학술논문

Data-driven cyber-attack detection for photovoltaic systems: A transfer learning approach
Document Type
Conference
Source
2022 IEEE Applied Power Electronics Conference and Exposition (APEC) Applied Power Electronics Conference and Exposition (APEC), 2022 IEEE. :1926-1930 Mar, 2022
Subject
Power, Energy and Industry Applications
Training
Photovoltaic systems
Biological system modeling
Transfer learning
Training data
Power system stability
Data models
transfer learning
PV farm
cyber-attack
attack detection
Language
ISSN
2470-6647
Abstract
With increasing exposure to software-based sensing and control, power systems are facing higher risks of cyber/physical attacks. To ensure system stability and minimize the potential economic losses, it is imperative to monitor the operating states and detect those attacks at the early stage. In this paper, a transfer learning method is proposed to detect cyber-attacks in photovoltaic (PV) systems with much less training data. First of all, two PV systems with a different number of PV inverters and power ratings are analyzed and their attack models are studied. Next, an attack detection Convolutional Neural Network (CNN) model was trained with rich amount of data from PV #1. Then, transfer learning was proposed to transfer the well-trained features from PV #1 to PV #2. Lastly, the attack detection model on PV #2 was trained based on the transferred CNN model. The experiment results show that the proposed transfer learning method achieves better accuracy and a faster convergence rate with a much less training dataset than conventional deep learning.