Emerging climate signals in the Lena River catchment: a non-parametric statistical approach

Climate change has far-reaching implications in permafrost-underlain landscapes with respect to hydrology, ecosystems and the population’s traditional livelihoods. In the Lena River catchment, Eastern Siberia, changing climatic conditions and the associated impacts are already observed or expected....

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Main Authors: Pohl, Eric, Grenier, Christophe, Vrac, Mathieu, Kageyama, Masa
Format: Text
Language:English
Published: 2019
Subjects:
Online Access:https://doi.org/10.5194/hess-2019-360
https://www.hydrol-earth-syst-sci-discuss.net/hess-2019-360/
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spelling ftcopernicus:oai:publications.copernicus.org:hessd78165 2023-05-15T17:07:37+02:00 Emerging climate signals in the Lena River catchment: a non-parametric statistical approach Pohl, Eric Grenier, Christophe Vrac, Mathieu Kageyama, Masa 2019-09-10 application/pdf https://doi.org/10.5194/hess-2019-360 https://www.hydrol-earth-syst-sci-discuss.net/hess-2019-360/ eng eng doi:10.5194/hess-2019-360 https://www.hydrol-earth-syst-sci-discuss.net/hess-2019-360/ eISSN: 1607-7938 Text 2019 ftcopernicus https://doi.org/10.5194/hess-2019-360 2019-12-24T09:48:32Z Climate change has far-reaching implications in permafrost-underlain landscapes with respect to hydrology, ecosystems and the population’s traditional livelihoods. In the Lena River catchment, Eastern Siberia, changing climatic conditions and the associated impacts are already observed or expected. However, as climate change progresses the question remains as to how far we are along this track and when these changes will constitute a significant emergence from natural variability. Here we present an approach to investigate temperature and precipitation time series from observational records, reanalysis, and an ensemble of 65 climate model simulations forced by the RCP8.5 emission scenario. We focus on the Lena River catchment, where significant environmental changes are already apparent. We developed a novel non-parametric statistical method to identify the time of emergence (ToE) of climate change signals, i.e. the time when a climate signal permanently exceeds its natural variability. The method is based on the Hellinger distance metric that measures the similarity of probability density functions (PDFs) roughly corresponding to their geometrical overlap. Natural variability is estimated as PDF for the earliest period common to all datasets used in the study (1901–1921) and is then compared to PDFs of target periods with moving windows of 21 years at annual and seasonal scale. The method yields dissimilarities or emergence levels ranging from 0 to 100 % and the direction of change as continuous time series itself. For the Lena River catchment, on average, emergence of temperature has a strong onset in the 1970s with a monotonic increase thereafter for validated reanalysis data. At the end of the reanalysis dataset (2004), temperature distributions have emerged by 50–60 %. Climate model projections suggest the same evolution on average and 90 % emergence by 2040. For precipitation the analysis is less conclusive because of high uncertainties in existing reanalysis datasets that also impede an evaluation of the climate models. Model projections suggest hardly any emergence by 2000 but a strong emergence thereafter, reaching 60 % by the end of the investigated period (2089). The presented ToE method provides more versatility than traditional parametric approaches and allows for a detailed temporal analysis of climate signal evolutions. An original strategy to select the most realistic model simulations based on the available observational data significantly reduces the uncertainties resulting from the spread in the 65 climate models used. The method comes as a toolbox available at https://github.com/pohleric/toe_tools . Text lena river permafrost Siberia Copernicus Publications: E-Journals
institution Open Polar
collection Copernicus Publications: E-Journals
op_collection_id ftcopernicus
language English
description Climate change has far-reaching implications in permafrost-underlain landscapes with respect to hydrology, ecosystems and the population’s traditional livelihoods. In the Lena River catchment, Eastern Siberia, changing climatic conditions and the associated impacts are already observed or expected. However, as climate change progresses the question remains as to how far we are along this track and when these changes will constitute a significant emergence from natural variability. Here we present an approach to investigate temperature and precipitation time series from observational records, reanalysis, and an ensemble of 65 climate model simulations forced by the RCP8.5 emission scenario. We focus on the Lena River catchment, where significant environmental changes are already apparent. We developed a novel non-parametric statistical method to identify the time of emergence (ToE) of climate change signals, i.e. the time when a climate signal permanently exceeds its natural variability. The method is based on the Hellinger distance metric that measures the similarity of probability density functions (PDFs) roughly corresponding to their geometrical overlap. Natural variability is estimated as PDF for the earliest period common to all datasets used in the study (1901–1921) and is then compared to PDFs of target periods with moving windows of 21 years at annual and seasonal scale. The method yields dissimilarities or emergence levels ranging from 0 to 100 % and the direction of change as continuous time series itself. For the Lena River catchment, on average, emergence of temperature has a strong onset in the 1970s with a monotonic increase thereafter for validated reanalysis data. At the end of the reanalysis dataset (2004), temperature distributions have emerged by 50–60 %. Climate model projections suggest the same evolution on average and 90 % emergence by 2040. For precipitation the analysis is less conclusive because of high uncertainties in existing reanalysis datasets that also impede an evaluation of the climate models. Model projections suggest hardly any emergence by 2000 but a strong emergence thereafter, reaching 60 % by the end of the investigated period (2089). The presented ToE method provides more versatility than traditional parametric approaches and allows for a detailed temporal analysis of climate signal evolutions. An original strategy to select the most realistic model simulations based on the available observational data significantly reduces the uncertainties resulting from the spread in the 65 climate models used. The method comes as a toolbox available at https://github.com/pohleric/toe_tools .
format Text
author Pohl, Eric
Grenier, Christophe
Vrac, Mathieu
Kageyama, Masa
spellingShingle Pohl, Eric
Grenier, Christophe
Vrac, Mathieu
Kageyama, Masa
Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
author_facet Pohl, Eric
Grenier, Christophe
Vrac, Mathieu
Kageyama, Masa
author_sort Pohl, Eric
title Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
title_short Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
title_full Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
title_fullStr Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
title_full_unstemmed Emerging climate signals in the Lena River catchment: a non-parametric statistical approach
title_sort emerging climate signals in the lena river catchment: a non-parametric statistical approach
publishDate 2019
url https://doi.org/10.5194/hess-2019-360
https://www.hydrol-earth-syst-sci-discuss.net/hess-2019-360/
genre lena river
permafrost
Siberia
genre_facet lena river
permafrost
Siberia
op_source eISSN: 1607-7938
op_relation doi:10.5194/hess-2019-360
https://www.hydrol-earth-syst-sci-discuss.net/hess-2019-360/
op_doi https://doi.org/10.5194/hess-2019-360
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