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首页> 外文期刊>International journal of general systems >Discrete-time state estimation for stochastic polynomial systems over polynomial observations
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Discrete-time state estimation for stochastic polynomial systems over polynomial observations

机译:基于多项式观测的随机多项式系统的离散状态估计

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摘要

This paper presents a solution to the mean-square state estimation problem for stochastic nonlinear polynomial systems over polynomial observations confused with additive white Gaussian noises. The solution is given in two steps: (a) computing the time-update equations and (b) computing the measurement-update equations for the state estimate and error covariance matrix. A closed form of this filter is obtained by expressing conditional expectations of polynomial terms as functions of the state estimate and error covariance. As a particular case, the mean-square filtering equations are derived for a third-degree polynomial system with second-degree polynomial measurements. Numerical simulations show effectiveness of the proposed filter compared to the extended Kalman filter.
机译:本文针对与加性白高斯噪声相混淆的多项式观测,提出了一种随机非线性多项式系统的均方状态估计问题的解决方案。解决方案分两步给出:(a)计算时间更新方程,(b)计算状态估计和误差协方差矩阵的测量更新方程。通过将多项式项的条件期望表示为状态估计和误差协方差的函数,可以获得该滤波器的封闭形式。在特定情况下,对于具有二次多项式测量的三次多项式系统,推导了均方滤波方程。数值模拟表明,与扩展的卡尔曼滤波器相比,该滤波器的有效性。

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