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AI-Driven Network Optimization for the 5G-to-6G Transition: A Taxonomy-Based Survey and Reference Framework

Author

Listed:
  • Rexhep Mustafovski

    (Military Academy “General Mihailo Apostolski”, ‘Goce Delcev University’ Stip, 1000 Skopje, North Macedonia)

  • Galia Marinova

    (Department “Technologies and Management of Communication Systems”, Technical University of Sofia, 1756 Sofia, Bulgaria)

  • Besnik Qehaja

    (Department “Technologies and Management of Communication Systems”, Technical University of Sofia, 1756 Sofia, Bulgaria)

  • Edmond Hajrizi

    (Department “Technologies and Management of Communication Systems”, Technical University of Sofia, 1756 Sofia, Bulgaria)

  • Shejnaze Gagica

    (Faculty of Economics, University “Kadri Zeka”, 60000 Gjilan, Kosovo)

  • Vassil Guliashki

    (Institute of Information and Communication Technologies, Bulgarian Academy of Sciences, 1113 Sofia, Bulgaria)

Abstract

This paper presents a taxonomy-based survey of AI-driven network optimization mechanisms relevant to the transition from fifth generation (5G) to sixth generation (6G) mobile communication systems. In contrast to earlier generational shifts that are often described as technology replacement cycles, the 5G-to-6G evolution is increasingly characterized in the literature as a prolonged period of coexistence, hybrid operation, and progressive integration of new capabilities across radio, edge, core, and service layers. To structure this transition, the paper organizes prior work into a transition-oriented taxonomy covering migration strategies, AI-enabled closed-loop control, RAN disaggregation and edge intelligence, core virtualization and slice orchestration, spectrum-aware coexistence, service-driven requirements, and security-aware governance. Rather than introducing a new optimization algorithm or an experimentally validated architecture, the contribution of this survey is analytical and integrative. Specifically, it consolidates fragmented research directions into a reference view of how AI-driven control mechanisms are distributed across spectrum, RAN, edge, and core domains during hybrid 5G–6G operation. In addition, the paper includes a structured evidence synthesis of performance trends, deployment maturity signals, and recurring methodological limitations reported across the literature. The review indicates that meeting anticipated 6G objectives, including ultra-low latency, high reliability, scalability, and improved energy efficiency, depends less on isolated enhancements at individual protocol layers and more on coordinated cross-layer optimization supported by AI-native control loops. At the same time, the surveyed literature reveals persistent gaps in service-to-control mapping, security-aware orchestration, interoperability across heterogeneous domains, and reproducible evaluation methodologies for hybrid 5G–6G environments. The survey is intended to provide researchers, network operators, and standardization stakeholders with a structured analytical basis for assessing how AI-driven optimization can support the staged evolution from 5G systems toward 6G-ready infrastructures.

Suggested Citation

  • Rexhep Mustafovski & Galia Marinova & Besnik Qehaja & Edmond Hajrizi & Shejnaze Gagica & Vassil Guliashki, 2026. "AI-Driven Network Optimization for the 5G-to-6G Transition: A Taxonomy-Based Survey and Reference Framework," Future Internet, MDPI, vol. 18(3), pages 1-24, March.
  • Handle: RePEc:gam:jftint:v:18:y:2026:i:3:p:155-:d:1896398
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