Smart City Gnosys

Smart city article details

Title Ensemble-Based Cyber Intrusion Detection For Robust Smart City Protection
ID_Doc 24125
Authors Alhowaide A.; Alsmadi I.; Alsinglawi B.
Year 2024
Published Proceedings - 2024 20th International Conference on Distributed Computing in Smart Systems and the Internet of Things, DCOSS-IoT 2024
DOI http://dx.doi.org/10.1109/DCOSS-IoT61029.2024.00027
Abstract The rapid rise of 5G networks has accelerated the integration of smart cities, marking the emergence of increased intelligence in urban environments, often referred to as Smart Cities. This swift integration has interconnected a wide range of devices and systems, thereby exposing them to potential vulnerabilities. As a result, a smart urban landscape has emerged where valuable and sensitive information is shared without adequate attention to security considerations. Given these challenges, it is essential to implement an effective cloud-based Intrusion Detection System (IDS) for the security of smart cities. This work examines the reliability and robustness of various ensemble learning models, focusing on evaluating the performance and efficiency of an IDS strategy based on machine learning to enhance the security of IoT in smart urban networks. We conducted experimental procedures on three commonly used datasets to achieve the objectives of our study. The results obtained from these procedures are crucial for developing practical IDS solutions that address the ever-changing challenges posed by diverse, smart, cloud-based network traffic systems in smart cities. © 2024 IEEE.
Author Keywords Internet of Things; Intrusion Detection Systems; Machine Learning; Network Security; Smart Cities


Similar Articles


Id Similarity Authors Title Published
47721 View0.926Ghazi, MR; Raghava, NSSecuring Cloud-Enabled Smart Cities By Detecting Intrusion Using Sparkbased Stacking Ensemble Of Machine Learning AlgorithmsELECTRONIC RESEARCH ARCHIVE, 32, 2 (2024)
47720 View0.924Ghazi M.R.; Raghava N.S.Securing Cloud-Enabled Smart Cities By Detecting Intrusion Using Spark-Based Stacking Ensemble Of Machine Learning AlgorithmsElectronic Research Archive, 32, 2 (2024)
8070 View0.923Indra G.; Nirmala E.; Nirmala G.; Senthilvel P.G.An Ensemble Learning Approach For Intrusion Detection In Iot-Based Smart CitiesPeer-to-Peer Networking and Applications, 17, 6 (2024)
22935 View0.913Merlin R.T.; Ravi R.Empowering Smart City Iot Network Intrusion Detection With Advanced Ensemble Learning-Based Feature SelectionInternational Journal of Electrical and Electronics Research, 12, 2 (2024)
19430 View0.912Alhanaya M.; Al-Shqeerat K.Developing An Integrated Framework For Securing Internet Of Things Traffic In Smart Cities Using Machine Learning TechniquesApplied Sciences (Switzerland), 13, 16 (2023)
12988 View0.907Hazman C.; Benkirane S.; Guezzaz A.; Azrour M.; Abdedaime M.Building An Intelligent Anomaly Detection Model With Ensemble Learning For Iot-Based Smart CitiesEnvironmental Science and Engineering (2023)
57650 View0.906Hazman C.; Guezzaz A.; Benkirane S.; Azrour M.Toward An Intrusion Detection Model For Iot-Based Smart EnvironmentsMultimedia Tools and Applications, 83, 22 (2024)
14401 View0.906Gore S.; Mahankale N.; Gore S.; Kadu S.; Belhe S.A.Cloud Computing For Effective Cyber Security Attack Detection In Smart Cities2023 4th IEEE Global Conference for Advancement in Technology, GCAT 2023 (2023)
2187 View0.905Gill K.S.; Dhillon A.A Hybrid Machine Learning Framework For Intrusion Detection System In Smart CitiesEvolving Systems, 15, 6 (2024)
814 View0.903Basheer L.; Ranjana P.A Comparative Study Of Various Intrusion Detections In Smart Cities Using Machine Learning2022 International Conference on IoT and Blockchain Technology, ICIBT 2022 (2022)