Smart City Gnosys

Smart city article details

Title Internet Of Things Intrusion Detection: A Deep Learning Approach
ID_Doc 33032
Authors Dawoud A.; Sianaki O.A.; Shahristani S.; Raun C.
Year 2020
Published 2020 IEEE Symposium Series on Computational Intelligence, SSCI 2020
DOI http://dx.doi.org/10.1109/SSCI47803.2020.9308293
Abstract The Internet of Things (IoT) is a shifting paradigm that allows the integration of billions of devices with the Internet. With its wide range of application domains, including smart cities, smart homes, and e-health, the IoT has created new challenges, particularly security threats. Traditional security solutions, such as firewalls and intrusion detection systems, need amending to fit the new networking paradigm. Given the recent advances in machine learning, we investigated the use of deep learning algorithms for anomaly detection. The IoT collects a massive amount of data from the environment, and deep learning is based on a set of algorithms striving for the data. Intrusion detection systems are used to expose network threats and are an effective means of protecting network assets. Anomaly detection is a conventional intrusion detection approach that separates normal and abnormal network traffic using statistical, rule-based, or machine learning models. Of the machine learning models, deep learning is a neural network algorithm that has provided breakthroughs in domains such as object and voice recognition. However, there are limitations in applying deep learning to network anomaly detection. This paper proposes a novel anomaly detection framework based on unsupervised deep learning algorithms for revealing network threats. Our research explores the applicability of deep learning to detect anomalies by evaluating the use of Restricted Boltzmann machines as generative energy-based models against Autoencoders as non-probabilistic algorithms. The study provides an in-depth analysis of unsupervised deep learning algorithms. The simulations studies show \approx 99% detection accuracy, which is significantly improved compared to the closely related work. © 2020 IEEE.
Author Keywords Autoencoders; Network intrusion detection; Restricted Boltzmann machines; Unsupervised deep learning


Similar Articles


Id Similarity Authors Title Published
9648 View0.96Alsoufi 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)
5144 View0.953Liao H.; Murah M.Z.; Hasan M.K.; Aman A.H.M.; Fang J.; Hu X.; Khan A.U.R.A Survey Of Deep Learning Technologies For Intrusion Detection In Internet Of ThingsIEEE Access, 12 (2024)
30732 View0.949Amine M.S.; Nada F.A.; Hosny K.M.Improved Model For Intrusion Detection In The Internet Of ThingsScientific Reports, 15, 1 (2025)
33346 View0.927Berhili M.; Chaieb O.; Benabdellah M.Intrusion Detection Systems In Iot Based On Machine Learning: A State Of The ArtProcedia Computer Science, 251 (2024)
33508 View0.927Saini K.S.; Chaudhary S.Investigation On Attack Detection In Iot Networks: A Study And Analysis Of The Existing Machine Learning And Deep Learning Techniques3rd International Conference on Intelligent Data Communication Technologies and Internet of Things, IDCIoT 2025 (2025)
6497 View0.926Goyal 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)
753 View0.923Sushant C.G.; Ajay V.L.; Sahay R.A Comparative Analysis Of Deep Learning Algorithms For Intrusion Detection In IotProceedings of the 2024 International Conference on Emerging Techniques in Computational Intelligence, ICETCI 2024 (2024)
17981 View0.923Himdi T.; Ishaque M.Deep Learning-Enhanced Anomaly Detection For Iot Security In Smart CitiesARPN Journal of Engineering and Applied Sciences, 19, 6 (2024)
23579 View0.922Prazeres N.; Costa R.L.D.C.; Santos L.; Rabadão C.Engineering The Application Of Machine Learning In An Ids Based On Iot Traffic FlowIntelligent Systems with Applications, 17 (2023)
17825 View0.922Kadheem Hammood B.A.; Sadiq A.T.Deep Learning Approaches For Iot Intrusion Detection SystemsIraqi Journal of Science, 65, 11 (2024)