source: sasmodels/explore/J1c.py @ cbd37a7

core_shell_microgelscostrafo411magnetic_modelrelease_v0.94release_v0.95ticket-1257-vesicle-productticket_1156ticket_1265_superballticket_822_more_unit_tests
Last change on this file since cbd37a7 was cbd37a7, checked in by Paul Kienzle <pkienzle@…>, 8 years ago

compare cephes bessel function against multiprecision math

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Line 
1r"""
2Show numerical precision of $2 J_1(x)/x$.
3"""
4
5import numpy as np
6from sympy.mpmath import mp
7#import matplotlib; matplotlib.use('TkAgg')
8import pylab
9
10
11SHOW_DIFF = True # True if show diff rather than function value
12#SHOW_DIFF = False # True if show diff rather than function value
13LINEAR_X = False  # True if q is linearly spaced instead of log spaced
14#LINEAR_X = True # True if q is linearly spaced instead of log spaced
15FUNCTION = "2*J1(x)/x"
16
17def mp_fn(vec, bits=500):
18    """
19    Direct calculation using sympy multiprecision library.
20    """
21    with mp.workprec(bits):
22        return [_mp_fn(mp.mpf(x)) for x in vec]
23
24def _mp_fn(x):
25    """
26    Actual function that gets evaluated.  The caller just vectorizes.
27    """
28    return mp.mpf(2)*mp.j1(x)/x
29
30def np_fn(x, dtype):
31    """
32    Direct calculation using scipy.
33    """
34    from scipy.special import j1 as J1
35    x = np.asarray(x, dtype)
36    return np.asarray(2, dtype)*J1(x)/x
37
38def sasmodels_fn(x, dtype, platform='ocl'):
39    """
40    Calculation using pade approximant.
41    """
42    from sasmodels import core, data, direct_model
43    model = core.load_model('bessel', dtype=dtype)
44    calculator = direct_model.DirectModel(data.empty_data1D(x), model)
45    return calculator(background=0)
46
47def plotdiff(x, target, actual, label):
48    """
49    Plot the computed value.
50
51    Use relative error if SHOW_DIFF, otherwise just plot the value directly.
52    """
53    if SHOW_DIFF:
54        err = abs((target-actual)/target)
55        #err = np.clip(err, 0, 1)
56        pylab.loglog(x, err, '-', label=label)
57    else:
58        limits = np.min(target), np.max(target)
59        pylab.semilogx(x, np.clip(actual,*limits),  '-', label=label)
60
61def compare(x, precision, target):
62    r"""
63    Compare the different computation methods using the given precision.
64    """
65    #plotdiff(x, target, mp_fn(x, 11), 'mp 11 bits')
66    plotdiff(x, target, np_fn(x, precision), 'numpy '+precision)
67    plotdiff(x, target, sasmodels_fn(x, precision, 0), 'sasmodels '+precision)
68    pylab.xlabel("qr (1/Ang)")
69    if SHOW_DIFF:
70        pylab.ylabel("relative error")
71    else:
72        pylab.ylabel(FUNCTION)
73        pylab.semilogx(x, target,  '-', label="true value")
74    if LINEAR_X:
75        pylab.xscale('linear')
76
77def main():
78    r"""
79    Compare accuracy of different methods for computing $3 j_1(x)/x$.
80    :return:
81    """
82    if LINEAR_X:
83        qr = np.linspace(1,1000,2000)
84    else:
85        qr = np.logspace(-3,5,400)
86    target = np.asarray(mp_fn(qr), 'double')
87    pylab.subplot(121)
88    compare(qr, 'single', target)
89    pylab.legend(loc='best')
90    pylab.subplot(122)
91    compare(qr, 'double', target)
92    pylab.legend(loc='best')
93    pylab.suptitle(FUNCTION)
94
95if __name__ == "__main__":
96    #print "\n".join(str(x) for x in mp_J1c([1e-6,1e-5,1e-4,1e-3]))
97    main()
98    pylab.show()
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