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Supporting Intelligence in Disaggregated Open Radio Access Networks: Architectural Principles, AI/ML Workflow and Use Cases

Articolo
Data di Pubblicazione:
2022
Abstract:
Driven by the emerging trend for transparent, open and programmable communications, Open Radio Access Network (O-RAN) constitutes the dominant architectural approach for deploying the future wireless networks. Towards standardizing and specifying the building blocks and principles of O-RAN, a coordinated global effort has been observed, mainly comprised of the O-RAN Alliance, the operators and several research activities. This paper presents the architectural aspects and the current status of O-RAN deployments, integrating both existing and ongoing activities from the O-RAN enablers. Furthermore, since the Artificial Intelligence and Machine Learning (AI/ML) act as key pillars for realizing O-RANs, a comprehensive view on the AI/ML functionality is provided as well. Additionally, a Network Telemetry (NT) architecture is also proposed to ensure end-to-end data collection and real-time analytics. To concretely illustrate the O-RAN supporting mechanisms for hosting AI/ML, we implemented two realistic ML algorithms: (i) a Supervised Learning (SL) based algorithm for cell traffic prediction using the training data of an open dataset and (ii) a Deep Reinforcement Learning (DRL) based algorithm for energy-efficiency maximization using a 5G-compliant simulator to obtain RAN measurements. We schematically demonstrate the AI/ML workflow for both ML-assisted algorithms through the usage of xApps running on the Radio Intelligent Controller (RIC), as well as we outline the role of the O-RAN components involved in the AI/ML loop. Combining the high-level architectural descriptions with a detailed presentation of ML-empowered resource allocation schemes, the paper discusses and summarizes the O-RAN disaggregation principles and the role of AI/ML embedded in future O-RAN deployments.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
5G, B5G, O-RAN, AI/ML, Radio Intelligent Controller, Resource Allocation, Supervised Learning, Reinforcement Learning
Elenco autori:
Giannopoulos, Anastasios; Spantideas, Sotirios; Kapsalis, Nikolaos; Gkonis, Panagiotis; Sarakis, Lambros; Capsalis, Christos; Vecchio, Massimo; Trakadas, Panagiotis
Link alla scheda completa:
https://iris.uniecampus.it/handle/11389/36789
Pubblicato in:
IEEE ACCESS
Journal
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