Identification of physical processes via combined data-driven and data-assimilation methods
Haibin Chang, Dongxiao Zhang

TL;DR
This paper introduces a novel framework combining data-driven and data-assimilation techniques to identify physical processes and estimate model parameters from spatiotemporal data, even with measurement errors.
Contribution
It develops an integrated approach for discovering governing PDEs and inferring uncertain parameters simultaneously, extending the applicability of data-driven PDE discovery methods.
Findings
Successfully identified physical processes in contaminant transport problems
Estimated uncertain parameters of nonlinear models accurately
Demonstrated robustness to measurement errors
Abstract
With the advent of modern data collection and storage technologies, data-driven approaches have been developed for discovering the governing partial differential equations (PDE) of physical problems. However, in the extant works the model parameters in the equations are either assumed to be known or have a linear dependency. Therefore, most of the realistic physical processes cannot be identified with the current data-driven PDE discovery approaches. In this study, an innovative framework is developed that combines data-driven and data-assimilation methods for simultaneously identifying physical processes and inferring model parameters. Spatiotemporal measurement data are first divided into a training data set and a testing data set. Using the training data set, a data-driven method is developed to learn the governing equation of the considered physical problem by identifying the…
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