基于深度强化学习的URLLC和eMBB复用优化

Yang Li, Chunjing Hu, Jun Wang, Mingfeng Xu
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引用次数: 13

摘要

在5G移动网络中,出现了多种场景,以满足不同的业务需求。为了满足不同的需求,有限的频谱资源变得越来越拥挤。为了提高有限的传输资源(频谱、时间、功率等)的利用率,同时满足用户的不同需求,我们引入了奖励函数作为不同分配策略的度量。然后我们计算不同分配策略可能获得的回报。到达的状态是一个马尔可夫过程,这意味着下一个到来的状态仅由当前状态决定。为了解决优化问题,我们引入了q -学习算法。由于状态空间非常大,本文试图阐述一种基于深度q网络(Deep Q-Network)的资源分配算法。本文提供的数值实验通过与两个基线的比较,验证了所提算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimization of URLLC and eMBB Multiplexing via Deep Reinforcement Learning
In 5G mobile networks, multiple scenarios have emerged to meet different services requirement. The limited spectrum resource becoming more and more crowed to meet different requirements. To improve the limited transmission resource (spectrum, time, power etc.) utilization while meet the different needs of users, we introduce the reward function as a measure of different allocate policies. Then we calculate the reward that different allocation policies might gain. The arrived state is a Markov Process which means the next coming state is only determined by the current state. To solve the optimization problem, we introduce the Q-Iearning algorithm. Due to the state space is enormous, this paper strives to illustrate a DQN (Deep Q-Network) based resource allocation algorithm. Numerical experiments provided in this paper show the performance of the proposed algorithms by comparing with two baselines.
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