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Asian Journal of Mathematics
Volume 27 (2023)
Number 1
On the stability of linear feedback particle filter
Pages: 95 – 120
DOI: https://dx.doi.org/10.4310/AJM.2023.v27.n1.a4
Authors
Abstract
In this paper, we study the stability of feedback particle filter (FPF) for linear filtering systems with Gaussian noises. We first provide some local contraction estimates of the exact linear FPF, whose conditional distribution is exactly the posterior distribution of the state as long as their initial values are equal. Then we study the convergence of the linear FPF formed by $N$ particles, and prove that the mean squared errors between the actual moments $(m_t, P_t)$ and their approximations $(m^{(N)}_t , P^{(N)}_t)$ by FPF are of order $\mathcal{O}(1/N)$ and decay exponentially fast as time $t$ goes to infinity.
Keywords
feedback particle filter, Kalman–Bucy filter, linear system, convergence
2010 Mathematics Subject Classification
34A12, 93C05, 93D20
This work is supported by National Natural Science Foundation of China (NSFC) grant 12201631, and by the Tsinghua University Education Foundation fund 042202008.
Received 9 August 2022
Accepted 21 December 2022
Published 16 June 2023