用于多晶硅太阳能电池快速AR膜厚测量的计算机视觉系统

H. Yen, H. Hou
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引用次数: 0

摘要

为了提高市场营销能力,硅太阳能电池制造商在生产线上采用光学检测技术进行产品分类和统计过程分析。产品分类依据的是太阳能电池本身的整体光电转换效率。有两个因素直接影响太阳能电池的整体光电转换效率,即复合材料和衬底上的增透膜涂层。由于增反射层薄膜厚度的变化会引起太阳能电池表面颜色的变化,因此提出了一种具有成本效益的计算机视觉测量系统来实现多晶硅太阳能电池薄膜厚度的快速AR测量。该系统首先利用彩色CCD捕获被检测多晶硅太阳能电池的红绿蓝彩色图像,并将其转换为色调-饱和度-明度(HSL)图像格式。然后通过图像阈值分割和标签运算对不同色调图像的面积和边界进行计算和排序。利用高精度光学薄膜厚度测量仪对指定的色相值区域进行相应的测量程序,得到色相值与增透膜厚度之间的回归方程,并将其应用于所提出的系统中,对多晶硅太阳能电池进行大面积扫描增透膜厚度测量。与光学椭偏仪相比,该系统测量速度快。对一张768×768像素(15 cm×15 cm)的图像进行增透膜厚度测量仅需0.1秒,测量精度可达3nm。
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A computer vision system for fast AR film thickness measurement of polysilicon solar cells
For increasing marketing competence, silicon solar cell manufacturers have adopted optical inspection techniques in production lines to perform product classification and statistical process analysis. The product classification is based on overall photoelectric conversion efficiency of the solar cell itself. Two factors directly influence the overall photoelectric conversion efficiency of the solar cell, i.e., composed materials and antireflection film coating on substrate. Since film thickness variation of the antireflection layer will induce color change on the surface of solar cell, a cost-effective computer vision measurement system is proposed to perform fast AR film thickness measurement of polysilicon solar cells. The proposed system first uses a color CCD to capture the red-green-blue color image of inspected polysilicon solar cell, and transforms it to hue-saturation-lightness (HSL) image format. And then the area and boundary of different hue-value images are calculated and sorted with the image thresholding and label operation. With the corresponding measurement procedure on specified hue-value regions of using a high accuracy optical film thickness measurement instrument, the regression equation between the hue value and antireflection film thickness is obtained, and then implemented into the proposed system to perform large area scanning antireflection film thickness measurement of polysilicon solar cells. Compared to the optical ellipsometry, the measurement speed of the proposed system is fast. It take only 0.1 second to finish the antireflection film thickness measurement of an image of 768×768 pixels (15 cm×15 cm), and the measurement accuracy of the proposed system can reach 3 nm.
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