@Article{csse.2023.025216, AUTHOR = {R. Gopi, R. Sheeba, K. Anguraj, T. Chelladurai, Haya Mesfer Alshahrani, Nadhem Nemri, Tarek Lamoudan}, TITLE = {Intelligent Intrusion Detection System for Industrial Internet of Things Environment}, JOURNAL = {Computer Systems Science and Engineering}, VOLUME = {44}, YEAR = {2023}, NUMBER = {2}, PAGES = {1567--1582}, URL = {http://www.techscience.com/csse/v44n2/48252}, ISSN = {}, ABSTRACT = {Rapid increase in the large quantity of industrial data, Industry 4.0/5.0 poses several challenging issues such as heterogeneous data generation, data sensing and collection, real-time data processing, and high request arrival rates. The classical intrusion detection system (IDS) is not a practical solution to the Industry 4.0 environment owing to the resource limitations and complexity. To resolve these issues, this paper designs a new Chaotic Cuckoo Search Optimization Algorithm (CCSOA) with optimal wavelet kernel extreme learning machine (OWKELM) named CCSOA-OWKELM technique for IDS on the Industry 4.0 platform. The CCSOA-OWKELM technique focuses on the design of feature selection with classification approach to achieve minimum computation complexity and maximum detection accuracy. The CCSOA-OWKELM technique involves the design of CCSOA based feature selection technique, which incorporates the concepts of chaotic maps with CSOA. Besides, the OWKELM technique is applied for the intrusion detection and classification process. In addition, the OWKELM technique is derived by the hyperparameter tuning of the WKELM technique by the use of sunflower optimization (SFO) algorithm. The utilization of CCSOA for feature subset selection and SFO algorithm based hyperparameter tuning leads to better performance. In order to guarantee the supreme performance of the CCSOA-OWKELM technique, a wide range of experiments take place on two benchmark datasets and the experimental outcomes demonstrate the promising performance of the CCSOA-OWKELM technique over the recent state of art techniques.}, DOI = {10.32604/csse.2023.025216} }