Smart City Gnosys

Smart city article details

Title Toward An Intrusion Detection Model For Iot-Based Smart Environments
ID_Doc 57650
Authors Hazman C.; Guezzaz A.; Benkirane S.; Azrour M.
Year 2024
Published Multimedia Tools and Applications, 83, 22
DOI http://dx.doi.org/10.1007/s11042-023-16436-0
Abstract Nowadays, modern Internet of Things (IoT) applications are enabling smart cities across the world. They provide remote device monitoring, management, and control, and even the extraction of new perspectives and actionable data from massive amounts of real-time data. A high degree of information technology integration and extensive utilization of resources are two biggest features of smart cities. Due to the obvious increasing amount and mobility of such distributed interconnected objects, attackers are becoming increasingly interested in them. Hence, a set of approaches have been developed to improve IoT Security. Intrusion detection systems (IDS) have previously gotten a lot of attention in the research field and industry. Therefore, several intrusion detection systems (IDSs) relies on approaches of machine learning (ML) and deep learning (DL) have been suggested to detect malicious intrusions. This study describes a revolutionary intrusion detection methodology for IoT-based smart environments that uses Ensemble Learning. The approach typically presented an optimum anomaly detection model which is based on AdaBoost and the Boruta feature selection technique based on the Xgboost algorithm. Furthermore, the suggested model metrics have been evaluated utilizing the NSL-KDD and BoT-IoT datasets. When compared to existing IDS, the results demonstrate that the proposed method produces excellent performance metrics in high accuracy (ACC), recall, and F1-score. It gives 99.9% on record detection and computation time. © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2023.
Author Keywords Ensemble learning; IDS; IoT security; Machine learning; Smart environments


Similar Articles


Id Similarity Authors Title Published
12988 View0.953Hazman 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)
35183 View0.931Hazman C.; Guezzaz A.; Benkirane S.; Azrour M.Lids-Sioel: Intrusion Detection Framework For Iot-Based Smart Environments Security Using Ensemble LearningCluster Computing, 26, 6 (2023)
957 View0.925Houichi M.; Jaidi F.; Bouhoula A.A Comprehensive Study Of Intrusion Detection Within Internet Of Things-Based Smart Cities: Synthesis, Analysis And A Novel Approach2023 International Wireless Communications and Mobile Computing, IWCMC 2023 (2023)
22935 View0.924Merlin 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)
2187 View0.922Gill K.S.; Dhillon A.A Hybrid Machine Learning Framework For Intrusion Detection System In Smart CitiesEvolving Systems, 15, 6 (2024)
1446 View0.92Rakha M.A.; Akbar A.; Chhabra G.; Kaushik K.; Arshi O.; Khan I.U.A Detailed Comparative Study Of Ai-Based Intrusion Detection System For Smart CitiesProceedings of International Conference on Communication, Computer Sciences and Engineering, IC3SE 2024 (2024)
8070 View0.919Indra 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)
33346 View0.917Berhili M.; Chaieb O.; Benabdellah M.Intrusion Detection Systems In Iot Based On Machine Learning: A State Of The ArtProcedia Computer Science, 251 (2024)
59592 View0.913Khatkar M.; Kumar K.; Kumar B.Unfolding The Network Dataset To Understand The Contribution Of Features For Detecting Malicious Activities Using Ai/MlMaterials Today: Proceedings, 59 (2022)
5688 View0.912Hamdan M.; Eldhai A.M.; Abdelsalam S.; Ullah K.; Bashir A.K.; Marsono M.N.; Kon F.; Batista D.M.A Two-Tier Anomaly-Based Intrusion Detection Approach For Iot-Enabled Smart CitiesIEEE INFOCOM 2023 - Conference on Computer Communications Workshops, INFOCOM WKSHPS 2023 (2023)