Resource allocation in 5G cloud-RAN using deep reinforcement learning algorithms: A review

Mohsen Khani,Shahram Jamali,Mohammad Karim Sohrabi, Mohammad Mohsen Sadr,Ali Ghaffari

TRANSACTIONS ON EMERGING TELECOMMUNICATIONS TECHNOLOGIES(2024)

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摘要
This paper reviews recent research on resource allocation in 5G cloud-based radio access networks (C-RAN) using deep reinforcement learning (DRL) algorithms. It explores the potential of DRL for learning complex decision-making policies without human intervention. The paper first introduces the C-RAN architecture and resource allocation concepts, followed by an overview of DRL algorithms applied to C-RAN. It discusses the challenges and potential solutions in applying DRL to C-RAN resource allocation, including scalability, convergence, and fairness. The review concludes by highlighting open research directions for future investigation. By providing insights into the state-of-the-art techniques for resource allocation in 5G C-RAN using DRL, this paper emphasizes their potential impact on advancing 5G network technology.
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