AI-assisted network security in smart city IoT frameworks
Abstract
As cities transform into smart cities, they are increasingly filled with Internet of Things (IoT) devices that bring new challenges to keeping networks secure. This paper explores how Artificial Intelligence (AI) can be a game changer for network security in these smart city environments. It discusses how AI can improve traditional security by providing real-time threat detection, automated reactions, and forward-looking threat analysis. We particularly look at how machine learning can power Intrusion Detection Systems (IDS) to spot unusual patterns in network traffic, helping to predict and mitigate potential threats more accurately. We also explore how reinforcement learning can dynamically tweak network settings to enhance security while efficiently using resources. These AI-driven techniques speed up response times compared to manual methods and boost the precision of detecting real threats while minimizing false alarms. This study highlights AI's vital role in safeguarding critical urban infrastructure like energy grids, transport systems, and healthcare networks. It also considers the complexities AI introduces, such as issues with privacy, potential biases, and the need for clear system transparency, pointing out that these issues require thoughtful consideration as we apply AI in smart city security.
Keywords:
Artificial intelligence, Security, Smart cities, Predictive threat analysis, Intrusion detection systemsReferences
- [1] Panda, A. K., Lenka, A. A., Mohapatra, A., Rath, B. K., Parida, A. A., & Mohapatra, H. (2025). Integrating cloud computing for intelligent transportation solutions in smart cities: A short review. In Interdisciplinary approaches to transportation and urban planning (pp. 121–142). IGI Global. https://doi.org/10.4018/979-8-3693-6695-0.ch005
- [2] Pratap, A., Nayan, H., Panda, P., & Mohapatra, H. (2024). Emerging technologies and trends in the future of smart cities and IoT: A review. Journal of network security computer networks, 10(2), 28–38. https://matjournals.net/engineering/index.php/JONSCN/article/view/606
- [3] Lv, Z., Qiao, L., Kumar Singh, A., & Wang, Q. (2021). AI-empowered IoT Security for smart cities. ACM transactions on internet technology, 21(4), 1–21. https://doi.org/10.1145/3406115
- [4] Alahi, M. E. E., Sukkuea, A., Tina, F. W., Nag, A., Kurdthongmee, W., Suwannarat, K., & Mukhopadhyay, S. C. (2023). Integration of IoT-enabled technologies and artificial intelligence (AI) for smart city scenario: Recent advancements and future trends. Sensors, 23(11), 5206. https://doi.org/10.3390/s23115206
- [5] Kabir, M. H., Hasan, K. F., Hasan, M. K., & Ansari, K. (2022). Explainable artificial intelligence for smart city application: A secure and trusted platform. In Explainable artificial intelligence for cyber security: next generation artificial intelligence (pp. 241–263). Springer. https://doi.org/10.1007/978-3-030-96630-0_11
- [6] Wolniak, R., & Stecuła, K. (2024). Artificial intelligence in smart cities—applications, barriers, and future directions: A review. Smart cities, 7(3), 1346–1389. https://doi.org/10.3390/smartcities7030057
- [7] Koormala, H., Reddy, C. K. K., Balusa, V. S., Jillapalli, N., & Hanafiah, M. M. (2025). Enhancing urban safety: AI-driven security solutions for smart cities. In Information security governance using artificial intelligence of things in smart environments (pp. 146–163). CRC Press. https://www.taylorfrancis.com/chapters/edit/10.1201/9781003606307-7/enhancing-urban-safety-harika-koormala-kishor-kumar-reddy-vasavi-sravanthi-balusa-nikitha-jillapalli-marlia-mohd-hanafiah
- [8] Allam, Z., & Dhunny, Z. A. (2019). On big data, artificial intelligence and smart cities. Cities, 89, 80–91. https://doi.org/10.1016/j.cities.2019.01.032
- [9] Mohapatra, H., Rath, A. K., Balajee, R. M., & Devi, H. S. (2022). Comparative case study on smart city versus digital city. In Handbook of research of internet of things and cyber-physical systems (pp. 51–78). Apple Academic Press. https://doi.org/10.1201/9781003277323-4
- [10] Mohapatra, H. (2021). Socio-technical challenges in the implementation of smart city. 2021 international conference on innovation and intelligence for informatics, computing, and technologies, 3ICT 2021 (pp. 57–62). IEEE. https://doi.org/10.1109/3ICT53449.2021.9581905
- [11] Prabha, B. V., Yasotha, B., Senthilkumar, C., Pandi, V. S., & others. (2023). Enhancing residential security with ai-powered intrusion detection systems. 2023 international conference on sustainable communication networks and application (ICSCNA) (pp. 1510–1515). IEEE. https://doi.org/10.1109/ICSCNA58489.2023.10370042
- [12] Hussain, I. (2024). Secure, sustainable smart cities and the Internet of Things: Perspectives, challenges, and future directions. Sustainability, 16(4), 1390. https://doi.org/10.3390/su16041390
- [13] Priyadarshini, I. (2024). Anomaly detection of IoT cyberattacks in smart cities using federated learning and split learning. Big data and cognitive computing, 8(3), 21. https://doi.org/10.3390/bdcc8030021
- [14] Bee Smart City. (2023). The use of AI for smart urban services in smart cities. https://www.beesmart.city/en/smart-city-blog/the-use-of-ai-for-smart-urban-services-in-smart-cities
- [15] Andrade, R. O., Yoo, S. G., Tello-Oquendo, L., & Ortiz-Garcés, I. (2020). A comprehensive study of the IoT cybersecurity in smart cities. IEEE access, 8, 228922–228941. https://doi.org/10.1109/ACCESS.2020.3046442
- [16] KaaIoT. (2024). AI and IoT for smart city public security: Top 6 use cases. www.kaaiot.com
- [17] Buttice, C. (2022). Top 14 AI use cases: Artificial intelligence in smart cities. Techopedia. https://www. techopedia. com/top-14-ai-use-cases-artificial~…. www.techopedia.com