Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale

Greenland past temperature history can be reconstructed by forcing the output of a firn-densification and heat-diffusion model to fit multiple gas-isotope data (δ15N or δ40Ar or δ15Nexcess) extracted from ancient air in Greenland ice cores using published accumulation-rate (Acc) data-sets. We presen...

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Main Authors: Döring, Michael, Leuenberger, Markus Christian
Format: Dataset
Language:English
Published: PANGAEA 2018
Subjects:
Online Access:https://doi.pangaea.de/10.1594/PANGAEA.888997
https://doi.org/10.1594/PANGAEA.888997
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spelling ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.888997 2023-05-15T16:28:46+02:00 Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale Döring, Michael Leuenberger, Markus Christian LATITUDE: 72.970000 * LONGITUDE: -38.800000 * DATE/TIME START: 1990-01-01T00:39:00 * DATE/TIME END: 1990-01-01T00:39:00 2018-04-24 application/zip, 5 datasets https://doi.pangaea.de/10.1594/PANGAEA.888997 https://doi.org/10.1594/PANGAEA.888997 en eng PANGAEA Döring, Michael; Leuenberger, Markus Christian (2018): Novel automated inversion algorithm for temperature reconstruction using gas isotopes from ice cores. Climate of the Past, 14(6), 763-788, https://doi.org/10.5194/cp-14-763-2018 https://doi.pangaea.de/10.1594/PANGAEA.888997 https://doi.org/10.1594/PANGAEA.888997 CC-BY-NC-SA-3.0: Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported Access constraints: unrestricted info:eu-repo/semantics/openAccess CC-BY-NC-SA Dataset 2018 ftpangaea https://doi.org/10.1594/PANGAEA.888997 https://doi.org/10.5194/cp-14-763-2018 2023-01-20T07:34:08Z Greenland past temperature history can be reconstructed by forcing the output of a firn-densification and heat-diffusion model to fit multiple gas-isotope data (δ15N or δ40Ar or δ15Nexcess) extracted from ancient air in Greenland ice cores using published accumulation-rate (Acc) data-sets. We present here a novel methodology to solve this inverse problem, by designing a fully-automated algorithm. To demonstrate the performance of this novel approach, we begin by intentionally constructing synthetic temperature-histories and associated δ15N datasets, mimicking real Holocene data that we use as “true values” (targets) to be compared to the output of the algorithm. This allows us to quantify uncertainties originating from the algorithm itself. The presented approach is completely automated and therefore minimizes the "subjective" impact of manual parameter-tuning, leading to reproducible temperature-estimates. In contrast to many other ice-core-based temperature-reconstruction methods, the presented approach is completely independent from ice-core stable-water-isotopes, providing the opportunity to validate water-isotope-based reconstructions or reconstructions where water isotopes are used together with δ15N or δ40Ar. We solve the inverse problem T(δ15N, Acc) by using a combination of a Monte-Carlo-based iterative approach and the analysis of remaining mismatches between modelled and target data, based on cubic-spline-filtering of random numbers and the laboratory-determined temperature-sensitivity for nitrogen isotopes. Additionally, the presented reconstruction approach was tested by fitting measured δ40Ar and δ15Nexcess data, which leads as well to a robust agreement between modelled and measured data. The obtained final mismatches follow a symmetric standard-distribution-function. For the study on synthetic data, 95 % of the mismatches compared to the synthetic target-data are in an envelope between 3.0 permeg to 6.3 permeg for δ15N and 0.23 K to 0.51 K for temperature (2σ, respectively). In addition to ... Dataset Greenland Greenland ice cores ice core PANGAEA - Data Publisher for Earth & Environmental Science Greenland ENVELOPE(-38.800000,-38.800000,72.970000,72.970000)
institution Open Polar
collection PANGAEA - Data Publisher for Earth & Environmental Science
op_collection_id ftpangaea
language English
description Greenland past temperature history can be reconstructed by forcing the output of a firn-densification and heat-diffusion model to fit multiple gas-isotope data (δ15N or δ40Ar or δ15Nexcess) extracted from ancient air in Greenland ice cores using published accumulation-rate (Acc) data-sets. We present here a novel methodology to solve this inverse problem, by designing a fully-automated algorithm. To demonstrate the performance of this novel approach, we begin by intentionally constructing synthetic temperature-histories and associated δ15N datasets, mimicking real Holocene data that we use as “true values” (targets) to be compared to the output of the algorithm. This allows us to quantify uncertainties originating from the algorithm itself. The presented approach is completely automated and therefore minimizes the "subjective" impact of manual parameter-tuning, leading to reproducible temperature-estimates. In contrast to many other ice-core-based temperature-reconstruction methods, the presented approach is completely independent from ice-core stable-water-isotopes, providing the opportunity to validate water-isotope-based reconstructions or reconstructions where water isotopes are used together with δ15N or δ40Ar. We solve the inverse problem T(δ15N, Acc) by using a combination of a Monte-Carlo-based iterative approach and the analysis of remaining mismatches between modelled and target data, based on cubic-spline-filtering of random numbers and the laboratory-determined temperature-sensitivity for nitrogen isotopes. Additionally, the presented reconstruction approach was tested by fitting measured δ40Ar and δ15Nexcess data, which leads as well to a robust agreement between modelled and measured data. The obtained final mismatches follow a symmetric standard-distribution-function. For the study on synthetic data, 95 % of the mismatches compared to the synthetic target-data are in an envelope between 3.0 permeg to 6.3 permeg for δ15N and 0.23 K to 0.51 K for temperature (2σ, respectively). In addition to ...
format Dataset
author Döring, Michael
Leuenberger, Markus Christian
spellingShingle Döring, Michael
Leuenberger, Markus Christian
Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
author_facet Döring, Michael
Leuenberger, Markus Christian
author_sort Döring, Michael
title Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
title_short Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
title_full Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
title_fullStr Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
title_full_unstemmed Synthetic and fitted d15N and temperature data and GISP2 accumulation rates (13.5-52497.5 yr b2k) on GICC05 time scale
title_sort synthetic and fitted d15n and temperature data and gisp2 accumulation rates (13.5-52497.5 yr b2k) on gicc05 time scale
publisher PANGAEA
publishDate 2018
url https://doi.pangaea.de/10.1594/PANGAEA.888997
https://doi.org/10.1594/PANGAEA.888997
op_coverage LATITUDE: 72.970000 * LONGITUDE: -38.800000 * DATE/TIME START: 1990-01-01T00:39:00 * DATE/TIME END: 1990-01-01T00:39:00
long_lat ENVELOPE(-38.800000,-38.800000,72.970000,72.970000)
geographic Greenland
geographic_facet Greenland
genre Greenland
Greenland ice cores
ice core
genre_facet Greenland
Greenland ice cores
ice core
op_relation Döring, Michael; Leuenberger, Markus Christian (2018): Novel automated inversion algorithm for temperature reconstruction using gas isotopes from ice cores. Climate of the Past, 14(6), 763-788, https://doi.org/10.5194/cp-14-763-2018
https://doi.pangaea.de/10.1594/PANGAEA.888997
https://doi.org/10.1594/PANGAEA.888997
op_rights CC-BY-NC-SA-3.0: Creative Commons Attribution-NonCommercial-ShareAlike 3.0 Unported
Access constraints: unrestricted
info:eu-repo/semantics/openAccess
op_rightsnorm CC-BY-NC-SA
op_doi https://doi.org/10.1594/PANGAEA.888997
https://doi.org/10.5194/cp-14-763-2018
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