Sensors (Oct 2023)

Recent Advances in Machine Learning for Network Automation in the O-RAN

  • Mutasem Q. Hamdan,
  • Haeyoung Lee,
  • Dionysia Triantafyllopoulou,
  • Rúben Borralho,
  • Abdulkadir Kose,
  • Esmaeil Amiri,
  • David Mulvey,
  • Wenjuan Yu,
  • Rafik Zitouni,
  • Riccardo Pozza,
  • Bernie Hunt,
  • Hamidreza Bagheri,
  • Chuan Heng Foh,
  • Fabien Heliot,
  • Gaojie Chen,
  • Pei Xiao,
  • Ning Wang,
  • Rahim Tafazolli

DOI
https://doi.org/10.3390/s23218792
Journal volume & issue
Vol. 23, no. 21
p. 8792

Abstract

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The evolution of network technologies has witnessed a paradigm shift toward open and intelligent networks, with the Open Radio Access Network (O-RAN) architecture emerging as a promising solution. O-RAN introduces disaggregation and virtualization, enabling network operators to deploy multi-vendor and interoperable solutions. However, managing and automating the complex O-RAN ecosystem presents numerous challenges. To address this, machine learning (ML) techniques have gained considerable attention in recent years, offering promising avenues for network automation in O-RAN. This paper presents a comprehensive survey of the current research efforts on network automation usingML in O-RAN.We begin by providing an overview of the O-RAN architecture and its key components, highlighting the need for automation. Subsequently, we delve into O-RAN support forML techniques. The survey then explores challenges in network automation usingML within the O-RAN environment, followed by the existing research studies discussing application of ML algorithms and frameworks for network automation in O-RAN. The survey further discusses the research opportunities by identifying important aspects whereML techniques can benefit.

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