Smart City Gnosys

Smart city article details

Title An Intrusion Detection System Using A Machine Learning Approach In Iot-Based Smart Cities
ID_Doc 8629
Authors Liloja; Ranjana P.
Year 2023
Published Journal of Internet Services and Information Security, 13, 1
DOI http://dx.doi.org/10.58346/JISIS.2023.I1.002
Abstract For a long time, the digitization of all aspects of life in current cultures is seen as a procured gain. In any way, the computerized world is noticeably flawed and numerous risks and dangers are present as in the terrestrial land. People's daily life has changed due to the quick and advanced level of improvement in smart cities. The most important problem that needs to be looked upon is citizens' life, security and privacy issues. The use of Deep Learning (DL), a subcategory of Machine learning (ML) has excelled in the field of smart cities. So, the following stages in this paper bring an effective intrusion detection system using deep learning. a) Data collection from standard datasets such as GPRS, CIDDS001, as well as UNSW-NB15 contains various types of attacks, these will be given for b) Preprocessing, for eliminating anomalies using missing value removal, and normalization techniques. Then from those data, quintessential features are extracted using Autoencoder (AE) and then from those several features, d) feature selection for selecting and mostly removing timestamps from attack dataset using Random Forest (RF) and finally for e) prediction with help of Restricted Boltzmann Network (RBN). Experiment evaluation states that proposed model (RF-RBN) performed better over various state-of-art models under various measures (accuracy:0.95, sensitivity:0.96, specificity:0.97, detection rate:0.95). © 2023, Innovative Information Science and Technology Research Group. All rights reserved.
Author Keywords Deep Learning; Intrusion Detection System; IOT; Machine Learning; Restricted Boltzmann Network; Smart Cities


Similar Articles


Id Similarity Authors Title Published
17907 View0.952Liloja; Ranjana P.Deep Learning Methodology For Detecting Breaches To Improve Security In Smart Cities2023 IEEE International Conference on Research Methodologies in Knowledge Management, Artificial Intelligence and Telecommunication Engineering, RMKMATE 2023 (2023)
1446 View0.943Rakha 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)
5274 View0.926Nandhini N.; Manikandan V.; Manavaalan G.; Elango S.; Jeevakarunya C.; Kumar P.V.A Survey On Intrusion Detection System In Smart City: Security Concerns2023 7th International Conference on Computer Applications in Electrical Engineering-Recent Advances: Sustainable Transportation Systems, CERA 2023 (2023)
17979 View0.921Chinnasamy R.; Malliga S.; Sengupta N.Deep Learning-Driven Intrusion Detection Systems For Smart Cities-A Systematic StudyIET Conference Proceedings, 2022, 26 (2022)
2187 View0.919Gill K.S.; Dhillon A.A Hybrid Machine Learning Framework For Intrusion Detection System In Smart CitiesEvolving Systems, 15, 6 (2024)
814 View0.919Basheer L.; Ranjana P.A Comparative Study Of Various Intrusion Detections In Smart Cities Using Machine Learning2022 International Conference on IoT and Blockchain Technology, ICIBT 2022 (2022)
8304 View0.918Selvam R.; Velliangiri S.An Improving Intrusion Detection Model Based On Novel Cnn Technique Using Recent Cic-Ids DatasetsInternational Conference on Distributed Computing and Optimization Techniques, ICDCOT 2024 (2024)
5144 View0.916Liao 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)
9785 View0.916Anand R.; Jain M.; Jain L.; Narwal B.; Jaiswal A.Application Of An Intrusion Detection System In Smart Cities: A ReviewAIST 2022 - 4th International Conference on Artificial Intelligence and Speech Technology (2022)
33032 View0.915Dawoud 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)