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Sequential Inverse Covariance Intersection Fusion Kalman Filter for Networked Systems with Multiplicative Noises

机译:网络系统中乘性噪声的顺序逆协方差相交融合卡尔曼滤波器

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This paper mainly studies the fusion estimation problem of the networked multi-sensor systems with multiplicative noises. Firstly, the state space model is transformed into a new system with fictitious noises to obtain the local Kalman filter. Secondly, applying the Sequential Inverse Covariance Intersection (SICI) fusion algorithm, the SICI fusion estimator is presented, which avoids the computational burden of the cross-covariance among local estimators. Compared with the Sequential Covariance Intersection (SCI) fusion algorithm, the SICI fusion algorithm has lower conservativeness, and is proved that its estimation accuracy is higher than those of the local filters and SCI fusion estimator. A simulation example shows the effectiveness and consistency of the presented fusion estimators.
机译:本文主要研究具有乘性噪声的网络化多传感器系统的融合估计问题。首先,将状态空间模型转化为具有虚拟噪声的新系统,以获得局部卡尔曼滤波器。其次,采用顺序逆协方差相交(SICI)融合算法,提出了SICI融合估计器,避免了局部估计器之间的交叉协方差的计算负担。与顺序协方差相交(SCI)融合算法相比,SICI融合算法具有较低的保守性,并且证明了其估计精度高于局部滤波器和SCI融合估计器。一个仿真例子说明了所提出的融合估计量的有效性和一致性。

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