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Attention-Shared Multi-Agent Actor-Critic-Based Deep Reinforcement Learning Approach for Mobile Charging Dynamic

Chengpeng Jiang1,2, Ziyang Wang3, Shuai Chen1,2

  • 1School of Automation and Electrical Engineering, University of Science and Technology Beijing, Beijing 100083, China.

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|July 27, 2022
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Summary
This summary is machine-generated.

This study introduces a new deep reinforcement learning method for optimizing wireless rechargeable sensor networks. The approach effectively manages charging sequences and ratios, prolonging network life and reducing sensor failures.

Keywords:
attention-shareddeep reinforcement learningmobile chargingmulti-agentwireless rechargeable sensor network

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Area of Science:

  • Computer Science
  • Electrical Engineering
  • Network Engineering

Background:

  • Wireless energy transmission (WET) is crucial for wireless rechargeable sensor networks (WRSNs).
  • Mobile charging via WET is a key strategy to address energy constraints in WRSNs.
  • Existing research often overlooks joint optimization of charging sequence and ratio control.

Purpose of the Study:

  • To propose a novel deep reinforcement learning approach for joint charging sequence scheduling and charging ratio control (JSSRC) in WRSNs.
  • To address the limitations of current mobile charging scheduling methods that ignore JSSRC.
  • To enhance the operational efficiency and longevity of WRSNs.

Main Methods:

  • Developed an attention-shared multi-agent actor-critic-based deep reinforcement learning approach (AMADRL-JSSRC).
  • Employed two heterogeneous agents: a charging sequence scheduler and a charging ratio controller.
  • Designed specific reward functions considering tour length and the number of dead sensors for each agent.
  • Utilized a centralized critic network with an attention mechanism for decentralized policy training.

Main Results:

  • The proposed AMADRL-JSSRC approach demonstrated superior performance compared to baseline algorithms.
  • Simulation results showed significant improvements in network lifetime.
  • A notable reduction in the number of dead sensors was achieved.

Conclusions:

  • AMADRL-JSSRC effectively optimizes JSSRC in dynamic charging environments for WRSNs.
  • The method offers a promising solution for extending WRSN operational duration and reliability.
  • This deep reinforcement learning framework provides a robust strategy for mobile charging management.