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Some of the variables, some of the parameters, some of the times, with some physics known: Identification with partial information

Abstract

Experimental data is often comprised of variables measured independently, at different sampling rates (non-uniform Δ{\Delta}t between successive measurements); and at a specific time point only a subset of all variables may be sampled. Approaches to identifying dynamical systems from such data typically use interpolation, imputation or subsampling to reorganize or modify the training data prior\textit{prior} to learning. Partial physical knowledge may also be available a priori\textit{a priori} (accurately or approximately), and data-driven techniques can complement this knowledge. Here we exploit neural network architectures based on numerical integration methods and a priori\textit{a priori} physical knowledge to identify the right-hand side of the underlying governing differential equations. Iterates of such neural-network models allow for learning from data sampled at arbitrary time points without\textit{without} data modification. Importantly, we integrate the network with available partial physical knowledge in "physics informed gray-boxes"; this enables learning unknown kinetic rates or microbial growth functions while simultaneously estimating experimental parameters.

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