恶意软件
计算机科学
资产(计算机安全)
计算机安全
数据流挖掘
工业互联网
生产(经济)
工业控制系统
工业生产
信息物理系统
物联网
人工智能
数据挖掘
控制(管理)
操作系统
宏观经济学
经济
凯恩斯经济学
作者
Muhammad Amin,Feras Al‐Obeidat,Abdallah Tubaishat,Babar Shah,Sajid Anwar,Tamleek Ali Tanveer
标识
DOI:10.1016/j.compeleceng.2023.108702
摘要
In the Industrial Internet of Things (IIoT), mobile devices can be used to remotely monitor and control industrial processes, equipment, and machinery. They can also be used to optimize production and maintenance processes, improve safety, and increase efficiency in industries such as manufacturing, energy, and transportation. The adoption of IIoT has the potential to increase production and efficiency, but it also raises new cybersecurity concerns since interconnected industrial systems are more susceptible to malware intrusions. Malware attacks on IIoT systems can have grave consequences, including production delays, data loss, and physical asset damage. To aid this we propose to use statistical drift detection methods to perceive any change in data patterns and train the machine learning classifiers to counter newly developed malware samples then and there. Our results with an accuracy of 95.2% and F1-score of 94% indicate that our approach is highly successful and easy to adopt.
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