March 5, 2025
Conference Paper

Deep Learning-Based Dynamic Modeling of Three-Phase Voltage Source Inverters

Abstract

Inverter-based resource (IBR) models are necessary to analyze modern power system stability and create effective control strategies. Modeling IBRs in converter-rich power systems is crucial, yet challenging due to the lack of commercial information on converter topologies and control parameters. This paper proposes novel convolutional neural network (CNN)–based data-driven techniques for modeling IBRs, addressing adaptability and proprietary concerns without requiring internal system physics knowledge. The proposed method is tested using real grid-tied commercial IBR transient data and demonstrates effectiveness and accuracy. Furthermore, the developed modeling approach is integrated and implemented in the open-source power distribution simulation and analysis tool, GridLAB-D, to illustrate the potentiality of dynamic analysis of large-scale power systems with high IBRs.

Published: March 5, 2025

Citation

Subedi S., L. Qiao, Y. Gui, Y.S. Xue, F.K. Tuffner, and W. Du. 2024. Deep Learning-Based Dynamic Modeling of Three-Phase Voltage Source Inverters. In IEEE Energy Conversion Congress and Exposition (ECCE 2024), October 20-24, 2024, Phoenix, AZ, 4450-4456. Piscataway, New Jersey:IEEE. PNNL-SA-205030. doi:10.1109/ECCE55643.2024.10861015