An update-resilient Kalman filtering approach
An update-resilient Kalman filtering approach
We propose a new robust filtering paradigm considering the situation in which model uncertainty, described through an ambiguity set, is present only in the observations. We derive the corresponding robust estimator, referred to as update-resilient Kalman filter, which appears to be novel compared to existing minimax game-based filtering approaches. Moreover, we characterize the corresponding least favorable state space model and analyze the filter stability. Finally, some numerical examples show the effectiveness of the proposed estimator.
Shenglun Yi、Mattia Zorzi
自动化基础理论
Shenglun Yi,Mattia Zorzi.An update-resilient Kalman filtering approach[EB/OL].(2025-04-10)[2025-07-16].https://arxiv.org/abs/2504.07847.点此复制
评论