SimPEG.regularization.LinearCorrespondence#
- class SimPEG.regularization.LinearCorrespondence(mesh, wire_map, coefficients=None, **kwargs)[source]#
- Bases: - BaseSimilarityMeasure- Linear correspondence regularization for joint inversion with two physical properties. - LinearCorrespondenceis used to recover a model where the differences between the model parameter values for two physical property types are minimal.- LinearCorrespondencecan also be used to minimize the squared L2-norm of a linear combination of model parameters for two physical property types. See the Notes section for a comprehensive description.- Parameters:
- meshSimPEG.regularization.RegularizationMesh,discretize.base.BaseMesh
- Mesh on which the regularization is discretized. This is not necessarily the same as the mesh on which the simulation is defined. 
- active_cellsNone, (n_cells, )numpy.ndarrayofbool
- Boolean array defining the set of - RegularizationMeshcells that are active in the inversion. If- None, all cells are active.
- wire_mapSimPEG.maps.Wires
- Wire map connecting physical properties defined on active cells of the - RegularizationMesh`to the entire model.
- coefficientsNone, (3)numpy.ndarrayoffloat
- Coefficients \(\{ \lambda_1, \lambda_2, \lambda_3 \}\) for the linear relationship between model parameters. If - None, the coefficients are set to \(\{ 1, -1, 0 \}\).
 
- mesh
 - Notes - Let \(\mathbf{m}\) be a discrete model consisting of two physical property types such that: \[\begin{split}\mathbf{m} = \begin{bmatrix} \mathbf{m_1} \\ \mathbf{m_2} \end{bmatrix}\end{split}\]- Where \(\{ \lambda_1 , \lambda_2 , \lambda_3 \}\) define scalar coefficients for a linear combination of vectors \(\mathbf{m_1}\) and \(\mathbf{m_2}\), the regularization function (objective function) is given by: \[\phi (\mathbf{m}) = \big \| \lambda_1 \mathbf{m_1} + \lambda_2 \mathbf{m_2} + \lambda_3 \big \|^2\]- Scalar coefficients \(\{ \lambda_1 , \lambda_2 , \lambda_3 \}\) are set using the coefficients property. For a true linear correspondence constraint, we set \(\{ \lambda_1 , \lambda_2 , \lambda_3 \}\) to \(\{ 1, -1, 0 \}\). - Attributes - Weighting matrix. - Active cells defined on the regularization mesh. - Deprecated property for 'volume' and user defined weights. - Coefficients for the linear relationship between model parameters. - active_cells.indActive has been deprecated. - Mapping from the inversion model parameters to the regularization mesh. - The model parameters. - reference_model.mref has been deprecated. - Number of model parameters. - The parent objective function - Reference model. - regularization_mesh.regmesh has been deprecated. - Regularization mesh. - Units for the model parameters. - Return the keys for the existing cell weights - Mapping from model to physical properties defined on the regularization mesh. - Methods - __call__(model)- Evaluate the regularization function for the model provided. - deriv(model)- Gradient of the regularization function evaluated for the model provided. - deriv2(model[, v])- Hessian of the regularization function evaluated for the model provided. - f_m(m)- Not implemented for - BaseRegularizationclass.- f_m_deriv(m)- Not implemented for - BaseRegularizationclass.- get_weights(key)- Cell weights for a given key. - map_class- alias of - IdentityMap- relation(model)- Computes the relation vector for the model provided. - remove_weights(key)- Removes the weights for the key provided. - set_weights(**weights)- Adds (or updates) the specified weights to the regularization. - test([x, num])- Run a convergence test on both the first and second derivatives.