Lilhore Umesh Kumar, Manoharan Poongodi, Simaiya Sarita, Alroobaea Roobaea, Alsafyani Majed, Baqasah Abdullah M, Dalal Surjeet, Sharma Ashish, Raahemifar Kaamran
Department of Computer Science and Engineering, Chandigarh University, Gharuan, Mohali 140413, India.
College of Science and Engineering, Hamad Bin Khalifa University, Qatar Foundation, Doha P.O Box 5825, Qatar.
Sensors (Basel). 2023 Sep 13;23(18):7856. doi: 10.3390/s23187856.
Industrial automation systems are undergoing a revolutionary change with the use of Internet-connected operating equipment and the adoption of cutting-edge advanced technology such as AI, IoT, cloud computing, and deep learning within business organizations. These innovative and additional solutions are facilitating Industry 4.0. However, the emergence of these technological advances and the quality solutions that they enable will also introduce unique security challenges whose consequence needs to be identified. This research presents a hybrid intrusion detection model (HIDM) that uses OCNN-LSTM and transfer learning (TL) for Industry 4.0. The proposed model utilizes an optimized CNN by using enhanced parameters of the CNN via the grey wolf optimizer (GWO) method, which fine-tunes the CNN parameters and helps to improve the model's prediction accuracy. The transfer learning model helps to train the model, and it transfers the knowledge to the OCNN-LSTM model. The TL method enhances the training process, acquiring the necessary knowledge from the OCNN-LSTM model and utilizing it in each next cycle, which helps to improve detection accuracy. To measure the performance of the proposed model, we conducted a multi-class classification analysis on various online industrial IDS datasets, i.e., ToN-IoT and UNW-NB15. We have conducted two experiments for these two datasets, and various performance-measuring parameters, i.e., precision, F-measure, recall, accuracy, and detection rate, were calculated for the OCNN-LSTM model with and without TL and also for the CNN and LSTM models. For the ToN-IoT dataset, the OCNN-LSTM with TL model achieved a precision of 92.7%; for the UNW-NB15 dataset, the precision was 94.25%, which is higher than OCNN-LSTM without TL.
随着联网操作设备的使用以及商业组织采用人工智能、物联网、云计算和深度学习等前沿先进技术,工业自动化系统正在经历一场变革性的变化。这些创新和附加解决方案正在推动工业4.0的发展。然而,这些技术进步及其带来的高质量解决方案的出现,也将带来独特的安全挑战,其后果需要加以识别。本研究提出了一种用于工业4.0的混合入侵检测模型(HIDM),该模型使用OCNN-LSTM和迁移学习(TL)。所提出的模型通过灰狼优化器(GWO)方法使用卷积神经网络(CNN)的增强参数来优化CNN,从而微调CNN参数并有助于提高模型的预测准确性。迁移学习模型有助于训练该模型,并将知识转移到OCNN-LSTM模型中。TL方法增强了训练过程,从OCNN-LSTM模型中获取必要的知识并在每个下一个周期中加以利用,这有助于提高检测准确性。为了衡量所提出模型的性能,我们对各种在线工业入侵检测系统(IDS)数据集,即ToN-IoT和UNW-NB15进行了多类分类分析。我们针对这两个数据集进行了两项实验,并计算了带有和不带有TL的OCNN-LSTM模型以及CNN和LSTM模型的各种性能测量参数,即精度、F值、召回率、准确率和检测率。对于ToN-IoT数据集,带有TL的OCNN-LSTM模型的精度达到了92.7%;对于UNW-NB15数据集,精度为94.25%,高于不带有TL的OCNN-LSTM模型。