Litcius/Paper detail

Strategies to Measure Soil Moisture Using Traditional Methods, Automated Sensors, Remote Sensing, and Machine Learning Techniques: Review, Bibliometric Analysis, Applications, Research Findings, and Future Directions

Abhilash Singh, Kumar Gaurav, Gaurav Kailash Sonkar, Cheng‐Chi Lee

2023IEEE Access95 citationsDOIOpen Access PDF

Abstract

This review provides a detailed synthesis of various in-situ, remote sensing, and machine learning approaches to estimate soil moisture. Bibliometric analysis of the published literature on soil moisture shows that Time-Domain Reflectometry (TDR) is the most widely used in-situ instrument, while remote sensing is the most preferred application, and the random forest is the widely applied algorithm to simulate surface soil moisture. We have applied ten most widely used machine learning models on a publicly available dataset (in-situ soil moisture measurement and satellite images) to predict soil moisture and compared their results. We have briefly discussed the potential of using the upcoming NASA-ISRO Synthetic Aperture Radar (NISAR) mission images to estimate soil moisture. Finally, this review discusses the capabilities of physics-informed and automated machine learning (AutoML) models to predict surface soil moisture at higher spatial and temporal resolutions. This review will assist researchers in investigating the applications of soil moisture in the broad domain of earth sciences.

Topics & Concepts

Remote sensingWater contentSynthetic aperture radarReflectometryEnvironmental scienceMoistureComputer scienceSoil scienceMachine learningMeteorologyTime domainEngineeringGeologyGeographyComputer visionGeotechnical engineeringSoil Moisture and Remote SensingSoil and Unsaturated FlowClimate change and permafrost