Deep Reinforcement Learning for Radio Resource Allocation and Management in Next Generation Heterogeneous Wireless Networks: A Survey
Abdulmalik Alwarafy, Mohamed Abdallah, Bekir Sait Ciftler, Ala, Al-Fuqaha, Mounir Hamdi

TL;DR
This survey reviews how deep reinforcement learning techniques are applied to radio resource management in next-generation heterogeneous wireless networks, highlighting current methods, challenges, and future research directions.
Contribution
It provides a comprehensive classification and analysis of DRL algorithms used in RRAM for various wireless network types, identifying gaps and open challenges.
Findings
DRL algorithms offer promising solutions for complex RRAM problems.
Traditional RRAM methods have limitations that DRL can address.
Future research should focus on fine-grained, efficient DRL-based RRAM schemes.
Abstract
Next generation wireless networks are expected to be extremely complex due to their massive heterogeneity in terms of the types of network architectures they incorporate, the types and numbers of smart IoT devices they serve, and the types of emerging applications they support. In such large-scale and heterogeneous networks (HetNets), radio resource allocation and management (RRAM) becomes one of the major challenges encountered during system design and deployment. In this context, emerging Deep Reinforcement Learning (DRL) techniques are expected to be one of the main enabling technologies to address the RRAM in future wireless HetNets. In this paper, we conduct a systematic in-depth, and comprehensive survey of the applications of DRL techniques in RRAM for next generation wireless networks. Towards this, we first overview the existing traditional RRAM methods and identify their…
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