基于区域分割深度强化学习的无线输电机器人最优路径规划

IF 1.6 Q4 ENERGY & FUELS Wireless Power Transfer Pub Date : 2022-03-04 DOI:10.1155/2022/9921885
Yuan Xing, Riley Young, Giaolong Nguyen, Maxwell Lefebvre, Tianchi Zhao, Haowen Pan, Liang Dong
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引用次数: 3

摘要

本文旨在利用深度强化学习技术解决远场无线电力传输系统的优化问题。射频(RF)无线发射器安装在一个移动机器人上,该机器人在收获的能源物联网(IoT)设备附近巡逻。无线发射器打算在指定的路径上连续巡航,以便在最短的时间内为所有固定的物联网设备公平充电。应用深度Q网络(DQN)算法来确定机器人巡航的最佳路径。当物联网设备数量增加时,传统的DQN无法收敛到闭环路径或实现最大回报。为了解决这些问题,提出了一种区域划分深度Q网络(AD-DQN)。该算法可以智能地将整个充电场划分为几个区域。在每个区域中,利用DQN算法来计算最优路径。之后,将分段的路径组合在一起,为机器人创造一条闭环路径,让机器人在最短的时间内对所有物联网设备进行连续充电。数值结果证明了AD-DQN在优化所提出的无线电力传输系统方面的优越性。
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Optimal Path Planning for Wireless Power Transfer Robot Using Area Division Deep Reinforcement Learning
This paper aims to solve the optimization problems in far-field wireless power transfer systems using deep reinforcement learning techniques. The Radio-Frequency (RF) wireless transmitter is mounted on a mobile robot, which patrols near the harvested energy-enabled Internet of Things (IoT) devices. The wireless transmitter intends to continuously cruise on the designated path in order to fairly charge all the stationary IoT devices in the shortest time. The Deep Q-Network (DQN) algorithm is applied to determine the optimal path for the robot to cruise on. When the number of IoT devices increases, the traditional DQN cannot converge to a closed-loop path or achieve the maximum reward. In order to solve these problems, an area division Deep Q-Network (AD-DQN) is invented. The algorithm can intelligently divide the complete charging field into several areas. In each area, the DQN algorithm is utilized to calculate the optimal path. After that, the segmented paths are combined to create a closed-loop path for the robot to cruise on, which can enable the robot to continuously charge all the IoT devices in the shortest time. The numerical results prove the superiority of the AD-DQN in optimizing the proposed wireless power transfer system.
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来源期刊
Wireless Power Transfer
Wireless Power Transfer ENERGY & FUELS-
CiteScore
2.50
自引率
0.00%
发文量
3
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