“Multi-moment” nonlinear filtering of chaos

V. Kontorovich, Z. Lovtchikova
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引用次数: 1

Abstract

It was shown in earlier works of the authors that approximate nonlinear filtering algorithms for chaos demonstrate very good filtering accuracy in low SNR scenarios. This paper is the sequel of the research related to statistical properties of chaotic signals and approximate nonlinear filtering algorithms of chaos. In this paper a novel filtering approach is presented; the proposed approach is called as “multi-moment” for the following improvement of the filtering accuracy for low SNR. The general way for synthesis of the optimum and quasi-optimum filtering algorithms based on the criteria of maximum a-posteriori probability is presented, and in the following it is called as modified Stratonovich-Kushner equations (SKE) for a-posteriori Probability Density Function (PDF) and a-posteriori characteristic function. Equations for a-posteriori cumulants are presented hereafter as well and based on those equations was developed the modified EKF algorithm, based on two — moment statistics. The later demonstrates rather opportunistic characteristics for filtering accuracy practically with the same algorithm complexity as the classic EKF
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混沌的“多矩”非线性滤波
作者早期的研究表明,混沌近似非线性滤波算法在低信噪比情况下具有很好的滤波精度。本文是混沌信号统计性质和混沌近似非线性滤波算法研究的延续。本文提出了一种新的滤波方法;为了进一步提高低信噪比下的滤波精度,本文提出的方法被称为“多矩”方法。给出了基于最大后验概率准则综合最优滤波算法和准最优滤波算法的一般方法,下文将其称为后验概率密度函数(PDF)和后验特征函数的修正Stratonovich-Kushner方程(SKE)。在此基础上,提出了基于二阶矩统计的改进EKF算法。后者在与经典EKF相同的算法复杂度下显示出相当机会的过滤精度特征
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