射频供电物联网中最优运行状态调度研究

Songyuan Li, Shibo He, Lingkun Fu, Shuo Chen, Jiming Chen
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引用次数: 4

摘要

近年来,由于现成的无线充电和传感平台的出现,射频功率传输正在成为物联网(IoT)能源补充的可靠解决方案。作为物联网的核心组件,安装在这些平台上的传感器节点由于制造成本低,无法同时工作和收集能量。这导致了一个新的设计挑战,即优化调度传感器节点的操作状态:工作或充电,以实现理想的网络效用。由于时变的网络拓扑结构导致了调度策略的时空耦合,操作状态调度问题是一个非常具有挑战性的问题。我们首先考虑小规模网络的单跳特例。我们利用几何规划将其转化为一个凸优化问题,并得到一个最优解析解。然后研究了大规模多跳网络的一般情况。基于Lyapunov优化技术,设计了一种性能保证良好的状态调度算法(SSA)。我们的算法通过定义一个动态能量阈值向量来解耦原始问题,该算法成功地将每个传感器节点根据其能量级别调度到理想状态。为了验证我们的设计,在Powercast无线充电和传感测试平台上实现了SSA,在相当低的时间复杂度下达到了理论最优值的85%左右。此外,大量的仿真结果表明,该算法在不同的网络设置下均优于基准算法,取得了良好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards Optimal Operation State Scheduling in RF-Powered Internet of Things
RF power transfer is becoming a reliable solution to energy supplement of Internet of Things (IoT) in recent years, thanks to the emerging off-the-shelf wireless charging and sensing platforms. As a core component of IoT, sensor nodes mounted with these platforms can not work and harvest energy simultaneously, due to the low-manufacture-cost requirement. This leads to a new design challenge of optimally scheduling sensor nodes' operation states: working or recharging, to achieve a desirable network utility. We show that the operation state scheduling problem is quite challenging, since the time-varying network topology leads to spatiotemporal coupling of scheduling strategies. We first consider a single-hop special case of small-scale networks. We employ geometric programming to transfer it into a convex optimization problem, and obtain an optimal analytical solution. Then a general case of large-scale multi-hop networks is investigated. Based on Lyapunov optimization technique, we design a State Scheduling Algorithm (SSA) with a proved performance guarantee. Our algorithm decouples the primal problem by defining a dynamic energy threshold vector, which successfully schedules each sensor node to the desirable state according to its energy level. To verify our design, the SSA is implemented on a Powercast wireless charging and sensing testbed, achieving about 85% of the theoretical optimal with quite low time complexity. Furthermore, numerous simulation results demonstrate that the SSA outperforms the baseline algorithms and achieves good performance under different network settings.
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