Assessment of Multi-Source Soil Moisture Products Across the Continental United States: A Fidelity and Consistency Analysis
收藏NIAID Data Ecosystem2026-05-01 收录
下载链接:
https://zenodo.org/record/10971456
下载链接
链接失效反馈官方服务:
资源简介:
This study presents a detailed intercomparison and evaluation of 19 gridded global soil moisture datasets, focusing particularly on the Contiguous United States (CONUS). These datasets include a collection of land surface models, remote sensing, reanalysis, and machine learning products. All datasets are harmonized to a 0.25-degree spatial resolution, covering various temporal spans and providing a comprehensive view of soil moisture dynamics. The analysis leverages the Koppen-Geiger Climate Classification to explore soil moisture’s spatiotemporal variability across different climatic zones. Our results highlight distinct patterns, with arid regions showing lower moisture variabilities and temperate areas exhibiting higher values. Remote sensing data sets tend to indicate drier conditions, while reanalysis products often present wetter estimates. In-situ soil moisture observations from the International Soil Moisture Network serve as the basis for wavelet power spectrum analyses for deeper exploration of discrepancies with respect to temporal scales across the 19 datasets. Despite challenges posed by data heterogeneity and resolution discrepancies, our approach provides a robust framework that can be used for recommendations such as irrigation scheduling, flood risk mitigation, and drought response planning based on soil moisture assessment.
Data details: 1. scripts: 1) process data from original spatial resolution to 0.25 degree; 2) process data from original temporal resolution to monthly; 3) process the monthly data to seasonal mean analysis; 4) wavelet analysis. 2. data: 1) monthly 0.25deg data processed from raw datasets; 2) climatology data for comparison; 3) site data for wavelet analysis.
Reference: The data analysis manuscript is under review now and will add it here later.
Contact: Mingjie Shi ; Lingcheng Li
创建时间:
2024-04-14



