Dash, Pandit Byomakesha and Nayak, Janmenjoy and Vimal, S. and Shah, Sayed Chhattan and Bilal, Muhammad (2026) Enhancing IoMT Intrusion Detection through Nature Inspired Optimization-Based Gated Recurrent Unit Neural Network. IEEE Open Journal of the Communications Society, 7. pp. 4129-4146. ISSN 2644-125X
Full text not available from this repository.Abstract
Internet of Medical Things (IoMT) devices have grown rapidly in size across Industrial Control Systems (ICS) and IoT-enabled Cyber-Physical Systems (CPS), thereby increasing susceptibility to more advanced cyberattacks, and the need to use highly sensitive and timely intrusion detection mechanisms. In this paper, a new GOOSE-optimized Gated Recurrent Unit (GOOSE_GRU) model has been suggested to make use of a powerful and intelligent intrusion-detecting model. The GOOSE metaheuristic algorithm is doing the most effective hyper-parameter optimization of the GRU framework and increasing convergence speed and classification stability. As demonstrated in experimental results, the proposed GOOSE_GRU model results in 100 percent accuracy, 1.0 ROC-AUC alongside almost perfect precision (0.9999), recall (0.9999) and F1-score (0.9999) on the test data, compared to conventional deep learning (DL) models such as DNN, RNN, CNN, LSTM, standard GRU, and other optimized variants such as PSO_GRU, GWO_GRU and FA_GRU which resulted in maximum accuracies Moreover, the suggested model lowers the computation cost at the expense of maintaining a high-quality generalization at the 10-fold stratified validation. These findings approve the efficacy, strength, and realistic acceptability of the suggested framework in safeguarding real-time IoMT-enabled ICS and CPS environments in regard to the emerging cyber dangers.