Enhancing Industrial Control System Security: An Isolation Forest-based Anomaly Detection Model for Mitigating Cyber Threats

Md. Saif Mahmud, Md Ashikul Islam, Md. Maruf Rahman, Debashon Chakraborty, S. Kabir, Abu Shufian, Protik Parvez Sheikh
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Abstract

In the evolving landscape of industrial control systems (ICS), the sophistication of cyber threats has necessitated the development of advanced anomaly detection mechanisms to safeguard critical infrastructure. This study introduces a novel anomaly detection model based on the Isolation Forest algorithm, tailored for the complex environment of ICS. Unlike traditional detection methods that often rely on predefined thresholds or patterns, our model capitalizes on the Isolation Forest's ability to efficiently isolate anomalies in high-dimensional datasets, making it particularly suited for the dynamic and intricate data generated by ICS. Leveraging the HAI dataset, which encompasses operational data from a realistic ICS testbed augmented with a Hardware-In-the-Loop (HIL) simulator, this research demonstrates the model's effectiveness in identifying both known and novel cyber threats across various ICS components. Our findings reveal that the Isolation Forest-based model outperforms traditional anomaly detection techniques in terms of detection accuracy, false positive rate, and computational efficiency. Furthermore, the model exhibits a remarkable ability to adapt to the evolving nature of cyber threats, underscoring its potential as a robust tool for enhancing the security posture of ICS. Through a detailed analysis of its application in detecting sophisticated attacks represented in the HAI dataset, this study contributes to the ongoing discourse on improving ICS security and presents a compelling case for the adoption of machine learning-based anomaly detection solutions in industrial settings.
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增强工业控制系统安全性:缓解网络威胁的基于隔离林的异常检测模型
随着工业控制系统(ICS)的不断发展,网络威胁日益复杂,因此有必要开发先进的异常检测机制来保护关键基础设施。本研究介绍了一种基于 Isolation Forest 算法的新型异常检测模型,该模型专为 ICS 的复杂环境量身定制。与通常依赖预定义阈值或模式的传统检测方法不同,我们的模型利用了 Isolation Forest 在高维数据集中有效隔离异常的能力,使其特别适用于由 ICS 生成的动态复杂数据。本研究利用 HAI 数据集(该数据集包含来自现实 ICS 测试平台的运行数据,并使用硬件在环(HIL)模拟器进行了增强),展示了该模型在识别各种 ICS 组件的已知和新型网络威胁方面的有效性。我们的研究结果表明,基于隔离林的模型在检测准确率、误报率和计算效率方面都优于传统的异常检测技术。此外,该模型还表现出了适应网络威胁不断发展的卓越能力,凸显了其作为增强 ICS 安全态势的强大工具的潜力。通过详细分析该模型在检测 HAI 数据集中所代表的复杂攻击中的应用,本研究为正在进行的有关提高 ICS 安全性的讨论做出了贡献,并为在工业环境中采用基于机器学习的异常检测解决方案提供了令人信服的案例。
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