评估用于训练机器学习模型以检测恶意命令的合成数据集

Jia Wei Teo, Sean Gunawan, P. Biswas, D. Mashima
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引用次数: 1

摘要

电网中的变电站是输配电网络的关键接口。多年来,数字技术已被集成到变电站的远程控制和自动化。因此,变电站更容易受到网络攻击,暴露在数字漏洞之下。值得注意的网络攻击媒介之一是恶意命令注入,这可能导致变电站关闭,随后停电,如2015年乌克兰发电厂攻击所示。基于网络规则的现行措施(例如,防火墙和入侵检测系统)往往不足以检测使用看似合法的测量或控制消息造成物理损害的高级和隐蔽攻击。此外,使用基于物理的方法(例如,功率流模拟,状态估计等)来检测恶意命令的防御受到高延迟的影响。机器学习是检测命令注入攻击的潜在解决方案,具有高精度和低延迟。然而,没有足够的数据集来训练和评估机器学习模型。在本文中,针对这一特殊挑战,我们讨论了用于生成可用于训练机器学习模型的合成数据的各种方法。此外,我们评估了用合成数据训练的模型,以对抗模拟不同复杂程度的恶意命令注入的攻击数据集。我们的研究结果表明,通过一定程度的电网领域知识生成的合成数据有助于训练强大的机器学习模型来应对不同类型的攻击。
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Evaluating Synthetic Datasets for Training Machine Learning Models to Detect Malicious Commands
Electrical substations in power grid act as the critical interface points for the transmission and distribution networks. Over the years, digital technology has been integrated into the substations for remote control and automation. As a result, substations are more prone to cyber attacks and exposed to digital vulnerabilities. One of the notable cyber attack vectors is the malicious command injection, which can lead to shutting down of substations and subsequently power outages as demonstrated in Ukraine Power Plant Attack in 2015. Prevailing measures based on cyber rules (e.g., firewalls and intrusion detection systems) are often inadequate to detect advanced and stealthy attacks that use legitimate-looking measurements or control messages to cause physical damage. Additionally, defenses that use physics-based approaches (e.g., power flow simulation, state estimation, etc.) to detect malicious commands suffer from high latency. Machine learning serves as a potential solution in detecting command injection attacks with high accuracy and low latency. However, sufficient datasets are not readily available to train and evaluate the machine learning models. In this paper, focusing on this particular challenge, we discuss various approaches for the generation of synthetic data that can be used to train the machine learning models. Further, we evaluate the models trained with the synthetic data against attack datasets that simulates malicious commands injections with different levels of sophistication. Our findings show that synthetic data generated with some level of power grid domain knowledge helps train robust machine learning models against different types of attacks.
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