source: sasview/sansmodels/src/sans/models/dispersion_models.py @ c501ea5

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Last change on this file since c501ea5 was 8dc02d8b, checked in by Jae Cho <jhjcho@…>, 14 years ago

added rectangular function for poly-dispersion

  • Property mode set to 100644
File size: 5.4 KB
RevLine 
[79ac6f8]1
2################################################################################
3#This software was developed by the University of Tennessee as part of the
4#Distributed Data Analysis of Neutron Scattering Experiments (DANSE)
5#project funded by the US National Science Foundation.
6#
7#If you use DANSE applications to do scientific research that leads to
8#publication, we ask that you acknowledge the use of the software with the
9#following sentence:
10#
11#"This work benefited from DANSE software developed under NSF award DMR-0520547."
12#
13#copyright 2008, University of Tennessee
14################################################################################
15
[af03ddd]16"""
[79ac6f8]17Class definitions for python dispersion model for
18model parameters. These classes are bridges to the C++
19dispersion object.
[af03ddd]20
[79ac6f8]21The ArrayDispersion class takes in numpy arrays only.
[af03ddd]22
[79ac6f8]23Usage:
24These classes can be used to set the dispersion model of a SANS model
25parameter:
[af03ddd]26
[79ac6f8]27    cyl = CylinderModel()
28    cyl.set_dispersion('radius', GaussianDispersion())
[af03ddd]29
[79ac6f8]30
31After the dispersion model is set, you can access it's
32parameter through the dispersion dictionary:
33
34    cyl.dispersion['radius']['width'] = 5.0
35
36:TODO: For backward compatibility, the model parameters are still kept in
[af03ddd]37    a dictionary. The next iteration of refactoring work should involve moving
38    away from value-based parameters to object-based parameter. We want to
39    store parameters as objects so that we can unify the 'params' and 'dispersion'
40    dictionaries into a single dictionary of parameter objects that hold the
41    complete information about the parameter (units, limits, dispersion model, etc...). 
[79ac6f8]42
[af03ddd]43   
44"""
45import sans_extension.c_models as c_models 
46
[988130c6]47
48
[af03ddd]49class DispersionModel:
50    """
[79ac6f8]51    Python bridge class for a basic dispersion model
52    class with a constant parameter value distribution
[af03ddd]53    """
54    def __init__(self):
55        self.cdisp = c_models.new_dispersion_model()
56       
57    def set_weights(self, values, weights):
58        """
[79ac6f8]59        Set the weights of an array dispersion
[af03ddd]60        """
61        message = "set_weights is not available for DispersionModel.\n"
62        message += "  Solution: Use an ArrayDispersion object"
63        raise "RuntimeError", message
64       
65class GaussianDispersion(DispersionModel):
66    """
[79ac6f8]67    Python bridge class for a dispersion model based
68    on a Gaussian distribution.
[af03ddd]69    """
70    def __init__(self):
71        self.cdisp = c_models.new_gaussian_model()
72       
73    def set_weights(self, values, weights):
74        """
75            Set the weights of an array dispersion
76        """
[eba9885]77        message = "set_weights is not available for GaussianDispersion.\n"
78        message += "  Solution: Use an ArrayDispersion object"
79        raise "RuntimeError", message
[8dc02d8b]80       
81class RectangleDispersion(DispersionModel):
82    """
83    Python bridge class for a dispersion model based
84    on a Gaussian distribution.
85    """
86    def __init__(self):
87        self.cdisp = c_models.new_rectangle_model()
88       
89    def set_weights(self, values, weights):
90        """
91            Set the weights of an array dispersion
92        """
93        message = "set_weights is not available for GaussianDispersion.\n"
94        message += "  Solution: Use an ArrayDispersion object"
95        raise "RuntimeError", message
[eba9885]96   
97class SchulzDispersion(DispersionModel):
98    """
99        Python bridge class for a dispersion model based
100        on a Schulz distribution.
101    """
102    def __init__(self):
[79ac6f8]103        """
104        """
[eba9885]105        self.cdisp = c_models.new_schulz_model()
106       
107    def set_weights(self, values, weights):
108        """
[79ac6f8]109        Set the weights of an array dispersion
[eba9885]110        """
111        message = "set_weights is not available for SchulzDispersion.\n"
112        message += "  Solution: Use an ArrayDispersion object"
113        raise "RuntimeError", message
114   
115class LogNormalDispersion(DispersionModel):
116    """
[79ac6f8]117    Python bridge class for a dispersion model based
118    on a Log Normal distribution.
[eba9885]119    """
120    def __init__(self):
121        self.cdisp = c_models.new_lognormal_model()
122       
123    def set_weights(self, values, weights):
124        """
[79ac6f8]125        Set the weights of an array dispersion
[eba9885]126        """
127        message = "set_weights is not available for LogNormalDispersion.\n"
[af03ddd]128        message += "  Solution: Use an ArrayDispersion object"
129        raise "RuntimeError", message
130       
131class ArrayDispersion(DispersionModel):
132    """
[79ac6f8]133    Python bridge class for a dispersion model based on arrays.
134    The user has to set a weight distribution that
135    will be used in the averaging the model parameter
136    it is applied to.
[af03ddd]137    """
138    def __init__(self):
139        self.cdisp = c_models.new_array_model()
140       
141    def set_weights(self, values, weights):
142        """
[79ac6f8]143        Set the weights of an array dispersion
144        Only accept numpy arrays.
145       
146        :param values: numpy array of values
147        :param weights: numpy array of weights for each value entry
148       
[af03ddd]149        """
150        if len(values) != len(weights):
[8dc02d8b]151            raise ValueError, "ArrayDispersion.set_weights: \
152            given arrays are of different lengths"
[af03ddd]153       
154        c_models.set_dispersion_weights(self.cdisp, values, weights)
[8dc02d8b]155       
156models = {"gaussian":GaussianDispersion,  "rectangula":RectangleDispersion,
157          "array":ArrayDispersion, "schulz":SchulzDispersion, 
158          "lognormal":LogNormalDispersion}       
[af03ddd]159       
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