基于icn的车联网智能计算与内容边缘服务的深度强化学习

Jingsong Li, Junhua Tang, Jianhua Li, Futai Zou
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引用次数: 4

摘要

在通信和计算技术发展的推动下,智能车联网(IoV)近年来备受关注。具体来说,通信、计算、缓存和人工智能在网络边缘的集成已经成为实现各种激动人心的车联网应用的关键。然而,车联网的动态性给成功实现集成边缘服务带来了巨大的挑战。在本文中,我们首先提出了一个基于信息中心网络(ICN)的框架,以适应车联网中的计算和内容服务请求。其次,考虑到利用服务请求的流行度和计算结果的缓存可以大大提高边缘服务的效率,我们提出了一种基于深度q学习的创新算法来学习服务请求的流行度,并据此进行联合计算和缓存决策。仿真结果表明,该算法可以通过环境学习和数据重用来提高请求的满足率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Deep Reinforcement Learning for Intelligent Computing and Content Edge Service in ICN-based IoV
Driven by the development of communication and computing technologies, the intelligent Internet of Vehicles (IoV) has attracted much attention in recent years. Specifically, integration of communication, computing, caching, and AI at the network edge has become a key to realizing various exciting IoV applications. However, the dynamic nature of IoV imposes great challenges on the successful realization of integrated edge services. In this paper, we first propose an Information-Centric Networking (ICN)-based framework to accommodate both computing and content service requests in IoV. Next, considering the fact that making use of the popularity of the service requests and the caching of computing results may greatly improve the efficiency of the edge service, we propose an innovative algorithm based on deep Q-learning to learn the popularity of service requests and make joint computing and caching decisions accordingly. Simulation results show that the pro-posed algorithm can improve the satisfied request ratio by environment learning and data reuse.
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