August 7, 2024
Conference Paper

Convolutional Neural Network-Based Protection-Zone Classification of Faults in Distribution Feeders with Photovoltaics.

Abstract

Fault detection and isolation is critical for reliable operation of distribution systems. The ride-through requirements for the distributed energy resources (DER), mandated by the IEEE 1547-2018 standard, makes it challenging to use undervoltage (UV) conditions for fault detection. In addition, with low fault current contribution from these inverter-based DERs, the time-overcurrent relays are also less effective. Thus motivated, this paper presents a learning-based approach for fault detection and localization. A convolutional neural network (CNN)-based model is proposed which uses local voltage and current waveforms from DER locations and feeder substations, for training a zonal classifier. The classifier can be adopted into any relay-like device for discriminating between faults originating from different protection zones. The performance of the proposed approach was tested on publicly available test feeders with distributed photovoltaics (PVs).

Published: August 7, 2024

Citation

Ramesh M., K. Chatterjee, D.M. Glover, J.D. Follum, T.E. Mcdermott, and A.P. Reiman. 2024. Convolutional Neural Network-Based Protection-Zone Classification of Faults in Distribution Feeders with Photovoltaics. In IEEE Green Technologies Conference (GreenTech 2024), April 3-5, 2024, Springdale, AR, 173-177. Piscataway, New Jersey:IEEE. PNNL-SA-194357. doi:10.1109/GreenTech58819.2024.10520556