June 1, 2020
Conference Paper

Synchrophasor Measurements-based Events Detection Using Deep Learning

Abstract

Deep learning algorithms have been developed for phasor measurement units (PMUs) analysis aiming at providing grid operators to observe and react to significant real-time changes in the grid associated with multiple factors (e.g., power generation and load variations, different type of faults, and equipment mailfunction), or for offline post-event system diagnostics. In this study, a Long Short-Term Memory (LSTM)-based deep neural network (DNN) is adopted and evaluated to identify the most appropriate model configurations for event detection and longer-term anomalous pattern extraction. The proposed DNN model shows the potential on long-term predictions with the ability to capture nonlinear and nonstationary mixture complex patterns in PMU datasets. Real-world PMU in the WECC system were used for model development and validation.

Revised: February 11, 2021 | Published: June 1, 2020

Citation

Ren H., Z. Hou, H. Wang, and P.V. Etingov. 2020. Synchrophasor Measurements-based Events Detection Using Deep Learning. In Proceedings of the 11th ACM International Conference on Future Energy Systems (e-Energy 2020), June 22-26, 2020, 410-412. New York, New York:Association for Computing Machinery. PNNL-SA-144475. doi:10.1145/3396851.3403513