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首页> 外文期刊>Journal of Applied Meteorology and Climatology >Interpolation of Global Monthly Rain Gauge Observations for Climate Change Analysis
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Interpolation of Global Monthly Rain Gauge Observations for Climate Change Analysis

机译:插值全球每月雨量计观测值以进行气候变化分析

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摘要

Long-term global gridded datasets of observed precipitation are essential for the analysis of the global water and energy cycle, its variability, and possible changes. Several institutions provide those datasets. In 2005 the Global Precipitation Climatology Centre (GPCC) published the so-called Variability Analysis of Surface Climate Observations (VASClimO) dataset. This dataset is especially designed for the investigation of temporal change and variability. To date, however, the GPCC has not published how this dataset has been produced. This paper aims to fill this gap. It provides detailed information on how stations are selected and how data are quality controlled and interpolated. The dataset is based only on station records covering at least 90% of the period 1951-2000. The time series of 9343 stations were used. However, these stations are distributed very inhomogeneously around the globe; 4094 of these stations are within Germany and France. The VASClimO dataset is interpolated from relative deviations of observed monthly precipitation, leading to considerably lower interpolation errors than direct interpolation or the interpolation of absolute deviations. The retransformation from interpolated relative deviations to precipitation is done with local long-term averages of precipitation interpolated from data of the Food and Agriculture Organization of the United Nations. The VASClimO dataset has been interpolated with a method that is based on local station correlations (LSC) that is introduced here. It is compared with ordinary kriging and three versions of Shepard's method. LSC outperforms these methods, especially with respect to the spatial maxima of interpolation errors.
机译:长期观测到的降水的全球网格化数据集对于分析全球水和能源循环,其变化和可能的变化至关重要。一些机构提供了这些数据集。 2005年,全球降水气候中心(GPCC)发布了所谓的地表气候观测值变异性分析(VASClimO)数据集。该数据集是专为研究时间变化和变异性而设计的。但是,迄今为止,GPCC尚未发布该数据集的生成方式。本文旨在填补这一空白。它提供有关如何选择站点以及如何对数据进行质量控制和内插的详细信息。该数据集仅基于覆盖至少1951-2000年期间90%的站点记录。使用了9343个台站的时间序列。但是,这些电台在全球范围内分布非常不均匀。这些车站的4094个位于德国和法国境内。 VASClimO数据集是根据观测到的每月降水的相对偏差进行插值的,与直接插值或绝对偏差的插值相比,插值误差要低得多。从插值相对偏差到降水的重新转换是根据联合国粮食及农业组织的数据插值的本地长期平均降水量完成的。 VASClimO数据集已使用基于此处介绍的本地站相关性(LSC)的方法进行内插。将其与普通克里金法和Shepard方法的三种版本进行比较。 LSC优于这些方法,尤其是在插值误差的空间最大值方面。

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