Aquila Optimization with Machine Learning-Based Anomaly Detection Technique in Cyber-Physical Systems

被引:0
作者
Ramachandran A. [1 ]
Gayathri K. [2 ]
Alkhayyat A. [3 ]
Malik R.Q. [4 ]
机构
[1] Department of Computer Science and Engineering, University College of Engineering, Panruti
[2] Department of Electronics and Communication Engineering, University College of Engineering, Panruti
[3] College of Technical Engineering, The Islamic University, Najaf
[4] Medical Instrumentation Techniques Engineering Department, Al-Mustaqbal University College, Babylon
来源
Computer Systems Science and Engineering | 2023年 / 46卷 / 02期
关键词
anomaly detection; aquila optimizer; cyber-physical systems; industry; 4.0; Machine learning;
D O I
10.32604/csse.2023.034438
中图分类号
学科分类号
摘要
Cyber-physical system (CPS) is a concept that integrates every computer-driven system interacting closely with its physical environment. Internet-of-things (IoT) is a union of devices and technologies that provide universal interconnection mechanisms between the physical and digital worlds. Since the complexity level of the CPS increases, an adversary attack becomes possible in several ways. Assuring security is a vital aspect of the CPS environment. Due to the massive surge in the data size, the design of anomaly detection techniques becomes a challenging issue, and domain-specific knowledge can be applied to resolve it. This article develops an Aquila Optimizer with Parameter Tuned Machine Learning Based Anomaly Detection (AOPTML-AD) technique in the CPS environment. The presented AOPTML-AD model intends to recognize and detect abnormal behaviour in the CPS environment. The presented AOPTML-AD framework initially pre-processes the network data by converting them into a compatible format. Besides, the improved Aquila optimization algorithm-based feature selection (IAOA-FS) algorithm is designed to choose an optimal feature subset. Along with that, the chimp optimization algorithm (ChOA) with an adaptive neuro-fuzzy inference system (ANFIS) model can be employed to recognise anomalies in the CPS environment. The ChOA is applied for optimal adjusting of the membership function (MF) indulged in the ANFIS method. The performance validation of the AOPTML-AD algorithm is carried out using the benchmark dataset. The extensive comparative study reported the better performance of the AOPTML-AD technique compared to recent models, with an accuracy of 99.37%. © 2023 CRL Publishing. All rights reserved.
引用
收藏
页码:2177 / 2194
页数:17
相关论文
共 23 条
[1]  
Rouzbahani H. M., Karimipour H., Rahimnejad A., Dehghantanha A., Srivastava G., Anomaly detection in cyber-physical systems using machine learning, Handbook of Big Data Privacy, pp. 219-235, (2020)
[2]  
Priyadarshini I., Alkhayyat A., Gehlot A., Kumar R., Time series analysis and anomaly detection for trustworthy smart homes, Computers and Electrical Engineering, 102, 20, (2022)
[3]  
Mozaffari F. S., Karimipour H., Parizi R. M., Learning based anomaly detection in critical cyber-physical systems, Security of Cyber-Physical Systems, pp. 107-130, (2020)
[4]  
Jiang X., He W., Han T., Performance analysis and optimization of novel hybrid communication mode for vehicular network, 2020 IEEE Int. Conf. on Communication, Networks and Satellite (Comnetsat), pp. 81-86, (2020)
[5]  
Mohamed T. S., Aydin S., Alkhayyat A., Malik R. Q., Kalman and Cauchy clustering for anomaly detection based authentication of IoMTs using extreme learning machine, IET Communications, 2, 4, pp. cmu2-12467, (2022)
[6]  
Jones A., Kong Z., Belta C., Anomaly detection in cyber-physical systems: A formal methods approach, 53rd IEEE Conf. on Decision and Control, pp. 848-853, (2014)
[7]  
Keshk M., Sitnikova E., Moustafa N., Hu J., Khalil I., An integrated framework for privacy-preserving based anomaly detection for cyber-physical systems, IEEE Transactions on Sustainable Computing, 6, 1, pp. 66-79, (2021)
[8]  
Saez M., Maturana F., Barton K., Tilbury D., Anomaly detection and productivity analysis for cyber-physical systems in manufacturing, 2017 13th IEEE Conf. on Automation Science and Engineering (CASE), pp. 23-29, (2017)
[9]  
Eiteneuer B., Niggemann O., LSTM for model-based anomaly detection in cyber-physical systems, (2020)
[10]  
Wang P., Govindarasu M., Cyber-physical anomaly detection for power grid with machine learning, Industrial Control Systems Security and Resiliency, pp. 31-49, (2019)