Smart City Gnosys

Smart city article details

Title A Deep Dive Into Artificial Intelligence With Enhanced Optimization-Based Security Breach Detection In Internet Of Health Things Enabled Smart City Environment
ID_Doc 1319
Authors Jayanthi S.; Suhasini S.; Sharmili N.; Laxmi Lydia E.; Shwetha V.; Dash B.B.; Bachute M.
Year 2025
Published Scientific Reports, 15, 1
DOI http://dx.doi.org/10.1038/s41598-025-05850-z
Abstract Internet of Health Things (IoHT) plays a vital role in everyday routine by giving electronic healthcare services and the ability to improve patient care quality. IoHT applications and devices become widely susceptible to cyber-attacks as the tools are smaller and varied. Additionally, it is of dual significance once IoHT contains tools applied in the healthcare field. In the context of smart cities, IoHT enables proactive health management, remote diagnostics, and continuous patient monitoring. Therefore, it is essential to advance a strong cyber-attack detection method in the IoHT environments to mitigate security risks and prevent devices from being vulnerable to cyber-attacks. So, improving an intrusion detection system (IDS) for attack identification and detection using the IoHT method is fundamentally necessary. Deep learning (DL) has recently been applied in attack detection because it can remove and learn deeper features of known attacks and identify unknown attacks by analyzing network traffic for anomalous patterns. This study presents a Securing Attack Detection through Deep Belief Networks and an Advanced Metaheuristic Optimization Algorithm (SADDBN-AMOA) model in smart city-based IoHT networks. The main aim of the SADDBN-AMOA technique is to provide a resilient attack detection method in the IoHT environment of smart cities to mitigate security threats. The data pre-processing phase applies the Z-score normalization method for converting input data into a structured pattern. For the selection of the feature process, the proposed SADDBN-AMOA model designs a slime mould optimization (SMO) model to select the most related features from the data. Followed by the deep belief network (DBN) method is used for the attack classification method. Finally, the improved Harris Hawk optimization (IHHO) approach fine-tunes the hyperparameter values of the DBN method, leading to superior classification performances. The effectiveness of the SADDBN-AMOA method is investigated under the IoT healthcare security dataset. The experimental validation of the SADDBN-AMOA method illustrated a superior accuracy value of 98.71% over existing models.
Author Keywords Artificial intelligence; Attack detection; Feature selection; Harris Hawk optimization; Internet of health things; Intrusion detection systems; Smart cities


Similar Articles


Id Similarity Authors Title Published
58830 View0.885Sharma N.; Shambharkar P.G.Transforming Security In Internet Of Medical Things With Advanced Deep Learning-Based Intrusion Detection FrameworksApplied Soft Computing, 180 (2025)
11116 View0.868Naeem H.; Alsirhani A.; Alserhani F.M.; Ullah F.; Krejcar O.Augmenting Internet Of Medical Things Security: Deep Ensemble Integration And Methodological FusionCMES - Computer Modeling in Engineering and Sciences, 141, 3 (2024)
30690 View0.862Khayyat M.M.Improved Bacterial Foraging Optimization With Deep Learning Based Anomaly Detection In Smart CitiesAlexandria Engineering Journal, 75 (2023)
33337 View0.857Saba T.Intrusion Detection In Smart City Hospitals Using Ensemble ClassifiersProceedings - International Conference on Developments in eSystems Engineering, DeSE, 2020-December (2020)
2052 View0.855Elsayed R.; Hamada R.; Hammoudeh M.; Abdalla M.; Elsaid S.A.A Hierarchical Deep Learning-Based Intrusion Detection Architecture For Clustered Internet Of ThingsJournal of Sensor and Actuator Networks, 12, 1 (2023)
8876 View0.854Duraisamy, A; Subramaniam, M; Rene Robin, CRAn Optimized Deep Learning Based Security Enhancement And Attack Detection On Iot Using Ids And Kh-Aes For Smart CitiesSTUDIES IN INFORMATICS AND CONTROL, 30, 2 (2021)
48148 View0.853Dash P.B.; Senapati M.R.; Behera H.S.; Nayak J.; Vimal S.Self-Adaptive Memetic Firefly Algorithm And Catboost-Based Security Framework For Iot Healthcare EnvironmentJournal of Engineering Mathematics, 144, 1 (2024)
964 View0.851Sah A.; Bhushan B.; Shetty C.A Comprehensive Study On Artificial Intelligence (Ai) Driven Internet Of Healthcare Things (Ioht)Communications in Computer and Information Science, 2231 CCIS (2025)
23840 View0.851Lazrek G.; Chetioui K.; Balboul Y.Enhancing Iomt Security: A Conception Of Rfe-Ridge And Ml/Dl For Anomaly Intrusion DetectionLecture Notes in Networks and Systems, 838 LNNS (2024)