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Resource Optimization Algorithm for Sparse Time-Driven Sensor Networks

机译:稀疏时间驱动传感器网络的资源优化算法

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Time-driven sensor networks are devoted to the continuous reporting of data to the user. Typically, their topology is that of a data-gathering tree rooted at the sink, whose vertexes correspond to nodes located at sampling locations that have been selected according to user or application requirements. Thus, generally these locations are not close to each other and the resulting node deployment is rather sparse. In a previous paper, we developed a heuristic algorithm based on simulated annealing capable of finding an optimal or subop-timal data-gathering tree in terms of lifetime expectancy. However, despite the enhanced lifetime, the overall link distance is not optimized, fact that increases the need for additional resources (relay nodes). Therefore, in this paper we propose the Link Distance Reduction algorithm, with the goal of reducing link distances as long as network lifetime is preserved. The benefits of this new algorithm are evaluated in detail.
机译:时间驱动的传感器网络致力于向用户连续报告数据。通常,它们的拓扑是根植于接收器上的数据收集树的拓扑,其顶点对应于位于根据用户或应用程序要求选择的采样位置的节点。因此,通常这些位置不是彼此靠近,并且结果的节点部署相当稀疏。在先前的论文中,我们开发了一种基于模拟退火的启发式算法,能够根据预期寿命找到最佳或次理想的数据收集树。但是,尽管使用寿命延长了,但总链路距离并未得到优化,这增加了对其他资源(中继节点)的需求。因此,在本文中,我们提出了链路距离减少算法,其目的是在保持网络寿命的前提下减少链路距离。详细评估了这种新算法的优势。

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