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A novel robust Kalman filter with adaptive estimation of the unknown time-varying latency probability

机译:一种新颖的鲁棒卡尔曼滤波器,具有自适应估计未知的时变延迟概率

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摘要

To better model one-step randomly delayed measurements (ORDM) with unknown time-varying latency probability (UTLP) in linear systems with heavy-tailed measurement noise (HMN), a novel Normal-Gamma-Beta mixture (NGBM) distribution is presented. By introducing a Bernoulli random variable, the probability density function of the proposed NGBM distribution can be reformulated as a Gaussian hierarchical form. Based on this, a novel robust Kalman filter is designed using the variational Bayesian technique. A target tracking simulation verifies the potential of the proposed robust filter, which has higher filtering accuracy than existing cutting-edge filters and can adaptively estimate the UTLP. Furthermore, it is concluded that when HMN and ORDM concurrently exist, the HMN has more influence on the accuracy of the filter than the ORDM.
机译:通过具有重尾测量噪声(HMN)的线性系统中具有未知时变延迟概率(UTLP)的未知时阶段随机延迟测量(ORDM),提出了一种新的正常γ-β混合物(NGBM)分布。 通过引入Bernoulli随机变量,所提出的NGBM分布的概率密度函数可以重新重整为高斯层次形式。 基于此,使用变分贝叶斯技术设计了一种新颖的鲁棒卡尔曼滤波器。 目标跟踪仿真验证所提出的强大滤波器的电位,其比现有的尖端滤波器更高的滤波精度,并且可以自适应地估计UTLP。 此外,得出结论,当HMN和ordM同时存在时,HMN对滤波器的精度影响比静验更多。

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