用于工业控制系统异常检测的无监督学习方法

IF 3.8 Q2 COMPUTER SCIENCE, INFORMATION SYSTEMS
Woo-Hyun Choi, Jongwon Kim
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引用次数: 0

摘要

工业控制系统(ICS)在管理和监控制造、能源和水处理等各行各业的关键流程方面发挥着至关重要的作用。由于需要连接来自不同制造商的设备、采用复杂的通信方法以及在有限的环境中保持运行的连续性,因此很难检测到系统异常。由于需要标注数据集,依赖于监督机器学习的传统方法需要时间和专业知识。本研究提出了一种替代方法,通过无监督机器学习来识别 ICS 中的异常行为。该方法采用无监督机器学习来识别综合监控系统中的异常行为。这项研究表明,无监督学习算法无需预先标记数据,就能利用复合自动编码器模型有效地检测和分类异常行为。基于使用 HIL 增强型 ICS(HAI)的数据集,本研究表明该模型能够准确识别重要的数据特征,并检测出与值和时间相关的异常模式。有意误差数据注入实验可用于验证模型在实时监控和工业流程性能优化方面的鲁棒性。因此,这种方法可以提高系统可靠性和运行效率,为安全和可持续的 ICS 运行奠定基础。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Unsupervised Learning Approach for Anomaly Detection in Industrial Control Systems
Industrial control systems (ICSs) play a crucial role in managing and monitoring critical processes across various industries, such as manufacturing, energy, and water treatment. The connection of equipment from various manufacturers, complex communication methods, and the need for the continuity of operations in a limited environment make it difficult to detect system anomalies. Traditional approaches that rely on supervised machine learning require time and expertise due to the need for labeled datasets. This study suggests an alternative approach to identifying anomalous behavior within ICSs by means of unsupervised machine learning. The approach employs unsupervised machine learning to identify anomalous behavior within ICSs. This study shows that unsupervised learning algorithms can effectively detect and classify anomalous behavior without the need for pre-labeled data using a composite autoencoder model. Based on a dataset that utilizes HIL-augmented ICSs (HAIs), this study shows that the model is capable of accurately identifying important data characteristics and detecting anomalous patterns related to both value and time. Intentional error data injection experiments could potentially be used to validate the model’s robustness in real-time monitoring and industrial process performance optimization. As a result, this approach can improve system reliability and operational efficiency, which can establish a foundation for safe and sustainable ICS operations.
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来源期刊
Applied System Innovation
Applied System Innovation Mathematics-Applied Mathematics
CiteScore
7.90
自引率
5.30%
发文量
102
审稿时长
11 weeks
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