SimPEG.meta.RepeatedSimulation#
- class SimPEG.meta.RepeatedSimulation(simulation, mappings)[source]#
- Bases: - MetaSimulation- A MetaSimulation where a single simulation is used repeatedly. - This is most useful for linear simulations where a sensitivity matrix can be reused with different models. For non-linear simulations it will often be quicker to use the MetaSimulation class with multiple copies of the same simulation. - Parameters:
- simulationSimPEG.simulation.BaseSimulation
- The simulation to use repeatedly with different mappings. 
- mappings(n_sim)listofSimPEG.maps.IdentityMap
- The list of different mappings to use. 
 
- simulation
 - Attributes - A list of solver objects to clean when the model is updated - SimPEG - Counterobject to store iterations and run-times.- A list of properties stored on this object to delete when the model is updated - The mappings paired to each simulation. - Mesh for the simulation. - The inversion model. - True if a model is necessary - Path to directory where sensitivity file is stored. - The internal simulation. - The list of simulations. - Numerical solver used in the forward simulation. - Solver-specific parameters. - The survey for the simulation. - Verbose progress printout. - Methods - Jtvec(m, v[, f])- Compute the Jacobian transpose times a vector for the model provided. - Jtvec_approx(m, v[, f])- Approximation of the Jacobian transpose times a vector for the model provided. - Jvec(m, v[, f])- Compute the Jacobian times a vector for the model provided. - Jvec_approx(m, v[, f])- Approximation of the Jacobian times a vector for the model provided. - dpred([m, f])- Predicted data for the model provided. - fields(m)- Create fields for every simulation. - getJtJdiag(m[, W, f])- Return the squared sum of columns of the Jacobian. - make_synthetic_data(m[, relative_error, ...])- Make synthetic data for the model and Gaussian noise provided. - residual(m, dobs[, f])- The data residual.