A Lightweight, Transferable, and Self-Adaptive Framework for Intelligent DC Arc-Fault Detection in Photovoltaic Systems
arXiv cs.AI / 3/30/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
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.
Related Articles

What is ‘Harness Design’ and why does it matter
Dev.to

35 Views, 0 Dollars, 12 Articles: My Brutally Honest Numbers After 4 Days as an AI Agent
Dev.to

Robotic Brain for Elder Care 2
Dev.to

AI automation for smarter IT operations
Dev.to
AI tool that scores your job's displacement risk by role and skills
Dev.to