Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0

Modes of climate variability strongly impact our climate and thus human society. Nevertheless, the statistical properties of these modes remain poorly known due to the short time frame of instrumental measurements. Reconstructing these modes further back in time using statistical learning methods ap...

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Main Authors: Michel, S., Swingedouw, D., Chavent, M., Ortega, P., /Mignot, Juliette, /Khodri, Myriam
Format: Text
Language:English
Published: 2020
Subjects:
Online Access:https://www.documentation.ird.fr/hor/fdi:010078029
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spelling ftird:oai:ird.fr:fdi:010078029 2024-09-15T18:22:54+00:00 Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0 Michel, S. Swingedouw, D. Chavent, M. Ortega, P. /Mignot, Juliette /Khodri, Myriam 2020 https://www.documentation.ird.fr/hor/fdi:010078029 EN eng https://www.documentation.ird.fr/hor/fdi:010078029 oai:ird.fr:fdi:010078029 Michel S., Swingedouw D., Chavent M., Ortega P., Mignot Juliette, Khodri Myriam. Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0. 2020, 13 (2), p. 841-858 text 2020 ftird 2024-08-15T05:57:41Z Modes of climate variability strongly impact our climate and thus human society. Nevertheless, the statistical properties of these modes remain poorly known due to the short time frame of instrumental measurements. Reconstructing these modes further back in time using statistical learning methods applied to proxy records is useful for improving our understanding of their behaviour. For doing so, several statistical methods exist, among which principal component regression is one of the most widely used in paleoclimatology. Here, we provide the software ClimIndRec to the climate community; it is based on four regression methods (principal component regression, PCR; partial least squares, PLS; elastic net, Enet; random forest, RF) and cross-validation (CV) algorithms, and enables the systematic reconstruction of a given climate index. A prerequisite is that there are proxy records in the database that overlap in time with its observed variations. The relative efficiency of the methods can vary, according to the statistical properties of the mode and the proxy records used. Here, we assess the sensitivity to the reconstruction technique. ClimIndRec is modular as it allows different inputs like the proxy database or the regression method. As an example, it is here applied to the reconstruction of the North Atlantic Oscillation by using the PAGES 2k database. In order to identify the most reliable reconstruction among those given by the different methods, we use the modularity of ClimIndRec to investigate the sensitivity of the methodological setup to other properties such as the number and the nature of the proxy records used as predictors or the targeted reconstruction period. We obtain the best reconstruction of the North Atlantic Oscillation (NAO) using the random forest approach. It shows significant correlation with former reconstructions, but exhibits higher validation scores. Text North Atlantic North Atlantic oscillation IRD (Institute de recherche pour le développement): Horizon
institution Open Polar
collection IRD (Institute de recherche pour le développement): Horizon
op_collection_id ftird
language English
description Modes of climate variability strongly impact our climate and thus human society. Nevertheless, the statistical properties of these modes remain poorly known due to the short time frame of instrumental measurements. Reconstructing these modes further back in time using statistical learning methods applied to proxy records is useful for improving our understanding of their behaviour. For doing so, several statistical methods exist, among which principal component regression is one of the most widely used in paleoclimatology. Here, we provide the software ClimIndRec to the climate community; it is based on four regression methods (principal component regression, PCR; partial least squares, PLS; elastic net, Enet; random forest, RF) and cross-validation (CV) algorithms, and enables the systematic reconstruction of a given climate index. A prerequisite is that there are proxy records in the database that overlap in time with its observed variations. The relative efficiency of the methods can vary, according to the statistical properties of the mode and the proxy records used. Here, we assess the sensitivity to the reconstruction technique. ClimIndRec is modular as it allows different inputs like the proxy database or the regression method. As an example, it is here applied to the reconstruction of the North Atlantic Oscillation by using the PAGES 2k database. In order to identify the most reliable reconstruction among those given by the different methods, we use the modularity of ClimIndRec to investigate the sensitivity of the methodological setup to other properties such as the number and the nature of the proxy records used as predictors or the targeted reconstruction period. We obtain the best reconstruction of the North Atlantic Oscillation (NAO) using the random forest approach. It shows significant correlation with former reconstructions, but exhibits higher validation scores.
format Text
author Michel, S.
Swingedouw, D.
Chavent, M.
Ortega, P.
/Mignot, Juliette
/Khodri, Myriam
spellingShingle Michel, S.
Swingedouw, D.
Chavent, M.
Ortega, P.
/Mignot, Juliette
/Khodri, Myriam
Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
author_facet Michel, S.
Swingedouw, D.
Chavent, M.
Ortega, P.
/Mignot, Juliette
/Khodri, Myriam
author_sort Michel, S.
title Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
title_short Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
title_full Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
title_fullStr Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
title_full_unstemmed Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0
title_sort reconstructing climatic modes of variability from proxy records using climindrec version 1.0
publishDate 2020
url https://www.documentation.ird.fr/hor/fdi:010078029
genre North Atlantic
North Atlantic oscillation
genre_facet North Atlantic
North Atlantic oscillation
op_relation https://www.documentation.ird.fr/hor/fdi:010078029
oai:ird.fr:fdi:010078029
Michel S., Swingedouw D., Chavent M., Ortega P., Mignot Juliette, Khodri Myriam. Reconstructing climatic modes of variability from proxy records using ClimIndRec version 1.0. 2020, 13 (2), p. 841-858
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