计算机科学
人工智能
学习迁移
入侵检测系统
深度学习
云计算
过程(计算)
工业互联网
机器学习
物联网
度量(数据仓库)
自动化
传输(计算)
质量(理念)
数据挖掘
计算机安全
工程类
机械工程
哲学
认识论
并行计算
操作系统
作者
Umesh Kumar Lilhore,Poongodi Manoharan,Sarita Simaiya,Roobaea Alroobaea,Majed Alsafyani,Abdullah M. Baqasah,Surjeet Dalal,Ashish Sharma,Kaamran Raahemifar
出处
期刊:Sensors
[MDPI AG]
日期:2023-09-13
卷期号:23 (18): 7856-7856
被引量:24
摘要
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.
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