基于深度强化学习的车辆网络边缘缓存

Yoonjeong Choi, Yujin Lim
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引用次数: 0

摘要

随着车辆连接到互联网,可以提供信息娱乐和自动驾驶等各种服务。然而,这些服务需要大量的数据下载。当下载大尺寸的内容时,内容交付延迟可能会变得太长而无法满足限制。为了解决这个问题,人们正在研究在靠近车辆的地方缓存内容的方法。宏基站(MBS)和路旁单元(RSU)在距离车辆很近的地方提供存储空间,它们可以减少交付所需内容所需的时间。在本文中,我们提出了一种rsu中的缓存策略,旨在最大化从rsu交付的内容量,以减少交付延迟。此外,由于rsu密集地部署在城市地区,通过减少rsu之间的重复内容,可以缓存更多的内容。采用深度确定性策略梯度(Deep deterministic policy gradient, DDPG)来决定如何在rsu中缓存内容。实验表明,该方法既能最大限度地提高从rsu下载的内容量,又能降低更新成本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Edge Caching Based on Deep Reinforcement Learning in Vehicular Networks
As vehicles are connected to the Internet, various services such as infotainment and automated driving can be provided. However, these services require a large amount of data download. When downloading content which has the large size, the content delivery latency can become too long to meet the constraints. To solve this problem, methods for caching the content close to the vehicles are being studied. Macro base station (MBS) and road side unit (RSU) provide storage spaces at a close distance from the vehicles and they can reduce the time required to deliver the requested content. In this paper, we propose a caching strategy in RSUs, aiming to maximize the amount of content delivered from RSUsin order to reduce the delivery latency. Besides, since RSUs are densely deployed in urban areas, RSUs can cache more content by reducing duplicate content among them. Deep deterministic policy gradient (DDPG) is adopted to decide how to cache content in RSUs. Experiments show that the proposed method not only maximizes the amount of content downloaded from RSUs, but also decreases the update cost.
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