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An improved methodology for filling missing values in spatiotemporal climate data set

机译:填补时空气候数据集中缺失值的改进方法

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摘要

In this paper, an improved methodology for the determination of missing values in a spatiotemporal database is presented. This methodology performs de-noising projection in order to accurately fill the missing values in the database. The improved methodology is called empirical orthogonal functions (EOF) pruning, and it is based on an original linear projection method called empirical orthogonal functions (EOF). The experiments demonstrate the performance of the improved methodology and present a comparison with the original EOF and with a widely used optimal interpolation method called objective analysis.
机译:在本文中,提出了一种确定时空数据库中缺失值的改进方法。该方法执行降噪投影,以便准确填充数据库中的缺失值。改进的方法称为经验正交函数(EOF)修剪,它基于称为经验正交函数(EOF)的原始线性投影方法。实验证明了改进方法的性能,并与原始EOF和广泛使用的称为目标分析的最佳插值方法进行了比较。

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