强化学习
计算机科学
部分可观测马尔可夫决策过程
马尔可夫决策过程
运动规划
数据收集
分布式计算
实时计算
人工智能
任务(项目管理)
频道(广播)
状态空间
无线传感器网络
过程(计算)
路径(计算)
马尔可夫过程
机器学习
马尔可夫链
计算机网络
机器人
马尔可夫模型
工程类
统计
操作系统
数学
系统工程
作者
Harald Bayerlein,Mirco Theile,Marco Caccamo,David Gesbert
标识
DOI:10.1109/ojcoms.2021.3081996
摘要
Harvesting data from distributed Internet of Things (IoT) devices with multiple autonomous unmanned aerial vehicles (UAVs) is a challenging problem requiring flexible path planning methods. We propose a multi-agent reinforcement learning (MARL) approach that, in contrast to previous work, can adapt to profound changes in the scenario parameters defining the data harvesting mission, such as the number of deployed UAVs, number, position and data amount of IoT devices, or the maximum flying time, without the need to perform expensive recomputations or relearn control policies. We formulate the path planning problem for a cooperative, non-communicating, and homogeneous team of UAVs tasked with maximizing collected data from distributed IoT sensor nodes subject to flying time and collision avoidance constraints. The path planning problem is translated into a decentralized partially observable Markov decision process (Dec-POMDP), which we solve through a deep reinforcement learning (DRL) approach, approximating the optimal UAV control policy without prior knowledge of the challenging wireless channel characteristics in dense urban environments. By exploiting a combination of centered global and local map representations of the environment that are fed into convolutional layers of the agents, we show that our proposed network architecture enables the agents to cooperate effectively by carefully dividing the data collection task among themselves, adapt to large complex environments and state spaces, and make movement decisions that balance data collection goals, flight-time efficiency, and navigation constraints. Finally, learning a control policy that generalizes over the scenario parameter space enables us to analyze the influence of individual parameters on collection performance and provide some intuition about system-level benefits.
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