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Cyber Attack Detection Process in Sensor of DC Micro-Grids Under Electric Vehicle Based on Hilbert–Huang Transform and Deep Learning

机译:基于希尔伯特 - 黄变换和深度学习的电动车辆DC微电网传感器网络攻击检测过程

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In this article, a new procedure is proposed on the basis of Hilbert-Huang Transform and deep learning for cyber-attacks detection in direct current (DC) micro-grids (MGs) as well as detection of the attacks in distributed generation (DG) units and its sensors. An advanced elective group deep learning method with Krill Herd Optimization (KHO) algorithm is proposed. At first, Hilbert-Huang Transform is used with the aim of extracting the signals feature and next these features are applied as the multiple deep input basis models are made with the aim of capturing automatically sentient traits from raw fluctuation signals. At third, to make sure the variety of the basis patterns, linear decoder, denoising autoencoder and sparse autoencoder are applied to make various deep autoencoders, respectively. Further, Bootstrap is applied with the aim of designing separate educational data subsets for any base model. Fourth, for implementing selective ensemble learning, a combination strategy of enhanced weighted voting (EWV) with class-particular thresholds is studied. Eventually, KHO algorithm is applied with the aim of adaptive selecting the optimal class-specific thresholds. In the offered tactic, firstly, a DC micro-grid is functioned and controlled with the lack of any false data injection attacks (FDIAs) to collect adequate information within the usual operation needed for the educating of deep learning networks. It is noteworthy that, in the procedure of datum production, load variable is also determined with the aim of having distinctive datasets for cyber-attack scenarios and load variables. Also, to provide more realistic method, the smart plug-in electric vehicle is also considered in the model. Outcomes of Simulation in various scenarios are applied with the aim of verifying the benefit of the offered procedure. The outcomes propose that the offered procedure is able to more accurate and robust know various type of false data injection attack over than 93.76% accuracy detection of true rate.
机译:在本文中,基于Hilbert-Huang变换和深度学习在直流(DC)微网(MGS)中的网络攻击检测的基础上提出了一种新程序以及检测分布式发电中的攻击(DG)单位及其传感器。提出了一种高级选修群体深度学习方法,具有KRILL HERD优化(KHO)算法。首先,Hilbert-Huang变换与提取信号特征的目的,接下来将应用于多个深度输入基础模型,其目的是从原始波动信号捕获自动敏感性特性。第三,为了确保基础模式,线性解码器,脱色的自动统计器和稀疏自动码器的各种分别用于制作各种深度自动化器。此外,旨在为任何基础模型设计单独的教育数据子集的目标。第四,为了实现选择性集合学习,研究了具有类别的阈值的增强加权投票(EWV)的组合策略。最终,kho算法应用于自适应选择最佳类特定阈值的目的。在所提供的策略中,首先,通过缺乏任何虚假数据注入攻击(FDIAS)来运行和控制DC微电网,以在教育深度学习网络所需的通常操作内收集足够的信息。值得注意的是,在基准制作的过程中,还确定了负载变量,目的是具有用于网络攻击场景和负载变量的独特数据集。此外,为了提供更现实的方法,在模型中也考虑了智能插入电动车辆。应用各种方案的模拟结果,旨在验证提供的程序的好处。结果提出,提供的程序能够更准确和强大地了解各种类型的错误数据注入攻击超过93.76%的真实率的精度检测。

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