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Sliding mode mean-square filtering for linear stochastic systems

机译:线性随机系统的滑模均方滤波

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This paper addresses the mean-square filtering problem for a linear system with Gaussian white noises. The obtained solution contains a sliding mode term, signum of the innovations process. It is shown that the designed sliding mode filter generates the mean-square estimate, which has the same minimum estimation error variance as the best estimate given by the classical Kalman-Bucy filter, although the gain matrices of both filters are different. The theoretical result is complemented with an illustrative example verifying performance of the designed filter. It is demonstrated that the estimates produced by the designed filter and the Kalman-Bucy filter yield the same estimation error variance.
机译:本文讨论了具有高斯白噪声的线性系统的均方滤波问题。获得的解决方案包含滑模项,即创新过程的标志。结果表明,尽管两个滤波器的增益矩阵不同,但设计的滑模滤波器会产生均方估计值,该均方根估计值的最小方差与经典卡尔曼-布西滤波器给出的最佳估计值相同。理论结果与验证设计滤波器性能的说明性示例相辅相成。结果表明,由设计滤波器和卡尔曼-布西滤波器产生的估计值产生相同的估计误差方差。

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