Deep Reinforcement Learning-Based RAN Slicing with Efficient Inter-Slice Isolation in Tactical Wireless Networks
Abderrahime Filali, Diala Naboulsi, and Georges Kaddoum

TL;DR
This paper introduces a deep reinforcement learning-based RAN slicing mechanism for tactical wireless networks that balances bandwidth efficiency with inter- and intra-slice QoS isolation, suitable for open RAN architectures.
Contribution
It proposes a novel DRL-based two-stage RAN slicing mechanism that enhances bandwidth sharing while maintaining slice isolation in tactical networks.
Findings
DRL-based mechanism improves bandwidth utilization
Achieves better QoS isolation compared to baselines
Effective in various network scenarios
Abstract
The next generation of tactical networks (TNs) is poised to further leverage the key enablers of 5G and beyond 5G (B5G) technology, such as radio access network (RAN) slicing and the open RAN (O-RAN) paradigm, to unlock multiple architectural options and opportunities for a wide range of innovative applications. RAN slicing and the O-RAN paradigm are considered game changers in TNs, where the former makes it possible to tailor user services to users requirements, and the latter brings openness and intelligence to the management of the RAN. In TNs, bandwidth scarcity requires a dynamic bandwidth slicing strategy. Although this type of strategy ensures efficient bandwidth utilization, it compromises RAN slicing isolation in terms of quality of service (QoS) performance. To deal with this challenge, we propose a deep reinforcement learning (DRL)-based RAN slicing mechanism that achieves a…
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Taxonomy
TopicsSoftware-Defined Networks and 5G · Caching and Content Delivery · Opportunistic and Delay-Tolerant Networks
