Smart City Gnosys

Smart city article details

Title A Hybrid Machine Learning Approach To Anomaly Detection In Industrial Iot
ID_Doc 2185
Authors Jayesh T.P.; Pandiaraj K.; Paul A.; Chandran R.R.; Menon P.P.
Year 2023
Published ACCESS 2023 - 2023 3rd International Conference on Advances in Computing, Communication, Embedded and Secure Systems
DOI http://dx.doi.org/10.1109/ACCESS57397.2023.10199711
Abstract IIoT is the integration of conventional IoT principles into industrial operations. IIoT has a wide range of practical applications, including but not limited to supply chain management, connected cars, smart grids, smart cities, and smart homes. Regrettably, these systems are increasingly becoming the focus of cybercrime attacks. Machine learning is a promising technology for creating and implementing resilient security measures in IIoT networks. A new and innovative approach to detecting cyberattacks in the IIoT is proposed in this document, through the use of a hybrid machine classifier (HMC). The HMC model is a unique amalgamation of different ML models, such as K-nearest neighbor (KNN), extra trees (ET), gradient boosting (GB), AdaBoost (AB), linear discriminant analysis (LDA), ), naive Bayes (NB), support vector machine (SVM), random forest (RFlinear regression (LR), and classification and regression tree (CART). The DS2OS dataset is used to evaluate the proposed method's effectiveness. Several performance metrics, including recall, precision, accuracy, specificity, F1 score, detection rate, and ROC are used to evaluate the system's performance. The proposed model successfully distinguishes between normal and attack traffic, achieving an accuracy rate of 99.7% and 99.8%, respectively. To evaluate the effectiveness of the proposed method, its performance metrics were compared to those of other advanced attack detection algorithms. The outcomes demonstrated that the proposed model outperformed other ML and DL-based techniques © 2023 IEEE.
Author Keywords Attack detection; hybrid model; Industrial Internet of Things; machine learning; security; the intrusion detection system


Similar Articles


Id Similarity Authors Title Published
8079 View0.9Pareriya R.K.; Verma P.; Suhana P.An Ensemble Xgboost Approach For The Detection Of Cyber-Attacks In The Industrial Iot DomainBig Data Analytics in Fog-Enabled IoT Networks: Towards a Privacy and Security Perspective (2023)
9646 View0.894Maniriho P.; Niyigaba E.; Bizimana Z.; Twiringiyimana V.; Mahoro L.J.; Ahmad T.Anomaly-Based Intrusion Detection Approach For Iot Networks Using Machine LearningCENIM 2020 - Proceeding: International Conference on Computer Engineering, Network, and Intelligent Multimedia 2020 (2020)
2549 View0.892Ronghua M.A.A Method By Utilizing Deep Learning To Identify Malware Within Numerous Industrial Sensors On IotsInternational Journal of Advanced Computer Science and Applications, 15, 8 (2024)
5689 View0.891Srivastav 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)
24715 View0.89Ali M.; Pervez S.; Hosseini S.E.; Siddhu M.K.Evaluation And Detection Of Cyberattack In Iot-Based Smart City Networks Using Machine Learning On The Unsw-Nb15 DatasetInternational Journal of Online and Biomedical Engineering, 21, 2 (2025)
47766 View0.888Plazas 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)
23835 View0.883Arabiat A.; Altayeb M.Enhancing Internet Of Things Security: Evaluating Machine Learning Classifiers For Attack PredictionInternational Journal of Electrical and Computer Engineering, 14, 5 (2024)
38580 View0.882Nithya R.; Sundari J.J.A.; Rajesh Kanna B.; Balamurugan M.S.; Sindhuja R.; Srivastava A.Multimodal Sensor Data Fusion Based Cyberattack Detection In Industrial Internet Of Things Environment7th International Conference on Electronics, Communication and Aerospace Technology, ICECA 2023 - Proceedings (2023)
41565 View0.882Zhukabayeva T.; Ahmad Z.; Adamova A.; Karabayev N.; Mardenov Y.; Satybaldina D.Penetration Testing And Machine Learning-Driven Cybersecurity Framework For Iot And Smart City Wireless NetworksIEEE Access, 13 (2025)
36024 View0.881Sharma M.; Hazra A.; Tomar A.Machine Learning Techniques For Industrial Internet Of ThingsLearning Techniques for the Internet of Things (2024)