Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks

Artificial Neural Networks (ANN) were trained by using an extensive radiolarian census dataset from the Nordic (Greenland, Norwegian, and Iceland) Seas. The regressions between observed and predicted Summer Sea Temperature (SST) indicate that lower error margins and better correlation coefficients a...

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Published in:Palaeogeography, Palaeoclimatology, Palaeoecology
Main Authors: Cortese, G, Dolven, Jk, Bjorklund, Kr, Malmgren, Ba
Format: Text
Language:English
Published: Elsevier Science Bv 2005
Subjects:
geo
Online Access:https://doi.org/10.1016/j.palaeo.2005.04.015
https://archimer.ifremer.fr/doc/00229/34074/32535.pdf
https://archimer.ifremer.fr/doc/00229/34074/
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spelling fttriple:oai:gotriple.eu:10670/1.5weif1 2023-05-15T16:30:06+02:00 Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks Cortese, G Dolven, Jk Bjorklund, Kr Malmgren, Ba 2005-01-01 https://doi.org/10.1016/j.palaeo.2005.04.015 https://archimer.ifremer.fr/doc/00229/34074/32535.pdf https://archimer.ifremer.fr/doc/00229/34074/ en eng Elsevier Science Bv doi:10.1016/j.palaeo.2005.04.015 10670/1.5weif1 https://archimer.ifremer.fr/doc/00229/34074/32535.pdf https://archimer.ifremer.fr/doc/00229/34074/ other Archimer, archive institutionnelle de l'Ifremer Palaeogeography Palaeoclimatology Palaeoecology (0031-0182) (Elsevier Science Bv), 2005-08 , Vol. 224 , N. 4 , P. 311-332 envir geo Text https://vocabularies.coar-repositories.org/resource_types/c_18cf/ 2005 fttriple https://doi.org/10.1016/j.palaeo.2005.04.015 2023-01-22T18:38:25Z Artificial Neural Networks (ANN) were trained by using an extensive radiolarian census dataset from the Nordic (Greenland, Norwegian, and Iceland) Seas. The regressions between observed and predicted Summer Sea Temperature (SST) indicate that lower error margins and better correlation coefficients are obtained for 100 m (SST100) compared to 10 m (SST10) water depth, and by using a subset of species instead of all species. The trained ANNs were subsequently applied to radiolarian data from two Norwegian Sea cores, HM 79-4 and MD95-2011, for reconstructions of SSTs through the last 15,000 years. The reconstructed SST is quite high during the Bolling-Allerod, when it reaches values only found later during the warmest phase of the Holocene. The climatic transitions in and out of the Younger Dryas are very rapid and involve a change in SST100 of 6.2 and 6.8 degrees C, taking place over 440 and 140 years, respectively. SST100 remains at a maximum during the early Holocene, and this Radiolarian Holocene Optimum Temperature Interval (RHOTI) predates the commonly recognized middle Holocene Climatic Optimum (HCO). During the 8.2 ka event, SST100 decreases by ca. 3 degrees C, and this episode marks the establishment of a cooling trend, roughly spanning the middle Holocene (until ca. 4.2 ka). Successively, since then and through the late Holocene, SST100 follows instead a statistically significant warming trend. The general patterns of the reconstructed SSTs agree quite well with previously obtained results based on application of Imbrie and Kipp Transfer Functions (IKTF) to the same two cores for SST0. A statistically significant cyclic component of our SST record (period of 278 years) has been recognized. This is close to the de Vries or Suess cycle, linked to solar variability, and documented in a variety of other high-resolution Holocene records. Text Greenland Iceland Norwegian Sea Unknown Greenland Norwegian Sea Palaeogeography, Palaeoclimatology, Palaeoecology 224 4 311 332
institution Open Polar
collection Unknown
op_collection_id fttriple
language English
topic envir
geo
spellingShingle envir
geo
Cortese, G
Dolven, Jk
Bjorklund, Kr
Malmgren, Ba
Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
topic_facet envir
geo
description Artificial Neural Networks (ANN) were trained by using an extensive radiolarian census dataset from the Nordic (Greenland, Norwegian, and Iceland) Seas. The regressions between observed and predicted Summer Sea Temperature (SST) indicate that lower error margins and better correlation coefficients are obtained for 100 m (SST100) compared to 10 m (SST10) water depth, and by using a subset of species instead of all species. The trained ANNs were subsequently applied to radiolarian data from two Norwegian Sea cores, HM 79-4 and MD95-2011, for reconstructions of SSTs through the last 15,000 years. The reconstructed SST is quite high during the Bolling-Allerod, when it reaches values only found later during the warmest phase of the Holocene. The climatic transitions in and out of the Younger Dryas are very rapid and involve a change in SST100 of 6.2 and 6.8 degrees C, taking place over 440 and 140 years, respectively. SST100 remains at a maximum during the early Holocene, and this Radiolarian Holocene Optimum Temperature Interval (RHOTI) predates the commonly recognized middle Holocene Climatic Optimum (HCO). During the 8.2 ka event, SST100 decreases by ca. 3 degrees C, and this episode marks the establishment of a cooling trend, roughly spanning the middle Holocene (until ca. 4.2 ka). Successively, since then and through the late Holocene, SST100 follows instead a statistically significant warming trend. The general patterns of the reconstructed SSTs agree quite well with previously obtained results based on application of Imbrie and Kipp Transfer Functions (IKTF) to the same two cores for SST0. A statistically significant cyclic component of our SST record (period of 278 years) has been recognized. This is close to the de Vries or Suess cycle, linked to solar variability, and documented in a variety of other high-resolution Holocene records.
format Text
author Cortese, G
Dolven, Jk
Bjorklund, Kr
Malmgren, Ba
author_facet Cortese, G
Dolven, Jk
Bjorklund, Kr
Malmgren, Ba
author_sort Cortese, G
title Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
title_short Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
title_full Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
title_fullStr Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
title_full_unstemmed Late Pleistocene-Holocene radiolarian paleotemperatures in the Norwegian Sea based on artificial neural networks
title_sort late pleistocene-holocene radiolarian paleotemperatures in the norwegian sea based on artificial neural networks
publisher Elsevier Science Bv
publishDate 2005
url https://doi.org/10.1016/j.palaeo.2005.04.015
https://archimer.ifremer.fr/doc/00229/34074/32535.pdf
https://archimer.ifremer.fr/doc/00229/34074/
geographic Greenland
Norwegian Sea
geographic_facet Greenland
Norwegian Sea
genre Greenland
Iceland
Norwegian Sea
genre_facet Greenland
Iceland
Norwegian Sea
op_source Archimer, archive institutionnelle de l'Ifremer
Palaeogeography Palaeoclimatology Palaeoecology (0031-0182) (Elsevier Science Bv), 2005-08 , Vol. 224 , N. 4 , P. 311-332
op_relation doi:10.1016/j.palaeo.2005.04.015
10670/1.5weif1
https://archimer.ifremer.fr/doc/00229/34074/32535.pdf
https://archimer.ifremer.fr/doc/00229/34074/
op_rights other
op_doi https://doi.org/10.1016/j.palaeo.2005.04.015
container_title Palaeogeography, Palaeoclimatology, Palaeoecology
container_volume 224
container_issue 4
container_start_page 311
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