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Global soil moisture data derived through machine learning trained with in-situ measurements

O Sungmin, René Orth

2021Scientific Data243 citationsDOIOpen Access PDF

Abstract

While soil moisture information is essential for a wide range of hydrologic and climate applications, spatially-continuous soil moisture data is only available from satellite observations or model simulations. Here we present a global, long-term dataset of soil moisture derived through machine learning trained with in-situ measurements, SoMo.ml. We train a Long Short-Term Memory (LSTM) model to extrapolate daily soil moisture dynamics in space and in time, based on in-situ data collected from more than 1,000 stations across the globe. SoMo.ml provides multi-layer soil moisture data (0-10 cm, 10-30 cm, and 30-50 cm) at 0.25° spatial and daily temporal resolution over the period 2000-2019. The performance of the resulting dataset is evaluated through cross validation and inter-comparison with existing soil moisture datasets. SoMo.ml performs especially well in terms of temporal dynamics, making it particularly useful for applications requiring time-varying soil moisture, such as anomaly detection and memory analyses. SoMo.ml complements the existing suite of modelled and satellite-based datasets given its distinct derivation, to support large-scale hydrological, meteorological, and ecological analyses.

Topics & Concepts

Water contentEnvironmental scienceSatelliteAnomaly (physics)MoistureRemote sensingTemporal resolutionIn situSoil scienceAtmospheric sciencesMeteorologyGeologyGeographyCondensed matter physicsEngineeringGeotechnical engineeringPhysicsAerospace engineeringQuantum mechanicsSoil Moisture and Remote SensingPrecipitation Measurement and AnalysisHydrology and Watershed Management Studies
Global soil moisture data derived through machine learning trained with in-situ measurements | Litcius