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Resource allocation in <scp>5G cloud‐RAN</scp> using deep reinforcement learning algorithms: A review

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

2023Transactions on Emerging Telecommunications Technologies14 citationsDOIOpen Access PDF

Abstract

Abstract 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.

Topics & Concepts

C-RANRanReinforcement learningResource allocationComputer scienceCloud computingScalabilityConvergence (economics)Resource management (computing)Radio access networkArtificial intelligenceDistributed computingComputer networkBase stationEconomicsMobile stationOperating systemEconomic growthDatabaseIoT and Edge/Fog ComputingEnergy Harvesting in Wireless NetworksAdvanced Wireless Communication Technologies
Resource allocation in <scp>5G cloud‐RAN</scp> using deep reinforcement learning algorithms: A review | Litcius