A Computationally Efficient Robust Cubature Kalman Filter With Multivariate Laplace Distribution

Hongpo Fu, Yongmei Cheng

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11 引用 (Scopus)

摘要

This article investigates the nonlinear state estimation under heavy-tailed process and measurement noises (PAMNs), and the noises may be induced by sensor failures, measurement loss, modeling errors, environmental changes, or malicious cyberattacks. Considering that the multivariate Laplacian (ML) distribution has obvious heavy-tailed characteristic, we employ the distribution to describe heavy-tailed PAMNs. Furthermore, to improve the computational efficiency of the existing variational Bayesian (VB) iteration process, we design an improved VB iteration method, which can separately calculate the posterior distributions of the state vector and unknown noise parameters. Employing the ML distribution and improved VB inference process, a computationally efficient robust cubature Kalman filter (CEMLRCKF) is derived. Simulation and vehicle experimental results illustrate the superiority of the proposed filter.

源语言英语
文章编号6502811
期刊IEEE Transactions on Instrumentation and Measurement
72
DOI
出版状态已出版 - 2023

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