Li Fangyu, Xie Rui, Yang Bowen, Guo Lulu, Ma Ping, Shi Jianjun, Ye Jin, Song WenZhan
Song are with Center for Cyber-Physical Systems, University of Georgia, Athens, GA 30602, USA.
Department of Statistics and Data Science, University of Central Florida, Orlando, FL 32816 USA.
IEEE J Emerg Sel Top Power Electron. 2022 Feb;10(1):1282-1291. doi: 10.1109/jestpe.2019.2943449. Epub 2019 Sep 24.
Cyber and physical attacks threaten the security of distribution power grids. The emerging renewable energy sources such as photovoltaics (PVs) introduce new potential vulnerabilities. Based on the electric waveform data measured by waveform sensors in the distribution power networks, in this paper, we propose a novel high-dimensional data-driven cyber physical attack detection and identification approach (HCADI). Firstly, we analyze the cyber and physical attack impacts (including cyber attacks on the solar inverter causing unusual harmonics) on electric waveforms in distribution power grids. Then, we construct a high dimensional streaming data feature matrix based on signal analysis of multiple sensors in the network. Next, we propose a novel mechanism including leverage score based attack detection and binary matrix factorization based attack diagnosis. By leveraging the data structure and binary coding, our HCADI approach does not need the training stage for both detection and the root cause diagnosis, which is needed for machine learning/deep learning-based methods. To the best of our knowledge, it is the first attempt to use raw electrical waveform data to detect and identify the power electronics cyber/physical attacks in distribution power grids with PVs.
网络攻击和物理攻击威胁着配电网的安全。诸如光伏(PV)等新兴可再生能源引入了新的潜在漏洞。基于配电网中波形传感器测量的电波形数据,本文提出了一种新颖的高维数据驱动的网络物理攻击检测与识别方法(HCADI)。首先,我们分析网络攻击和物理攻击对配电网电波形的影响(包括对太阳能逆变器的网络攻击导致异常谐波)。然后,我们基于网络中多个传感器的信号分析构建一个高维流数据特征矩阵。接下来,我们提出一种新颖的机制,包括基于杠杆分数的攻击检测和基于二元矩阵分解的攻击诊断。通过利用数据结构和二进制编码,我们的HCADI方法在检测和根本原因诊断方面都不需要机器学习/深度学习方法所需的训练阶段。据我们所知,这是首次尝试使用原始电波形数据来检测和识别含光伏的配电网中的电力电子网络/物理攻击。