Smart City Gnosys

Smart city article details

Title The Rise Of Ai In 6G Networks: A Comprehensive Review Of Opportunities, Challenges, And Applications
ID_Doc 56431
Authors Anh V.T.K.
Year 2024
Published International Conference on Advanced Technologies for Communications
DOI http://dx.doi.org/10.1109/ATC63255.2024.10908115
Abstract The dawn of 6G networks promises a revolutionary leap in wireless communication, unlocking a wealth of possibilities for innovation. Furthermore, Artificial intelligence (AI) stands as a crucial catalyst in this transformation, poised to significantly enhance network capabilities, automation, and overall intelligence. This article delves into the intricate relationship between AI and 6G, examining the potential advantages, technical hurdles, and far-reaching applications across diverse sectors. In addition, we embark on a journey through the current landscape of research, exploring AI-driven solutions that address key challenges in spectrum allocation, resource management, network optimization, and security. Moreover, we illuminate the transformative impact of AI on 6G use cases, encompassing autonomous vehicles, smart cities, and immersive technologies. Furthermore, AI's transformative potential extends to various aspects of 6G network management and optimization. Yang et al. (2020) highlights key applications such as AI-empowered mobile edge computing for efficient task offloading and resource allocation, intelligent mobility and handover management for seamless connectivity, and smart spectrum management for dynamic and efficient spectrum allocation [1]. The exponential growth of wireless devices and data-intensive applications in 6G necessitates efficient and adaptable spectrum management strategies. To address this challenge, future research should focus on developing AI-driven frameworks for dynamic spectrum allocation. These frameworks could leverage intelligent algorithms to predict spectrum demand, identify underutilized bands, and dynamically allocate spectrum resources to different users and services in real time. By adapting to varying traffic patterns and optimizing spectrum utilization, AI-driven dynamic spectrum allocation can ensure optimal network performance and spectral efficiency, meeting the diverse and demanding requirements of 6G applications. While acknowledging the immense potential of AI in 6G, we also address the ethical considerations and challenges that accompany its adoption. Finally, by providing a comprehensive overview of the evolving landscape, this review seeks to offer valuable insights into future research trajectories and the potential societal implications of this dynamic synergy. © 2024 IEEE.
Author Keywords Artificial Intelligence; Ethics and Security; Network Optimization; Networks; Smart Cities


Similar Articles


Id Similarity Authors Title Published
7057 View0.943Maduranga M.W.P.; Tilwari V.; Rathnayake R.M.M.R.; Sandamini C.Ai-Enabled 6G Internet Of Things: Opportunities, Key Technologies, Challenges, And Future DirectionsTelecom, 5, 3 (2024)
8402 View0.92Kapile V.C.; Ingle R.An Integrated Analysis Of Ai Networks And Wireless Communication (E-Mail)2024 2nd DMIHER International Conference on Artificial Intelligence in Healthcare, Education and Industry, IDICAIEI 2024 (2024)
45216 View0.919Khara A.; Javid I.; Khara S.; Prasad R.Research Issues And Challenges In Ai-Embedded 6G Network ArchitectureInternational Symposium on Wireless Personal Multimedia Communications, WPMC (2024)
10567 View0.916Aslam A.B.; Iqbal F.; Talpur U.; Syed Z.S.; Shaikh F.K.Artificial Intelligence-Enabled 6G Mobile SystemsSignals and Communication Technology, Part F3315 (2024)
55969 View0.914Sharma S.; Sharma A.; Van Chien T.The Intersection Of 6G, Ai/Machine Learning, And Embedded Systems: Pioneering Intelligent Wireless TechnologiesThe Intersection of 6G, AI/Machine Learning, and Embedded Systems: Pioneering Intelligent Wireless Technologies (2025)
58290 View0.912Yi W.; Fu Y.; Cao J.; Gan L.; Xiong L.; Li H.Towards Seamless 6G And Ai/Ml Convergence: Architectural Enhancements And Security ChallengesIEEE Network (2025)
16087 View0.91Subramanian R.S.; Ramana T.V.; Ramana K.V.; Prabha S.; Nivaskumar V.Converging Horizons: Synergies Of 6G Wireless Communication, Machine Learning, And Embedded Systems For Intelligent ConnectivityThe Intersection of 6G, AI/Machine Learning, and Embedded Systems: Pioneering Intelligent Wireless Technologies (2025)
57590 View0.908Prasad Tera S.; Chinthaginjala R.; Pau G.; Hoon Kim T.Toward 6G: An Overview Of The Next Generation Of Intelligent Network ConnectivityIEEE Access, 13 (2025)
35028 View0.906Gera B.; Raghuvanshi Y.S.; Rawlley O.; Gupta S.; Dua A.; Sharma P.Leveraging Ai-Enabled 6G-Driven Iot For Sustainable Smart CitiesInternational Journal of Communication Systems, 36, 16 (2023)
992 View0.902Sheraz M.; Chuah T.C.; Lee Y.L.; Alam M.M.; Al-Habashna A.; Han Z.A Comprehensive Survey On Revolutionizing Connectivity Through Artificial Intelligence-Enabled Digital Twin Network In 6GIEEE Access, 12 (2024)