利用机器学习方法检测虚假数据注入攻击

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引用次数: 4

摘要

“虚假数据注入”(FDI)攻击是深度神经网络容易受到的重大安全风险之一。FDI攻击的目的是通过伪造传感器读数来欺骗工业平台。参考了之前发表的一些相关的系统综述。最近的系统评论可能包括关于该主题的旧的和最近的作品。因此,我只看最近出版的作品。具体来说,我们分析了2016-2021年的数据。利用FDI的攻击有效地击败了传统的威胁检测策略。在本文中,我们提供了一种创新的基于自编码器的FDI攻击检测(AEs)技术。利用传感器数据的时空相关性,可用于识别虚假数据。此外,合成的数据用AEs去噪。性能测试表明我们的方法在寻找FDI攻击方面是有效的。此外,它比基于支持向量机的类似技术性能要好得多。消噪声发射数据清洗方法从损坏(攻击)数据中恢复干净数据的能力也很强。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detection of False Data Injection Attack using Machine Learning approach
The "False Data Injection" (FDI) attack is one of the significant security risks that the deep neural Network is susceptible to. The purpose of the FDI attacks is to deceive industrial platforms by faking sensor readings. considered a few relevant systematic reviews that have been previously published. Recent systematic reviews may include both older and more recent works on the topic. Therefore, I restricted myself to recently published works. Specifically, we analyzed data from 2016-2021 for this work. Attacks using FDI have effectively beaten out traditional threat detection strategies. In this paper, we provide an innovative auto-encoder-based technique for FDI attack detection (AEs). use of the temporal and spatial correlation of sensor data, which may be used to spot fake data. Additionally, the fabricated data are denoised using AEs. Performance testing demonstrates that our method is effective in finding FDI attacks. Additionally, it performs much better than a similar technique based on a support vector machine. The ability of the denoising AE data cleaning method to recover clean data from damaged (attacked) data is also shown to be quite strong.
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