Process‐Informed Subsampling Improves Subseasonal Rainfall Forecasts in Central America

Author:

Kowal Katherine M.1ORCID,Slater Louise J.1ORCID,Li Sihan2,Kelder Timo3,Hall Kyle J. C.45ORCID,Moulds Simon16ORCID,García‐López Alan A.7ORCID,Birkel Christian8ORCID

Affiliation:

1. Department of Geography and the Environment University of Oxford Oxford UK

2. Department of Geography University of Sheffield Sheffield UK

3. Climate Adaptation Services Bussum The Netherlands

4. National Oceanic and Atmospheric Administration (NOAA) Physical Sciences Laboratory Boulder CO USA

5. Cooperative Institute for Research in Environmental Sciences NOAA and University of Colorado Boulder Boulder CO USA

6. School of GeoSciences University of Edinburgh Edinburgh UK

7. Department of Earth and Environmental Sciences Columbia University New York NY USA

8. Department of Geography University of Costa Rica San Jose Costa Rica

Abstract

AbstractSubseasonal rainfall forecast skill is critical to support preparedness for hydrometeorological extremes. We assess how a process‐informed evaluation, which subsamples forecasting model members based on their ability to represent potential predictors of rainfall, can improve monthly rainfall forecasts within Central America in the following month, using Costa Rica and Guatemala as test cases. We generate a constrained ensemble mean by subsampling 130 members from five dynamic forecasting models in the C3S multimodel ensemble based on their representation of both (a) zonal wind direction and (b) Pacific and Atlantic sea surface temperatures (SSTs), at the time of initialization. Our results show in multiple months and locations increased mean squared error skill by 0.4 and improved detection rates of rainfall extremes. This method is transferrable to other regions driven by slowly‐changing processes. Process‐informed subsampling is successful because it identifies members that fail to represent the entire rainfall distribution when wind/SST error increases.

Funder

UK Research and Innovation

Rhodes College

University of Oxford

Publisher

American Geophysical Union (AGU)

Subject

General Earth and Planetary Sciences,Geophysics

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