A robust approach to sigma point Kalman filtering
A robust approach to sigma point Kalman filtering
In this paper, we address a robust nonlinear state estimation problem under model uncertainty by formulating a dynamic minimax game: one player designs the robust estimator, while the other selects the least favorable model from an ambiguity set of possible models centered around the nominal one. To characterize a closed-form expression for the conditional expectation characterizing the estimator, we approximate the center of this ambiguity set by means of a sigma point approximation. Furthermore, since the least favorable model is generally nonlinear and non-Gaussian, we derive a simulator based on a Markov chain Monte Carlo method to generate data from such model. Finally, some numerical examples show that the proposed filter outperforms the existing filters.
Shenglun Yi、Mattia Zorzi
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Shenglun Yi,Mattia Zorzi.A robust approach to sigma point Kalman filtering[EB/OL].(2025-06-05)[2025-07-25].https://arxiv.org/abs/2506.04815.点此复制
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