fronts.BaseSolution¶
-
class
fronts.
BaseSolution
(sol, D)¶ Base class for solutions using the Boltzmann transformation.
Its methods describe a continuous solution to any problem of finding a function S of r and t such that:
\[\dfrac{\partial S}{\partial t} = \nabla\cdot\left[D\left(S\right) \dfrac{\partial S}{\partial r}\mathbf{\hat{r}}\right]\]- Parameters
sol (callable) – Solution to an ODE obtained with ode. For any float or numpy.ndarray o,
sol(o)[0]
are the values of S at o, andsol(o)[1]
the values of the derivative dS/do at o.D (callable) – D used to obtain sol. Must be the same function that was passed to ode.
See also
-
__init__
(sol, D)¶ Initialize self. See help(type(self)) for accurate signature.
Methods
S
([r, t, o])S, the unknown function.
__init__
(sol, D)Initialize self.
dS_do
([r, t, o])\(dS/do\), derivative of S with respect to the Boltzmann variable.
dS_dr
(r, t)\(\partial S/\partial r\), spatial derivative of S.
dS_dt
(r, t)\(\partial S/\partial t\), time derivative of S.
flux
(r, t)Diffusive flux of S.
-
S
(r=None, t=None, o=None)¶ S, the unknown function.
May be called either with parameters r and t, or with just o.
- Parameters
r (float or numpy.ndarray, optional) – Location(s). If a numpy.ndarray, it must have a shape broadcastable with t. If this parameter is used, you must also pass t and cannot pass o.
t (float or numpy.ndarray, optional) – Time(s). If a numpy.ndarray, it must have a shape broadcastable ith r. Values must be positive. If this parameter is used, you must also pass r and cannot pass o.
o (float or numpy.ndarray, optional) – Value(s) of the Boltzmann variable. If this parameter is used, you cannot pass r or t.
- Returns
S – If o is passed, the return is of the same type and shape as o. Otherwise, return is a float if both r and t are floats, or a numpy.ndarray of the shape that results from broadcasting r and t.
- Return type
float or numpy.ndarray
-
dS_do
(r=None, t=None, o=None)¶ \(dS/do\), derivative of S with respect to the Boltzmann variable.
May be called either with parameters r and t, or with just o.
- Parameters
r (float or numpy.ndarray, optional) – Location(s). If a numpy.ndarray, it must have a shape broadcastable with t. If this parameter is used, you must also pass t and cannot pass o.
t (float or numpy.ndarray, optional) – Time(s). If a numpy.ndarray, it must have a shape broadcastable with r. Values must be positive. If this parameter is used, you must also pass r and cannot pass o.
o (float or numpy.ndarray, optional) – Value(s) of the Boltzmann variable. If this parameter is used, you cannot pass r or t.
- Returns
dS_do – If o is passed, the return is of the same type and shape as o. Otherwise, the return is a float if both r and t are floats, or a numpy.ndarray of the shape that results from broadcasting r and t.
- Return type
float or numpy.ndarray
-
dS_dr
(r, t)¶ \(\partial S/\partial r\), spatial derivative of S.
- Parameters
r (float or numpy.ndarray) – Location(s) along the coordinate. If a numpy.ndarray, it must have a shape broadcastable with t.
t (float or numpy.ndarray) – Time(s). If a numpy.ndarray, it must have a shape broadcastable with r. Values must be positive.
- Returns
dS_dr – The return is a float if both r and t are floats. Otherwise it is a numpy.ndarray of the shape that results from broadcasting r and t.
- Return type
float or numpy.ndarray
-
dS_dt
(r, t)¶ \(\partial S/\partial t\), time derivative of S.
- Parameters
r (float or numpy.ndarray) – Location(s). If a numpy.ndarray, it must have a shape broadcastable with t.
t (float or numpy.ndarray) – Time(s). If a numpy.ndarray, it must have a shape broadcastable with r. Values must be positive.
- Returns
dS_dt – The return is a float if both r and t are floats. Otherwise it is a numpy.ndarray of the shape that results from broadcasting r and t.
- Return type
float or numpy.ndarray
-
flux
(r, t)¶ Diffusive flux of S.
Returns the diffusive flux of S in the direction \(\mathbf{\hat{r}}\), equal to \(-D(S)\partial S/\partial r\).
- Parameters
r (float or numpy.ndarray) – Location(s). If a numpy.ndarray, it must have a shape broadcastable with t.
t (float or numpy.ndarray) – Time(s). If a numpy.ndarray, it must have a shape broadcastable with r. Values must be positive.
- Returns
flux – The return is a float if both r and t are floats. Otherwise it is a numpy.ndarray of the shape that results from broadcasting r and t.
- Return type
float or numpy.ndarray