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首页> 外文期刊>Vehicular Technology, IEEE Transactions on >Distributed Variational Filtering for Simultaneous Sensor Localization and Target Tracking in Wireless Sensor Networks
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Distributed Variational Filtering for Simultaneous Sensor Localization and Target Tracking in Wireless Sensor Networks

机译:无线传感器网络中的传感器同时定位和目标跟踪的分布式变分滤波

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摘要

The tracking of a moving target in a wireless sensor network (WSN) requires exact knowledge of sensor positions. However, precise information about sensor locations is not always available. Given the observation that a series of measurements are generated in the sensors when the target moves through the network field, we propose an algorithm that exploits these measurements to simultaneously localize the detecting sensors and track the target (SLAT). The main difficulties that are encountered in this problem are the ambiguity of sensor locations, the unrestricted target moving manner, and the extremely constrained resources in WSNs. Therefore, a general state evolution model is employed to describe the dynamical system with neither prior knowledge of the target moving manner nor precise location information of the sensors. The joint posterior distribution of the parameters of interest is updated online by incorporating the incomplete and inaccurate measurements between the target and each of the sensors into a Bayesian filtering framework. A variational approach is adopted in the framework to approximate the filtering distribution, thus minimizing the intercluster communication and the error propagation. By executing the algorithm on a fully distributed cluster scheme, energy and bandwidth consumption in the network are dramatically reduced, compared with a centralized approach. Experiments on an SLAT problem validate the effectiveness of the proposed algorithm in terms of tracking accuracy, localization precision, energy consumption, and execution time.
机译:在无线传感器网络(WSN)中跟踪移动目标需要准确了解传感器位置。但是,有关传感器位置的精确信息并不总是可用。鉴于观察到当目标移动通过网络场时传感器中会生成一系列测量值,我们提出了一种算法,该算法利用这些测量值来同时定位检测传感器并跟踪目标(SLAT)。在此问题中遇到的主要困难是传感器位置不明确,目标移动方式不受限制以及WSN中资源极为受限。因此,采用一般状态演化模型来描述动力学系统,既没有目标移动方式的先验知识,也没有传感器的精确位置信息。通过将目标与每个传感器之间的不完整和不准确的测量值合并到贝叶斯滤波框架中,可以在线更新目标参数的联合后验分布。在框架中采用了一种变分方法来近似过滤分布,从而最大程度地减少了集群间通信和错误传播。与集中式方法相比,通过在完全分布式的群集方案上执行该算法,可以大大减少网络中的能源和带宽消耗。 SLAT问题的实验从跟踪精度,定位精度,能耗和执行时间方面验证了所提算法的有效性。

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