基于Kullback-Leibler散度的改进粒子滤波

M. Mansouri, H. Nounou, M. Nounou
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引用次数: 3

摘要

本文提出了一种用于非线性状态估计的改进粒子滤波算法。在标准粒子滤波中,由于取重要性函数等于先验密度函数,所以不考虑最近的观测值来评价粒子的权重。这种重要抽样函数的选择简化了计算,但会引起滤波发散。在似然函数与先前函数相比过于狭窄的情况下,很少有粒子具有显著的权重。因此,需要一个考虑到最新观察结果的更好的提案分布。该算法包括一个基于最小化Kullback-Leibler散度距离的粒子滤波,以产生最优的重要建议分布。该算法允许粒子滤波器使用与真实后验更接近的后验分布估计量将最新观测值合并到先验更新方案中。在比较研究中,从这些变量的噪声测量中估计状态变量,并通过计算相对于无噪声数据的估计均方根误差来比较各种估计技术。仿真结果表明,该算法优于标准粒子滤波、无气味卡尔曼滤波和扩展卡尔曼滤波算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Kullback-Leibler divergence -based improved particle filter
In this paper, we develop an improved particle filtering algorithm for nonlinear states estimation. In case of standard particle filter, the latest observation is not considered for the evaluation of the weights of the particles as the importance function is taken to be equal to the prior density function. This choice of importance sampling function simplifies the computation but can cause filtering divergence. In cases where the likelihood function is too narrow as compared to the prior function, very few particles will have significant weights. Hence a better proposal distribution that takes the latest observation into account is desired. The proposed algorithm consists of a particle filter based on minimizing the Kullback-Leibler divergence distance to generate the optimal importance proposal distribution. The proposed algorithm allows the particle filter to incorporate the latest observations into a prior updating scheme using the estimator of the posterior distribution that matches the true posterior more closely. In the comparative study, the state variables are estimated from noisy measurements of these variables, and the various estimation techniques are compared by computing the estimation root mean square error with respect to the noise-free data. The simulation results show that the proposed algorithm, outperforms the standard particle filter, the unscented Kalman filter, and the extended Kalman filter algorithms.
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