A Representativeness Assessment of the Angell-Korshover 63-Station Network Sampling Based on Reanalysis Temperature Data

IF 0.5 Q4 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
S. Shen
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引用次数: 0

Abstract

Global climate observations from ground stations require an evaluation of the effectiveness of a station network, which is often an assessment of the geometric distribution of [Formula: see text] points on a sphere. The representativeness of the Angell–Korshover 63-station network (AK-network) is assessed in this paper. It is shown that AK-network can effectively sample the January global average temperature data of the NCEP/NCAR Reanalysis from 1948 to 2015 when estimating inter-decadal variations, but it has large uncertainties for estimating linear trends. This paper describes a method for the assessment, and also includes an iterative numerical algorithm used to search for the locations of 63 uniformly distributed stations, named U63. The results of AK-63 and U63 are compared. The Appendix explains a problem of searching for the optimal distribution of [Formula: see text] points on a unit sphere in three-dimensional space under the condition of the maximum sum of the mutual distances among the points. The core R code for finding U63 is included. The R code can generate various interesting configurations for different [Formula: see text], among which one is particularly surprising: The configuration of 20 points is not a dodecahedron although the configurations for [Formula: see text], and 12 are tetrahedron, octahedron, cube, and icosahedron, respectively.
基于再分析温度数据的Angell-Korshover 63站网络采样代表性评价
来自地面站的全球气候观测需要对站网的有效性进行评估,这通常是对球面上[公式:见文本]点的几何分布的评估。本文对Angell-Korshover 63站网络(AK-network)的代表性进行了评价。结果表明,AK-network在估计年代际变化时可以有效地采样1948 - 2015年NCEP/NCAR Reanalysis的1月全球平均气温资料,但在估计线性趋势时存在较大的不确定性。本文描述了一种评估方法,并给出了一种迭代数值算法,用于搜索63个均匀分布的站点U63的位置。比较了AK-63和U63的结果。附录解释了在点间相互距离和最大的条件下,在三维空间中单位球面上寻找[公式:见文]点的最优分布的问题。包含查找U63的核心R代码。R代码可以为不同的[公式:见文]生成各种有趣的构型,其中特别令人惊讶的是:20点的构型不是十二面体,而[公式:见文]和12点的构型分别是四面体、八面体、立方体和二十面体。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Advances in Data Science and Adaptive Analysis
Advances in Data Science and Adaptive Analysis MATHEMATICS, INTERDISCIPLINARY APPLICATIONS-
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