학술논문

Detection of False Data Injection of PV Production
Document Type
Conference
Source
2021 IEEE Green Technologies Conference (GreenTech) GREENTECH Green Technologies Conference (GreenTech), 2021 IEEE. :7-12 Apr, 2021
Subject
Components, Circuits, Devices and Systems
Power, Energy and Industry Applications
Support vector machines
Photovoltaic systems
Renewable energy sources
Green products
Production
Artificial neural networks
Machine learning
Renewable energy systems
False Data Attack
Signal Detection
Machine Learning
Language
ISSN
2166-5478
Abstract
Due to cyber attack threats to the cyber physical systems which compose modern smart grids additional layers of security could be valuable. The potential of data tampering in the smart grid spurs the research of data integrity attacks and additional security means to detect such tampering. This paper conducts a study of photovoltaic based production data tampering as a detection problem and shows a set of machine learning models and highlights the best performing of the set at the detection task. The signal is observed daily and data tampering by increasing to 110%-150% of original signal is detected with over 80% accuracy and under 10% false alarm. This paper finds that the artificial neural network (ANN) slightly out performs the support vector machine (SVM) at the detection task, however the SVM is a much faster algorithm to fit the data with.