LogParabola1D¶
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class
astropy.modeling.powerlaws.LogParabola1D[source] [edit on github]¶ Bases:
astropy.modeling.Fittable1DModelOne dimensional log parabola model (sometimes called curved power law).
Parameters: amplitude : float
Model amplitude
x_0 : float
Reference point
alpha : float
Power law index
beta : float
Power law curvature
Notes
Model formula (with A for
amplitudeand \alpha foralphaand \beta forbeta):f(x) = A \left(\frac{x}{x_{0}}\right)^{- \alpha - \beta \log{\left (\frac{x}{x_{0}} \right )}}
Attributes Summary
alphaamplitudebetaparam_namesx_0Methods Summary
evaluate(x, amplitude, x_0, alpha, beta)One dimensional log parabola model function fit_deriv(x, amplitude, x_0, alpha, beta)One dimensional log parabola derivative with respect to parameters Attributes Documentation
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alpha¶
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amplitude¶
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beta¶
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param_names= ('amplitude', 'x_0', 'alpha', 'beta')¶
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x_0¶
Methods Documentation
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static
evaluate(x, amplitude, x_0, alpha, beta)[source] [edit on github]¶ One dimensional log parabola model function
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static
fit_deriv(x, amplitude, x_0, alpha, beta)[source] [edit on github]¶ One dimensional log parabola derivative with respect to parameters
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