PCA-based strategy to represent stations for empirical-statistical ...

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PCA-based strategy to represent stations for empirical-statistical downscaling Rasmus E. Benestad, Kajsa M. Parding, Abdelkader Mezghani ICRC-CORDEX B3, Stockholm May 18, 2016

Transcript of PCA-based strategy to represent stations for empirical-statistical ...

Page 1: PCA-based strategy to represent stations for empirical-statistical ...

PCA-based strategy to represent stations for empirical-statistical downscaling

Rasmus E. Benestad, Kajsa M. Parding, Abdelkader MezghaniICRC-CORDEX B3, Stockholm May 18, 2016

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Why principal component analysis (PCA)?

Redundant information

Signal enhancement

Covariance preservation

Computation time

Orthogonality

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Redundancy: information vs data

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Norwegian Meteorological InstituteTellus A 2015, 67, 28326, http://dx.doi.org/10.3402/tellusa.v67.28326

Restructure data with information first

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Covariance structure

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Sensitivity to predictor domain

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Requirements for PCA-based downscaling

No missing dataSuitable distributionNot too spatially spread

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Test of pcafill

Data matrix with missing data

Complete data matrix

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Example of PCA-based regression

• Apply multiple regression to single principal components.

• Fast: 4 leading modes rather than ~400 stations• especially for large ensembles

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Downscaling: diagnostics for leading PCA

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PCA quick to grid: only a few patterns

LatticeKrigCovariate: z

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“Warm season” wet-day mean precip μ

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“Warm season” wet-day frequency fw

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Storm tracks

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Thank you for your attention!

Tellus A 2015, 67, 28326, http://dx.doi.org/10.3402/tellusa.v67.28326

Benestad, Rasmus; Parding, Kajsa; Isaksen, Ketil, Mezghani, Abdelkader “Climate change and projections for the Barents region: what is expected to change and what will stay the same?", ERL-102170.R2 (accepted)

https://github.com/metno/esd_Rmarkdown/tree/master/CORDEX