Publication | Open Access
Learning Discrepancy Models From Experimental Data
13
Citations
24
References
2019
Year
Reduced Order ModelingEngineeringDiscrepancy ModelsComputational MechanicsNonlinear Mechanical SystemNonlinear System IdentificationParameter IdentificationData ScienceSystems EngineeringModeling And SimulationStatisticsModel ComparisonSystem IdentificationSparse IdentificationDouble PendulumFirst PrinciplesExperiment DesignMechanical SystemsProcess ControlStatistical Inference
First principles modeling of physical systems has led to significant technological advances across all branches of science. For nonlinear systems, however, small modeling errors can lead to significant deviations from the true, measured behavior. Even in mechanical systems, where the equations are assumed to be well-known, there are often model discrepancies corresponding to nonlinear friction, wind resistance, etc. Discovering models for these discrepancies remains an open challenge for many complex systems. In this work, we use the sparse identification of nonlinear dynamics (SINDy) algorithm to discover a model for the discrepancy between a simplified model and measurement data. In particular, we assume that the model mismatch can be sparsely represented in a library of candidate model terms. We demonstrate the efficacy of our approach on several examples including experimental data from a double pendulum on a cart. We further design and implement a feed-forward controller in simulations, showing improvement with a discrepancy model.
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