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This letter considers optimizing information freshness in a network with Radio Frequency (RF)-energy harvesting wireless devices. A Hybrid Access Point (HAP) charges these devices and instructs a subset of devices to carry out sampling and transmit their sample. We outline a Distributed Q-Learning (DQL) algorithm that allows the HAP to select devices without knowing their uplink channel state and battery state. Our results show that DQL achieves at most 48%, 57%, and 61% lower average AoI than Round Robin (RR), Random Pick (RP), and AoI-Greedy (AG), respectively. The average AoI of DQL is only around 7% higher than the optimal selection strategy.

Related Keywords

,Radio Frequency ,Hybrid Access Point ,Distributedq Learning ,Round Robin ,Random Pick ,Batteries ,Device Selection ,Nformation Freshness ,Learning ,Logic Gates ,Markov Processes ,Chedules ,Signal To Noise Ratio ,Eplink ,Wireless Power ,

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