source: sasview/src/sas/models/BroadPeakModel.py @ 06dfd39

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Last change on this file since 06dfd39 was 79492222, checked in by krzywon, 10 years ago

Changed the file and folder names to remove all SANS references.

  • Property mode set to 100644
File size: 3.4 KB
Line 
1"""
2    BroadPeakModel function as a BaseComponent model
3"""
4
5from sas.models.BaseComponent import BaseComponent
6import math
7from numpy import power
8
9class BroadPeakModel(BaseComponent):
10    """
11    Class that evaluates a BroadPeakModel.
12    I(q) = I(q) = scale_p/pow(qval,exponent)+scale_l/
13    (1.0 + pow((qval*length_l),exponent_l) )+ background
14    """
15       
16    def __init__(self):
17        """ Initialization """
18       
19        # Initialize BaseComponent first, then sphere
20        BaseComponent.__init__(self)
21        self.counter = 0
22        ## Name of the model
23        self.name = "BroadPeakModel"
24        self.description = """I(q) = scale_p/pow(q,exponent)+scale_l/
25        (1.0 + pow((fabs(q-q_peak)*length_l),exponent_l) )+ background
26             List of default parameters:
27             scale_p = Porod term scaling
28             exponent_p = Porod exponent
29             scale_l = Lorentzian term scaling
30             length_l = Lorentzian screening length [A]
31             q_peak = peak location [1/A]
32             exponent_l = Lorentzian exponent
33             background = Incoherent background
34        """
35        ## Define parameters
36        self.params = {}
37        self.params['scale_p']  = 1.0e-05
38        self.params['exponent_p']     = 3.0
39        self.params['scale_l']  = 10.0
40        self.params['length_l']     = 50.0
41        self.params['q_peak']     = 0.1
42        self.params['exponent_l']     = 2.0
43        self.params['background']     = 0.1
44        ## Parameter details [units, min, max]
45        self.details = {}
46        self.details['scale_p'] = ['', None, None]
47        self.details['exponent_p'] =  ['', None, None]
48        self.details['scale_l']  =  ['', None, None]
49        self.details['length_l']  =   ['[A]', None, None]
50        self.details['q_peak']  =  ['[1/A]', None, None]
51        self.details['exponent_l']  =   ['', None, None]
52        self.details['background']   =  ['[1/cm]', None, None]
53
54        #list of parameter that cannot be fitted
55        self.fixed = [] 
56    def _broadpeak(self, x):
57        """
58        Model definition
59        """
60        inten = self.params['scale_p']/pow(x,self.params['exponent_p'])
61        inten += self.params['scale_l']/(1.0 + \
62                power((math.fabs(x-self.params['q_peak'])\
63                       *self.params['length_l']),\
64                    self.params['exponent_l']))
65
66        inten += self.params['background']
67       
68        return inten 
69   
70    def run(self, x = 0.0):
71        """
72        Evaluate the model
73       
74        param x: input q-value (float or [float, float] as [r, theta])
75        return: (scattering value)
76        """
77        if x.__class__.__name__ == 'list':
78            return self._broadpeak(x[0])
79        elif x.__class__.__name__ == 'tuple':
80            raise ValueError, "Tuples are not allowed as input to models"
81        else:
82            return self._broadpeak(x)
83   
84    def runXY(self, x = 0.0):
85        """
86        Evaluate the model
87       
88        param x: input q-value (float or [float, float] as [qx, qy])
89        return: scattering value
90        """
91        if x.__class__.__name__ == 'list':
92            q = math.sqrt(x[0]**2 + x[1]**2)
93            return self._broadpeak(q)
94        elif x.__class__.__name__ == 'tuple':
95            raise ValueError, "Tuples are not allowed as input to models"
96        else:
97            return self._broadpeak(x)
98       
99       
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