Enayet Asma, Razzaque Md Abdur, Hassan Mohammad Mehedi, Almogren Ahmad, Alamri Atif
Green Networking Research (GNR) Group, Deptartment of Computer Science and Engineering, Facutly of Engineering and Technology, University of Dhaka, Dhaka 1000, Bangladesh.
College of Computer and Information Sciences, Chair of Pervasive and Mobile Computing, King Saud University, Riyadh 11543, Saudi Arabia.
Sensors (Basel). 2014 Dec 18;14(12):24381-407. doi: 10.3390/s141224381.
The problem of moving target tracking in directional sensor networks (DSNs) introduces new research challenges, including optimal selection of sensing and communication sectors of the directional sensor nodes, determination of the precise location of the target and an energy-efficient data collection mechanism. Existing solutions allow individual sensor nodes to detect the target's location through collaboration among neighboring nodes, where most of the sensors are activated and communicate with the sink. Therefore, they incur much overhead, loss of energy and reduced target tracking accuracy. In this paper, we have proposed a clustering algorithm, where distributed cluster heads coordinate their member nodes in optimizing the active sensing and communication directions of the nodes, precisely determining the target location by aggregating reported sensing data from multiple nodes and transferring the resultant location information to the sink. Thus, the proposed target tracking mechanism minimizes the sensing redundancy and maximizes the number of sleeping nodes in the network. We have also investigated the dynamic approach of activating sleeping nodes on-demand so that the moving target tracking accuracy can be enhanced while maximizing the network lifetime. We have carried out our extensive simulations in ns-3, and the results show that the proposed mechanism achieves higher performance compared to the state-of-the-art works.
定向传感器网络(DSN)中的移动目标跟踪问题带来了新的研究挑战,包括定向传感器节点传感和通信扇区的优化选择、目标精确位置的确定以及节能数据收集机制。现有解决方案允许单个传感器节点通过相邻节点之间的协作来检测目标位置,其中大多数传感器被激活并与汇聚节点通信。因此,它们会产生大量开销、能量损耗并降低目标跟踪精度。在本文中,我们提出了一种聚类算法,其中分布式簇头协调其成员节点,以优化节点的主动传感和通信方向,通过聚合来自多个节点报告的传感数据精确确定目标位置,并将所得位置信息传输到汇聚节点。因此,所提出的目标跟踪机制将传感冗余降至最低,并使网络中休眠节点的数量最大化。我们还研究了按需激活休眠节点的动态方法,以便在最大化网络寿命的同时提高移动目标跟踪精度。我们在ns-3中进行了广泛的模拟,结果表明,与现有技术相比,所提出的机制具有更高的性能。