D prediction.
5   
6    The equation used for averaging is:
7   
8        (integral dphi from 0 to 2pi)(integral dtheta from 0 to pi)
9             p(theta, phi) I(q) sin(theta) dtheta
10             
11        = (1/N_phi) (1/N_theta) (pi/2) (sum over N_phi) (sum over N_theta)
12             p(theta_i, phi_i) I(q) sin(theta_i)
13             
14    where p(theta, phi) is the probability distribution normalized to 4pi.
15    In the current case, we put p(theta, phi) = 1.
16   
17    The normalization factor results from:
18          2pi/N_phi      for the phi sum
19        x pi/N_theta     for the theta sum
20        x 1/(4pi)        because p is normalized to 4pi
21        --------------
22        = (1/N_phi) (1/N_theta) (pi/2)
23   
24    Note:
25        Averaging the 3-axes 2D scattering intensity give a slightly
26        different output than the 1D function 
27        at hight Q (Q>~0.2). This is due to the way the IGOR library
28        averages(?), taking only 76 points in alpha, the angle between
29        the axis of the ellipsoid and the q vector.
30       
31    Note: Core-shell and sphere models are symmetric around
32        all axes and don't need to be tested in the following way.
33"""
34import sys, math
35from sans.models.EllipticalCylinderModel import EllipticalCylinderModel
36from sans.models.ParallelepipedModel import ParallelepipedModel
37from sans.models.TriaxialEllipsoidModel import TriaxialEllipsoidModel
38
39class Validate2D:
40    """
41        Class to validate a given 2D model by averaging it
42        and comparing to 1D prediction.
43    """
44   
45    def __init__(self):
46        """ Initialization """
47        # Precision for the result comparison
48        self.precision = 0.000001
49        # Flag for end result
50        self.passed = True
51               
52    def __call__(self, model_class=EllipticalCylinderModel, points = 101):
53        """
54            Perform test and produce output file
55            @param model_class: python class of the model to test
56        """
57        print "Averaging %s" % model_class.__name__
58        passed = True
59       
60        npts =points
61        #The average values are very sensitive to npts of phi so npts_alpha should be large enough.
62        npts_alpha =180 #npts of phi
63        model = model_class()
64        #model.setParam('scale', 1.0)
65        #model.setParam('contrast', 1.0)
66       
67        theta_label = 'cyl_theta'
68        if not model.params.has_key(theta_label):
69            theta_label = 'parallel_theta'
70        if not model.params.has_key(theta_label):
71            theta_label = 'axis_theta'
72           
73        phi_label = 'cyl_phi'
74        if not model.params.has_key(phi_label):
75            phi_label = 'parallel_phi'
76        if not model.params.has_key(phi_label):
77            phi_label = 'axis_phi'
78           
79        psi_label = 'cyl_psi'
80        if not model.params.has_key(psi_label):
81            psi_label = 'parallel_psi'
82        if not model.params.has_key(psi_label):
83            psi_label = 'axis_psi'
84           
85        output_f = open("%s_avg.txt" % model.__class__.__name__,'w')
86        output_f.write("<q_average> <2d_average> <1d_average>\n")
87           
88        for i_q in range(1, 23):
89            q = 0.01*i_q
90            sum = 0.0
91            weight = 0.0
92            for i_theta in range(npts):
93                theta = 180.0/npts*(i_theta+1)
94               
95                model.setParam(theta_label, theta)
96               
97                for j in range(npts_alpha):
98                    model.setParam(phi_label, 180.0 * 2.0 / npts_alpha * j)
99                    for k in range(npts):
100                        model.setParam(psi_label, 180.0 * 2.0 / npts * k)
101                        if str(model.run([q, 0])).count("INF")>0:                       
102                            print "ERROR", q, theta, 180.0 * 2.0 / npts * k
103                           
104                        # sin() is due to having not uniform bin number density wrt the q plane.
105                        sum += model.run([q, 0])*math.sin(theta*math.pi/180.0)
106                        weight += math.sin(theta*math.pi/180.0) 
107
108            value = sum/weight #*math.pi/2.0
109            ana = model.run(q)
110            if q<0.3 and (value-ana)/ana>0.05:
111                passed = False
112            output_f.write("%10g %10g %10g\n" % (q, value, ana))
113            print "Q=%g: %10g %10g %10g %10g" % (q, value, ana, value-ana, value/ana)
114       
115        output_f.close()
116        return passed
117   
118       
119       
120if __name__ == '__main__':
121    validator = Validate2D()
122   
123    #Note: Test one model by one model, otherwise it could crash depending on the memory.
124   
125    te_passed =validator(TriaxialEllipsoidModel, points=76)
126    #pp_passed = validator(ParallelepipedModel, points=76)
127    #ell_passed = validator(EllipticalCylinderModel, points=76)
128       
129    print ""
130    print "Model             Passed"
131    print "TriaxialEllipsoid         %s" % te_passed
132    #print "ParallelepipedModel    %s" % pp_passed
133    #print "EllipticalCylinder        %s" % ell_passed
134 
135       
136       
137 
138   
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