网络攻击检测:建模和屋顶光伏发电系统保护

W. Qiu, Kaiqi Sun, Kejun Li, Yuchuan Li, Junfeng Duan, Kunzhi Zhu
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引用次数: 1

摘要

屋顶光伏等电力系统中可再生能源装置的不断增加,使系统惯性减小,对系统运行稳定性构成挑战。然而,随着世界范围内网络攻击事件的报道越来越多,屋顶光伏系统的运行可能会对其连接的交流系统的运行造成威胁。利用并网变流器(GCCs)的快速调节特性,可以在数秒内迅速增加或减少太阳能发电输出,一旦发生网络攻击,将对系统运行产生重大影响。针对这一问题,本文提出了一种网络攻击检测模型,以消除其对屋顶光伏发电系统的影响。该模型首先采用同步压缩小波变换(SWT)提取频率测量的时频信息。然后引入基于循环层聚合的卷积神经网络,利用SWT的结果识别网络攻击特征。对比实验表明,该模型具有较好的检测精度,可用于屋顶光伏发电系统的网络攻击检测。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Cyber-Attack Detection: Modeling and Roof-PV Generation System Protection
The continuous increase of the renewable energy installation in the power system such as roof-PV systems, is decreasing the system inertia that challenges the system operation stability. However, with the increasing number of cyber attack events reported in the world, the operation of the roof-PV systems may threaten their connected AC system operation during the contingency. Utilizing the grid-connected converters (GCCs), its fast regulating characteristic could rapidly increase or decrease the solar generation output in seconds, which will bring significant influences to the system operation once the cyber attack happens. To solve this problem, this paper proposed a cyber attack detection model to eliminate its effect on the roof- PV generation system. In this model, the synchrosqueezed wavelet transforms (SWT) is first applied to extract the time-frequency information of frequency measurement. Then a recurrent layer aggregation-based convolutional neural network is introduced to identify the features of cyber attack using the results from SWT. The comparison experiments indicate that the proposed model have profound performance on the detection accuracy that could be utilized in the roof-PV generation system for cyber attack detection.
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