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Ensemble Model Based on Hybrid Deep Learning for Intrusion Detection in Smart Grid Networks

Ulaa AlHaddad, Abdullah Basuhail, Maher Khemakhem, Fathy Eassa, Kamal Jambi

2023Sensors71 citationsDOIOpen Access PDF

Abstract

The Smart Grid aims to enhance the electric grid's reliability, safety, and efficiency by utilizing digital information and control technologies. Real-time analysis and state estimation methods are crucial for ensuring proper control implementation. However, the reliance of Smart Grid systems on communication networks makes them vulnerable to cyberattacks, posing a significant risk to grid reliability. To mitigate such threats, efficient intrusion detection and prevention systems are essential. This paper proposes a hybrid deep-learning approach to detect distributed denial-of-service attacks on the Smart Grid's communication infrastructure. Our method combines the convolutional neural network and recurrent gated unit algorithms. Two datasets were employed: The Intrusion Detection System dataset from the Canadian Institute for Cybersecurity and a custom dataset generated using the Omnet++ simulator. We also developed a real-time monitoring Kafka-based dashboard to facilitate attack surveillance and resilience. Experimental and simulation results demonstrate that our proposed approach achieves a high accuracy rate of 99.86%.

Topics & Concepts

Computer scienceSmart gridIntrusion detection systemReliability (semiconductor)GridAnomaly detectionDenial-of-service attackDeep learningSCADAResilience (materials science)Real-time computingDistributed computingArtificial intelligenceComputer securityEngineeringThe InternetOperating systemQuantum mechanicsMathematicsPhysicsGeometryThermodynamicsPower (physics)Electrical engineeringSmart Grid Security and ResilienceNetwork Security and Intrusion DetectionInternet Traffic Analysis and Secure E-voting
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