通过无人机为增强现实提供资源:强化学习方法

Damiano Brunori, S. Colonnese, F. Cuomo, G. Flore, L. Iocchi
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引用次数: 0

摘要

在关键和高要求的情况下,无人机(uav)应该用于提供从视频监控到通信设施的不同服务。增强现实流媒体服务在所需的吞吐量、用户设备上的计算资源以及高级应用程序(例如基于位置或交互式的应用程序)的用户数据收集方面要求特别高。这项工作的重点是实验性地利用采用强化学习(RL)方法的框架来定义无人机在为增强现实服务提供资源时所穿越的路径。我们开发了一个基于OpenAI gym的模拟器,该模拟器经过调整和测试,可以研究经过RL训练的无人机在给定区域飞行并为增强现实用户提供服务的行为。我们为环境、无人机、用户和他们的请求提供抽象。然后定义奖励函数以包含几个体验质量参数。我们训练我们的代理,并观察它们在一天中不同时间作为无人机数量和用户数量的函数的行为。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Delivering Resources for Augmented Reality by UAVs: a Reinforcement Learning Approach
Unmanned aerial vehicles (UAVs) are supposed to be used to provide different services from video surveillance to communication facilities during critical and high-demanding scenarios. Augmented reality streaming services are especially demanding in terms of required throughput, computing resources at the user device, as well as user data collection for advanced applications, for example, location-based or interactive ones. This work is focused on the experimental utilization of a framework adopting reinforcement learning (RL) approaches to define the paths crossed by UAVs in delivering resources for augmented reality services. We develop an OpenAI Gym-based simulator that is tuned and tested to study the behavior of UAVs trained with RL to fly around a given area and serve augmented reality users. We provide abstractions for the environment, the UAVs, the users, and their requests. A reward function is then defined to encompass several quality-of-experience parameters. We train our agents and observe how they behave as a function of the number of UAVs and users at different hours of the day.
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