首页> 外文期刊>International Journal of Climatology: A Journal of the Royal Meteorological Society >Evaluation of the NCEP-NCAR reanalysis in terms of synoptic-scale phenomena: a case study from the Midwestern USA
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Evaluation of the NCEP-NCAR reanalysis in terms of synoptic-scale phenomena: a case study from the Midwestern USA

机译:根据天气尺度现象对NCEP-NCAR重新分析的评估:来自美国中西部的案例研究

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摘要

We evaluate the ability of the National Centers for Environmental Prediction (NCEP)-National Center for Atmosphere Research (NCAR) reanalysis to represent the synoptic-scale climate of the Midwestern USA relative to radiosonde data. Independent, automated synoptic classifications, based on rotated principal component analysis (PCA) of 500 hPa geopotential heights, 850 hPa air temperatures, and 200 hPa wind speeds and a two-step clustering algorithm, result in a 15-type NCEP-NCAR synoptic classification and a 14-type radiosonde classification. The classifications are examined in terms of similarities and differences in the modes of variance manifest in the PCA solutions, the spatial patterns and variability of input variables within each weather type, and the temporal variability of the occurrence of each weather type. The classifications are then compared in terms of these characteristics and the degree of mutual class occupancy. Although the classifications identify a number of the same weather types (in terms of the input data, PCA solution, and mutual occupancy), the correspondence is imperfect. To assess whether the differences in the classifications are due to errant assignment of data to clusters or to differences in the fundamental modes present in the data sets as represented by the PC loadings and scores, a third targeted classification is undertaken that categorizes the NCEP-NCAR reanalysis data according to the radiosonde PCA solution. This classification exhibits a higher degree of similarity to that derived using the radiosonde data (in terms of both interpretability and mutual class occupancy), but the solutions still exhibit considerable differences. It is probable that the discrepancies are partly a function of the differing data structures and densities, but they may also reflect differences in the intensity of synoptic-scale phenomena as manifest in the data sets.
机译:我们评估了国家环境预测中心(NCEP)-国家大气研究中心(NCAR)重新分析的能力,以相对于探空仪数据代表美国中西部的天气尺度气候。基于500 hPa地势高度,850 hPa气温和200 hPa风速的旋转主成分分析(PCA),采用独立的自动天气分类法,采用两步聚类算法,得出15型NCEP-NCAR天气分类法和14型探空仪分类。根据PCA解决方案中表现出的方​​差模式的相似性和差异,每种天气类型内输入变量的空间模式和变异性以及每种天气类型发生的时间变异性来检查分类。然后根据这些特征和共同的等级占用程度对分类进行比较。尽管分类标识了许多相同的天气类型(就输入数据,PCA解决方案和相互占用而言),但对应关系并不完美。为了评估分类中的差异是由于数据错误分配给集群还是由于PC负荷和得分所代表的数据集中存在的基本模式差异,进行了第三个目标分类,将NCEP-NCAR分类根据无线电探空仪PCA解决方案重新分析数据。该分类与使用探空仪数据得出的分类具有较高的相似度(在可解释性和共同的类别占用率方面),但解决方案仍存在较大差异。差异可能部分是由于不同的数据结构和密度造成的,但它们也可能反映出数据集中明显的天气尺度现象强度的差异。

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