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首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >A stochastic weather model for generating daily precipitation series at ungauged locations in the Catskill Mountain region of New York state
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A stochastic weather model for generating daily precipitation series at ungauged locations in the Catskill Mountain region of New York state

机译:在纽约州Catskill Mounta山区未凝固地区产生日降水系列的随机天气模型

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摘要

Information on the variability of precipitation in time and space is critical for many water resource projects. However, precipitation records at the location of interest are often either limited or unavailable due to an inadequate network of rainfall measurements. To address this need, regionalization methods have been employed to characterize spatial patterns of precipitation and to transfer precipitation information from one location to another where records are scarce. Hence, the overall objective of the present paper is to propose a stochastic weather model for generating daily precipitation at ungauged locations. The proposed approach consists of two components: (a) a regionalization approach for identifying homogeneous groups of observed daily precipitation series, and (b) a stochastic model for constructing daily precipitation events at ungauged locations within homogeneous groups. This statistical approach identifies groups of precipitation stations with similar statistical characteristics based on the combination of two multivariate statistical techniques: principal component analysis (PCA) and ordinal factor analysis (OFA). While the application of PCA in climatological regionalization studies based on precipitation amount is common, the application of OFA to include precipitation occurrence in the identification of regions is unusual. The feasibility of the approach is assessed using daily precipitation data from a network of precipitation stations in the Catskill Mountain region of New York State, United States.
机译:关于时间和空间降水变异性的信息对于许多水资源项目至关重要。然而,由于降雨量测量不足,感兴趣地点的降水记录通常是有限或不可用。为了解决这种需求,已经采用区域化方法来表征降水的空间模式,并将降水信息从一个位置转移到另一个位置,其中记录稀缺。因此,本文的整体目的是提出一种随机天气模型,用于在未凝固的位置产生日常沉淀。所提出的方法包括两个组分:(a)用于鉴定观察到的每日降水系列的均匀组的区域化方法,(b)用于在均匀组内未吞噬位置构建日常降水事件的随机模型。这种统计方法识别具有类似统计特性的降水站组,基于两种多变量统计技术的组合:主成分分析(PCA)和序数分析(OFA)。虽然PCA在基于降水量的气候区域化研究中的应用是常见的,但在鉴定地区的析出发生中的应用是不寻常的。使用来自美国Catskill Mountain地区的降水站网络的日降水数据评估该方法的可行性。

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