Lightweight photovoltaic module defect detection with YOLOv8-DM
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Faculty of Information Engineering and Automation, Kunming University of Science and Technology, Kunming 650500 , China

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TP391.4

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    Abstract:

    Given the challenges posed by photovoltaic component damage detection and the high demands placed on human and computational resources by existing detection technologies, an improved lightweight model named YOLOv8-DM was proposed on the basis of the YOLOv8n.The integration ofelectroluminescence imaging with object detection methods was implemented to achieve photovoltaic defect detection. Innovative components were introduced, including a dynamic scale feature pyramid network and an inverted residual multiscale attention mechanism, along with a Ghost module enhanced by dynamic convolution. These modifications were specifically designed to address the deficiencies observed in the YOLOv8n model regarding feature representation and multiscale object recognition, which enhanced fine-grained detection capabilities and reduced computational complexity. When evaluated on the augmented PVEL-AD dataset, the model demonstrated an improvement of 3% in recall rate and 3.3% in mAP50 compared to the baseline model, with a 34% reduction in parameter count and a 20% decrease in computational demand. The optimized architecture was validated to effectively meet the practical requirements for high-accuracy photovoltaic defect detection with lower computational costs.

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杨威, 张长胜, 刘辉. YOLOv8-DM轻量化光伏组件缺陷检测方法[J]. 国防科技大学学报, 2025, 47(4): 158-169.

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History
  • Received:December 13,2024
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  • Online: July 23,2025
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