Smart City Gnosys

Smart city article details

Title Anomalous Behaviors Detection Of Iot Devices Through Ai-Based Methodologies
ID_Doc 9599
Authors Asghari A.; Bergantin F.; Forestiero A.; MacRi D.
Year 2024
Published Proceedings 7th IC2IE 2024 - 2024 International Conference of Computer and Informatics Engineering: Generative AI in Democratizing Access to Knowledge and Skills
DOI http://dx.doi.org/10.1109/IC2IE63342.2024.10748216
Abstract The rapid growth of Internet of Things (IoT) devices across sectors such as healthcare, manufacturing, and smart cities has substantially increased data volume and complexity, necessitating robust anomaly detection systems to identify critical issues, including system failures, security breaches, and inefficiencies. Traditional anomaly detection methods often struggle with the high-dimensional and dynamic nature of IoT data. This paper introduces an AI-based approach that combines deep autoencoders and transfer learning to enhance anomaly detection in IoT device behaviors. The autoencoders effectively learn detailed representations of normal operational data, enabling the identification of anomalies through significant reconstruction errors. To address the challenges posed by diverse IoT environments and limited labeled anomaly data, a transfer learning mechanism is employed to transfer knowledge from data-rich domains to those with scarce labeled data, thereby improving model generalizability and reducing the need for extensive labeled datasets. The proposed approach was evaluated using the NbaIoT dataset, demonstrating superior performance compared to traditional methods, with values of more than 90% in terms of Precision, Recall, and F-measure. These results indicate that the autoencoder-based transfer learning approach offers a scalable, adaptable, and highly accurate solution tailored to the unique characteristics of various IoT domains. © 2024 IEEE.
Author Keywords anomalous behaviors; autoencoders; internet of things; transfer learning


Similar Articles


Id Similarity Authors Title Published
6497 View0.891Goyal H.R.; Husain S.O.; Dixit K.K.; Boob N.S.; Reddy B.R.; Kumar J.; Sharma S.Advanced Deep Learning Approaches For Real-Time Anomaly Detection In Iot EnvironmentsProceedings of International Conference on Contemporary Computing and Informatics, IC3I 2024 (2024)
7014 View0.885Reis M.J.C.S.Ai-Driven Anomaly Detection For Securing Iot Devices In 5G-Enabled Smart CitiesElectronics (Switzerland), 14, 12 (2025)
17981 View0.877Himdi T.; Ishaque M.Deep Learning-Enhanced Anomaly Detection For Iot Security In Smart CitiesARPN Journal of Engineering and Applied Sciences, 19, 6 (2024)
7367 View0.877Albulayhi K.; Sheldon F.T.An Adaptive Deep-Ensemble Anomaly-Based Intrusion Detection System For The Internet Of Things2021 IEEE World AI IoT Congress, AIIoT 2021 (2021)
33032 View0.875Dawoud A.; Sianaki O.A.; Shahristani S.; Raun C.Internet Of Things Intrusion Detection: A Deep Learning Approach2020 IEEE Symposium Series on Computational Intelligence, SSCI 2020 (2020)
54151 View0.867Mancy H.; Naith Q.H.Swiniot: A Hierarchical Transformer-Based Framework For Behavioral Anomaly Detection In Iot-Driven Smart CitiesIEEE Access, 13 (2025)
33620 View0.865Villegas-Ch W.; Govea J.; Jaramillo-Alcazar A.Iot Anomaly Detection To Strengthen Cybersecurity In The Critical Infrastructure Of Smart CitiesApplied Sciences (Switzerland), 13, 19 (2023)
9646 View0.863Maniriho 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)
9648 View0.86Alsoufi M.A.; Razak S.; Siraj M.M.; Nafea I.; Ghaleb F.A.; Saeed F.; Nasser M.Anomaly-Based Intrusion Detection Systems In Iot Using Deep Learning: A Systematic Literature ReviewApplied Sciences (Switzerland), 11, 18 (2021)
2862 View0.86Vivek S.; Boby Clinton U.; Hoque N.A Multi-Task Learning Model For Iot Anomaly Traffic IdentificationLecture Notes in Electrical Engineering, 1233 LNEE (2025)