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Distributed optimization in energy harvesting sensor networks with dynamic in-network data processing

机译:动态网络内数据处理的能量收集传感器网络中的分布式优化

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Energy Harvesting Wireless Sensor Networks (EH-WSNs) have been attracting increasing interest in recent years. Most current EH-WSN approaches focus on sensing and networking algorithm design, and therefore only consider the energy consumed by sensors and wireless transceivers for sensing and data transmissions respectively. In this paper, we incorporate CPU-intensive edge operations that constitute in-network data processing (e.g. data aggregation/fusion/compression) with sensing and networking; to jointly optimize their performance, while ensuring sustainable network operation (i.e. no sensor node runs out of energy). Based on realistic energy and network models, we formulate a stochastic optimization problem, and propose a lightweight on-line algorithm, namely Recycling Wasted Energy (RWE), to solve it. Through rigorous theoretical analysis, we prove that RWE achieves asymptotical optimality, bounded data queue size, and sustainable network operation. We implement RWE on a popular IoT operating system, Contiki OS, and evaluate its performance using both real-world experiments based on the FIT IoT-LAB testbed, and extensive trace-driven simulations using Cooja. The evaluation results verify our theoretical analysis, and demonstrate that RWE can recycle more than 90% wasted energy caused by battery overflow, and achieve around 300% network utility gain in practical EH-WSNs.
机译:近年来,能量收集无线传感器网络(EH-WSN)引起了越来越多的兴趣。当前大多数EH-WSN方法都专注于传感和网络算法设计,因此仅考虑传感器和无线收发器分别用于传感和数据传输的能耗。在本文中,我们结合了CPU密集型边缘操作,这些操作通过感测和联网构成网络内数据处理(例如数据聚合/融合/压缩);共同优化其性能,同时确保可持续的网络运行(即没有传感器节点的能量耗尽)。基于现实的能源和网络模型,我们提出了一个随机优化问题,并提出了一种轻量级的在线算法,即回收废能源(RWE)来解决。通过严格的理论分析,我们证明RWE实现了渐近最优性,有限的数据队列大小和可持续的网络运行。我们在流行的IoT操作系统Contiki OS上实施RWE,并使用基于FIT IoT-LAB测试平台的实际实验以及使用Cooja进行的广泛跟踪驱动的仿真来评估RWE的性能。评估结果验证了我们的理论分析,并证明RWE可以回收超过90%的由电池溢出引起的能源浪费,并在实际的EH-WSN中实现约300%的网络实用收益。

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