Data-Augmented Numerical Integration in State Prediction: Rule Selection
Date issued
2024
Journal Title
Journal ISSN
Volume Title
Publisher
Elsevier
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.
Description
Subject(s)
state estimation, neural network, numerical integration, nonlinear predictors, Bayesian methods, stochastic systems