Smart City Gnosys

Smart city article details

Title Anomaly-Based Intrusion Detection Approach For Iot Networks Using Machine Learning
ID_Doc 9646
Authors Maniriho P.; Niyigaba E.; Bizimana Z.; Twiringiyimana V.; Mahoro L.J.; Ahmad T.
Year 2020
Published CENIM 2020 - Proceeding: International Conference on Computer Engineering, Network, and Intelligent Multimedia 2020
DOI http://dx.doi.org/10.1109/CENIM51130.2020.9297958
Abstract The proliferation of the Internet of Things (IoT) devices in smart environments such as smart cities or smart home facilitate communication between various objects. Nevertheless, this technological advancement comes with security challenges of IoT devices. Thus, current attacks targeting IoT networks have become motivating factors in implementing security mechanisms. Such attacks come in the form of intrusion or anomalies. Anomaly detection mechanisms have been implemented to prevent confidential resources from malevolent users. Therefore, this paper presents a new anomaly-based approach for IoT networks which is implemented with a hybrid feature selection engine that only selects most relevant features; and the Random Forest algorithm which classifies each traffic as normal or anomalous. The performance was evaluated using IoTID20, one of the latest anomaly detection datasets collected in the IoT Environment. The experimental results show that the proposed method achieves relatively high accuracy while detecting DoS (99.95%), MITM (99.97%), Scanning (99.96%) attacks. © 2020 IEEE.
Author Keywords anomaly detection; internet of things; intrusion detection system; machine learning; network security


Similar Articles


Id Similarity Authors Title Published
2483 View0.929Nepolo E.; Ngxande M.; Zodi G.-A.L.A Machine Learning-Based Performance Analysis Of Feature Selection Methods For Anomaly Detection For Iot Network SecurityLearning and Analytics in Intelligent Systems, 43 (2025)
28563 View0.928Ansari L.Guarding The Future: Anomaly Detection In Iot-Enabled Smart CitiesLecture Notes in Networks and Systems, 1110 LNNS (2024)
33346 View0.925Berhili M.; Chaieb O.; Benabdellah M.Intrusion Detection Systems In Iot Based On Machine Learning: A State Of The ArtProcedia Computer Science, 251 (2024)
9197 View0.922Janani Pandeeswari G.; Jeyanthi S.Analysis Of Intrusion Detection Using Machine Learning Techniques2nd IEEE International Conference on Advanced Technologies in Intelligent Control, Environment, Computing and Communication Engineering, ICATIECE 2022 (2022)
47766 View0.92Plazas Olaya M.K.; Vergara Tejada J.A.; Aedo Cobo J.E.Securing Microservices-Based Iot Networks: Real-Time Anomaly Detection Using Machine LearningJournal of Computer Networks and Communications, 2024 (2024)
36913 View0.917Girubagari N.; Ravi T.N.Methods Of Anomaly Detection For The Prevention And Detection Of Cyber AttacksInternational Journal of Intelligent Engineering Informatics, 11, 4 (2024)
5689 View0.914Srivastav D.; Srivastava P.A Two-Tier Hybrid Ensemble Learning Pipeline For Intrusion Detection Systems In Iot NetworksJournal of Ambient Intelligence and Humanized Computing, 14, 4 (2023)
6153 View0.909Alrashdi I.; Alqazzaz A.; Aloufi E.; Alharthi R.; Zohdy M.; Ming H.Ad-Iot: Anomaly Detection Of Iot Cyberattacks In Smart City Using Machine Learning2019 IEEE 9th Annual Computing and Communication Workshop and Conference, CCWC 2019 (2019)
2510 View0.908Florrence J.M.; Antoinette A.; Buvaneswari S.; Wanare A.L.; Vashistha A.; Mulpuri M.; Rambabu R.A Mathematical Model For Enhancing Cybersecurity In Iot Networks Using Lstm-Based Anomaly Detection And OptimizationCommunications on Applied Nonlinear Analysis, 32, 2 (2025)
57650 View0.908Hazman C.; Guezzaz A.; Benkirane S.; Azrour M.Toward An Intrusion Detection Model For Iot-Based Smart EnvironmentsMultimedia Tools and Applications, 83, 22 (2024)