工业控制系统安全的深度学习方法综述:比较分析

Muhammad Muzamil Aslam , Ali Tufail , Muhammad Nauman Irshad
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引用次数: 0

摘要

在一个关键基础设施(CI)支撑着我们日常生活的时代,包括电力和热电厂、水处理设施以及基本的卫生和运输系统,强大的安全从未像现在这样紧迫。第四次工业革命扩大了攻击面,使工业控制系统(ICS)中的异常检测成为维护运行完整性的首要关注点。本研究深入研究了尖端深度学习技术的潜力,如cnn、LSTM网络、AE、线性模型(LIN)、门控循环单元(GRU)和dnn,利用SWaT数据集有效识别ICS环境中的异常。每种方法都经过严格的评估,基于关键的性能指标,如准确性、精密度、召回率和F1分数。通过对混淆矩阵的深刻可视化,我们揭示了模型决策的复杂性,包括假阳性和假阴性的本质。我们的研究结果强调了先进的神经网络异常检测的能力,并为实施强大的安全措施奠定了基础,增强了工业系统对新出现的威胁的弹性。这项工作是保护我们重要基础设施的重要一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Survey of deep learning approaches for securing industrial control systems: A comparative analysis
In an era where critical infrastructure (CI) underpins our daily lives spanning electric and thermal plants, water treatment facilities, and essential health and transportation systems, robust security has never been more urgent. The fourth industrial revolution has broadened the attack surface, making anomaly detection in Industrial Control Systems (ICS) a paramount concern for maintaining operational integrity. This research delves into the potential of cutting-edge deep learning techniques like CNNs, LSTM networks, AE, linear models (LIN), Gated Recurrent Units (GRU), and DNN—to effectively identify anomalies within the ICS environment using the SWaT dataset. Each approach underwent rigorous evaluation based on critical performance metrics such as accuracy, precision, recall, and F1 score. Through insightful visualizations of confusion matrices, we reveal the intricacies of model decision-making, including the nature of false positives and negatives. Our findings highlight the capabilities of advanced neural networks for anomaly detection and lay the groundwork for implementing robust security measures, enhancing the resilience of industrial systems against emerging threats. This work is a significant step toward safeguarding our vital infrastructure.
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