Robust global detection of forced changes in mean and extreme precipitation despite observational disagreement on the magnitude of change

Detection and attribution (D&A) of forced precipitation change are challenging due to internal variability, limited spatial, and temporal coverage of observational records and model uncertainty. These factors result in a low signal-to-noise ratio of potential regional and even global trends. Here, we use a statistical method – ridge regression – to create physically interpretable fingerprints for the detection of forced changes in mean and extreme precipitation with a high signal-to-noise ratio. The fingerprints are constructed using Coupled Model Intercomparison Project phase 6 (CMIP6) multi-model output masked to match coverage of three gridded precipitation observational datasets – GHCNDEX, HadEX3, and GPCC – and are then applied to these observational datasets to assess the degree of forced change detectable in the real-world climate in the period 1951–2020. We show that the signature of forced change is detected in all three observational datasets for global metrics of mean and extreme precipitation. Forced changes are still detectable from changes in the spatial patterns of precipitation even if the global mean trend is removed from the data. This shows the detection of forced change in mean and extreme precipitation beyond a global mean trend is robust and increases confidence in the detection method's power as well as in climate models' ability to capture the relevant processes that contribute to large-scale patterns of change. We also find, however, that detectability depends on the observational dataset used. Not only coverage differences but also observational uncertainty contribute to dataset disagreement, exemplified by the times of emergence of forced change from internal variability ranging from 1998 to 2004 among datasets. Furthermore, different choices for the period over which the forced trend is computed result in different levels of agreement between observations and model projections. These sensitivities may explain apparent contradictions in recent studies on whether models under- or overestimate the observed forced increase in mean and extreme precipitation. Lastly, the detection fingerprints are found to rely primarily on the signal in the extratropical Northern Hemisphere, which is at least partly due to observational coverage but potentially also due to the presence of a more robust signal in the Northern Hemisphere in general.

To Access Resource:

Questions? Email Resource Support Contact:

  • opensky@ucar.edu
    UCAR/NCAR - Library

Resource Type publication
Temporal Range Begin N/A
Temporal Range End N/A
Temporal Resolution N/A
Bounding Box North Lat N/A
Bounding Box South Lat N/A
Bounding Box West Long N/A
Bounding Box East Long N/A
Spatial Representation N/A
Spatial Resolution N/A
Related Links

Related Dataset #1 : CCCma CanESM5 model output prepared for CMIP6 ScenarioMIP

Related Dataset #2 : IPSL IPSL-CM6A-LR model output prepared for CMIP6 ScenarioMIP

Related Dataset #3 : MOHC UKESM1.0-LL model output prepared for CMIP6 ScenarioMIP

Related Dataset #4 : CAS FGOALS-g3 model output prepared for CMIP6 ScenarioMIP

Related Dataset #5 : NIMS-KMA KACE1.0-G model output prepared for CMIP6 ScenarioMIP

Related Dataset #6 : CSIRO-ARCCSS ACCESS-CM2 model output prepared for CMIP6 ScenarioMIP

Related Dataset #7 : CSIRO ACCESS-ESM1.5 model output prepared for CMIP6 ScenarioMIP

Related Dataset #8 : EC-Earth-Consortium EC-Earth3 model output prepared for CMIP6 ScenarioMIP

Related Dataset #9 : CCCma CanESM5 model output prepared for CMIP6 CMIP piControl

Related Dataset #10 : CSIRO-ARCCSS ACCESS-CM2 model output prepared for CMIP6 CMIP piControl

Related Dataset #11 : CSIRO ACCESS-ESM1.5 model output prepared for CMIP6 CMIP piControl

Related Dataset #12 : IPSL IPSL-CM6A-LR model output prepared for CMIP6 CMIP piControl

Related Dataset #13 : MIROC MIROC-ES2L model output prepared for CMIP6 CMIP piControl

Related Dataset #14 : MIROC MIROC6 model output prepared for CMIP6 CMIP piControl

Related Dataset #15 : NCC NorESM2-LM model output prepared for CMIP6 ScenarioMIP

Related Dataset #16 : MOHC UKESM1.0-LL model output prepared for CMIP6 CMIP piControl

Related Dataset #17 : MPI-M MPI-ESM1.2-LR model output prepared for CMIP6 CMIP piControl

Related Dataset #18 : EC-Earth-Consortium EC-Earth3-Veg model output prepared for CMIP6 ScenarioMIP

Related Dataset #19 : MPI-M MPIESM1.2-LR model output prepared for CMIP6 ScenarioMIP

Related Dataset #20 : NCC NorESM2-LM model output prepared for CMIP6 CMIP piControl

Related Dataset #21 : NIMS-KMA KACE1.0-G model output prepared for CMIP6 CMIP piControl

Related Dataset #22 : MIROC MIROC6 model output prepared for CMIP6 ScenarioMIP

Related Dataset #23 : MIROC MIROC-ES2L model output prepared for CMIP6 ScenarioMIP

Related Dataset #24 : Robust global detection of forced changes in mean and extreme precipitation despite observational disagreement on the magnitude of change - code and data

Additional Information N/A
Resource Format PDF
Standardized Resource Format PDF
Asset Size N/A
Legal Constraints

Copyright author(s). This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.


Access Constraints None
Software Implementation Language N/A

Resource Support Name N/A
Resource Support Email opensky@ucar.edu
Resource Support Organization UCAR/NCAR - Library
Distributor N/A
Metadata Contact Name N/A
Metadata Contact Email opensky@ucar.edu
Metadata Contact Organization UCAR/NCAR - Library

Author de Vries, Iris Elisabeth
Sippel, Sebastian
Pendergrass, Angeline Greene
Knutti, Reto
Publisher UCAR/NCAR - Library
Publication Date 2023-01-26T00:00:00
Digital Object Identifier (DOI) Not Assigned
Alternate Identifier N/A
Resource Version N/A
Topic Category geoscientificInformation
Progress N/A
Metadata Date 2023-08-18T18:19:26.939748
Metadata Record Identifier edu.ucar.opensky::articles:26038
Metadata Language eng; USA
Suggested Citation de Vries, Iris Elisabeth, Sippel, Sebastian, Pendergrass, Angeline Greene, Knutti, Reto. (2023). Robust global detection of forced changes in mean and extreme precipitation despite observational disagreement on the magnitude of change. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d78g8qm7. Accessed 31 January 2025.

Harvest Source