Evaluation of GPM IMERG-FR Product for Computing Rainfall Erosivity for Mainland China

Author:

Wang Wenting1,Jiang Yuantian1,Yu Bofu2,Zhang Xiaoming3,Xie Yun1,Yin Bing4

Affiliation:

1. Department of Geographic Science, College of Arts and Sciences, Beijing Normal University, Zhuhai 519087, China

2. Australian Rivers Institute, School of Engineering and Built Environment, Griffith University, Brisbane, QLD 4111, Australia

3. State Key Laboratory of Simulation and Regulation of a Water Cycle in a River Basin, China Institute of Water Resources and Hydropower Research, Beijing 100048, China

4. Institute of Soil and Water Conservation, Northwest A&F University, Xianyang 712100, China

Abstract

Satellite precipitation products (SPPs) have emerged as an alternative to estimate rainfall erosivity. However, prior studies showed that SPPs tend to underestimate rainfall erosivity but without reported bias-correction methods. This study evaluated the efficacy of two SPPs, namely, GPM_3IMERGHH (30-min and 0.1°) and GPM_3IMERGDF (daily and 0.1°), in estimating two erosivity indices in mainland China: the average annual rainfall erosivity (R-factor) and the 10-year event rainfall erosivity (10-yr storm EI), by comparing with that derived from gauge-observed hourly precipitation (Gauge-H). Results indicate that GPM_3IMERGDF yields higher accuracy than GPM_3IMERGHH, though both products generally underestimate these indices. The Percent Bias (PBIAS) is −55.48% for the R-factor and −56.38% for the 10-yr storm EI using GPM_3IMERGHH, which reduces to −10.86% and −32.99% with GPM_3IMERGDF. A bias-correction method was developed based on the systematic difference between SSPs and Gauge-H. A five-fold cross validation shows that with bias-correction, the accuracy of the R-factor and 10-yr storm EI for both SPPs improve considerably, and the difference between two SSPs is reduced. The PBIAS using GPM_3IMERGHH decreases to −0.06% and 0.01%, and that using GPM_3IMERGDF decreases to −0.33% and 0.14%, respectively, for the R-factor and 10-yr storm EI. The rainfall erosivity estimated with SPPs with bias-correction shows comparable accuracy to that obtained through Kriging interpolation using Gauge-H and is better than that interpolated from gauge-observed daily precipitation. Given their high temporal and spatial resolution, and timely updates, GPM_3IMERGHH and GPM_3IMERGDF are viable data products for rainfall erosivity estimation with bias correction.

Funder

The Guangdong Major Project of Basic and Applied Basic Research

National Natural Science Foundation of China

Publisher

MDPI AG

Reference61 articles.

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