Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods

Three different climate field reconstruction (CFR) methods are employed to reconstruct spatially resolved North Atlantic–European (NAE) and Northern Hemisphere (NH) summer temperatures over the past millennium from proxy records. These are tested in the framework of pseudoproxy experiments derived f...

Full description

Bibliographic Details
Published in:Climate of the Past
Main Authors: Zhang, Z., Wagner, S., Klockmann, M., Zorita, E.
Format: Article in Journal/Newspaper
Language:English
Published: EGU - Copernicus Publication 2022
Subjects:
Online Access:https://publications.hereon.de/id/51120
https://publications.hzg.de/id/51120
https://doi.org/10.5194/cp-18-2643-2022
id fthzgzmk:oai:publications.hereon.de:51120
record_format openpolar
spelling fthzgzmk:oai:publications.hereon.de:51120 2023-06-11T04:15:01+02:00 Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods Zhang, Z. Wagner, S. Klockmann, M. Zorita, E. 2022 https://publications.hereon.de/id/51120 https://publications.hzg.de/id/51120 https://doi.org/10.5194/cp-18-2643-2022 en eng EGU - Copernicus Publication https://dx.doi.org/10.5194/cp-18-2643-2022 urn:issn:1814-9324 https://publications.hereon.de/id/51120 https://publications.hzg.de/id/51120 info:eu-repo/semantics/openAccess open_access oa_gold issn:1814-9324 Zhang, Z.; Wagner, S.; Klockmann, M.; Zorita, E.: Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods. In: Climate of the Past. Vol. 18 (2022) 12, 2643 - 2668. (DOI: /10.5194/cp-18-2643-2022) info:eu-repo/semantics/article Zeitschrift Artikel 2022 fthzgzmk https://doi.org/10.5194/cp-18-2643-2022 2023-05-28T23:25:36Z Three different climate field reconstruction (CFR) methods are employed to reconstruct spatially resolved North Atlantic–European (NAE) and Northern Hemisphere (NH) summer temperatures over the past millennium from proxy records. These are tested in the framework of pseudoproxy experiments derived from two climate simulations with comprehensive Earth system models. Two of these methods are traditional multivariate linear methods (principal component regression, PCR, and canonical correlation analysis, CCA), whereas the third method (bidirectional long short-term memory neural network, Bi-LSTM) belongs to the category of machine-learning methods. In contrast to PCR and CCA, Bi-LSTM does not need to assume a linear and temporally stable relationship between the underlying proxy network and the target climate field. In addition, Bi-LSTM naturally incorporates information about the serial correlation of the time series. Our working hypothesis is that the Bi-LSTM method will achieve a better reconstruction of the amplitude of past temperature variability. In all tests, the calibration period was set to the observational period, while the validation period was set to the pre-industrial centuries. All three methods tested herein achieve reasonable reconstruction performance on both spatial and temporal scales, with the exception of an overestimation of the interannual variance by PCR, which may be due to overfitting resulting from the rather short length of the calibration period and the large number of predictors. Generally, the reconstruction skill is higher in regions with denser proxy coverage, but it is also reasonably high in proxy-free areas due to climate teleconnections. All three CFR methodologies generally tend to more strongly underestimate the variability of spatially averaged temperature indices as more noise is introduced into the pseudoproxies. The Bi-LSTM method tested in our experiments using a limited calibration dataset shows relatively worse reconstruction skills compared to PCR and CCA, and ... Article in Journal/Newspaper North Atlantic Hereon Publications (Helmholtz-Zentrum) Climate of the Past 18 12 2643 2668
institution Open Polar
collection Hereon Publications (Helmholtz-Zentrum)
op_collection_id fthzgzmk
language English
description Three different climate field reconstruction (CFR) methods are employed to reconstruct spatially resolved North Atlantic–European (NAE) and Northern Hemisphere (NH) summer temperatures over the past millennium from proxy records. These are tested in the framework of pseudoproxy experiments derived from two climate simulations with comprehensive Earth system models. Two of these methods are traditional multivariate linear methods (principal component regression, PCR, and canonical correlation analysis, CCA), whereas the third method (bidirectional long short-term memory neural network, Bi-LSTM) belongs to the category of machine-learning methods. In contrast to PCR and CCA, Bi-LSTM does not need to assume a linear and temporally stable relationship between the underlying proxy network and the target climate field. In addition, Bi-LSTM naturally incorporates information about the serial correlation of the time series. Our working hypothesis is that the Bi-LSTM method will achieve a better reconstruction of the amplitude of past temperature variability. In all tests, the calibration period was set to the observational period, while the validation period was set to the pre-industrial centuries. All three methods tested herein achieve reasonable reconstruction performance on both spatial and temporal scales, with the exception of an overestimation of the interannual variance by PCR, which may be due to overfitting resulting from the rather short length of the calibration period and the large number of predictors. Generally, the reconstruction skill is higher in regions with denser proxy coverage, but it is also reasonably high in proxy-free areas due to climate teleconnections. All three CFR methodologies generally tend to more strongly underestimate the variability of spatially averaged temperature indices as more noise is introduced into the pseudoproxies. The Bi-LSTM method tested in our experiments using a limited calibration dataset shows relatively worse reconstruction skills compared to PCR and CCA, and ...
format Article in Journal/Newspaper
author Zhang, Z.
Wagner, S.
Klockmann, M.
Zorita, E.
spellingShingle Zhang, Z.
Wagner, S.
Klockmann, M.
Zorita, E.
Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
author_facet Zhang, Z.
Wagner, S.
Klockmann, M.
Zorita, E.
author_sort Zhang, Z.
title Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
title_short Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
title_full Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
title_fullStr Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
title_full_unstemmed Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
title_sort evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods
publisher EGU - Copernicus Publication
publishDate 2022
url https://publications.hereon.de/id/51120
https://publications.hzg.de/id/51120
https://doi.org/10.5194/cp-18-2643-2022
genre North Atlantic
genre_facet North Atlantic
op_source issn:1814-9324
Zhang, Z.; Wagner, S.; Klockmann, M.; Zorita, E.: Evaluation of statistical climate reconstruction methods based on pseudoproxy experiments using linear and machine-learning methods. In: Climate of the Past. Vol. 18 (2022) 12, 2643 - 2668. (DOI: /10.5194/cp-18-2643-2022)
op_relation https://dx.doi.org/10.5194/cp-18-2643-2022
urn:issn:1814-9324
https://publications.hereon.de/id/51120
https://publications.hzg.de/id/51120
op_rights info:eu-repo/semantics/openAccess
open_access
oa_gold
op_doi https://doi.org/10.5194/cp-18-2643-2022
container_title Climate of the Past
container_volume 18
container_issue 12
container_start_page 2643
op_container_end_page 2668
_version_ 1768371507187154944