A Lightweight, Transferable, and Self-Adaptive Framework for Intelligent DC Arc-Fault Detection in Photovoltaic Systems

arXiv cs.AI / 3/30/2026

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Key Points

  • The paper addresses the difficulty of reliable DC arc-fault detection in residential photovoltaic (PV) systems caused by spectral interference, hardware heterogeneity, operating-condition drift, and environmental noise.
  • It proposes a lightweight, transferable, and self-adaptive learning framework (LD-framework) that uses LD-Spec for compact on-device spectral representations, LD-Align for cross-hardware representation alignment, and LD-Adapt for cloud-edge self-updating under new operating regimes.
  • Experiments on 53,000+ labeled samples report near-perfect performance, including 0.9999 accuracy and 0.9996 F1-score, with a reported 0% false-trip rate across multiple nuisance-prone conditions.
  • The framework is designed to transfer across heterogeneous inverter platforms using only 0.5%–1% labeled target data while maintaining source performance.
  • Field adaptation results reportedly recover detection precision from 21% to 95% under previously unseen conditions, suggesting the approach can sustain long-term, deployment-oriented reliability.

Abstract

Arc-fault circuit interrupters (AFCIs) are essential for mitigating fire hazards in residential photovoltaic (PV) systems, yet achieving reliable DC arc-fault detection under real-world conditions remains challenging. Spectral interference from inverter switching, hardware heterogeneity, operating-condition drift, and environmental noise collectively compromise conventional AFCI solutions. This paper proposes a lightweight, transferable, and self-adaptive learning-driven framework (LD-framework) for intelligent DC arc-fault detection. At the device level, LD-Spec learns compact spectral representations enabling efficient on-device inference and near-perfect arc discrimination. Across heterogeneous inverter platforms, LD-Align performs cross-hardware representation alignment to ensure robust detection despite hardware-induced distribution shifts. To address long-term evolution, LD-Adapt introduces a cloud-edge collaborative self-adaptive updating mechanism that detects unseen operating regimes and performs controlled model evolution. Extensive experiments involving over 53,000 labeled samples demonstrate near-perfect detection, achieving 0.9999 accuracy and 0.9996 F1-score. Across diverse nuisance-trip-prone conditions, including inverter start-up, grid transitions, load switching, and harmonic disturbances, the method achieves a 0% false-trip rate. Cross-hardware transfer shows reliable adaptation using only 0.5%-1% labeled target data while preserving source performance. Field adaptation experiments demonstrate recovery of detection precision from 21% to 95% under previously unseen conditions. These results indicate that the LD-framework enables a scalable, deployment-oriented AFCI solution maintaining highly reliable detection across heterogeneous devices and long-term operation.

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