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Radio Resource Scheduling with Deep Pointer Networks and Reinforcement Learning

机译:带有深指针网络的无线电资源调度和强化学习

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This article presents an artificial intelligence (AI) adaptable solution to handle the radio resource scheduling (RRS) task in 5G networks. RRS is one of the core tasks in radio resource management (RRM) and aims to efficiently allocate frequency domain resources to users. The proposed solution is an advantage pointer critic (APC) deep reinforcement learning (DRL) agent. It is built with a deep pointer network architecture and trained by the policy gradient algorithm. The proposed agent is deployed in a system level simulator and the experimental results demonstrate its adaptability to network dynamics and efficiency when compared to baseline algorithms.
机译:本文提出了一种人工智能(AI)自适应解决方案来处理5G网络中的无线电资源调度(RRS)任务。 RRS是无线电资源管理(RRM)的核心任务之一,旨在有效地为用户分配频域资源。提出的解决方案是优势指针批判者(APC)深度强化学习(DRL)代理。它使用深度指针网络体系结构构建,并通过策略梯度算法进行训练。所提出的代理已部署在系统级模拟器中,与基线算法相比,实验结果证明了其对网络动态性和效率的适应性。

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