A Gaussian-inverse Gamma mixture Distributions and Expectation-Maximization Based Robust Kalman Filter

Hongpo Fu, Yong-mei Cheng, Cheng Cheng
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Abstract

In the study of the state estimation for the systems with unknown time-varying non-Gaussian noises, the existing robust Kalman filters (RKFs) perform well. However, the calculation loads of these RKFs usually are large and their performance is easily affected by the roughly preselected initial process noise covariance matrix (PNCM). To solve the problems, a new RKF is proposed. Firstly, a Gaussian-inverse Gamma mixture distribution is developed to model the inaccurate noises and a simple hierarchical Gaussian (HG) model is constructed. Then, the expectation-maximization (EM) method is applied to realize the adaptive adjustment of the prior scale matrix of the prediction error covariance. Based on the HG model and EM, a robust KF is derived, where the variational Bayesian (VB) approach is used to jointly estimate model parameters and an alternate iteration method is employed to reduce the computation time. Finally, our filter performance is tested. Compared with the existing state-of-the-art robust filters, the proposed filter has slightly better estimation accuracy and significantly less computation load. Meanwhile, the filter performance is almost not affected by the selection accuracy of initial PNCM.
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基于期望最大化的高斯-逆伽玛混合分布鲁棒卡尔曼滤波
在含未知时变非高斯噪声系统的状态估计研究中,已有的鲁棒卡尔曼滤波器(RKFs)表现良好。然而,这些RKFs的计算负荷通常很大,并且其性能容易受到粗略预选的初始过程噪声协方差矩阵(PNCM)的影响。为了解决这些问题,提出了一种新的RKF。首先,采用高斯-逆伽玛混合分布模型对不准确噪声进行建模,并建立了简单的层次高斯模型。然后,应用期望最大化(EM)方法实现预测误差协方差先验尺度矩阵的自适应调整。在HG模型和EM的基础上,采用变分贝叶斯(VB)方法联合估计模型参数,采用交替迭代法减少计算时间,推导出鲁棒KF模型。最后,对该滤波器的性能进行了测试。与现有的鲁棒滤波器相比,该滤波器的估计精度略高,计算量明显减少。同时,滤波器的性能几乎不受初始PNCM选择精度的影响。
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