HBI concentrations and classification tree model predictions of sea ice conditions for surface sediments and downcore records in the Barents Sea

We investigated the potential for classification tree (CT) models to provide a further approach to paleo Arctic sea ice reconstruction through analysis of a suite of six highly branched isoprenoid (HBI) biomarkers in 198 surface sediments from the Barents Sea. The four CT models representing modern sea ice conditions were then applied to four downcore records within the study area (cores BASICC 1, 8, 43, and core MSM5/5-712-1) in order to reconstruct sea ice conditions over the last 300 years. The current dataset includes the absolute HBI concentrations in all sediment samples (ng/g dry sed.), as well as CT model outcomes for all samples, which were classified as having experienced marginal, intermediate, or extensive overlying sea ice cover (further details are available in the manuscript associated with these data).

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Cite this as

Köseoğlu, Denizcan, Belt, Simon T, Smik, Lukas, Yao, Haoyi, Panieri, Giuliana, Knies, Jochen (2017). Dataset: HBI concentrations and classification tree model predictions of sea ice conditions for surface sediments and downcore records in the Barents Sea. https://doi.org/10.1594/PANGAEA.881637

DOI retrieved: 2017

Additional Info

Field Value
Imported on November 30, 2024
Last update November 30, 2024
License CC-BY-3.0
Source https://doi.org/10.1594/PANGAEA.881637
Author Köseoğlu, Denizcan
Given Name Denizcan
Family Name Köseoğlu
More Authors
Belt, Simon T
Smik, Lukas
Yao, Haoyi
Panieri, Giuliana
Knies, Jochen
Source Creation 2017
Publication Year 2017
Resource Type application/zip - filename: Koseoglu-etal_2017
Subject Areas
Name: Chemistry

Name: Lithosphere

Related Identifiers
Title: Complementary biomarker-based methods for characterising Arctic sea ice conditions: A case study comparison between multivariate analysis and the PIP25 index
Identifier: https://doi.org/10.1016/j.gca.2017.11.001
Type: DOI
Relation: IsSupplementTo
Year: 2018
Source: Geochimica et Cosmochimica Acta
Authors: Köseoğlu Denizcan , Belt Simon T , Smik Lukas , Yao Haoyi , Panieri Giuliana , Knies Jochen .