SourceLocation2D#
- class hmclab.Distributions.SourceLocation2D(*args, **kwargs)[source]#
Bases:
hmclab.Distributions.base._AbstractDistribution
Earthquake source location in 2D using a single velocity for the subsurface.
- __init__(receiver_array_x: numpy.ndarray, receiver_array_z: numpy.ndarray, observed_data: numpy.ndarray, data_std: Union[numpy.ndarray, float], infer_velocity: bool = True, medium_velocity=None)[source]#
Methods
Correct HMC trajectory.
create_default
describe
Dimensionality of misfit space.
forward
forward_gradient
forward_vector
generate
gradient
misfit
Compute misfit of bounded distribution.
Normalize distribution.
plot_data
split_vector
Update bounded distribution.
Attributes
Boolean that determines whether or not the model velocity is also a free parameter.
lower_bounds
Lower bounds for every parameter.
medium_velocity
name
Name of the distribution.
normalized
Boolean describing if the distribution is normalized.
number_of_events
receiver_array_x
receiver_array_z
upper_bounds
Upper bounds for every parameter.
- infer_velocity: bool = True#
Boolean that determines whether or not the model velocity is also a free parameter.
- dimensions() int #
Dimensionality of misfit space.
This is an abstract parameter. If it is not defined either in your class directly or in its constructor (the __init__ function) then attempting to use the class will raise a NotImplementedError.
Access it like a parameter, not a function:
distribution.dimensions
.
- corrector(coordinates: numpy.ndarray, momentum: numpy.ndarray)#
Correct HMC trajectory.
Method to correct an HMC particle for bounded distributions, which is called after every time integration step.
- Parameters
coordinates (numpy.ndarray) – Numpy array shaped as (dimensions, 1) representing a column vector containing the coordinates \(\mathbf{m}\) upon which to operate by reference.
momentum (numpy.ndarray) – Numpy array shaped as (dimensions, 1) representing a column vector containing the momenta \(\mathbf{p}\) upon which to operate by reference.
- misfit_bounds(coordinates: numpy.ndarray) float #
Compute misfit of bounded distribution.
Method to compute the misfit associated with the truncated part of the distribution. Used internally.
- normalize()#
Normalize distribution.
Method to compute the normalization constant of a distribution. As this might take significant time, it is not done in initialization.
- Raises
AttributeError – An AttributeError is raised if the distribution provides no way to be normalized, e.g. when the normalization constant is intractable.
- update_bounds(lower: Optional[numpy.ndarray] = None, upper: Optional[numpy.ndarray] = None)#
Update bounded distribution.
This method updates the bounds of a distribution. Note that invocating it, does not require both bounds to be passed.
If both vectors are passed, ensure that all upper bounds are above the corresponding lower bounds.
- Parameters
lower (numpy.ndarray or None) – Either an array shaped as (dimensions, 1) with floats for the lower bounds, or None for no bounds. If some dimensions should be bounded, while others should not, use
-numpy.inf
within the vector as needed.upper (numpy.ndarray or None) – Either an array shaped as (dimensions, 1) with floats for the upper bounds, or None for no bounds. If some dimensions should be bounded, while others should not, use
numpy.inf
within the vector as needed.
- Raises
ValueError – A ValueError is raised if the supplied upper and lower bounds are incompatible.