source: sasmodels/sasmodels/models/_spherepy.py @ ba32cdd

core_shell_microgelscostrafo411magnetic_modelrelease_v0.94release_v0.95ticket-1257-vesicle-productticket_1156ticket_1265_superballticket_822_more_unit_tests
Last change on this file since ba32cdd was 49da079, checked in by richardh, 8 years ago

sld name changes, hide experimental spherepy.py from docs by rename to _spherepy.py

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[be802cb]1r"""
2For information about polarised and magnetic scattering, click here_.
3
4.. _here: polar_mag_help.html
5
6Definition
7----------
8
9The 1D scattering intensity is calculated in the following way (Guinier, 1955)
10
11.. math::
12
[eb69cce]13    I(q) = \frac{\text{scale}}{V} \cdot \left[
14        3V(\Delta\rho) \cdot \frac{\sin(qr) - qr\cos(qr))}{(qr)^3}
[be802cb]15        \right]^2 + \text{background}
16
17where *scale* is a volume fraction, $V$ is the volume of the scatterer,
[eb69cce]18$r$ is the radius of the sphere, *background* is the background level and
[49da079]19*sld* and *sld_solvent* are the scattering length densities (SLDs) of the
[be802cb]20scatterer and the solvent respectively.
21
22Note that if your data is in absolute scale, the *scale* should represent
23the volume fraction (which is unitless) if you have a good fit. If not,
24it should represent the volume fraction times a factor (by which your data
25might need to be rescaled).
26
27The 2D scattering intensity is the same as above, regardless of the
28orientation of $\vec q$.
29
30Validation
31----------
32
33Validation of our code was done by comparing the output of the 1D model
34to the output of the software provided by the NIST (Kline, 2006).
35
36
[eb69cce]37References
38----------
[be802cb]39
40A Guinier and G. Fournet, *Small-Angle Scattering of X-Rays*,
41John Wiley and Sons, New York, (1955)
42
43*2013/09/09 and 2014/01/06 - Description reviewed by S King and P Parker.*
44"""
45
[10576d1]46import numpy as np
[3c56da87]47from numpy import pi, inf, sin, cos, sqrt, log
[be802cb]48
[49da079]49name = " _sphere (python)"
50title = "PAK testing ideas for Spheres with uniform scattering length density"
[be802cb]51description = """\
[49da079]52P(q)=(scale/V)*[3V(sld-sld_solvent)*(sin(qr)-qr cos(qr))
[eb69cce]53                /(qr)^3]^2 + background
54    r: radius of sphere
[be802cb]55    V: The volume of the scatter
56    sld: the SLD of the sphere
[49da079]57    sld_solvent: the SLD of the solvent
[be802cb]58"""
[a5d0d00]59category = "shape:sphere"
[be802cb]60
[3e428ec]61#             ["name", "units", default, [lower, upper], "type","description"],
62parameters = [["sld", "1e-6/Ang^2", 1, [-inf, inf], "",
63               "Layer scattering length density"],
[49da079]64              ["sld_solvent", "1e-6/Ang^2", 6, [-inf, inf], "",
[3e428ec]65               "Solvent scattering length density"],
66              ["radius", "Ang", 50, [0, inf], "volume",
67               "Sphere radius"],
68             ]
[be802cb]69
70
71def form_volume(radius):
[3e428ec]72    return 1.333333333333333 * pi * radius ** 3
[be802cb]73
[49da079]74def Iq(q, sld, sld_solvent, radius):
[b3f6bc3]75    #print "q",q
[49da079]76    #print "sld,r",sld,sld_solvent,radius
[3e428ec]77    qr = q * radius
[be802cb]78    sn, cn = sin(qr), cos(qr)
[ade352a]79    ## The natural expression for the bessel function is the following:
80    ##     bes = 3 * (sn-qr*cn)/qr**3 if qr>0 else 1
81    ## however, to support vector q values we need to handle the conditional
82    ## as a vector, which we do by first evaluating the full expression
83    ## everywhere, then fixing it up where it is broken.   We should probably
84    ## set numpy to ignore the 0/0 error before we do though...
[3e428ec]85    bes = 3 * (sn - qr * cn) / qr ** 3 # may be 0/0 but we fix that next line
86    bes[qr == 0] = 1
[49da079]87    fq = bes * (sld - sld_solvent) * form_volume(radius)
[3e428ec]88    return 1.0e-4 * fq ** 2
[eb69cce]89Iq.vectorized = True  # Iq accepts an array of q values
[be802cb]90
[49da079]91def Iqxy(qx, qy, sld, sld_solvent, radius):
92    return Iq(sqrt(qx ** 2 + qy ** 2), sld, sld_solvent, radius)
[eb69cce]93Iqxy.vectorized = True  # Iqxy accepts arrays of qx, qy values
[be802cb]94
[49da079]95def sesans(z, sld, sld_solvent, radius):
[10576d1]96    """
97    Calculate SESANS-correlation function for a solid sphere.
98
99    Wim Bouwman after formulae Timofei Kruglov J.Appl.Cryst. 2003 article
100    """
[3e428ec]101    d = z / radius
[10576d1]102    g = np.zeros_like(z)
[3e428ec]103    g[d == 0] = 1.
[10576d1]104    low = ((d > 0) & (d < 2))
105    dlow = d[low]
[3e428ec]106    dlow2 = dlow ** 2
107    g[low] = sqrt(1 - dlow2 / 4.) * (1 + dlow2 / 8.) + dlow2 / 2.*(1 - dlow2 / 16.) * log(dlow / (2. + sqrt(4. - dlow2)))
[10576d1]108    return g
[d2950f4]109sesans.vectorized = True  # sesans accepts an array of z values
[10576d1]110
[be802cb]111def ER(radius):
112    return radius
113
[b3f6bc3]114# VR defaults to 1.0
[d547f16]115
[3e428ec]116demo = dict(scale=1, background=0,
[49da079]117            sld=6, sld_solvent=1,
[3e428ec]118            radius=120,
119            radius_pd=.2, radius_pd_n=45)
[a503bfd]120oldname = "SphereModel"
[49da079]121oldpars = dict(sld='sldSph', sld_solvent='sldSolv', radius='radius')
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