Deep Learning Forecasts of Soil Moisture: Convolutional Neural Network and Gated Recurrent Unit Models Coupled with Satellite-Derived MODIS, Observations and Synoptic-Scale Climate Index Data
A. A. Masrur Ahmed(NSW Department of Planning and Environment), Linshan Yang(Northwest Institute of Eco-Environment and Resources), Ravinesh C. Deo(University of Southern Queensland), Nawin Raj(University of Southern Queensland), Qi Feng(Northwest Institute of Eco-Environment and Resources), Afshin Ghahramani(University of Southern Queensland), Zhenliang Yin(Chinese Academy of Sciences)
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