Towards Robust Stability Prediction in Smart Grids: GAN-based Approach under Data Constraints and Adversarial Challenges
Emad Efatinasab, Alessandro Brighente, Denis Donadel, Mauro Conti, Mirco Rampazzo

TL;DR
This paper presents a GAN-based framework that detects smart grid instability and defends against adversarial attacks using only stable data, achieving high accuracy and real-time performance.
Contribution
It introduces a novel GAN approach generating OOD samples to distinguish unstable grid states without needing unstable training data.
Findings
Achieves 98.1% accuracy in stability prediction
Detects adversarial attacks with 98.9% accuracy
Operates in real-time on embedded hardware
Abstract
Smart grids are crucial for meeting rising energy demands driven by global population growth and urbanization. By integrating renewable energy sources, they enhance efficiency, reliability, and sustainability. However, ensuring their availability and security requires advanced operational control and safety measures. Although artificial intelligence and machine learning can help assess grid stability, challenges such as data scarcity and cybersecurity threats, particularly adversarial attacks, remain. Data scarcity is a major issue, as obtaining real-world instances of grid instability requires significant expertise, resources, and time. Yet, these instances are critical for testing new research advancements and security mitigations. This paper introduces a novel framework for detecting instability in smart grids using only stable data. It employs a Generative Adversarial Network (GAN)…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Smart Grid Security and Resilience · Fault Detection and Control Systems
