A Gaussian Mixture Filter with Adaptive Refinement for Nonlinear State Estimation
Signal Processing(2022)CCF CSCI 2区
Purdue Univ
Abstract
The state estimation of highly nonlinear dynamic systems is difficult because the probability distribution of their states can be highly non-Gaussian. An adaptive Gaussian mixture filter is developed in this work to address this challenge, in which the Gaussian mixture models are refined based on the system's local severity of nonlinearity to attain a high-fidelity estimation of the state distribution. A set of nonlinearity assessment criteria are designed to trigger the splitting of Gaussian components at both the prediction and update stages of Bayesian filtering and the error bound of estimated distribution is established. The new filter has been benchmarked against the existing methods on two challenging problems and it con-sistently provides among-the-best accuracy with a reasonable computational cost, which proves that it can be used as a reliable state estimator for engineering systems with highly nonlinear dynamics and subject to high magnitudes of uncertainties.(c) 2022 Elsevier B.V. All rights reserved.
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Key words
Bayesian filtering,Nonlinear system,Gaussian mixture model,Neural network,State estimation
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