Author:
Yang Shaohua,Fu Hongpo,Zhang Xiaodong
Abstract
Abstract
In many practical fields, the unknown time-varying
measurement biases (additive and multiplicative bias) and
heavy-tailed measurement noise caused by some unpredictable
anomalous behaviors may degrade the performance of conventional
Kalman filter seriously. To solve the state estimation problem of
systems with time-varying measurement biases and heavy-tailed
measurement noise, this paper proposes a new variational Bayesian
(VB) based robust filter. Firstly, the non-Gaussian measurement
likelihood probability density function (ML-PDF) with multiplicative
and additive measurement bias is built. Then, the conjugate prior
distributions for unknown bias and noise scale parameters are
selected, and the VB method is utilized to jointly infer the system
state, unknown measurement biases and inaccurate measurement noise
covariance matrix. Finally, a VB based robust filter is derived and
its effectiveness is verified by the numerical simulations.