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Identification and Correction of False Data Injection Attacks against AC State Estimation using Deep Learning

机译:利用深度学习识别和校正假数据注射攻击对AC状态估计的校正

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New advances in technology have greatly improved the monitoring and controlling of power networks, but these advances leave the system open to cyber attacks. One common attack is known as a False Data Injection Attacks (FDIAs), which poses serious threats to the operation and control of power grids. Hence, recent literature has proposed various detection and identification methods for FDIAs, but few studies have focused on a solution that would prevent such attacks from occurring. However, great strides have been made using deep learning to detect attacks. Inspired by these advancements, we have developed a new methodology for not only identifying AC FDIAs but, more importantly, for correction as well. Our methodology utilizes a LongShort Term Memory Denoising Autoencoder (LSTM-DAE) to correct attacked-estimated states based on the attacked measurements. The method was evaluated using the IEEE 30 system, and the experiments demonstrated that the proposed method was successfully able to identify the corrupted states and correct them with high accuracy.
机译:技术的新进步大大提高了电力网络的监测和控制,但这些进步将系统留给网络攻击。一个常见的攻击被称为假数据注入攻击(FDIAS),这对电网的操作和控制构成了严重威胁。因此,最近的文献已经提出了FDIAS的各种检测和鉴定方法,但很少的研究专注于将阻止这种攻击发生的溶液。然而,使用深度学习来检测攻击的巨大进步。灵感来自这些进步,我们开发了一种新的方法,不仅是识别交流FDIAS,而且更重要的是,还要纠正。我们的方法利用龙像术术语存储器去噪,基于攻击的测量来纠正攻击估计的状态。使用IEEE 30系统评估该方法,实验表明,该方法成功地能够识别损坏的状态并以高精度校正它们。

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