Analysis of smart grid-based intrusion detection system through machine learning methods
by D. Ravikumar; K. Sasikala; R.S. Vijayashanthi; S. Narasimha Prasad
International Journal of Electronic Security and Digital Forensics (IJESDF), Vol. 16, No. 1, 2024

Abstract: This article aims to maximise network strong security and its enhancement by presenting different preventative strategies since intrusion detection is essential to computer network security challenges. In this study, intrusion detection is addressed as a challenge of extracting outliers that use the network behaviour dataset, and semi-supervised classification technique based on shared closest neighbours are suggested. First, we provide a thorough explanation of the fundamentals of cyber security assaults, supervised machine learning methods, and intrusion detection systems. Then, we discuss pertinent initiatives related to the use of supervised methods for intrusion detection. Finally, a taxonomy based on these connected works is offered. This article attempts to offer a sophisticated and distinctive intrusion detection model capable of categorising electrical network events and CDs for smart grids into binary-class, trinary-class, and multiple-class categories. As an effective machine learning model for intrusion detection, it employs the grey wolf algorithm (GWA).

Online publication date: Fri, 12-Jan-2024

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