Leveraging High-Fidelity Datasets for Machine Learning-based Anomaly Detection in Smart Grids

Burhan Hyder, Arman Ahmed, P. Mana, Thomas Edgar, S. Niddodi
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Abstract

Data-driven anomaly detection systems are increasingly becoming essential for protecting critical cyber-physical system (CPS) infrastructure, such as the power grid, against the growing number of sophisticated cyber-attacks. The development of such tools is reliant on the availability of high-fidelity cyber-physical datasets that cover a diverse variety of potential cyber events. In this work, a co-simulation smart grid platform is utilized to develop a realistic dataset, which is used to train and test a machine learning-based anomaly detection system (ADS). The evaluation of the developed ADS shows robust performance even when tested with statistically diverse test data not used in training. This work is a preliminary step towards the development of a cyber-resilient middleware framework, which will serve as a testbed for the development and evaluation of cybersecurity solutions and CPS datasets.
利用高保真数据集进行智能电网中基于机器学习的异常检测
数据驱动的异常检测系统对于保护关键的网络物理系统(CPS)基础设施(如电网)免受越来越多的复杂网络攻击越来越重要。此类工具的开发依赖于覆盖各种潜在网络事件的高保真网络物理数据集的可用性。在这项工作中,利用联合模拟智能电网平台开发了一个真实数据集,用于训练和测试基于机器学习的异常检测系统(ADS)。即使在训练中没有使用统计上不同的测试数据进行测试,对开发的ADS的评估也显示出稳健的性能。这项工作是开发网络弹性中间件框架的初步步骤,该框架将作为开发和评估网络安全解决方案和CPS数据集的测试平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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