刘怀广, 丁晚成, 黄千稳. 基于轻量化卷积神经网络的光伏电池片缺陷检测方法研究[J]. 应用光学, 2022, 43(1): 87-94. DOI: 10.5768/JAO202243.0103003
引用本文: 刘怀广, 丁晚成, 黄千稳. 基于轻量化卷积神经网络的光伏电池片缺陷检测方法研究[J]. 应用光学, 2022, 43(1): 87-94. DOI: 10.5768/JAO202243.0103003
LIU Huaiguang, DING Wancheng, HUANG Qianwen. Defects detection method of photovoltaic cells based on lightweightconvolutional neural network[J]. Journal of Applied Optics, 2022, 43(1): 87-94. DOI: 10.5768/JAO202243.0103003
Citation: LIU Huaiguang, DING Wancheng, HUANG Qianwen. Defects detection method of photovoltaic cells based on lightweightconvolutional neural network[J]. Journal of Applied Optics, 2022, 43(1): 87-94. DOI: 10.5768/JAO202243.0103003

基于轻量化卷积神经网络的光伏电池片缺陷检测方法研究

Defects detection method of photovoltaic cells based on lightweightconvolutional neural network

  • 摘要: 光伏电池片中的缺陷会影响整个光伏系统使用寿命及发电效率。针对现有电池片自动检测中尺寸弱小缺陷漏检率高的问题,建立了一种特征增强型轻量化卷积神经网络模型。针对性地设计了特征增强提取模块,提高了弱边界的提取能力,同时根据多尺度识别原理,增加了小目标预测层,实现了多尺度特征预测。在实验测试中,该模型平均精度均值(mAP)达到87.55%,比传统模型提高了6.78个百分点,同时检测速度达到40帧/s,满足精准性与实时性的检测要求。

     

    Abstract: The defects in photovoltaic cells affect the service life and power generation efficiency of the entire photovoltaic system. Aiming at the high missed detection rate of weak and small defects in the automatic detection of existing cells, a feature-enhanced lightweight convolutional neural network model was established. The feature enhancement extraction module was designed specifically to improve the extraction ability of weak boundaries. In addition, according to the principle of multi-scale recognition, a small target prediction layer was added to realize multi-scale feature prediction. In the experimental test, the mean average precision (mAP) of the model reaches to 87.55%, which is 6.78 percentage points higher than the traditional model. Moreover, the detection speed reaches to 40 fps, which meets the accuracy and real-time detection requirements.

     

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