Fenta Ayele A, Tsunekawa Atsushi, Haregeweyn Nigussie, Yasuda Hiroshi, Tsubo Mitsuru, Borrelli Pasquale, Kawai Takayuki, Belay Ashebir S, Ebabu Kindiye, Berihun Mulatu L, Sultan Dagnenet, Setargie Tadesual A, Elnashar Abdelrazek, Arshad Arfan, Panagos Panos
International Platform for Dryland Research and Education, Tottori University, Tottori, 680-0001, Japan.
Arid Land Research Center, Tottori University, 1390 Hamasaka, Tottori, 680-0001, Japan.
Sci Rep. 2024 Apr 8;14(1):8167. doi: 10.1038/s41598-024-59019-1.
Modeling monthly rainfall erosivity is vital to the optimization of measures to control soil erosion. Rain gauge data combined with satellite observations can aid in enhancing rainfall erosivity estimations. Here, we presented a framework which utilized Geographically Weighted Regression approach to model global monthly rainfall erosivity. The framework integrates long-term (2001-2020) mean annual rainfall erosivity estimates from IMERG (Global Precipitation Measurement (GPM) mission's Integrated Multi-satellitE Retrievals for GPM) with station data from GloREDa (Global Rainfall Erosivity Database, n = 3,286 stations). The merged mean annual rainfall erosivity was disaggregated into mean monthly values based on monthly rainfall erosivity fractions derived from the original IMERG data. Global mean monthly rainfall erosivity was distinctly seasonal; erosivity peaked at ~ 200 MJ mm ha h month in June-August over the Northern Hemisphere and ~ 700 MJ mm ha h month in December-February over the Southern Hemisphere, contributing to over 60% of the annual rainfall erosivity over large areas in each hemisphere. Rainfall erosivity was ~ 4 times higher during the most erosive months than the least erosive months (December-February and June-August in the Northern and Southern Hemisphere, respectively). The latitudinal distributions of monthly and seasonal rainfall erosivity were highly heterogeneous, with the tropics showing the greatest erosivity. The intra-annual variability of monthly rainfall erosivity was particularly high within 10-30° latitude in both hemispheres. The monthly rainfall erosivity maps can be used for improving spatiotemporal modeling of soil erosion and planning of soil conservation measures.
模拟月降雨侵蚀力对于优化土壤侵蚀控制措施至关重要。雨量计数据与卫星观测相结合有助于提高降雨侵蚀力估算。在此,我们提出了一个利用地理加权回归方法对全球月降雨侵蚀力进行建模的框架。该框架将IMERG(全球降水测量(GPM)任务的综合多卫星降水反演)的长期(2001 - 2020年)年平均降雨侵蚀力估算值与GloREDa(全球降雨侵蚀力数据库,n = 3286个站点)的站点数据相结合。基于从原始IMERG数据得出的月降雨侵蚀力分数,将合并后的年平均降雨侵蚀力分解为月平均值。全球月平均降雨侵蚀力具有明显的季节性;侵蚀力在北半球6 - 8月达到峰值,约为200 MJ·mm·ha⁻¹·h⁻¹·月,在南半球12 - 2月达到峰值,约为700 MJ·mm·ha⁻¹·h⁻¹·月,在每个半球的大片区域贡献了超过60%的年降雨侵蚀力。在侵蚀性最强的月份,降雨侵蚀力比侵蚀性最弱的月份(分别为北半球的12 - 2月和南半球的6 - 8月)高约4倍。月降雨侵蚀力和季节降雨侵蚀力的纬度分布高度不均一,热带地区的侵蚀力最强。在两个半球,月降雨侵蚀力的年内变化在纬度10 - 30°范围内尤其高。月降雨侵蚀力图可用于改进土壤侵蚀的时空建模和土壤保持措施的规划。