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Optimal Kalman filtering fusion with cross-correlated sensor noises

机译:具有互相关传感器噪声的最优卡尔曼滤波融合

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摘要

When there is no feedback from the fusion center to local sensors, we present a distributed Kalman filtering fusion formula for linear dynamic systems with sensor noises cross-correlated, and prove that under a mild condition the fused state estimate is equivalent to the centralized Kalman filtering using all sensor measurements, therefore, it achieves the best performance. Then, for the same dynamic system, when there is feedback, a modified Kalman filtering fusion with feedback for distributed recursive state estimators is proposed, and prove that the fusion formula with feedback is, as the fusion without feedback, still exactly equivalent to the corresponding centralized Kalman filtering fusion formula; the various P matrices in the feedback Kalman filtering at both local filters and the fusion center are still the covariance matrices of tracking errors; the feedback does reduce the covariance of each local tracking error.
机译:当从融合中心到本地传感器没有反馈时,我们针对传感器噪声互相关的线性动态系统,提出了一种分布式卡尔曼滤波融合公式,并证明在轻度条件下,融合状态估计等效于集中式卡尔曼滤波因此,通过使用所有传感器测量,它可获得最佳性能。然后,对于同一个动态系统,当有反馈时,提出了一种改进的带反馈的卡尔曼滤波融合方法,用于分布式递归状态估计器,并证明了有反馈的融合公式与无反馈的融合仍然完全等效。集中式卡尔曼滤波融合公式;局部滤波器和融合中心的反馈卡尔曼滤波中的各种P矩阵仍然是跟踪误差的协方差矩阵。反馈确实减少了每个局部跟踪误差的协方差。

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