Robust Bayesian Inference for Moving Horizon Estimation
Wenhan Cao, Chang Liu, Zhiqian Lan, Shengbo Eben Li, Wei Pan, Angelo, Alessandri

TL;DR
This paper introduces a robust Bayesian framework for Moving Horizon Estimation that enhances outlier resilience by integrating a robust divergence measure, maintaining computational efficiency and stability for nonlinear systems.
Contribution
It proposes a novel robust Bayesian inference approach for MHE that adjusts for outliers without discarding data, extending robustness and stability guarantees to nonlinear systems.
Findings
Improved robustness to measurement outliers in MHE.
Maintains computational efficiency comparable to classical MHE.
Demonstrates effectiveness through simulations and physical experiments.
Abstract
The accuracy of moving horizon estimation (MHE) suffers significantly in the presence of measurement outliers. Existing methods address this issue by treating measurements leading to large MHE cost function values as outliers, which are subsequently discarded. This strategy, achieved through solving combinatorial optimization problems, is confined to linear systems to guarantee computational tractability and stability. Contrasting these heuristic solutions, our work reexamines MHE from a Bayesian perspective, unveils the fundamental issue of its lack of robustness: MHE's sensitivity to outliers results from its reliance on the Kullback-Leibler (KL) divergence, where both outliers and inliers are equally considered. To tackle this problem, we propose a robust Bayesian inference framework for MHE, integrating a robust divergence measure to reduce the impact of outliers. In particular, the…
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Taxonomy
TopicsTarget Tracking and Data Fusion in Sensor Networks · Image and Signal Denoising Methods · Advanced Statistical Methods and Models
