October 23, 2025
Journal Article

A 1 km soil moisture data over eastern CONUS generated through assimilating SMAP data into the Noah-MP land surface model

Abstract

An improved fine-scale soil moisture (SM) dataset at 1?km grid spacing, covering much of the eastern continental US, was generated by assimilating 9?km Soil Moisture Active Passive (SMAP) SM data into the v4.0.1 Noah-MP land surface model. With 12 ensemble members, the assimilation was carried out using the ensemble Kalman filter algorithm within NASA's Land Information System. The SM analysis for 2016 was fully validated against in situ observations from four different networks and compared with four other existing datasets. Results indicate that this SM analysis surpasses other datasets in top-layer SM distribution, including a machine-learning-based product, despite all SM estimates being less heterogeneous than observed. The analysis of anomalous errors suggests that large similarity in intrinsic errors is likely due to overlapping data sources among the selected SM datasets. More detailed evaluations were performed over two geographic areas. The observations collected by the Atmospheric Radiation Measurement facility in Oklahoma suggest that soil temperature and surface heat fluxes are concurrently simulated with good accuracy. Investigation into the 2016 southeastern US drought response further indicates drier conditions and higher evapotranspiration estimates compared to GLEAMv4.1. Notably, large errors are associated with grids having clay soil textures, underscoring the need for refined model treatments for specific soil types to further improve SM estimates. The dataset is publicly available on Zenodo at https://doi.org/10.5281/zenodo.14370563 (Tai et al., 2024).

Published: October 23, 2025

Citation

Tai S., Z. Yang, B.J. Gaudet, K. Sakaguchi, L.K. Berg, C.M. Kaul, and Y. Qian, et al. 2025. A 1 km soil moisture data over eastern CONUS generated through assimilating SMAP data into the Noah-MP land surface model. Earth System Science Data 17, no. 9:4587–4611. PNNL-SA-206904. doi:10.5194/essd-17-4587-2025

Research topics