Litcius/Paper detail

A Machine Learning-Based High-Resolution Soil Moisture Mapping and Spatial–Temporal Analysis: The mlhrsm Package

Yuliang Peng, Zhengwei Yang, Zhou Zhang, Jingyi Huang

2024Agronomy15 citationsDOIOpen Access PDF

Abstract

Soil moisture is a key environmental variable. There is a lack of software to facilitate non-specialists in estimating and analyzing soil moisture at the field scale. This study presents a new open-sourced R package mlhrsm, which can be used to generate Machine Learning-based high-resolution (30 to 500 m, daily to monthly) soil moisture maps and uncertainty estimates at selected sites across the contiguous USA at 0–5 cm and 0–1 m. The model is based on the quantile random forest algorithm, integrating in situ soil sensors, satellite-derived land surface parameters (vegetation, terrain, and soil), and satellite-based models of surface and rootzone soil moisture. It also provides functions for spatial and temporal analysis of the produced soil moisture maps. A case study is provided to demonstrate the functionality to generate 30 m daily to weekly soil moisture maps across a 70-ha crop field, followed by a spatial–temporal analysis.

Topics & Concepts

Environmental scienceWater contentSoil scienceTerrainVegetation (pathology)Digital soil mappingRemote sensingSatelliteMoistureSoil mapDownscalingScale (ratio)Hydrology (agriculture)Image resolutionSoil waterComputer scienceMeteorologyCartographyGeographyGeologyPathologyMedicineGeotechnical engineeringEngineeringArtificial intelligenceAerospace engineeringPrecipitationSoil Moisture and Remote SensingSoil and Unsaturated FlowSoil Geostatistics and Mapping