- NATURENGS
- Volume:5 Issue:1
- Enhancing Cybersecurity through GAN-Augmented and Hybrid Feature Selection Machine Learning Models: ...
Enhancing Cybersecurity through GAN-Augmented and Hybrid Feature Selection Machine Learning Models: A Case Study on EVSE Data
Authors : Hayriye Tanyıldız, Canan Batur Şahin, Özlem Batur Dinler
Pages : 61-70
Doi:10.46572/naturengs.1495489
View : 62 | Download : 95
Publication Date : 2024-06-29
Article Type : Research Paper
Abstract :Electric Vehicle Charging Stations (EVCSs) are critical components of modern transportation infrastructure. However, smart grid integrations create new security vulnerabilities. Cyber attacks can damage EVCSs, cause financial losses, and compromise user security. Traditional security measures are not enough. By analyzing the large data sets produced by EVCSs, machine learning (ML) can detect anomalies and provide predictive maintenance. The increasing importance of EVCSs in smart grid infrastructure necessitates taking advanced security measures. Machine learning-based intrusion detection systems represent a promising solution to the dynamic and complex cyber threats facing these critical infrastructures. Through continuous learning and adaptation, ML can provide a robust defense mechanism that ensures the security and reliability of EVCSs in the face of evolving cyber threats.Keywords : Electric Vehicle Charging Stations, GAN, Anaomaly Detection, Cyber Attack