针对智能电网故障预测系统的对抗性攻击能力测试新数据集

C. Ardito, Yashar Deldjoo, Tommaso Di Noia, Eugenio Di Sciascio, Fatemeh Nazary
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引用次数: 0

摘要

由于其经济性和重要性,故障检测任务在智能电网中至关重要。尽管许多智能电网(SG)应用,如故障检测和负荷预测,都采用了数据驱动的方法,但这些数据驱动算法的鲁棒性和安全性尚未得到广泛研究。智能电网安全研究的最大障碍之一是缺乏可公开访问的数据集,无法测试系统抵御各种攻击的弹性。在本文中,我们提出了基于IEEE-13测试节点馈线的大规模模拟数据集IEEE13-AdvAttack,该数据集适用于SG下的监督任务。该数据集包括常规能源和可再生能源。我们研究了断层类型分类和断层带分类系统对对抗性攻击的鲁棒性。通过发布数据集、基准测试和对智能电网故障预测系统对抗对抗性攻击的评估,我们寻求鼓励在智能电网背景下实施机器学习安全模型。用于故障预测的基准测试数据和代码可在https://bit.ly/3NT5jxG上公开获得。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
IEEE13-AdvAttack A Novel Dataset for Benchmarking the Power of Adversarial Attacks against Fault Prediction Systems in Smart Electrical Grid
Due to their economic and significant importance, fault detection tasks in intelligent electrical grids are vital. Although numerous smart grid (SG) applications, such as fault detection and load forecasting, have adopted data-driven approaches, the robustness and security of these data-driven algorithms have not been widely examined. One of the greatest obstacles in the research of the security of smart grids is the lack of publicly accessible datasets that permit testing the system's resilience against various types of assault. In this paper, we present IEEE13-AdvAttack, a large-scaled simulated dataset based on the IEEE-13 test node feeder suitable for supervised tasks under SG. The dataset includes both conventional and renewable energy resources. We examine the robustness of fault type classification and fault zone classification systems to adversarial attacks. Through the release of datasets, benchmarking, and assessment of smart grid failure prediction systems against adversarial assaults, we seek to encourage the implementation of machine-learned security models in the context of smart grids. The benchmarking data and code for fault prediction are made publicly available on https://bit.ly/3NT5jxG.
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