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Decentralized Target Tracking Based on a Weighted Extended Kalman Filter for Wireless Sensor Networks

机译:基于加权扩展卡尔曼滤波器的远程目标跟踪用于无线传感器网络

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This paper presents a weighted extended Kalman filter (WEKF) for target tracking in wireless sensor networks, where the location estimation is formulated as a weighted least squares (WLS) problem by taking weights of the local estimates based on the reliability of distance estimation and the WLS problem is solved in an iterative, decentralized manner based on the WEKF. We adopt a message passing (MP) algorithm for inter-sensor-node communication and for adaptively selecting the participating sensor nodes as the target moves around the area. During each iteration, a participating sensor node computes a target's location estimate and passes it on to the next participating sensor node for processing to generate a new location estimate. The update process is circulated among the participating sensor nodes in the close vicinity of the target. To show the convergence behavior of the WEKF-based method, a convergence analysis is given. Computer simulation results demonstrate that the proposed scheme has better location accuracy and tracking performance than previous related methods.
机译:本文介绍了用于无线传感器网络中的目标跟踪的加权扩展卡尔曼滤波器(WEKF),其中位置估计通过基于距离估计的可靠性而采用本地估计的权重配制为加权最小二乘(WLS)问题。基于Wekf的迭代分散方式解决了WLS问题。我们采用了一种消息传递(MP)算法,用于传感器间节点通信,并且在目标移动到该区域周围时,用于自适应地选择参与传感器节点。在每次迭代期间,参与传感器节点计算目标的位置估计,并将其传递到下一个参与传感器节点以进行处理以生成新的位置估计。更新过程在目标附近的参与传感器节点之间循环。为了显示基于Wekf的方法的收敛行为,给出了收敛分析。计算机仿真结果表明,该方案具有比以前的相关方法更好的定位准确性和跟踪性能。

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