Q-Gaussian Density Model and Its Application to State Estimation of Nonlinear Systems

Xifeng Li, Yongle Xie
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Abstract

Abstract Probability density function (PDF) plays a vital role in system analysis involving stochastic factors. A good estimate of true PDF conditioned under certain performance criterion could help acquire more information of the system. With help of the new information, many features of the system that we are concerning can be revealed effectively, especially for nonlinear non-Gaussian stochastic systems. In this paper, based on the Tsallis entropy, we derive a class of PDFs with explicit form called q-Gaussian PDFs. These PDFs have a parameter that indicates the fractal feature of the system. Based on the explicit form of q-Gaussian PDFs, we propose an extension of Gaussian particle filter (GPF) called q-Gaussian particle filter (q-GPF). The experimental results show that the q-GPF is a more effective method to estimate the state of nonlinear stochastic system compared with the GPF.
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q -高斯密度模型及其在非线性系统状态估计中的应用
摘要概率密度函数在涉及随机因素的系统分析中起着至关重要的作用。在一定的性能条件下对真PDF进行良好的估计,有助于获取系统的更多信息。利用这些新的信息,可以有效地揭示我们所关注的系统的许多特征,特别是对于非线性非高斯随机系统。本文基于Tsallis熵,导出了一类显式形式的pdf,称为q-高斯pdf。这些pdf文件有一个参数,表示系统的分形特征。基于q-高斯pdf的显式形式,我们提出了高斯粒子滤波器(GPF)的一种扩展,称为q-高斯粒子滤波器(q-GPF)。实验结果表明,与GPF相比,q-GPF是一种更有效的非线性随机系统状态估计方法。
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