Improving the Climate Hazards Group Infrared Precipitation with Station data (CHIRPS) using BCFS method based on the precipitation feature space over the Han River Basin from 1998 to 2019

Accurate and reliable high-resolution spatial precipitation data are crucial for hydrometeorology research. But most of the precipitation products have significant differences in terms of estimation accuracy owning to the influence of sensors, climate and terrain. Moreover, due to the neglect of the precipitation feature and the sparse distribution of gauge stations, the existing bias correction methods often have great uncertainties under different precipitation intensities. Thus, we developed a Daily Precipitation Bias Correction Approach Based on Feature Space Construction and Gauge-Satellite Fusion (BCFS). First, the precipitation feature space under different precipitation intensities was reconstructed, considering the attribute similarities of the spatial values, non-spatial values and trends. Then, the numerical relationships of correlated neighboring pixels were established taking account of these three similarities. Finally, the effective correction of the daily precipitation bias based on a small number of stations and a great number of pixels was achieved by the integration methods of variational mode decomposition, multivariate random forest regression model, and the spatial interpolation method. Using gauge station observations and the Climate Hazards Group Infrared Precipitation with Station data (CHIRPS) (1998-2019) and taking the Han River basin (China) as a case study, we quantitatively analyzed the accuracy of the bias correction results comparing the BCFS with the original CHIRPS precipitation estimations and the Wuhan University Satellite and Gauge precipitation Collaborated Correction method (WHU-SGCC). The results demonstrated the BCFS can effectively improve the estimation accuracy under different daily precipitation intensities. Therefore, the method is meaningful to make up for the deficiency of satellite-based estimations and provide high-precision daily precipitation for hydrometeorological and environmental monitoring and forecasting.

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Cite this as

Shen, Gaoyun, Wang, Chao, Chen, Nengcheng, Chen, Zeqiang, Wang, Wei, Liao, Xianghui (2024). Dataset: Improving the Climate Hazards Group Infrared Precipitation with Station data (CHIRPS) using BCFS method based on the precipitation feature space over the Han River Basin from 1998 to 2019. https://doi.org/10.1594/PANGAEA.942308

DOI retrieved: 2024

Additional Info

Field Value
Imported on November 30, 2024
Last update November 30, 2024
License CC-BY-4.0
Source https://doi.org/10.1594/PANGAEA.942308
Author Shen, Gaoyun
Given Name Gaoyun
Family Name Shen
More Authors
Wang, Chao
Chen, Nengcheng
Chen, Zeqiang
Wang, Wei
Liao, Xianghui
Source Creation 2024
Publication Year 2024
Resource Type text/tab-separated-values - filename: Shen_etal-2022
Subject Areas
Name: Lithosphere

Related Identifiers
Title: BCFS: A Daily Precipitation Bias Correction Approach Based on Precipitation Feature Space Construction and Gauge-Satellite Fusion”
Type: DOI
Relation: References
Source: Earth System Science Data
Authors: Shen Gaoyun , Wang Chao , Chen Nengcheng , Chen Zeqiang , Wang Wei , Liao Xianghui .