Abstract

Several inversion modeling-based approaches have been developed/used to extract soil hydraulic properties (α, n, θres, θsat, Ksat) from remotely sensed (RS) soil moisture footprints. Hydrological models with shallow ground water (SGW) table depths in soils simulate daily root zone soil moisture dynamics based on the extracted soil parameters. The presence of SGW table depths in soils significantly influences model performances; however, SGW table depths are usually unknown in the field, thus, unknown SGW table depths might cause uncertainties in the model outputs. In order to overcome these drawbacks, we developed a dynamic ground water (DGW) data assimilation approach that can consider SGW table depths across time for quantifying effective soil hydraulic properties in the unsaturated zone. In order to verify the DGW data assimilation scheme, numerical experiments comprising synthetic and field validation experiments were conducted. For the numerical studies, the Little Washita (LW) watershed in Oklahoma and Olney (OLN)/Bondville (BOND) sites in Illinois were selected as different hydroclimatic regions. For the synthetic conditions, we tested the DGW scheme using various soil textures and vegetation covers with fixed and dynamically changing SGW table depths across time in homogeneous and heterogeneous (layered) soil columns. The DGW-based soil parameters matched the observations under various synthetic conditions better than those that only consider fixed ground water (FGW) table depths in time. For the field validations, our proposed data assimilation scheme performed well in predicting the soil hydraulic properties and SGW table depths at the point, airborne sensing, and satellite scales, even though uncertainties exist. These findings support the robustness of our proposed DGW approach in application to regional fields. Thus, the DGW scheme could improve the availability and applicability of pixel-scale soil moisture footprints based on satellite platforms.

Highlights

  • Root zone soil moisture is the pivotal component of hydrology, meteorology, and agriculture across the world

  • We tested the tables newlyfor developed scheme that properties can consider dynamically changing shallow ground water predictingDGW

  • We developed a dynamic ground water (DGW) data assimilation scheme that can consider shallow ground water (SGW) table depth dynamics across time in the unsaturated zone at the point, airborne, and satellite scales in various hydroclimatic regions

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Summary

Introduction

Root zone soil moisture is the pivotal component of hydrology, meteorology, and agriculture across the world. Direct and indirect schemes can be used for estimating root zone soil moisture in the spatial and temporal domains. The direct approach has relatively high accuracy. Water 2016, 8, 311 at the point scale, with some disadvantages (e.g., high cost, time-consuming, limited availability at spatial–temporal scales). In order to overcome these drawbacks, remotely sensed (RS) soil moisture footprints as an indirect method have been suggested as an alternative [1,2,3]. The land surface soil moisture estimates were derived based on thermal infrared remote sensing [4]. Njoku and Entekkabi [5] developed direct active/passive microwave remote sensing schemes for estimating land surface soil moisture values

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