Application of the particle filters for identification of the non-Gaussian systems

A. Lebeda
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引用次数: 2

Abstract

This paper focuses on application of a particle filter for online identification of non-Gaussian systems. Firstly, the Bayesian inference was described and then the particle filter was defined. The particle filter numerically solves a problem of a recursive Bayesian state estimator. Secondly, the parameters of the linear system and two types of the non-Gaussian systems were estimated by application of particle filter. The first system was the classical linear system. The second system was the linear system with a noise which had a different probability distribution than the Gaussian distribution and the last system was the system with a nonlinearity. Thirdly, the parameters of the non-Gaussian systems were estimated with the gradient based method Levenberg-Marquardt. Finally, the results from the particle filter were compared with the results from the gradient based method Levenberg-Marquardt.
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粒子滤波在非高斯系统辨识中的应用
重点研究了粒子滤波在非高斯系统在线辨识中的应用。首先对贝叶斯推理进行描述,然后对粒子滤波进行定义。粒子滤波在数值上解决了递归贝叶斯状态估计问题。其次,利用粒子滤波对线性系统和两类非高斯系统的参数进行估计;第一个系统是经典的线性系统。第二个系统是带有噪声的线性系统,其概率分布与高斯分布不同,最后一个系统是带有非线性的系统。第三,采用基于梯度的Levenberg-Marquardt方法对非高斯系统的参数进行估计。最后,将粒子滤波的结果与基于梯度的Levenberg-Marquardt方法的结果进行了比较。
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