LogNormal

sans.models.LogNormal

Provide functionality for a C extension model

WARNING:THIS FILE WAS GENERATED BY WRAPPERGENERATOR.PY DO NOT MODIFY THIS FILE, MODIFY ..c_extensionslogNormal.h AND RE-RUN THE GENERATOR SCRIPT
class sans.models.LogNormal.LogNormal

Bases: CLogNormal, sans.models.BaseComponent.BaseComponent

Class that evaluates a LogNormal model. This file was auto-generated from ..c_extensionslogNormal.h. Refer to that file and the structure it contains for details of the model. List of default parameters:

scale = 1.0 sigma = 1.0 center = 0.0
calculate_ER()

Calculate the effective radius for P(q)*S(q)

Returns:the value of the effective radius
clone()

Return a identical copy of self

evalDistribution(x=[])

Evaluate the model in cartesian coordinates

Parameters:x – input q[], or [qx[], qy[]]
Returns:scattering function P(q[])
getDispParamList()

Return a list of all available parameters for the model

getParam(name)

Set the value of a model parameter

Parameters:name – name of the parameter
getParamList()

Return a list of all available parameters for the model

getParamListWithToken(token, member)
getParamWithToken(name, token, member)
is_fittable(par_name)

Check if a given parameter is fittable or not

Parameters:par_name – the parameter name to check
log

Log

params

Parameters

reset

Reset pair correlation

run(x=0.0)

Evaluate the model

Parameters:x – input q, or [q,phi]
Returns:scattering function P(q)
runXY(x=0.0)

Evaluate the model in cartesian coordinates

Parameters:x – input q, or [qx, qy]
Returns:scattering function P(q)
setParam(name, value)

Set the value of a model parameter

Parameters:
  • name – name of the parameter
  • value – value of the parameter
setParamWithToken(name, value, token, member)
set_dispersion(parameter, dispersion)

Set the dispersion object for a model parameter

Parameters:
  • parameter – name of the parameter [string]
  • dispersion – dispersion object of type DispersionModel
sans.models.LogNormal.create_LogNormal()

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