基于机器学习的大坝非正常运行预警系统

Meng-Wei Chang, I. Liu, Chuan-Kang Liu, Wei-Min Lin, Zhi-Yuan Su, Jung-Shian Li
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引用次数: 0

摘要

一个国家的关键基础设施与人民的生活质量和安全密切相关。因此,关键基础设施的安全保护问题越来越受到人们的重视,尤其是其工业控制系统的安全问题。为了避免关键基础设施发生异常情况,给人们带来巨大的危险,需要一个能够及时检测ICS异常状态的系统。幸运的是,由于近年来机器学习应用的急剧增长,一些研究人员已经提出了利用机器学习的异常检测方法,为ICS提供即时预警和保护。然而,现有的大多数异常检测研究往往只针对一个危害系统的原因,如对网络的攻击或物理设备的故障。如果异常检测系统能够覆盖ICS的多个方面,ICS将得到更全面的保护。因此,在本研究中,我们利用生成对抗网络(GAN)建立了大坝运行异常预警系统,该系统可以检测到各种类型的异常运行,并及时通知相关人员。请注意,我们使用真实的历史数据来进行预测和验证我们的预警系统,并且我们通过实现视觉分析方法进一步改进了它,这弥补了在无监督学习中经常发现的难以理解的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Non-normal Warning System for Dam Operation Using Machine Learning
A country's critical infrastructures are heavily related to the quality of life and safety of the people. As a result, the security protection aspect of critical infrastructure has gained more and more attention nowadays, especially the security of its industrial control system (ICS). To avoid the abnormal condition happening in the critical infrastructure which could put people in great danger, a system that is capable of detecting any abnormal state of the ICS promptly is needed. Fortunately, due to the dramatic growth of the applications of machine learning in recent years, some researchers have already proposed anomaly detection methods with machine learning to provide instant warning and protection for ICS. However, most of the existing anomaly detection research tends to only target one cause that harms the system, such as attacks on the network or physical equipment failures. The ICS will be more comprehensively secured if the anomaly detection system can cover multiple aspects of the ICS. Therefore, we have established a non-normal warning system with the Generative Adversarial Network (GAN) for dam operations in this study, which can detect various types of non-normal operations and notify relevant personnel right away. Note that we use real historical data to make predictions and verify our warning system, and we improve it even more by implementing the visual analysis method, which makes up the indecipherable results often found in unsupervised learning.
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