非线性系统的自适应变分贝叶斯扩展卡尔曼滤波

Dingjie Xu, Chen Shen, F. Shen
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引用次数: 8

摘要

确定的建模和已知的不变参数(包括系统参数和噪声统计量)是众所周知的扩展卡尔曼滤波(EKF)的先决条件。由于实际情况中测量噪声的统计量可能发生变化,自然会降低EKF的性能。针对非线性系统,提出了一种自适应变分贝叶斯扩展卡尔曼滤波(AVBEKF)算法。该算法将系统状态和时变测量噪声作为随机变量进行估计。提出了一种用变分贝叶斯近似测量噪声方差,然后在标准更新步估计系统状态的方案。仿真结果表明,在非线性模型下,该滤波器的性能不受时变噪声的影响,并且AVBEKF能够跟踪测量噪声。
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Adaptive Variational Bayesian Extended Kalman Filtering for Nonlinear Systems
Definite modeling and known invariant parameters (including system parameters and noise statistics) are prerequisites of the well-known extended Kalman filtering (EKF). Naturally the performance of EKF may be degraded due to the fact that the statistics of measurement noise might change in practical situations. For nonlinear systems, an adaptive variational Bayesian extended Kalman filtering (AVBEKF) algorithm is developed in this paper. This algorithm regards both the system state and time-variant measurement noise as random variables to estimate. It provides a scheme that variances of measurement noises are approximated by variational Bayes, and thereafter system states are estimated at standard update step. Simulation results demonstrate that, in the context of a nonlinear model, the performance of the proposed filter is unaffected by the time-variant noise and AVBEKF is capable of tracking measurement noise as well.
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