Cluster-based location report for person tracking in wireless sensor networks

Yongkai Huo, Liusheng Huang, Hongli Xu, Ben-chong Xu
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Abstract

In traditional tracking systems, the mobiles report their locations periodically. With the number of the mobiles increasing, these methods result in high loss rate of packets and rapid depletion of the network energy. In practice, we observe that some mobiles are so close to each other that we are informed the same location from the localization algorithm. Thus it is necessary and possible to reduce message complexity through merging the location messages. By exploiting the Received Signal Strength (RSS), this paper proposes a human-Behavior based Mobile Clustering Mechanism (BMC) for Rf-based Person Tracking Systems. It constructs clusters according to the distance between mobiles and maintains clusters efficiently. In BMC, only the cluster-heads report locations periodically instead of each node, thereby decreasing the message complexity greatly. Signal interference will wobble the clusters in practical environment, so it degrades the performance of BMC dramatically. To address the issue, Signal Smoothness is developed. The simulation shows that BMC based location report outperforms traditional methods by 64% of message reduction on average in impartial testing scenes.
无线传感器网络中基于聚类的位置报告
在传统的跟踪系统中,手机定期报告它们的位置。随着移动设备数量的增加,这些方法会导致数据包的高丢包率和网络能量的快速消耗。在实践中,我们观察到一些手机彼此非常接近,以至于我们从定位算法中获得了相同的位置。因此,通过合并位置消息来降低消息复杂性是必要的,也是可能的。利用接收信号强度(RSS),提出了一种基于人行为的移动聚类机制(BMC)。该算法根据移动设备之间的距离构造聚类,并有效地维护聚类。在BMC中,只有集群头周期性地报告位置,而不是每个节点,从而大大降低了消息的复杂性。在实际环境中,信号干扰会使集群产生抖动,从而严重降低BMC的性能。为了解决这个问题,开发了信号平滑。仿真结果表明,在公正的测试场景下,基于BMC的位置报告比传统方法平均减少64%的消息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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