Iranian Journal of Information Processing and Management

Iranian Journal of Information Processing and Management

Adaptive AI-Driven Network Slicing in 6G for Smart Cities: Enhancing Resource Management and Efficiency

Document Type : Original Article

Authors
1 Al-Rafidain University College Baghdad, Iraq,10064
2 Emirates Aviation University, Dubai 686, United Arab Emirates
Abstract
ABSTRACT
Background: Smart city evolution is fast-paced, and imposes severe demands on telecom infrastructures: it must be highly flexible and scalable for coping with bursty traffic loads and heterogeneous service needs. Legacy network systems are not well suited to handle the changing requirements of smart city environments with autonomous cars, IoT, and public safety systems.
Objective: The study to offer an AI-native network slicing framework for 6G smart city networks in order to improve dynamic resource control and management. The framework aims to enhance the delay, energy, and resource performance metrics which are significant for smart city services.
Method: To facilitate the real-time network resource orchestration depending on the changing traffic requirements and user preferences, the authors consider moving target defense adapted artificial intelligence with a Deep Reinforcement Learning (DRL) model. Simulations were carried out to compare the AI-native model to conventional and AI-supported slicing methods.
Results: Simulation results validate that the AI-native network slicing framework outperforms current 5G solutions with 25% reduction in latency and 20% increase in energy efficiency. Furthermore, the model's online resource allocation scheme can enhance the utilization efficiency of the bandwidth and the energy by 15% compared with the traditional approaches. Such improvements especially in critical applications like traffic management, emergency response, and health care would be important.
Conclusion: The presented results demonstrate that AI-native network slicing is a viable, flexible, and scalable solution for 6G smart city networks. The framework is designed to support the future sustainable and high-performance requirements of urban infrastructures, providing both energy-efficient real-time adaptability. This study provides an overarching front-to-end outlook to address the management issues of sophisticated resource systems, and puts AI-native network slicing at the base level of the emerging smart cities.
Keywords

