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