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Delineation of climate regions using in-situ and remotely-sensed data for the Carolinas

机译:使用卡罗来纳州的原位和遥感数据划定气候区域

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Climatologically homogeneous regions in the Carolinas were delineated using a multi-step approach integrating in-situ and remotely-sensed data. We adopted a consensus clustering technique that obtains climate regions for precipitation and temperature separately. Both average linkage hierarchical and k-means non-hierarchical clustering methods were used to create weather station clusters. Using the resulting precipitation and temperature clusters as training data, we performed a machine-learning decision tree classification of remotely-sensed data (i.e., MODIS and TRMM) to map five precipitation classes and seven temperature classes for the Carolinas. These data were intersected to produce 17 consensus clusters for the Carolinas, and 16 climate regions when summarized by counties. The resultant climate regions showed rational climate regionalization reflecting controls on Carolina climate including topography, latitude, storm tracks, and proximity to the Atlantic Ocean. The use of remotely-sensed data effectively helped the delineation between weather station clusters and even detected consensus clusters that were not identified by intersecting weather station clusters grouped using only in-situ data. We compared the regions with the 15 existing National Climatic Data Center climate divisions using within- and between-cluster standard deviations for both in-situ and remotely-sensed data. Climate regions could improve the existing climate divisions in delineating climatologically homogeneous regions and in separating heterogeneous regions. (C) 2008 Elsevier Inc. All rights reserved.
机译:使用整合原位和遥感数据的多步骤方法,对卡罗来纳州的气候学上均质的区域进行了描绘。我们采用了一种共识聚类技术,该技术可分别获得降水和温度的气候区域。平均链接层次聚类和k均值非层次聚类方法均用于创建气象站聚类。使用所得的降水和温度簇作为训练数据,我们对遥感数据(即MODIS和TRMM)进行了机器学习决策树分类,以绘制卡罗来纳州的五个降水分类和七个温度分类。当各县汇总时,这些数据相交以产生卡罗来纳州的17个共识簇和16个气候区。最终的气候区域显示出合理的气候区域化,反映了对卡罗来纳州气候的控制,包括地形,纬度,风暴轨迹以及靠近大西洋的气候。遥感数据的使用有效地帮助了气象站群集之间的划分,甚至帮助检测到了仅由就地数据分组的相交气象站群集无法识别的共识群集。我们使用就地数据和遥感数据的群集内和群集间标准差,将区域与现有的15个国家气候数据中心气候分区进行了比较。气候区域可以在划定气候上均质的地区和分离异质性地区方面改善现有的气候划分。 (C)2008 Elsevier Inc.保留所有权利。

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