M2M-Routing: Environmental Adaptive Multi-agent Reinforcement Learning based Multi-hop Routing Policy for Self-Powered IoT Systems

2022 Design, Automation & Test in Europe Conference & Exhibition (DATE)(2022)

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摘要
Energy harvesting (EH) technologies facilitate the trending proliferation of IoT devices with sustainable power supplies. However, the intrinsic weak and unstable nature of EH results in frequent and unpredictable power interruptions in EH IoT devices, which further causes unpleasant packet loss or reconnection failures in IoT network. Therefore, conventional routing and energy allocation methods are inefficient in the EH environments. The complexity of the EH environment caused a stumbling block to an intelligent routing policy and energy allocation. To address the problems, this work proposes an environment adaptive Deep Reinforcement Learning (DRL)-based multi-hop routing policy, M2M-Routing, to jointly optimize energy allocation and routing policy and mitigate these challenges through leveraging the offline computation resources. We prepare multi-models for the complex energy harvesting environment offline. By searching a historically similar power trace to identify the model ID, the prepared DRL model is selected to manage energy allocation and routing policy on the query power traces. Simulation results indicate that M2M-Routing improves the amount of data delivery by ~ 3 × to ~ 4 × compared with baselines.
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关键词
self-powered IoT systems,energy harvesting technologies,sustainable power supplies,intrinsic weak nature,unstable nature,EH results,frequent power interruptions,unpredictable power interruptions,EH IoT devices,unpleasant packet loss,reconnection failures,IoT network,conventional routing,energy allocation,EH environment,intelligent routing policy,complex energy harvesting environment offline,historically similar power trace,query power traces,environmental adaptive multiagent reinforcement learning,M2M-routing,multihop routing policy,energy allocation methods,adaptive deep reinforcement learning
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