深度强化学习与移动通信资源管理: 算法、进展与展望

    Deep Reinforcement Learning and Mobile Communication Resource Management: Algorithms, Progress, and Prospects

    • 摘要: 深度强化学习(deep reinforcement learning,DRL)将深度学习从高维数据提取低维特征的能力与强化学习的决策能力相结合,是移动通信资源管理与优化的高效算法之一.在引入DRL相关算法概念与原理的基础上,重点对DRL在网络切片、云计算、雾计算、移动边缘计算等通信技术与场景中的资源管理与优化效果进行综述与分析,结合DRL在移动通信资源管理的算法原理与研究进展,论述了DRL面临的问题与挑战,并提出相应解决思路.最后,展望了DRL在移动通信资源管理领域的发展趋势和主要研究方向.

       

      Abstract: As one of the highly-efficient algorithms for resource management and optimization in mobile communications, deep reinforcement learning (DRL) integrates the ability of deep learning to extract low dimensional features from high dimensional data with the decision-making ability of reinforcement learning. First, the concepts and principles of DRL algorithms were introduced. Then, the resource management and optimization effect of DRL in different scenarios were summarized and analyzed. The technologies and scenarios included network slicing, cloud computing, fog computing, and mobile edge computing. Furthermore, based on the key research progress of DRL in mobile communication resource management, the open issues and challenges of DRL were discussed, and possible solutions were proposed. Finally, development trends and key research directions in the field of mobile communication resoure management were prospected.

       

    /

    返回文章
    返回