Increasing the detectability of external influence on precipitation by correcting feature location in GCMs

Understanding how precipitation varies as the climate changes is essential to determining the true impact of global warming. This is a difficult task not only due to the large internal variability observed in precipitation but also because of a limited historical record and large biases in simulatio...

Full description

Bibliographic Details
Main Authors: Levy, A, Jenkinson, M, Ingram, W, Lambert, F, Huntingford, C, Allen, M
Format: Journal article
Language:English
Published: Blackwell Publishing Ltd 2014
_version_ 1826292826160234496
author Levy, A
Jenkinson, M
Ingram, W
Lambert, F
Huntingford, C
Allen, M
author_facet Levy, A
Jenkinson, M
Ingram, W
Lambert, F
Huntingford, C
Allen, M
author_sort Levy, A
collection OXFORD
description Understanding how precipitation varies as the climate changes is essential to determining the true impact of global warming. This is a difficult task not only due to the large internal variability observed in precipitation but also because of a limited historical record and large biases in simulations of precipitation by general circulation models (GCMs). Here we make use of a technique that spatially and seasonally transforms GCM fields to reduce location biases and investigate the potential of this bias correction to study historical changes. We use two versions of this bias correction - one that conserves intensities and another that conserves integrated precipitation over transformed areas. Focussing on multimodel ensemble means, we find that both versions reduce RMS error in the historical trend by approximately 11% relative to the Global Precipitation Climatology Project (GPCP) data set. By regressing GCMs' historical simulations of precipitation onto radiative forcings, we decompose these simulations into anthropogenic and natural time series. We then perform a simple detection and attribution study to investigate the impact of reducing location biases on detectability. A multiple ordinary least squares regression of GPCP onto the anthropogenic and natural time series, with the assumptions made, finds anthropogenic detectability only when spatial corrections are applied. The result is the same regardless of which form of conservation is used and without reducing the dimensionality of the fields beyond taking zonal means. While "detectability" is dependent both on the exact methodology and the confidence required, this nevertheless demonstrates the potential benefits of correcting location biases in GCMs when studying historical precipitation, especially in cases where a signal was previously undetectable.
first_indexed 2024-03-07T03:20:40Z
format Journal article
id oxford-uuid:b7508d03-02bc-4c57-ad34-80d2f79f2e53
institution University of Oxford
language English
last_indexed 2024-03-07T03:20:40Z
publishDate 2014
publisher Blackwell Publishing Ltd
record_format dspace
spelling oxford-uuid:b7508d03-02bc-4c57-ad34-80d2f79f2e532022-03-27T04:47:36ZIncreasing the detectability of external influence on precipitation by correcting feature location in GCMsJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:b7508d03-02bc-4c57-ad34-80d2f79f2e53EnglishSymplectic Elements at OxfordBlackwell Publishing Ltd2014Levy, AJenkinson, MIngram, WLambert, FHuntingford, CAllen, MUnderstanding how precipitation varies as the climate changes is essential to determining the true impact of global warming. This is a difficult task not only due to the large internal variability observed in precipitation but also because of a limited historical record and large biases in simulations of precipitation by general circulation models (GCMs). Here we make use of a technique that spatially and seasonally transforms GCM fields to reduce location biases and investigate the potential of this bias correction to study historical changes. We use two versions of this bias correction - one that conserves intensities and another that conserves integrated precipitation over transformed areas. Focussing on multimodel ensemble means, we find that both versions reduce RMS error in the historical trend by approximately 11% relative to the Global Precipitation Climatology Project (GPCP) data set. By regressing GCMs' historical simulations of precipitation onto radiative forcings, we decompose these simulations into anthropogenic and natural time series. We then perform a simple detection and attribution study to investigate the impact of reducing location biases on detectability. A multiple ordinary least squares regression of GPCP onto the anthropogenic and natural time series, with the assumptions made, finds anthropogenic detectability only when spatial corrections are applied. The result is the same regardless of which form of conservation is used and without reducing the dimensionality of the fields beyond taking zonal means. While "detectability" is dependent both on the exact methodology and the confidence required, this nevertheless demonstrates the potential benefits of correcting location biases in GCMs when studying historical precipitation, especially in cases where a signal was previously undetectable.
spellingShingle Levy, A
Jenkinson, M
Ingram, W
Lambert, F
Huntingford, C
Allen, M
Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title_full Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title_fullStr Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title_full_unstemmed Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title_short Increasing the detectability of external influence on precipitation by correcting feature location in GCMs
title_sort increasing the detectability of external influence on precipitation by correcting feature location in gcms
work_keys_str_mv AT levya increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms
AT jenkinsonm increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms
AT ingramw increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms
AT lambertf increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms
AT huntingfordc increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms
AT allenm increasingthedetectabilityofexternalinfluenceonprecipitationbycorrectingfeaturelocationingcms