IEEE Access (Jan 2022)

TL&#x2013;LED<sup>arc</sup>Net: Transfer Learning Method for Low-Energy Series DC Arc-Fault Detection in Photovoltaic Systems

  • Yoondong Sung,
  • Gihwan Yoon,
  • Ji-Hoon Bae,
  • Suyong Chae

DOI
https://doi.org/10.1109/ACCESS.2022.3208115
Journal volume & issue
Vol. 10
pp. 100725 – 100735

Abstract

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The arc-fault phenomenon in photovoltaic (PV) systems has emerged as a major problem in recent years. Existing studies on arc-fault detection in conventional PV systems primarily focus on detecting typical stable arc-faults. Low-energy arc-faults are more challenging to detect than stable arc-faults because of their low current distortions, short durations, and nonlinear properties. These low-energy arc-faults, which are precursors to stable arc-faults, could even inflict serious damage on the system components. Here, a transfer learning-based low-energy arc-fault detection network (TL–LEDarcNet) using a two-stage training method is proposed to proactively detect series DC arc-faults by considering low-energy arc-faults. A one-layer long short-term memory network combined with a lightweight one-dimensional convolutional neural network was developed to detect low-energy arc-faults by only using the sensed current information. The results of offline and online experiments conducted with a commercial grid-connected PV inverter indicate that the proposed method can perform real-time operations on a single-board computer and detect low-energy arc-faults with an accuracy of 95.8%, which is higher than previous methods considered in this study.

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