Downscaling of SMAP Soil Moisture Data by Using a Deep Belief Network

缩小尺度 环境科学 均方误差 深信不疑网络 含水量 遥感 相关系数 土壤科学 气象学 人工神经网络 计算机科学 降水 机器学习 地质学 统计 数学 物理 岩土工程
作者
Yulin Cai,Fan Puran,Sen Lang,Mengyao Li,Yasir Muhammad,Aixia Liu
出处
期刊:Remote Sensing [MDPI AG]
卷期号:14 (22): 5681-5681 被引量:1
标识
DOI:10.3390/rs14225681
摘要

The spatial resolution of current soil moisture (SM) products is generally low, consequently limiting their applications. In this study, a deep belief network-based method (DBN) was used to downscale the Soil Moisture Active Passive (SMAP) L4 SM product. First, the factors affecting soil surface moisture were analyzed, and the significantly correlated ones were selected as predictors for the downscaling model. Second, a DBN model was trained and used to downscale the 9 km SMAP L4 SM to 1 km in the study area on 25 September 2019. Validation was performed using original SMAP L4 SM data and in situ measurements from SM and temperature wireless sensor network with 34 sites. Finally, the DBN method was compared with another commonly used machine learning model-random forest (RF). Results showed that (1) the downscaled 1 km SM data are in good agreement with the original SMAP L4 SM data and field measured data, and (2) DBN has a higher correlation coefficient and a lower root mean square error than those of RF. The coefficients of determination for fitting the two models with the measured data at the site were 0.5260 and 0.4816, with relative mean square errors of 0.0303 and 0.0342 m3/m3, respectively. The study also demonstrated the applicability of the DBN method to AMSR SM data downscaling besides SMAP. The proposed method can provide a framework to support future hydrological modeling, regional drought monitoring, and agricultural research.
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