运行技术中协议识别的分类方法和合适数据集的比较分析

IF 1.8 Q3 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE Algorithms Pub Date : 2024-05-11 DOI:10.3390/a17050208
E. Holasova, R. Fujdiak, J. Misurec
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引用次数: 0

摘要

操作技术(OT)和信息技术(IT)的相互连接为远程管理、云数据存储、远距离实时数据传输或不同 OT 和 IT 网络之间的集成创造了新的机遇。由于 IT 和 OT 的融合,OT 网络需要更多关注,这主要是由于针对这些网络的网络攻击风险增加。本文重点分析了针对 OT 具体情况进行协议识别和流量分类的不同方法和数据处理。因此,本文总结了用于网络流量分类的方法,分析了用于识别和鉴定工业网络中使用的协议的方法,并介绍了用于识别工业协议的机器学习方法。这项工作的成果是对专门用于 OT 网络协议识别和流量分类的方法进行比较分析。此外,还比较了公开可用的数据集对工业协议识别的适用性。还确定了研究挑战,强调了相关数据集的缺乏,并确定了在 OT 环境中协议识别和分类领域的进一步研究方向。
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Comparative Analysis of Classification Methods and Suitable Datasets for Protocol Recognition in Operational Technologies
The interconnection of Operational Technology (OT) and Information Technology (IT) has created new opportunities for remote management, data storage in the cloud, real-time data transfer over long distances, or integration between different OT and IT networks. OT networks require increased attention due to the convergence of IT and OT, mainly due to the increased risk of cyber-attacks targeting these networks. This paper focuses on the analysis of different methods and data processing for protocol recognition and traffic classification in the context of OT specifics. Therefore, this paper summarizes the methods used to classify network traffic, analyzes the methods used to recognize and identify the protocol used in the industrial network, and describes machine learning methods to recognize industrial protocols. The output of this work is a comparative analysis of approaches specifically for protocol recognition and traffic classification in OT networks. In addition, publicly available datasets are compared in relation to their applicability for industrial protocol recognition. Research challenges are also identified, highlighting the lack of relevant datasets and defining directions for further research in the area of protocol recognition and classification in OT environments.
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来源期刊
Algorithms
Algorithms Mathematics-Numerical Analysis
CiteScore
4.10
自引率
4.30%
发文量
394
审稿时长
11 weeks
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