A Kalman and Fading Memory Cofilter for Uncertain Systems Based on Self-Perception Mechanism
成果类型:
Article
署名作者:
Luan, Xiaoli; Xue, Wei; Zhao, Shunyi; Liu, Fei
署名单位:
Jiangnan University
刊物名称:
IEEE TRANSACTIONS ON AUTOMATIC CONTROL
ISSN/ISSBN:
0018-9286
DOI:
10.1109/TAC.2025.3532813
发表日期:
2025
页码:
5021-5036
关键词:
uncertainty
Adaptive filters
Kalman filters
Covariance matrices
Fading channels
vectors
estimation error
Robustness
Gaussian noise
uncertain systems
Adaptive robust filter (ARF)
cofilter
fading memory filter
Kalman filter (KF)
uncertainty system
摘要:
A cofilter by collaboration of Kalman filter and fading memory filter improves the filter estimation performance for uncertain systems. Specifically, the influence function is utilized to quantify the influence of uncertainty on estimation performance, forming the self-perception mechanism. Then, the cofilter takes the Kalman filter as the robust lower bound and the fading memory filter as the robust upper bound and adjusts the robust parameters based on the self-perception mechanism to form an adaptive robust filter. The advantage of the proposed cofilter is that it resists uncertainty while reducing performance loss. The performance of the adaptive robust filter is analyzed theoretically using the Riccati equation and the Lyapunov equation. Furthermore, one numerical example simulation, one practice-oriented 1-degree of freedom (1-DoF) torsion simulation, and one water tank experiment are given as an illustration of the efficiency of the proposed adaptive robust filter.