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AN AEROSOL TYPE CLASSIFICATION METHOD BASED ON REMOTE SENSING DATA IN GUANGDONG, CHINA

机译:基于遥感数据的广东省广东省遥感数据的气溶胶型分类方法

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This paper provides an aerosol classification method based on remote sensing data in Guangdong, China in year 2010 and 2011. Aerosol Optical Depth, Angstrom Exponent and Ultraviolet Aerosol Index, as important properties of aerosols, are introduced into classification. Data of these three aerosol properties are integrated to establish a 3-dimension dataset, and k-means clustering algorithm with Mahalanobis distance is used to find out four clusters of the dataset, which respectively represents four aerosol types of urban-industrial, dust, biomass burning and mixed type. Prior knowledge about the understanding of each aerosol type is involved to associate each cluster with aerosol type. Temporal variation of the aerosol properties shows similarities between these two years. The proportion of aerosol types in different cities of Guangdong Province is also calculated, and result shows that in most cities urban-industrial aerosols takes the largest proportion while the mixed type aerosols takes the second place. Classification results prove that k-means cluster algorithm with Mahalanobis distance is a brief and efficient method for aerosol classification.
机译:本文提供了一种基于2010年至2011年广东省遥感数据的气溶胶分类方法。气溶胶光学深度,抗气孔和紫外线气溶胶指数,作为气溶胶的重要特性,被引入分类。这三个气溶胶属性的数据被整合以建立3维数据集,K-Means距离Mahalanobis距离的K-Means聚类算法用于查找数据集的四个集群,分别代表四种气溶胶类型的城市工业,灰尘,生物质燃烧和混合类型。关于对每个气溶胶类型的理解的先验知识涉及将每个集群与气溶胶类型相关联。气溶胶特性的时间变化显示这两年之间的相似之处。还计算了广东省不同城市气溶胶类型的比例,结果表明,在大多数城市的城市工业气溶胶中取得最大的比例,而混合式气溶胶占第二名。分类结果证明了Mahalanobis距离的K-Means群集算法是一种简短而有效的气溶胶分类方法。

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