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首页> 外文期刊>IEEE Transactions on Signal Processing >Distributed Finite-Horizon Fusion Kalman Filtering for Bandwidth and Energy Constrained Wireless Sensor Networks
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Distributed Finite-Horizon Fusion Kalman Filtering for Bandwidth and Energy Constrained Wireless Sensor Networks

机译:用于带宽和能量受限的无线传感器网络的分布式有限水平融合卡尔曼滤波

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摘要

This paper is concerned with the distributed finite-horizon fusion Kalman filtering problem for a class of networked multi-sensor fusion systems (NMFSs) in a bandwidth and energy constrained wireless sensor network. To satisfy the finite communication bandwidth, only partial components of each local vector estimate are allowed to be transmitted to the fusion center (FC) at a particular time, while each sensor intermittently sends information to the FC for reducing energy consumptions. At the FC end, a novel compensation strategy is proposed to compensate the untransmitted components of each local estimates, then a recursively distributed fusion Kalman filter (DFKF) is derived in the linear minimum variance sense. Notice that the designed DFKF update does not need to know the transmitting situation of each component at a particular time, which means that the proposed fusion estimation algorithm is easily implemented for the addressed NMFSs. Since the performance of the designed DFKF is dependent on the selecting probability of each component, some criteria for the choice of probabilities are derived such that the mean squared errors (MSEs) of the designed DFKF are bounded or convergent. Finally, an illustrative example is given to demonstrate the effectiveness of the proposed method.
机译:本文关注带宽和能量受限的无线传感器网络中一类网络化多传感器融合系统(NMFS)的分布式有限水平融合卡尔曼滤波问题。为了满足有限的通信带宽,每个局部矢量估计的部分分量只允许在特定时间传输到融合中心(FC),而每个传感器会间歇地向FC发送信息以减少能耗。在FC端,提出了一种新颖的补偿策略来补偿每个局部估计的未传输分量,然后从线性最小方差意义上推导递归分布融合卡尔曼滤波器(DFKF)。请注意,设计的DFKF更新不需要知道特定时间每个组件的传输情况,这意味着针对所寻址的NMFS可以轻松实现所提出的融合估计算法。由于设计的DFKF的性能取决于每个组件的选择概率,因此得出了一些概率选择标准,以使设计的DFKF的均方误差(MSE)有界或收敛。最后,给出一个说明性的例子来证明所提出方法的有效性。

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