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Data-Augmented Numerical Integration in State Prediction: Rule Selection

2024-12-09Unverified0· sign in to hype

Jindrich Dunik, Ladislav Kral, Jakub Matousek, Ondrej Straka, Marek Brandner

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Abstract

This paper deals with the state prediction of nonlinear stochastic dynamic systems. The emphasis is laid on a solution to the integral Chapman-Kolmogorov equation by a deterministic-integration-rule-based point-mass method. A novel concept of reliable data-augmented, i.e., mathematics- and data-informed, integration rule is developed to enhance the point-mass state predictor, where the trained neural network (representing data contribution) is used for the selection of the best integration rule from a set of available rules (representing mathematics contribution). The proposed approach combining the best properties of the standard mathematics-informed and novel data-informed rules is thoroughly discussed.

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