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Reinforcement Learning (RL)-Based Energy Efficient Resource Allocation for Energy Harvesting-Powered Wireless Body Area Network

机译:基于强化学习(RL)的能量有效资源分配用于能量收集供电的无线人体局域网

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摘要

Wireless body area networks (WBANs) have attracted great attention from both industry and academia as a promising technology for continuous monitoring of physiological signals of the human body. As the sensors in WBANs are typically battery-driven and inconvenient to recharge, an energy efficient resource allocation scheme is essential to prolong the lifetime of the networks, while guaranteeing the rigid requirements of quality of service (QoS) of the WBANs in nature. As a possible alternative solution to address the energy efficiency problem, energy harvesting (EH) technology with the capability of harvesting energy from ambient sources can potentially reduce the dependence on the battery supply. Consequently, in this paper, we investigate the resource allocation problem for EH-powered WBANs (EH-WBANs). Our goal is to maximize the energy efficiency of the EH-WBANs with the joint consideration of transmission mode, relay selection, allocated time slot, transmission power, and the energy constraint of each sensor. In view of the characteristic of the EH-WBANs, we formulate the energy efficiency problem as a discrete-time and finite-state Markov decision process (DFMDP), in which allocation strategy decisions are made by a hub that does not have complete and global network information. Owing to the complexity of the problem, we propose a modified Q-learning (QL) algorithm to obtain the optimal allocation strategy. The numerical results validate the effectiveness of the proposed scheme as well as the low computation complexity of the proposed modified Q-learning (QL) algorithm.
机译:无线体域网(WBAN)作为一种连续监测人体生理信号的有前途的技术已经引起了业界和学术界的极大关注。由于WBAN中的传感器通常是电池驱动的,并且不方便充电,因此,高效节能的资源分配方案对于延长网络的寿命至关重要,同时又可以保证WBAN本质上对服务质量(QoS)的严格要求。作为解决能源效率问题的一种可能的替代解决方案,具有从周围环境中收集能量的能量收集(EH)技术可以潜在地减少对电池供电的依赖性。因此,在本文中,我们研究了基于EH的WBAN(EH-WBAN)的资源分配问题。我们的目标是在综合考虑传输模式,中继选择,分配的时隙,传输功率和每个传感器的能量约束的前提下,最大化EH-WBAN的能效。鉴于EH-WBAN的特点,我们将能效问题表述为离散时间和有限状态马尔可夫决策过程(DFMDP),其中分配策略决策是由不具有完整和全局性的枢纽来进行的。网络信息。由于问题的复杂性,我们提出了一种改进的Q学习(QL)算法,以获得最优分配策略。数值结果验证了所提方案的有效性以及所提改进的Q学习算法的低计算复杂度。

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