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    Climate Model Biases and Modification of the Climate Change Signal by Intensity-Dependent Bias Correction

    Source: Journal of Climate:;2018:;volume 031:;issue 016::page 6591
    Author:
    Ivanov, Martin Aleksandrov
    ,
    Luterbacher, Jürg
    ,
    Kotlarski, Sven
    DOI: 10.1175/JCLI-D-17-0765.1
    Publisher: American Meteorological Society
    Abstract: AbstractClimate change impact research and risk assessment require accurate estimates of the climate change signal (CCS). Raw climate model data include systematic biases that affect the CCS of high-impact variables such as daily precipitation and wind speed. This paper presents a novel, general, and extensible analytical theory of the effect of these biases on the CCS of the distribution mean and quantiles. The theory reveals that misrepresented model intensities and probability of nonzero (positive) events have the potential to distort raw model CCS estimates. We test the analytical description in a challenging application of bias correction and downscaling to daily precipitation over alpine terrain, where the output of 15 regional climate models (RCMs) is reduced to local weather stations. The theoretically predicted CCS modification well approximates the modification by the bias correction method, even for the station?RCM combinations with the largest absolute modifications. These results demonstrate that the CCS modification by bias correction is a direct consequence of removing model biases. Therefore, provided that application of intensity-dependent bias correction is scientifically appropriate, the CCS modification should be a desirable effect. The analytical theory can be used as a tool to 1) detect model biases with high potential to distort the CCS and 2) efficiently generate novel, improved CCS datasets. The latter are highly relevant for the development of appropriate climate change adaptation, mitigation, and resilience strategies. Future research needs to focus on developing process-based bias corrections that depend on simulated intensities rather than preserving the raw model CCS.
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      Climate Model Biases and Modification of the Climate Change Signal by Intensity-Dependent Bias Correction

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    contributor authorIvanov, Martin Aleksandrov
    contributor authorLuterbacher, Jürg
    contributor authorKotlarski, Sven
    date accessioned2019-09-19T10:10:23Z
    date available2019-09-19T10:10:23Z
    date copyright4/23/2018 12:00:00 AM
    date issued2018
    identifier otherjcli-d-17-0765.1.pdf
    identifier urihttp://yetl.yabesh.ir/yetl1/handle/yetl/4262352
    description abstractAbstractClimate change impact research and risk assessment require accurate estimates of the climate change signal (CCS). Raw climate model data include systematic biases that affect the CCS of high-impact variables such as daily precipitation and wind speed. This paper presents a novel, general, and extensible analytical theory of the effect of these biases on the CCS of the distribution mean and quantiles. The theory reveals that misrepresented model intensities and probability of nonzero (positive) events have the potential to distort raw model CCS estimates. We test the analytical description in a challenging application of bias correction and downscaling to daily precipitation over alpine terrain, where the output of 15 regional climate models (RCMs) is reduced to local weather stations. The theoretically predicted CCS modification well approximates the modification by the bias correction method, even for the station?RCM combinations with the largest absolute modifications. These results demonstrate that the CCS modification by bias correction is a direct consequence of removing model biases. Therefore, provided that application of intensity-dependent bias correction is scientifically appropriate, the CCS modification should be a desirable effect. The analytical theory can be used as a tool to 1) detect model biases with high potential to distort the CCS and 2) efficiently generate novel, improved CCS datasets. The latter are highly relevant for the development of appropriate climate change adaptation, mitigation, and resilience strategies. Future research needs to focus on developing process-based bias corrections that depend on simulated intensities rather than preserving the raw model CCS.
    publisherAmerican Meteorological Society
    titleClimate Model Biases and Modification of the Climate Change Signal by Intensity-Dependent Bias Correction
    typeJournal Paper
    journal volume31
    journal issue16
    journal titleJournal of Climate
    identifier doi10.1175/JCLI-D-17-0765.1
    journal fristpage6591
    journal lastpage6610
    treeJournal of Climate:;2018:;volume 031:;issue 016
    contenttypeFulltext
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