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Distributed weighted averaging-based robust Cubature Kalman Filter for state estimation of nonlinear systems in wireless sensor networks

机译:基于分布加权平均的鲁棒Cubature卡尔曼滤波器用于无线传感器网络中非线性系统的状态估计

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This paper studies the problem of distributed state estimation for nonlinear systems in the presence of uncertainty with the Cubature Kalman Filter (CKF) framework by employing distributed weighted averaging in a wireless sensor network. The communication status among sensors is determined via a connected undirected graph. Firstly, each sensor node uses its own measurements and observations to estimate the states of a system locally and independently. Since the algorithm is implemented in the distributed mode and there is not any fusion center, each sensor node communicates with its neighbors through a distributed weighted averaging algorithm where the optimal weight matrix and the corresponding variance of the optimal information fusion are updated in each implementation step. This proposed algorithm does not need any specific information about the plant uncertainty, since uncertainty estimation is considered in the algorithm. Finally, a numerical example is given and the proposed filtering algorithm is evaluated through simulation of a system for a ballistic target tracking.
机译:本文通过在无线传感器网络中采用分布式加权平均,研究了具有不确定性的非线性系统的分布状态估计问题,该非线性系统具有Cubature卡尔曼滤波器(CKF)框架。传感器之间的通讯状态通过连接的无向图确定。首先,每个传感器节点使用其自己的测量和观察值来本地且独立地估计系统的状态。由于该算法是在分布式模式下实现的,并且没有任何融合中心,因此每个传感器节点都通过分布式加权平均算法与其邻居进行通信,该算法在每个实现步骤中都会更新最优权重矩阵和最优信息融合的相应方差。由于该算法考虑了不确定性估计,因此该拟议算法不需要有关工厂不确定性的任何特定信息。最后,给出了一个数值例子,并通过仿真弹道目标跟踪系统对所提出的滤波算法进行了评估。

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