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Subspace system identification of the Kalman filter gain

机译:卡尔曼滤波器增益的子空间系统识别

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Some proofs concerning a subspace identification algorithm are presented. It is proved that the Kalman filter gain and the noise innovations process can be identified directly from known input and output data without explicitly solving the Riccati equation. Furthermore, it is in general and for colored inputs, proved that the subspace identification of the states only is possible if the deterministic part of the system is known or identified beforehand. However, if the inputs are white, then, it is proved that the states can be identified directly. Some alternative projection matrices which can be used to compute the extended observability matrix directly from the data are presented. Furthermore, an efficient method for computing the deterministic part of the system is presented.
机译:提出了有关子空间识别算法的一些证明。事实证明,无需明确求解Riccati方程,就可以直接从已知的输入和输出数据中识别出Kalman滤波器增益和噪声创新过程。此外,一般而言,对于有色输入,证明只有在系统的确定部分是已知或事先确定的情况下,状态的子空间标识才是可能的。但是,如果输入为白色,则证明可以直接识别状态。提出了一些可用于直接从数据中计算扩展的可观察性矩阵的替代投影矩阵。此外,提出了一种用于计算系统确定性部分的有效方法。

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