References

Blanco, L., Kukliński, S., Zeydan, E., Rezazadeh, F., Chawla, A., Zanzi, L., Devoti, F., et al. (2023). AI-Driven Framework for Scalable Management of Network Slices.  IEEE Communications Magazine, 61 (11), 216-222. https://doi.org/:10.1109/MCOM.005.2300147
Chen, Y.-H. (2023). An adaptive heuristic algorithm to solve the network slicing resource management problem.  International Journal of Communication Systems, 36 (8), e5463. https://doi.org/:10.1002/dac.5463
Chergui, H., Blanco, L., Garrido, L. A., Ramantas, K., Kukliński, S., Ksentini, A., and Verikoukis, C. (2021). Zero-Touch AI-Driven Distributed Management for Energy-Efficient 6G Massive Network Slicing.  IEEE Network, 35 (6), 43-49. https://doi.org/:10.1109/MNET.111.2100322
Dawaliby, S., Bradai, A., and Pousset, Y. (2021). Joint slice-based spreading factor and transmission power optimization in LoRa smart city networks.  Internet of Things, 14, 100121. https://doi.org/:10.1016/j.iot.2019.100121
Esmat, H. H., Lorenzo, B., and Shi, W. (2023). Toward Resilient Network Slicing for Satellite–Terrestrial Edge Computing IoT.  IEEE Internet of Things Journal, 10 (16), 14621-14645. https://doi.org/:10.1109/JIOT.2023.3277466
Guan, W., Zhang, H., and Leung, V. C. M. (2021). Customized Slicing for 6G: Enforcing Artificial Intelligence on Resource Management.  IEEE Network, 35 (5), 264-271. https://doi.org/:10.1109/MNET.011.2000644
Li, M., Gao, J., Zhou, C., Shen, X. S., and Zhuang, W. (2021). Slicing-Based Artificial Intelligence Service Provisioning on the Network Edge: Balancing AI Service Performance and Resource Consumption of Data Management.  IEEE Vehicular Technology Magazine, 16 (4), 16-26. https://doi.org/:10.1109/MVT.2021.3114655
Mei, J., Wang, X., and Zheng, K. (2019). Intelligent Network Slicing for V2X Services Toward 5G. IEEE Network, 33 (6), 196-204. https://doi.org/:10.1109/MNET.001.1800528
Mei, J., Wang, X., Zheng, K., Boudreau, G., Sediq, A. B., and Abou-Zeid, H. (2021). Intelligent Radio Access Network Slicing for Service Provisioning in 6G: A Hierarchical Deep Reinforcement Learning Approach. IEEE Transactions on Communications, 69 (9), 6063-6078. https://doi.org/:10.1109/TCOMM.2021.3090423
Nassar, A., and Yilmaz, Y. (2022). Deep Reinforcement Learning for Adaptive Network Slicing in 5G for Intelligent Vehicular Systems and Smart Cities.  IEEE Internet of Things Journal, 9 (1), 222-235. https://doi.org/:10.1109/JIOT.2021.3091674
Rezazadeh, F., Chergui, H., Alonso, L., and Verikoukis, C. (2024). SliceOps: Explainable MLOps for Streamlined Automation-Native 6G Networks.  IEEE Wireless Communications. https://doi.org/:10.48550/arXiv.2307.01658
Rezazadeh, F., Chergui, H., Blanco, L., Alonso, L., and Verikoukis, C. (2021). A Collaborative Statistical Actor-Critic Learning Approach for 6G Network Slicing Control. 2021 IEEE Global Communications Conference (GLOBECOM), 7-11 Dec. 2021. https://doi.org/:10.1109/GLOBECOM46510.2021.9685218
Roy, S., Chergui, H., and Verikoukis, C. (2022). TEFL: Turbo Explainable Federated Learning for 6G Trustworthy Zero-Touch Network Slicing.  arXiv preprint arXiv:2210.10147. https://doi.org/:10.48550/arXiv.2210.10147
Shen, X., Gao, J., Wu, W., Li, M., Zhou, C., and Zhuang, W. (2022). Holistic Network Virtualization and Pervasive Network Intelligence for 6G.  IEEE Communications Surveys & Tutorials, 24 (1), 1-30. https://doi.org/:10.1109/COMST.2021.3135829
Shen, X., Gao, J., Wu, W., Lyu, K., Li, M., Zhuang, W., Li, X., et al. (2020). AI-Assisted Network-Slicing Based Next-Generation Wireless Networks.  IEEE Open Journal of Vehicular Technology, 1, 45-66. https://doi.org/:10.1109/OJVT.2020.2965100
Wang, J., Liu, J., Li, J., and Kato, N. (2023). Artificial Intelligence-Assisted Network Slicing: Network Assurance and Service Provisioning in 6G.  IEEE Vehicular Technology Magazine, 18 (1), 49-58. https://doi.org/:10.1109/MVT.2022.3228399
Wijethilaka, S., and Liyanage, M. (2021). Survey on Network Slicing for Internet of Things Realization in 5G Networks.  IEEE Communications Surveys & Tutorials, 23 (2), 957-994. https://doi.org/:10.1109/COMST.2021.3067807
Wu, W., Zhou, C., Li, M., Wu, H., Zhou, H., Zhang, N., Shen, X. S., et al. (2022). AI-Native Network Slicing for 6G Networks.  IEEE Wireless Communications, 29 (1), 96-103. https://doi.org/:10.1109/MWC.001.2100338
Yang, H., Alphones, A., Xiong, Z., Niyato, D., Zhao, J., and Wu, K. (2020). Artificial-Intelligence-Enabled Intelligent 6G Networks. IEEE Network, 34 (6), 272-280. https://doi.org/:10.1109/MNET.011.2000195
You, C., He, X., Xu, J., Yang, P., and Quek, T. Q. S. (2023). Sustainable Service-Oriented RAN Slicing for AI-Native 6G Networks. 21st International Symposium on Modeling and Optimization in Mobile, Ad Hoc, and Wireless Networks (WiOpt), 24-27 Aug. https://doi.org/:10.23919/WiOpt58741.2023.10349874
Zhou, F., Yu, P., Feng, L., Qiu, X., Wang, Z., Meng, L., Kadoch, M., et al. (2020). Automatic Network Slicing for IoT in Smart City.  IEEE Wireless Communications, 27 (6), 108-115. https://doi.org/:10.1109/MWC.001.2000069