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A Fuzzy Q-learning Based Power Management for Energy Harvest Wireless Sensor Node

机译:基于模糊Q学习的能量收集无线传感器节点功率管理

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In this study, a fuzzy Q-learning is used for the power management of energy harvest wireless sensor node(EHWSN). The proposed method establishes a fuzzy inference system (FIS) for the power management of energy harvest wireless sensor node and employs Q-learning in evaluating and updating the rule base. By interacting with the environment of the energy harvest wireless sensor node, the learning agent of the fuzzy Q-Learning is able to obtain the strategy in updating the fuzzy rule base and exercising the decided sensing duty cycle of the wireless sensor node such that energy neutrality of the EHWSN can be achieved. Experiment results shows that the proposed fuzzy Q-learning based power management can obtain better battery charge status in comparing other existing methods and achieve sustainable operation for EHWSN.
机译:在这项研究中,模糊Q学习用于能量收集无线传感器节点(EHWSN)的电源管理。该方法为能量采集无线传感器节点的功率管理建立了模糊推理系统(FIS),并利用Q学习对规则库进行评估和更新。通过与能量收集无线传感器节点的环境进行交互,模糊Q学习的学习代理能够获得更新模糊规则库并行使确定的无线传感器节点感测占空比的策略,从而实现能量中立可以实现EHWSN。实验结果表明,与其他现有方法相比,基于模糊Q学习的电源管理能够获得更好的电池充电状态,并实现EHWSN的可持续运行。

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