陈关州

微信扫描

当前位置: 中文主页 > 科学研究 > 论文成果

A Microwave–Optical Multi-Stage Synergistic Daily 30 m Soil Moisture Downscaling Framework

发布时间:2025-12-24

点击次数:

影响因子:4.1

DOI码:10.3390/rs17223677

发表刊物:Remote Sensing

摘要:Accurate daily surface soil moisture (SSM) mapping at high spatial resolution (e.g., 30 m) remains challenging due to individual satellite sensor limitations. Although passive microwave sensors provide frequent coarse-resolution observations and synthetic aperture radar (SAR) offers high-resolution data intermittently, achieving both simultaneously requires sensor synergy. This paper introduces the microwave–optical multi-stage synergistic downscaling framework (MMSDF) to generate daily 30 m SSM products. The framework integrates SMAP L4 (9 km), MODIS data (500 m–1 km), harmonized Landsat Sentinel-2 (HLS, 30 m), radiometric terrain corrected Sentinel-1 (RTC-S1, 30 m), and auxiliary geographic data. It comprises three stages: (1) downscaling SMAP L4 to 1 km via random forest; (2) calibrating Sentinel-1 water cloud model (WCM) using intermediate 1 km SSM to retrieve 30 m SSM without in situ calibration; and (3) fusing daily 1 km SSM and intermittent 30 m WCM-derived retrievals using the spatial–temporal fusion model (ESTARFM) to generate seamless daily 30 m SSM maps. Validation against in situ measurements from 16 sites in Hunan Province, China (summer 2024) yielded R of 0.54 and RMSE of 0.045
. Results demonstrate the framework’s capability to synergize multi-source data for high-resolution daily SSM estimates valuable for hydrological and agricultural applications.

合写作者:Tong Wang, Yujiang Xiong, Yu Zhang, Guanzhou Chen, Kaiqi Zhang, Qing Wang

论文类型:期刊论文

通讯作者:Xiaodong Zhang

文献类型:J

卷号:17

期号:22

页面范围:3677

ISSN号:2072-4292

是否译文:否

发表时间:2025-11-09