使用深度强化学习的能量收集物联网网络中的移动能量发射器调度

Aditya Singh, Rahul Rustagi, Surender Redhu, R. Hegde
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引用次数: 0

摘要

在低功耗物联网(IoT)节点中保持足够的能量对于智能家居、自主工业等多种应用的发展至关重要。这些物联网节点利用自适应占空比技术来有效利用能源。然而,物联网节点的这种自适应占空比导致其异步运行,从而导致网络中的能量空洞。这些能量漏洞导致物联网网络的信息丢失和服务质量下降。在这方面,使用移动能量发射器(MET)进行能量收集可以提高物联网网络的使用寿命。在这项工作中,我们引入了一个名为充电年龄(AoC)的度量来量化功率不足的物联网节点的重复充电。提出了MET的节能调度,以最小化预期平均AoC,使物联网节点收获的能量最大化。在这方面,优化问题首先被改造成一个马尔可夫决策过程。随后,提出了一种基于双延迟深度确定性策略梯度方案的深度强化学习算法,用于异步物联网网络中MET的节能调度。仿真结果表明,该算法优于传统的Deep Q-networks和软actor-critic算法。这些结果激发了在自我维持的物联网网络中使用met辅助能量收集。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mobile Energy Transmitter Scheduling in Energy Harvesting IoT Networks using Deep Reinforcement Learning
Maintaining adequate energy in low-powered Internet of Things (IoT) nodes is crucial for the development of several applications like smart homes, autonomous industries, etc. These IoT nodes exploit adaptive duty cycling techniques for the efficient utilization of energy resources. However, such adaptive duty cycling of IoT nodes results in their asynchronous operations thereby inducing energy holes in the network. These energy holes lead to information loss and poor quality of services of IoT networks. In this regard, energy harvesting using Mobile Energy Transmitters (MET) can improve the lifetime of an IoT network. In this work, we are introducing a metric named Age of Charging (AoC) metric to quantify the repetitive charging of power deficit IoT nodes. Energy-efficient scheduling of MET is proposed to minimize the expected average AoC such that the energy harvested by IoT nodes is maximized. In this regard, the optimization problem is first remodeled into a Markov decision process. Subsequently, a deep reinforcement learning algorithm is developed based upon the twin delayed deep deterministic policy gradient scheme for energy-efficient scheduling of MET in asynchronous IoT networks. The simulation results indicate that the proposed algorithm outperforms the conventional Deep Q-networks and soft-actor-critic algorithms. These results motivate the usage of MET-aided energy harvesting in self-sustaining IoT networks.
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