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An Improved Cloud Classification Algorithm for China’s FY-2C Multi-Channel Images Using Artificial Neural Network

机译:基于人工神经网络的FY-2C多通道图像云分类算法的改进

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摘要

The crowning objective of this research was to identify a better cloud classification method to upgrade the current window-based clustering algorithm used operationally for China’s first operational geostationary meteorological satellite FengYun-2C (FY-2C) data. First, the capabilities of six widely-used Artificial Neural Network (ANN) methods are analyzed, together with the comparison of two other methods: Principal Component Analysis (PCA) and a Support Vector Machine (SVM), using 2864 cloud samples manually collected by meteorologists in June, July, and August in 2007 from three FY-2C channel (IR1, 10.3–11.3 μm; IR2, 11.5–12.5 μm and WV 6.3–7.6 μm) imagery. The result shows that: (1) ANN approaches, in general, outperformed the PCA and the SVM given sufficient training samples and (2) among the six ANN networks, higher cloud classification accuracy was obtained with the Self-Organizing Map (SOM) and Probabilistic Neural Network (PNN). Second, to compare the ANN methods to the present FY-2C operational algorithm, this study implemented SOM, one of the best ANN network identified from this study, as an automated cloud classification system for the FY-2C multi-channel data. It shows that SOM method has improved the results greatly not only in pixel-level accuracy but also in cloud patch-level classification by more accurately identifying cloud types such as cumulonimbus, cirrus and clouds in high latitude. Findings of this study suggest that the ANN-based classifiers, in particular the SOM, can be potentially used as an improved Automated Cloud Classification Algorithm to upgrade the current window-based clustering method for the FY-2C operational products.
机译:这项研究的最高目标是确定一种更好的云分类方法,以升级目前用于中国首颗对地静止气象卫星风云2C(FY-2C)数据的可操作的基于窗口的聚类算法。首先,分析了6种广泛使用的人工神经网络(ANN)方法的功能,并与其他两种方法进行了比较:主成分分析(PCA)和支持向量机(SVM),使用了2864个由人工收集的云样本2007年6月,7月和8月的气象学家从三个FY-2C通道(IR1,10.3-11.3μm; IR2,11.5-12.5μm和WV 6.3-7.6μm)成像。结果表明:(1)在足够的训练样本的情况下,一般而言,人工神经网络方法的性能优于PCA和SVM;(2)在六个人工神经网络中,通过自组织映射(SOM)和AOM获得的云分类精度更高。概率神经网络(PNN)。其次,为了将ANN方法与当前的FY-2C操作算法进行比较,本研究实现了SOM(该研究中确定的最佳ANN网络之一),作为FY-2C多通道数据的自动化云分类系统。结果表明,通过更准确地识别高纬度积云,卷云和云等云类型,SOM方法不仅在像素级别的准确性上而且在云补丁级别的分类上都大大提高了结果。这项研究的发现表明,基于ANN的分类器,尤其是SOM,可以潜在地用作改进的自动云分类算法,以升级FY-2C运营产品的当前基于窗口的聚类方法。

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