强化学习
计算机科学
智能交通系统
计算机网络
边缘计算
无线网络
互联网
无线
体验质量
移动边缘计算
分布式计算
GSM演进的增强数据速率
服务器
服务质量
人工智能
工程类
电信
万维网
运输工程
作者
Zhaolong Ning,Kaiyuan Zhang,Xiaojie Wang,Mohammad S. Obaidat,Lei Guo,Xiping Hu,Bin Hu,Yi Guo,Balqies Sadoun,Ricky Y. K. Kwok
标识
DOI:10.1109/tits.2020.2970276
摘要
Recent developments of edge computing and content caching in wireless networks enable the Intelligent Transportation System (ITS) to provide high-quality services for vehicles. However, a variety of vehicular applications and time-varying network status make it challenging for ITS to allocate resources efficiently. Artificial intelligence algorithms, owning the cognitive capability for diverse and time-varying features of Internet of Connected Vehicles (IoCVs), enable an intent-based networking for ITS to tackle the above-mentioned challenges. In this paper, we develop an intent-based traffic control system by investigating Deep Reinforcement Learning (DRL) for 5G-envisioned IoCVs, which can dynamically orchestrate edge computing and content caching to improve the profits of Mobile Network Operator (MNO). By jointly analyzing MNO's revenue and users' quality of experience, we define a profit function to calculate the MNO's profits. After that, we formulate a joint optimization problem to maximize MNO's profits, and develop an intelligent traffic control scheme by investigating DRL, which can improve system profits of the MNO and allocate network resources effectively. Experimental results based on real traffic data demonstrate our designed system is efficient and well-performed.
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