A Study on AI in 7G Mobile Communication

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Volume: 11 | Issue: 01 | Year 2026 | Subscription
International Journal of Broadband Cellular Communication
Received Date: 05/11/2026
Acceptance Date: 05/12/2026
Published On: 2026-05-23
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By: Kazi Kutubuddin Sayyad Liyakat and Heena T Shaikh.

1. Professor and Head,Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur (MS), India.
2. Assistant Professor,Department of Electronics and Telecommunication Engineering, Brahmdevdada Mane Institute of Technology, Solapur (MS), India.

Abstract

The imminent transition from 5G to the seventhgeneration (7G) mobile ecosystem promises to redefine connectivity through unprecedented data rates, pervasive ultralow latency, and holistic integration of terrestrial, aerial, and spaceborne networks. Central to this evolution is Artificial Intelligence (AI), which is poised to become the nervous system that orchestrates, optimizes, and secures the hyperdynamic 7G fabric. This paper surveys the emerging AIdriven paradigms that will underpin 7G, focusing on three interlocking pillars: (i) Cognitive RadioMesh Intelligence, where deep reinforcement learning autonomously negotiates spectrum, beamforming, and topology reconfiguration across heterogeneous nodes; (ii) SemanticLevel Communication, in which generative AI compresses and reconstructs intentrich content, slashing payload volume while preserving meaning; and (iii) SelfHealing Autonomous Management, leveraging federated learning and continual online adaptation to detect, diagnose, and remediate anomalies in real time. By coupling these capabilities with emerging hardware accelerators neuromorphic chips, photonic processors, and quantumenhanced inference engines 7G can achieve a closedloop intelligence that not only reacts to network conditions but anticipates user needs and environmental constraints. The analysis draws on recent experimental testbeds, crosslayer simulation results, and earlystage standardization drafts to illustrate how AI can transform raw connectivity into an intelligent, contextaware service continuum. The findings highlight a paradigm shift: from “networkasinfrastructure” to “networkascognition,” laying a blueprint for researchers, industry stakeholders, and policy makers to navigate the AIinfused 7G frontier.

Keywords – Artificial Intelligence, Mobile communication, 7G, AI-driven, Cognitive radio, Semantic Communication

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How to cite this article: Kazi Kutubuddin Sayyad Liyakat and Heena T Shaikh A Study on AI in 7G Mobile Communication. International Journal of Broadband Cellular Communication. 2026; 11(01): -p.

How to cite this URL: Kazi Kutubuddin Sayyad Liyakat and Heena T Shaikh, A Study on AI in 7G Mobile Communication. International Journal of Broadband Cellular Communication. 2026; 11(01): -p. Available from:https://journalspub.com/publication/ijcbb/article=25706

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