Litcius/Paper detail

Generative Adversarial Networks-Based Synthetic PMU Data Creation for Improved Event Classification

Xiangtian Zheng, Bin Wang, Dileep Kalathil, Le Xie

2021IEEE Open Access Journal of Power and Energy35 citationsDOIOpen Access PDF

Abstract

A two-stage machine learning-based approach for creating synthetic phasor measurement unit (PMU) data is proposed in this article. This approach leverages generative adversarial networks (GAN) in data generation and incorporates neural ordinary differential equation (Neural ODE) to guarantee underlying physical meaning. We utilize this approach to synthetically create massive eventful PMU data, which would otherwise be difficult to obtain from the real world due to the critical energy infrastructure information (CEII) protection. To illustrate the utility of such synthetic data for subsequent data-driven methods, we specifically demonstrate the application of using synthetic PMU data for event classification by scaling up the real data set. The addition of the synthetic PMU data to a small set of real PMU data is shown to have improved the event classification accuracy by 2 to 5 percent.

Topics & Concepts

Computer scienceEvent (particle physics)Synthetic dataArtificial intelligencePhasor measurement unitOdeData setMachine learningData miningAdversarial systemGenerative grammarSet (abstract data type)Artificial neural networkPhasorElectric power systemMathematicsApplied mathematicsPhysicsQuantum mechanicsPower (physics)Programming languagePower System Optimization and StabilityModel Reduction and Neural NetworksComputational Physics and Python Applications