Remote Sensing (Sep 2023)

Multi-Source Precipitation Data Merging for High-Resolution Daily Rainfall in Complex Terrain

  • Zhi Li,
  • Hao Wang,
  • Tao Zhang,
  • Qiangyu Zeng,
  • Jie Xiang,
  • Zhihao Liu,
  • Rong Yang

DOI
https://doi.org/10.3390/rs15174345
Journal volume & issue
Vol. 15, no. 17
p. 4345

Abstract

Read online

This study developed a satellite, reanalysis, and gauge data merging model for daily-scale analysis using a random forest algorithm in Sichuan province, characterized by complex terrain. A high-precision daily precipitation merging dataset (MSMP) with a spatial resolution of 0.1° was successfully generated. Through a comprehensive evaluation of the MSMP dataset using various indices across different periods and regions, the following findings were obtained: (1) GPM-IMERG satellite observation data exhibited the highest performance in the region and proved suitable for inclusion as the initial background field in the merging experiment; (2) the merging experiment significantly enhanced dataset accuracy, resulting in a spatiotemporal distribution of precipitation that better aligned with gauge data; (3) topographic factors exerted certain influences on the merging test, with greater accuracy improvements observed in the plain region, while the merging test demonstrated unstable effects in higher elevated areas. The results of this study present a practical approach for merging multi-source precipitation data and provide a novel research perspective to address the challenge of constructing high-precision daily precipitation datasets in regions characterized by complex terrain and limited observational coverage.

Keywords