Cluster-based position tracking of mobile sensors

V. Kumar, N. Bergmann, Izanoordina Ahmad, R. Jurdak, B. Kusy
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引用次数: 10

Abstract

Tracking movement of mobile nodes has received significant scientific and commercial interest, but long term tracking of resource-constrained mobile nodes remains challenging due to the high energy consumption of satellite receivers. Cooperative position tracking has been proposed for energy efficiency, however, all the cooperative schemes use opportunistic cooperation and optimize for either energy or accuracy. Considering the existence of a reasonably stable group of mobile nodes like animals, birds, and mobile assets, we propose a cluster-based cooperative tracking algorithm, where cluster head centrally coordinates resource usage among cluster members. Variants of this strategy include the use of a cooperative Kalman filter with and without inertial sensor inputs to estimate nodes' positions. We use the Boid flocking algorithm to generate group position movements in 3D and perform various experiments to compare the energy and position accuracy tradeoff of our proposed scheme with individual-based tracking and existing cooperative schemes. We perform the experiments for fixed periodic GPS sampling and dynamic GPS sampling triggered by node position error uncertainty tolerance limit. Experiments results show that in periodic sampling scheme cooperative tracking yields more than one-quarter reduction in energy consumption and more than one-third improvement in position accuracy over individual-based tracking, however, results for dynamic sampling scheme are comparable with existing cooperative scheme.
基于聚类的移动传感器位置跟踪
跟踪移动节点的运动已经引起了重大的科学和商业兴趣,但由于卫星接收器的高能耗,对资源受限的移动节点的长期跟踪仍然具有挑战性。为了提高能源效率,提出了合作位置跟踪方案,但所有的合作方案都采用机会主义合作,要么进行能源优化,要么进行精度优化。考虑到存在一组相对稳定的移动节点,如动物、鸟类和移动资产,我们提出了一种基于集群的协作跟踪算法,其中集群头集中协调集群成员之间的资源使用。该策略的变体包括使用有或没有惯性传感器输入的合作卡尔曼滤波器来估计节点的位置。我们使用Boid群集算法在3D中生成群体位置运动,并进行了各种实验,以比较我们提出的方案与基于个体的跟踪和现有的合作方案的能量和位置精度权衡。分别对节点位置误差不确定度容限触发的GPS固定周期采样和动态采样进行了实验研究。实验结果表明,在周期性采样方案下,与基于个体的跟踪相比,合作跟踪的能耗降低了1 / 4以上,位置精度提高了1 / 3以上,而动态采样方案的结果与现有的合作跟踪方案相当。
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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