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Desensitized Filtering for Systems with Uncertain Parameters and Noise Correlation

机译:具有不确定参数和噪声相关性的系统的脱敏滤波

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This paper introduces estimation algorithms for systems with uncertain parameters and correlated noises. The algorithms are derived using the standard Kalman filter for correlated noises and the desensitized filtering technique for systems with uncertain parameters. A general algorithm and its special case are proposed. The latter updates statistics with explicit expressions, which makes it simpler and faster. The extended forms of the algorithms, which can be used for nonlinear systems, are also introduced. The developed algorithm is tested on an example, where the importance of the noise correlation information is shown.
机译:本文介绍了具有不确定参数和相关噪声的系统的估计算法。该算法是使用标准卡尔曼滤波器(用于相关噪声)和脱敏滤波技术(用于不确定参数的系统)得出的。提出了一种通用算法及其特殊情况。后者使用显式表达式更新统计信息,从而使其更简单,更快捷。还介绍了可用于非线性系统的算法的扩展形式。在示例中测试了开发的算法,其中显示了噪声相关信息的重要性。

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