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Journal ArticleOpen Access

Fault classification and location of a PMU-equipped active distribution network using deep convolution neural network (CNN)

Author Affiliations
University of Canberra, UNSW Sydney, Islamic University of Technology, King Fahd University of Petroleum and Minerals, ...
Published InElectric Power Systems Research
Year2024
Citations62

Abstract

Accurate fault detection and localization play a pivotal role in the reliable and optimal operation of electric power distribution networks. However, the integration of intermittent distributed generation (DG) brings distinctive challenges to traditional fault diagnosis schemes, requiring more robust approaches. This paper proposes an intelligent and robust hierarchical framework for a fault diagnosis approach in power distribution grids integrated with intermittent DG. The approach employs deep convolutional neural networks (CNN), removing the need for hectic signal processing tools for feature extraction. The process starts with modeling a typical distribution network in the real-time digital simulator (RTDS) rack by incorporating the uncertainties of DG generation, load demand, and fault information through various probability density functions. Then, three-phase current signal of two…
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