Infrastructure-Assisted Cooperative Multi-UAV Deep Reinforcement Energy Trading Learning for Big-Data Processing

Soyi Jung, Won Joon Yun, Joongheon Kim, Jae-Hyun Kim
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引用次数: 8

Abstract

This paper proposes a cooperative multi-agent deep reinforcement learning (MADRL) algorithm for energy trading among multiple unmanned aerial vehicles (UAVs) in order to perform big-data processing in a distributed manner. In order to realize UAV-based aerial surveillance or mobile cellular services, seamless and robust wireless charging mechanisms are required for delivering energy sources from charging infrastructure (i.e., charging towers) to UAVs for the consistent operations of the UAVs in the sky. For actively and intelligently managing the charging towers, MADRL-based energy management system (EMS) is proposed and designed for energy trading among the energy storage systems those are equipped with charging towers. If the required energy for charging UAVs is not enough, the purchasing energy from utility company is desired which takes high consts. The main purpose of MADRL-based EMS learning is for minimizing purchasing energy from outside utility company for minimizing operational costs. Our data-intensive performance evaluation verifies that our proposed framework achieves desired performance.
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面向大数据处理的基础设施协同多无人机深度强化能源交易学习
提出了一种多智能体深度强化学习(MADRL)算法,用于多无人机间的能源交易,以分布式方式进行大数据处理。为了实现基于无人机的空中监视或移动蜂窝服务,需要无缝和强大的无线充电机制,将充电基础设施(即充电塔)的能量传输给无人机,以保证无人机在空中的一致运行。为实现对充电塔的主动智能管理,提出并设计了基于madrl的储能系统能量管理系统(EMS),用于安装充电塔的储能系统之间的能量交易。如果无人机充电所需的能量不足,则需要从公用事业公司购买能量,这需要较高的成本。基于madrl的EMS学习的主要目的是最小化从外部公用事业公司购买能源,从而最小化运营成本。我们的数据密集型性能评估验证了我们提出的框架达到了期望的性能。
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