2024
DOI: 10.1038/s41598-024-66234-3
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Defect detection of photovoltaic modules based on improved VarifocalNet

Yanfei Jia,
Guangda Chen,
Liquan Zhao

Abstract: Detecting and replacing defective photovoltaic modules is essential as they directly impact power generation efficiency. Many current deep learning-based methods for detecting defects in photovoltaic modules focus solely on either detection speed or accuracy, which limits their practical application. To address this issue, an improved VarifocalNet has been proposed to enhance both the detection speed and accuracy of defective photovoltaic modules. Firstly, a new bottleneck module is designed to replace the fir… Show more

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