학술논문

Smart FDI Attack Design and Detection with Data Transmutation Framework for Smart Grids
Document Type
Conference
Source
2021 IEEE Power & Energy Society General Meeting (PESGM) Power & Energy Society General Meeting (PESGM), 2021 IEEE. :1-5 Jul, 2021
Subject
Engineering Profession
Power, Energy and Industry Applications
Power measurement
Current measurement
Simulation
Data integrity
Time measurement
Data models
Smart grids
false data injection
machine learning
smart grid
encryption
Language
ISSN
1944-9933
Abstract
Conventional False Data Injection (FDI) attacks yield a distinct change of measurement values which can be easily detected using the state-of-the-art anomaly detection methods. However, if the attackers can learn the statistics of daily load measurement data (e.g., through snooping attacks), then smart FDI attacks can be designed to gradually alter the measurement characteristics over time to avoid detection. In this work, we provide a methodology to protect against smart FDI attacks. First, we create a smart FDI attack that can go undetected when using current state-of-the-art solutions. We then create a novel smart grid cyber defense framework that encrypts measurement data within the power grid and then decrypts data received at the control center to reveal attacked data samples. The proposed framework was validated using the IEEE 118-bus system. Performance was compared between the proposed framework, the Ensemble CorrDet with Adaptive Statistics (ECD-AS) bad data detection methodology and the quasi static model weighted least squares state estimator solution. Results show a mean F1-score of 95% for the proposed technique, 15% for ECD-AS and 18% for the quasi static least square method.