4.3 Article

Intelligent intrusion detection system in smart grid using computational intelligence and machine learning

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WILEY
DOI: 10.1002/ett.4062

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Smart grid systems are vulnerable to cyber-attacks, thus requiring the use of IDS for security. This article proposes a feature-based IDS, with random forest and neural network classifiers outperforming others. The average DR and testing accuracy for both datasets reach 99%.
Smart grid systems enhanced the capability of traditional power networks while being vulnerable to different types of cyber-attacks. These vulnerabilities could cause attackers to crash into the network breaching the integrity and confidentiality of the smart grid systems. Therefore, an intrusion detection system (IDS) becomes an important way to provide a secure and reliable services in a smart grid environment. This article proposes a feature-based IDS for smart grid systems. The proposed system performance is evaluated in terms of accuracy, intrusion detection rate (DR), and false alarm rate (FAR). The obtained results show that the random forest and neural network classifiers have outperformed other classifiers. We have achieved a 0.5% FAR on KDD99 dataset and a 0.08% FAR on the NSLKDD dataset. The DR and the testing accuracy on average are 99% for both datasets.

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