基于CCMW-YOLO11n的光伏电池缺陷检测研究
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上海电力大学自动化工程学院上海200090

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TP391

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Research on photovoltaic cell defect detection based on CCMW-YOLO11n
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College of Automation Engineering,Shanghai University of Electric Power, Shanghai 200090,China

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    摘要:

    光伏电池的高效发电在推动绿色低碳循环发展中发挥着重要作用,针对光伏电池缺陷图像中存在背景复杂与目标尺寸较小等问题,提出一种改进YOLO11n的缺陷检测模型——CCMW-YOLO11n。首先,在YOLO11n的骨干网络中提出跨阶段部分改进模块(cross stage partial improvement,CSP-I),该模块通过设计多头自注意力机制(multi-head self attention,MHSA)、卷积门控线性单元(convolutional gated linear uint,CGLU)与传统卷积(convolution,Conv)相结合,兼顾全局信息感知与局部特征提取,增强了多尺度特征的提取效果;其次,在特征融合阶段采用内容感知特征重组上采用技术(content-aware reassembly of features,CARAFE),该方法实现了对特征图自适应重组和细节增强,有效保留了细节特征,提升了模型对复杂目标的感知能力;然后,在颈部网络中融入混合聚合网络改进模块(mixed aggregation net enhancement,MAN-E),进一步增强了特征表达能力;最后,针对基础模型中CIoU损失函数的不足,结合WIoUv3、Inner-IoU和SIoU,提出一种新的边界框回归损失函数Wise-Inner-SIoU,以优化模型的回归效果。实验结果表明,改进后的CCMW-YOLO11n模型召回率提升了9.6%,mAP@0.5和mAP@0.5:0.95分别达到91.0%和61.1%,较基础模型分别提高了3.1%和2.0%,实现了对光伏电池缺陷的高效检测。

    Abstract:

    Efficient power generation of photovoltaic cells plays a crucial role in promoting green and low-carbon circular development. To address the challenges posed by complex backgrounds and small target sizes in photovoltaic cell defect images, this paper proposes an improved defect detection model based on YOLO11n, named CCMW-YOLO11n. Firstly, a cross stage partial improvement (CSP-I) module is introduced into the backbone network of YOLO11n. This module integrates the multi-head self attention (MHSA), convolutional gated linear unit (CGLU), and conventional convolution (Conv), balancing global information perception and local feature extraction, thereby enhancing the extraction of multi-scale features. Secondly, the content-aware reassembly of features (CARAFE) upsampling technique is employed during the feature fusion stage. This method adaptively reorganizes feature maps and enhances details, effectively preserving fine-grained features and improving the model’s detection performance on complex targets. Additionally, the mixed aggregation net enhancement (MAN-E) module is incorporated into the neck network to further strengthen feature representation capabilities. Finally, addressing the limitations of the CIoU loss function in the baseline model, a novel bounding box regression loss function named Wise-Inner-SIoU is proposed by combining WIoUv3, Inner-IoU, and SIoU, optimizing the regression performance of the model. Experimental results demonstrate that the improved CCMW-YOLO11n model achieves a 9.6% increase in recall rate, with mAP@0.5 and mAP@0.5:0.95 reaching 91.0% and 61.1%, respectively, representing improvements of 3.1% and 2.0% over the baseline model, thereby realizing efficient detection of photovoltaic cell defects.

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邓玉澳,王丹豪,潘俊臻,彭道刚.基于CCMW-YOLO11n的光伏电池缺陷检测研究[J].电子测量与仪器学报,2026,40(1):120-132

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  • 在线发布日期: 2026-03-27
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