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False Data Injection Attacks Detection in Power System Using Machine Learning Method

False Data Injection Attacks Detection in Power System Using Machine Learning Method
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摘要 False data injection attacks (FIDAs) against state estimation in power system are a problem that could not be effectively solved by traditional methods. In this paper, we use four outlier detection methods, namely one-Class SVM, Robust covariance, Isolation forest and Local outlier factor method from machine learning area in IEEE14 simulation platform for test and compare their performance. The accuracy and precision were estimated through simulation to observe the classification effect. False data injection attacks (FIDAs) against state estimation in power system are a problem that could not be effectively solved by traditional methods. In this paper, we use four outlier detection methods, namely one-Class SVM, Robust covariance, Isolation forest and Local outlier factor method from machine learning area in IEEE14 simulation platform for test and compare their performance. The accuracy and precision were estimated through simulation to observe the classification effect.
出处 《Journal of Computer and Communications》 2018年第11期276-286,共11页 电脑和通信(英文)
关键词 FIDA MACHINE LEARNING OUTLIER DETECTION UNSUPERVISED LEARNING FIDA Machine Learning Outlier Detection Unsupervised Learning
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