On using principal components to represent stations in empirical–statistical downscaling

We test a strategy for downscaling seasonal mean temperature for many locations within a region, based on principal component analysis (PCA), and assess potential benefits of this strategy which include an enhancement of the signal-to-noise ratio, more efficient computations, and reduced sensitivity...

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Bibliographic Details
Main Authors: Rasmus E. Benestad, Deliang Chen, Abdelkader Mezghani, Lijun Fan, Kajsa Parding
Format: Article
Language:English
Published: Stockholm University Press 2015-10-01
Series:Tellus: Series A, Dynamic Meteorology and Oceanography
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Online Access:http://www.tellusa.net/index.php/tellusa/article/view/28326/pdf_56
Description
Summary:We test a strategy for downscaling seasonal mean temperature for many locations within a region, based on principal component analysis (PCA), and assess potential benefits of this strategy which include an enhancement of the signal-to-noise ratio, more efficient computations, and reduced sensitivity to the choice of predictor domain. These conditions are tested in some case studies for parts of Europe (northern and central) and northern China. Results show that the downscaled results were not highly sensitive to whether a PCA-basis or a more traditional strategy was used. However, the results based on a PCA were associated with marginally and systematically higher correlation scores as well as lower root-mean-squared errors. The results were also consistent with the notion that PCA emphasises the large-scale dependency in the station data and an enhancement of the signal-to-noise ratio. Furthermore, the computations were more efficient when the predictands were represented in terms of principal components.
ISSN:1600-0870