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首页> 外文期刊>Journal of Science and Technology of Agriculture and Natural Resources >Using the Principal Component Analysis Approach for Weighting Statistical, Climatic and Geographical Attributes of the Maximum 24-hour Rainfall and Spatial Clustering Analysis (A Case Study: Urmia Lake Basin)
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Using the Principal Component Analysis Approach for Weighting Statistical, Climatic and Geographical Attributes of the Maximum 24-hour Rainfall and Spatial Clustering Analysis (A Case Study: Urmia Lake Basin)

机译:使用主成分分析法加权最大24小时降雨量的统计,气候和地理属性以及空间聚类分析(案例研究:Urmia Lake Basin)

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Regionalization is one of the useful tools for carrying out effective analyses in regions lacking data or with having only incomplete data. One of the regionalization methods widely used in the hydrological studies is the clustering approach. Moreover, another effective factor on clustering is the degree of importance and participation level for each of these attributes. In this study, it was tried to use a broad range of attributes to compare their performance in regionalization. Then, according to the importance and role of each attribute in regionalization, the appropriate weight for each of the attributes in each category was determined using the principal component analysis (PCA) method, and the effect of this weighting in forming the homogenous regions was investigated by the Ward's clustering method. In this regard, the maximum 24-hour rainfall data of 63 meteorological stations located in Urmia Lake Basin (ULB) was used in this study during a time period of 30 years (1979-2008). Furthermore, seven categories of attributes were defined in order to regionalize the rainfall. The results showed that by considering different attributes and combining them with each other, a different clustering is obtained in each category in terms of the number of clusters and stations. Among seven categories of attributes, it was found that the geographical and climatic-geographical categories of attributes showed a more appropriate clustering over the ULB. Additionally, the weighting of attributes could have more effect on improving homogeneity and forming the independent clusters in most cases in terms of the scattering of station and how to locate over the basin.
机译:区域化是在缺乏数据或仅有不完整数据的地区进行有效分析的有用工具之一。水文研究中广泛使用的区域化方法之一是聚类方法。此外,聚类的另一个有效因素是这些属性中每个属性的重要性和参与程度。在这项研究中,尝试使用广泛的属性来比较它们在区域化中的表现。然后,根据每个属性在区域化中的重要性和作用,使用主成分分析(PCA)方法确定每个类别中每个属性的适当权重,并研究此权重在形成同质区域中的作用通过Ward的聚类方法。在这方面,本研究在30年的时间段(1979-2008年)中使用了位于Urmia Lake Basin(ULB)的63个气象站的最大24小时降雨数据。此外,定义了七类属性,以便对降雨进行分区。结果表明,通过考虑不同的属性并将它们彼此组合,就类别和站点数而言,每个类别中获得的聚类都不同。在七个属性类别中,发现属性的地理和气候地理类别在ULB上显示出更合适的聚类。此外,在大多数情况下,就站点的散布以及如何在盆地上定位而言,属性的权重可能对改善同质性和形成独立的群集具有更大的影响。

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