Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes

In analysis of climate variability or change it is often of interest how the spatial structure in modes of variability in two datasets differ from each other, e.g. between past and future climate or between models and observations. Often such analysis is based on Empirical Orthogonal Function (EOF)...

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Main Authors: Bayr, Tobias, Dommenget, Dietmar
Format: Conference Object
Language:English
Published: 2013
Subjects:
Online Access:https://oceanrep.geomar.de/id/eprint/22333/
https://oceanrep.geomar.de/id/eprint/22333/1/FB1_ME_TobiasBayr_Poster_DEOF.pdf
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spelling ftoceanrep:oai:oceanrep.geomar.de:22333 2023-05-15T17:34:45+02:00 Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes Bayr, Tobias Dommenget, Dietmar 2013-04-12 text https://oceanrep.geomar.de/id/eprint/22333/ https://oceanrep.geomar.de/id/eprint/22333/1/FB1_ME_TobiasBayr_Poster_DEOF.pdf en eng https://oceanrep.geomar.de/id/eprint/22333/1/FB1_ME_TobiasBayr_Poster_DEOF.pdf Bayr, T. and Dommenget, D. (2013) Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes. [Poster] In: EGU General Assembly 2013. , 07.-12.04.2013, Vienna, Austria . Conference or Workshop Item NonPeerReviewed 2013 ftoceanrep 2023-04-07T15:10:40Z In analysis of climate variability or change it is often of interest how the spatial structure in modes of variability in two datasets differ from each other, e.g. between past and future climate or between models and observations. Often such analysis is based on Empirical Orthogonal Function (EOF) analysis or other simple indices of large-scale spatial structures. The present analysis lays out a concept on how two datasets of multi-variate climate variability can be compared against each other on basis of EOF analysis and how the differences in the multi-variate spatial structure between the two datasets can be quantified in terms of explained variance in the leading spatial patterns. It is also illustrated how the patterns of largest differences between the two datasets can be defined and interpreted. We illustrate this method on the basis of several well-defined artificial examples and by comparing our approach with examples of climate change studies from the literature. These literature examples include analysis of changes in the modes of variability under climate change for the Sea Level Pressure (SLP) of the North Atlantic and Europe, the SLP of the Southern Hemisphere, the Surface Temperature of the Northern Hemisphere, the Sea Surface Temperature of the North Pacific and for Precipitation in the tropical Indo-Pacific. The discussion of the literature examples illustrates that the method introduced here is at least partly more sensitive than the approaches used in the literature and it allows a better quantification of the changes in the modes of variability. Conference Object North Atlantic OceanRep (GEOMAR Helmholtz Centre für Ocean Research Kiel) Pacific
institution Open Polar
collection OceanRep (GEOMAR Helmholtz Centre für Ocean Research Kiel)
op_collection_id ftoceanrep
language English
description In analysis of climate variability or change it is often of interest how the spatial structure in modes of variability in two datasets differ from each other, e.g. between past and future climate or between models and observations. Often such analysis is based on Empirical Orthogonal Function (EOF) analysis or other simple indices of large-scale spatial structures. The present analysis lays out a concept on how two datasets of multi-variate climate variability can be compared against each other on basis of EOF analysis and how the differences in the multi-variate spatial structure between the two datasets can be quantified in terms of explained variance in the leading spatial patterns. It is also illustrated how the patterns of largest differences between the two datasets can be defined and interpreted. We illustrate this method on the basis of several well-defined artificial examples and by comparing our approach with examples of climate change studies from the literature. These literature examples include analysis of changes in the modes of variability under climate change for the Sea Level Pressure (SLP) of the North Atlantic and Europe, the SLP of the Southern Hemisphere, the Surface Temperature of the Northern Hemisphere, the Sea Surface Temperature of the North Pacific and for Precipitation in the tropical Indo-Pacific. The discussion of the literature examples illustrates that the method introduced here is at least partly more sensitive than the approaches used in the literature and it allows a better quantification of the changes in the modes of variability.
format Conference Object
author Bayr, Tobias
Dommenget, Dietmar
spellingShingle Bayr, Tobias
Dommenget, Dietmar
Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
author_facet Bayr, Tobias
Dommenget, Dietmar
author_sort Bayr, Tobias
title Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
title_short Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
title_full Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
title_fullStr Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
title_full_unstemmed Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes
title_sort comparing the spatial structure of variability in two datasets against each other on the basis of eof-modes
publishDate 2013
url https://oceanrep.geomar.de/id/eprint/22333/
https://oceanrep.geomar.de/id/eprint/22333/1/FB1_ME_TobiasBayr_Poster_DEOF.pdf
geographic Pacific
geographic_facet Pacific
genre North Atlantic
genre_facet North Atlantic
op_relation https://oceanrep.geomar.de/id/eprint/22333/1/FB1_ME_TobiasBayr_Poster_DEOF.pdf
Bayr, T. and Dommenget, D. (2013) Comparing the spatial structure of variability in two datasets against each other on the basis of EOF-modes. [Poster] In: EGU General Assembly 2013. , 07.-12.04.2013, Vienna, Austria .
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