"Energy Aware Irregular Slotted Aloha Methods for Wireless Powered IoT " by Yiwei Li and Kwan Wu Chin

This paper considers Radio Frequency (RF) energy harvesting devices that use an Irregular Slotted Aloha (IRSA) channel access protocol to transmit their data to a Hybrid Access Point (HAP). Specifically, it addresses the fundamental problem of optimizing the number of packet replicas transmitted by each device in each time frame. Unlike prior works, it considers a learning approach to optimize the number of replicas according to the energy level of devices. This paper first uses a model-based Markov Decision Process (MDP) to study the problem at hand. Then it proposes a model-free, centralized and a distributed Q-learning-based solution that aim to maximize the number of successful transmissions in each time frame. Our simulation results show that our centralized and distributed solutions respectively achieve up to 38% and 29% more successful transmissions than conventional Aloha.

Related Keywords

, Radio Frequency , Irregular Slotted Aloha , Hybrid Access Point , Markov Decision Process , Batteries , Channel Access , Energy States , Nternet Of Things , Rregular Aloha , Markov Processes , Receivers , Reinforcement Learning , Throughput , Wireless Charging , Wireless Communication ,

© 2024 Vimarsana

comparemela.com © 2020. All Rights Reserved.