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A method for cloud detection and opacity classification based on ground based sky imagery

机译:一种基于地面天空图像的云检测和不​​透明度分类方法

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摘要

Digital images of the sky obtained using a total sky imager (TSI) are classified pixel by pixel into clear sky, optically thin and optically thick clouds. A new classification algorithm was developed that compares the pixel red-blue ratio (RBR) to the RBR of a clear sky library (CSL) generated from images captured on clear days. The difference, rather than the ratio, between pixel RBR and CSL RBR resulted in more accurate cloud classification. High correlation between TSI image RBR and aerosol optical depth (AOD) measured by an AERONET photometer was observed and motivated the addition of a haze correction factor (HCF) to the classification model to account for variations in AOD. Thresholds for clear and thick clouds were chosen based on a training image set and validated with set of manually annotated images. Misclassifications of clear and thick clouds into the opposite category were less than 1 %. Thin clouds were classified with an accuracy of 60 %. Accurate cloud detection and opacity classification techniques will improve the accuracy of short-term solar power forecasting.
机译:使用总天空成像器(TSI)获得的天空数字图像被逐像素分类为晴朗的天空,光学上稀薄和光学上厚的云。开发了一种新的分类算法,该算法将像素红蓝比(RBR)与晴天时拍摄的图像生成的晴天库(CSL)的RBR进行比较。像素RBR和CSL RBR之间的差异而不是比率导致了更准确的云分类。观察到TSI图像RBR与AERONET光度计测量的气溶胶光学深度(AOD)之间的高度相关性,并促使向分类模型添加雾度校正因子(HCF)以解决AOD的变化。根据训练图像集选择清晰和浓密的云的阈值,并使用一组手动注释的图像进行验证。晴云和浓云向相反类别的错误分类少于1%。薄云的分类精度为60%。准确的云探测和不透明度分类技术将提高短期太阳能预测的准确性。

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