基于非高斯测度的非线性滤波器结构自适应

O. Straka, J. Duník, M. Simandl
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引用次数: 8

摘要

研究随机非线性动力系统的状态估计问题。提出了一种非线性滤波器的结构自适应方法,以减小由滤波器近似产生的误差。自适应由非高斯测量控制,该测量评估滤波器的当前工作条件。较大的非高斯测度表明可能存在较大的近似误差,并导致状态条件概率密度函数的分裂。为了限制由项数给出的过滤器的计算复杂度,可以通过合并一些项来减少这个数。利用扩展的卡尔曼滤波关系,详细介绍了该滤波器的结构自适应算法。通过数值算例说明了该滤波器的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Structure adaptation of nonlinear filters based on non-Gaussianity measures
The paper deals with state estimation of stochastic nonlinear dynamical systems. A structure adaptation of nonlinear filters is proposed to reduce errors stemming from approximations made by the filters. The adaptation is controlled by non-Gaussian measures which assess current working conditions of the filter. A large non-Gaussian measure indicates a possible large approximation error and results in splitting the state conditional probability density function. To limit computational complexity of the filter given by the number of terms, a reduction of this number is done by merging some terms. The algorithm of the proposed filter with structure adaptation is detailed using the extended Kalman filter relations. Performance of the filter is illustrated in a numerical example.
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