Distributed Optimal Lexicographic Max-Min Rate Allocation in Solar-Powered Wireless Sensor Networks

Shusen Yang, J. Mccann
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引用次数: 25

Abstract

Understanding the optimal usage of fluctuating renewable energy in wireless sensor networks (WSNs) is complex. Lexicographic max-min (LM) rate allocation is a good solution but is nontrivial for multihop WSNs, as both fairness and sensing rates have to be optimized through the exploration of all possible forwarding routes in the network. All current optimal approaches to this problem are centralized and offline, suffering from low scalability and large computational complexity—typically solving O(N2) linear programming problems for N-node WSNs. This article presents the first optimal distributed solution to this problem with much lower complexity. We apply it to solar-powered wireless sensor networks (SP-WSNs) to achieve both LM optimality and sustainable operation. Based on realistic models of both time-varying solar power and photovoltaic-battery hardware, we propose an optimization framework that integrates a local power management algorithm with a global distributed LM rate allocation scheme. The optimality, convergence, and efficiency of our approaches are formally proven. We also evaluate our algorithms via experiments on both solar-powered MICAz motes and extensive simulations using real solar energy data and practical power parameter settings. The results verify our theoretical analysis and demonstrate how our approach outperforms both the state-of-the-art centralized optimal and distributed heuristic solutions.
太阳能无线传感器网络的分布式最优字典最大最小速率分配
了解波动可再生能源在无线传感器网络(WSNs)中的最佳利用是复杂的。字典式最大最小(LM)速率分配是一种很好的解决方案,但对于多跳wsn来说并不简单,因为公平性和感知速率都必须通过探索网络中所有可能的转发路由来优化。目前解决该问题的所有最优方法都是集中式和离线的,具有低可扩展性和巨大的计算复杂度,通常解决n节点wsn的O(N2)线性规划问题。本文提出了该问题的第一个最优分布式解决方案,其复杂性要低得多。我们将其应用于太阳能无线传感器网络(SP-WSNs),以实现LM最优性和可持续运行。基于时变太阳能发电和光伏电池硬件的现实模型,我们提出了一个将局部电源管理算法与全局分布式LM费率分配方案相结合的优化框架。我们的方法的最优性、收敛性和效率得到了正式证明。我们还通过太阳能驱动的MICAz motes实验和使用真实太阳能数据和实际功率参数设置的广泛模拟来评估我们的算法。结果验证了我们的理论分析,并展示了我们的方法如何优于最先进的集中式优化和分布式启发式解决方案。
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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