simpeg.objective_function.L2ObjectiveFunction#
- class simpeg.objective_function.L2ObjectiveFunction(nP=None, mapping=None, W=None, has_fields=False, counter=None, debug=False)[source]#
Bases:
BaseObjectiveFunctionWeighted least-squares objective function class.
Weighting least-squares objective functions in SimPEG are defined as follows:
\[\phi = \big \| \mathbf{W} f(\mathbf{m}) \big \|_2^2\]where \(\mathbf{m}\) are the model parameters, \(f\) is a mapping operator, and \(\mathbf{W}\) is the weighting matrix.
- Parameters:
- nP
int Number of model parameters.
- mapping
simpeg.mapping.BaseMap A SimPEG mapping object that maps from the model space to the quantity evaluated in the objective function.
- W
Noneorscipy.sparse.csr_matrix The weighting matrix applied in the objective function. By default, this is set to the identity matrix.
- has_fieldsbool
If
True, predicted fields for a simulation and a given model can be used to evaluate the objective function quickly.- counter
Noneorsimpeg.utils.Counter Assign a SimPEG
Counterobject to store iterations and run-times.- debugbool
Print debugging information.
- nP
Attributes
Weighting matrix applied in the objective function.
Mapping from the model to the quantity evaluated in the object function.
Number of model parameters.
Methods
__call__(m)Evaluate the objective function for a given model.
deriv(m)Gradient of the objective function evaluated for the model provided.
deriv2(m[, v])Hessian of the objective function evaluated for the model provided.
map_classalias of
IdentityMaptest([x, num, random_seed])Run a convergence test on both the first and second derivatives.
Galleries and Tutorials using simpeg.objective_function.L2ObjectiveFunction#
Method of Equivalent Sources for Removing VRM Responses
Petrophysically guided inversion (PGI): Linear example
Petrophysically guided inversion: Joint linear example with nonlinear relationships
Heagy et al., 2017 1D RESOLVE and SkyTEM Bookpurnong Inversions
Heagy et al., 2017 1D RESOLVE Bookpurnong Inversion
Sparse Norm Inversion for Total Magnetic Intensity Data on a Tensor Mesh
Cross-gradient Joint Inversion of Gravity and Magnetic Anomaly Data
Joint PGI of Gravity + Magnetic on an Octree mesh using full petrophysical information
Joint PGI of Gravity + Magnetic on an Octree mesh without petrophysical information
Sparse Norm Inversion of 2D Seismic Tomography Data
Sparse Inversion with Iteratively Re-Weighted Least-Squares
1D Inversion of Time-Domain Data for a Single Sounding
2.5D DC Resistivity and IP Least-Squares Inversion