Smart City Gnosys

Smart city article details

Title Anomaly Detection Using Deep Learning Approach For Iot Smart City Applications
ID_Doc 9637
Authors Shibu S.; Kirubakaran S.; Remamany K.P.; Ahamed S.; Chitra L.; Kshirsagar P.R.; Tirth V.
Year 2025
Published Multimedia Tools and Applications, 84, 17
DOI http://dx.doi.org/10.1007/s11042-024-19176-x
Abstract With the advancements of IoT devices, many smart applications start to rule this era. In particular, smart cities has been adapted and realized by many countries around the world. In smart cities, vas amount of data is generated at every second. This vast data need a transmission medium which could be wireless standard. However, security is the main concern in such applications since the smart transmission always binds with anomalies. The existing anomaly detection systems need improvement in accuracy due to inefficient feature extraction and selection procedure. This paper proposes an accurate anomaly detection technique that built upon deep learning approach. We proposed a Combined Deep Q-Learning (CDQL) algorithm for anomaly detection. Priory, optimal features are selected by using Spider Monkey Optimizer (SMO). With the optimal features, CDQL detects anomalies accurately. In addition, the CDQL algorithm learns the environment in order to monitor the network data continuously. This continuous monitoring and optimum features helps in accuracy improvement up to 98%. © The Author(s), under exclusive licence to Springer Science+Business Media, LLC, part of Springer Nature 2024.
Author Keywords Anomaly Detection; Deep Learning; IoT; Reinforcement Learning; Smart City


Similar Articles


Id Similarity Authors Title Published
17981 View0.907Himdi T.; Ishaque M.Deep Learning-Enhanced Anomaly Detection For Iot Security In Smart CitiesARPN Journal of Engineering and Applied Sciences, 19, 6 (2024)
33032 View0.891Dawoud 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)
7014 View0.889Reis M.J.C.S.Ai-Driven Anomaly Detection For Securing Iot Devices In 5G-Enabled Smart CitiesElectronics (Switzerland), 14, 12 (2025)
6497 View0.889Goyal 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)
9648 View0.887Alsoufi 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)
5274 View0.883Nandhini 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)
43509 View0.883Hasani Z.; Krrabaj S.; Krasniqi M.Proposed Model For Real-Time Anomaly Detection In Big Iot Sensor Data For Smart CityInternational Journal of Interactive Mobile Technologies, 18, 3 (2024)
33620 View0.881Villegas-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)
7763 View0.88Stanly Jayaprakash J.; Kodati S.; Kanchana A.; Al-Farouni M.; Ramachandra A.C.An Effective Cyber Security Threat Detection In Smart Cities Using Dueling Deep Q Networks4th IEEE International Conference on Mobile Networks and Wireless Communications, ICMNWC 2024 (2024)
30690 View0.879Khayyat M.M.Improved Bacterial Foraging Optimization With Deep Learning Based Anomaly Detection In Smart CitiesAlexandria Engineering Journal, 75 (2023)