2023
DOI: 10.1109/jphot.2023.3307418
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Optimizing Simultaneous Lightwave Information and Power Transfer Under Practical Indoor Mobility With Reinforcement Learning

Zi-Yang Wu,
Zhi-Shi Chen,
Peng-Cheng Song

Abstract: This paper investigates reinforcement learning (RL)based solutions for optimizing resource allocations in simultaneous lightwave information and power transfer (SLIPT) under practical indoor mobility. Encountering the challenges of excessive outages and intermittent channels posed by practical mobility, the reinforcer for agent training is endowed with the tradeoff between energy efficiency and communication quality. Accordingly, two typical RL categories, i.e., value-based tabular RL and policy gradient-based… Show more

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