Enhancing Extreme Precipitation Predictions With Dynamical Downscaling: A Convection‐Permitting Modeling Study in Texas and Oklahoma

Author:

Chang Hsin‐I.1ORCID,Chikamoto Yoshimitsu2ORCID,Wang Simon S.‐Y.2ORCID,Castro Christopher L.1,LaPlante Matthew D.23ORCID,Risanto C. Bayu1ORCID,Huang Xingying4ORCID,Bunn Patrick1

Affiliation:

1. Department of Hydrology and Atmospheric Sciences University of Arizona Tucson AZ USA

2. Department of Plants Soils and Climate Utah State University Logan UT USA

3. Department of Journalism and Communication Utah State University Logan UT USA

4. National Center for Atmospheric Research Boulder CO USA

Abstract

AbstractPrecipitation in the Southern Plains of the United States is relatively well depicted by the Community Earth System Model (CESM). However, despite its ability to capture seasonal mean precipitation anomalies, CESM consistently underestimates extreme pluvial and drought events, rendering it an insufficient tool for extending simulation lead times for exceptional events, such as the abnormally dry May 2011, which helped drive Texas into its worst period of drought in more than a century, and the abnormally wet May 2015, which led to widespread flooding in that state. Ensemble‐based regional climate experiments are completed for the two extreme years using Weather Research and Forecasting model (WRF) and downscaled from CESM. WRF simulations are at convection‐permitting grid resolution for improved physical representation of simulated precipitation over the Southern Great Plains. By integrating convection‐permitting models (CPMs) into each individual member of a CESM ocean data assimilation ensemble, this study demonstrates that high‐resolution dynamical downscaling can improve model skillfulness at capturing these two events and is thus a potentially useful tool for forecasting extremely high and extremely low precipitation events at subseasonal or even seasonal lead times.

Funder

Strategic Environmental Research and Development Program

Bureau of Reclamation

U.S. Department of Energy

Strong

Utah State University

Utah Agricultural Experiment Station

Publisher

American Geophysical Union (AGU)

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