Evaluation of CMIP5 Model Precipitation Using PERSIANN-CDR

Abstract

The purpose of this study is to use the PERSIANN–Climate Data Record (PERSIANN-CDR) dataset to evaluate the ability of 32 CMIP5 models in capturing the behavior of daily extreme precipitation estimates globally. The daily long-term historical global PERSIANN-CDR allows for a global investigation of eight precipitation indices that is unattainable with other datasets. Quantitative comparisons against CPC daily gauge; GPCP One-Degree Daily (GPCP1DD); and TRMM 3B42, version 7 (3B42V7), datasets show the credibility of PERSIANN-CDR to be used as the reference data for global evaluation of CMIP5 models. This work uniquely defines different study regions by partitioning global land areas into 25 groups based on continent and climate zone type. Results show that model performance in warm temperate and equatorial regions in capturing daily extreme precipitation behavior is largely mixed in terms of index RMSE and correlation, suggesting that these regions may benefit from weighted model averaging schemes or model selection as opposed to simple model averaging. The three driest climate regions (snow, polar, and arid) exhibit high correlations and low RMSE values when compared against PERSIANN-CDR estimates, with the exceptions of the cold regions showing an inability to capture the 95th and 99th percentile annual total precipitation characteristics. A comprehensive assessment of each model’s performance in each continent–climate zone defined group is provided as a guide for both model developers to target regions and processes that are not yet fully captured in certain climate types, and for climate model output users to be able to select the models and/or the study areas that may best fit their applications of interest.

Document Details

Document Type
Pub Defense Publication
Publication Date
Aug 15, 2017
Source ID
10.1175/jhm-d-16-0201.1

Entities

People

  • Andrea Thorstensen
  • Chiyuan Miao
  • Hamed Ashouri
  • Hoang Tran
  • Kuolin Hsu
  • Phu Nguyen
  • Qian Zhu
  • Soroosh Sorooshian
  • Xiaogang Gao

Organizations

  • Army Research Office
  • Beijing Normal University
  • National Oceanic and Atmospheric Administration
  • National Science Foundation
  • Nong Lam University
  • United States Department of Energy
  • University of California
  • Zhejiang University

Tags

Fields of Study

  • Environmental science

Readers

  • Atmospheric Science/Meteorology
  • Computational Modeling and Simulation
  • Organizational Process Management (OPM).