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Autori principali: Ghafouri, Navideh, Vardakas, John S., Ramantas, Kostas, Verikoukis, Christos
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2410.23161
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author Ghafouri, Navideh
Vardakas, John S.
Ramantas, Kostas
Verikoukis, Christos
author_facet Ghafouri, Navideh
Vardakas, John S.
Ramantas, Kostas
Verikoukis, Christos
contents Since the 6th Generation (6G) of wireless networks is expected to provide a new level of network services and meet the emerging expectations of the future, it will be a complex and intricate networking system. 6Gs sophistication and robustness will be accompanied by complexities, which will require novel strategies to tackle them. This research work focuses on decentralized and multi-level system models for 6G networks and proposes an energy efficient automation strategy for edge domain management and Network Slicing (NS) with the main objective of reducing the networks complexity by leveraging scalability, efficiency, and generalization. Accordingly, we propose a pre-train phase to discover useful assignment skills in network edge domains by utilizing unsupervised Reinforcement Learning (unsupervised RL). The suggested technique does not depend on the domain specifications and thus is applicable to all the edge domains. Our proposed approach not only enables scalability and decentralization, but it also delivers efficiency by assisting domain controllers to provide various service types. We implemented the pre-training phase, and monitored that the discovered assignment skills span the entire interval of possible resource assignment portions for every service type.
format Preprint
id arxiv_https___arxiv_org_abs_2410_23161
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Energy-Efficient Intra-Domain Network Slicing for Multi-Layer Orchestration in Intelligent-Driven Distributed 6G Networks: Learning Generic Assignment Skills with Unsupervised Reinforcement Learning
Ghafouri, Navideh
Vardakas, John S.
Ramantas, Kostas
Verikoukis, Christos
Networking and Internet Architecture
Since the 6th Generation (6G) of wireless networks is expected to provide a new level of network services and meet the emerging expectations of the future, it will be a complex and intricate networking system. 6Gs sophistication and robustness will be accompanied by complexities, which will require novel strategies to tackle them. This research work focuses on decentralized and multi-level system models for 6G networks and proposes an energy efficient automation strategy for edge domain management and Network Slicing (NS) with the main objective of reducing the networks complexity by leveraging scalability, efficiency, and generalization. Accordingly, we propose a pre-train phase to discover useful assignment skills in network edge domains by utilizing unsupervised Reinforcement Learning (unsupervised RL). The suggested technique does not depend on the domain specifications and thus is applicable to all the edge domains. Our proposed approach not only enables scalability and decentralization, but it also delivers efficiency by assisting domain controllers to provide various service types. We implemented the pre-training phase, and monitored that the discovered assignment skills span the entire interval of possible resource assignment portions for every service type.
title Energy-Efficient Intra-Domain Network Slicing for Multi-Layer Orchestration in Intelligent-Driven Distributed 6G Networks: Learning Generic Assignment Skills with Unsupervised Reinforcement Learning
topic Networking and Internet Architecture
url https://arxiv.org/abs/2410.23161