Abstract

The variation and the spatial–temporal distribution of soil water content have significant effects on heat balance, agricultural moisture, etc. A soil moisture (SM) retrieval model can provide a theoretical basis for realizing a rapid test and revealing the spatial–temporal variation of the surface water. However, remote sensors do not measure soil water content directly. Therefore, it is of great importance to establish a SM retrieval model. In this paper, the relationship between SM and diffuse reflectance was first derived using the absorption coefficient and scattering coefficient related to SM. Then, based on Kubelka–Munk (KM) theory, the SM retrieval model using reflectance information was further derived, which is a semi-empirical model with an unknown parameter obtained either from fitting or from experimental measurements. The validity and reliability of the model were confirmed with the validation set. The results showed that the root mean square errors of prediction (RMSEPs) of four soils were generally less than 0.017, while the coefficients of determination (R2s) of four soils were generally more than 0.85, and the ratios of the performance to deviation (RPDs) of four soils were greater than 2.5 (470–2400 nm). Therefore, the model has high prediction accuracy, and can be well applied to the prediction of water content in different sorts of soils.

Highlights

  • Soil moisture (SM) seriously affects the physical and chemical properties of soil and the growth of vegetation

  • Combining the absorption coefficient and scattering coefficient related to soil water content, the relationship between soil water content and diffuse reflectance was derived

  • The SM retrieval model using reflectance information was established, which is a semi-empirical model with an unknown parameter obtained either from fitting or from experiment measurements

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Summary

Introduction

Soil moisture (SM) seriously affects the physical and chemical properties of soil and the growth of vegetation. The empirical/statistical model is based on machine learning techniques such as support vector machine and artificial neural networks et al, and provides formidable tools for inferring the surface SM in complex/heterogeneous media. These models are in defect regarding the physical origin, and require a vast database for calibration. Studies on the quantitative retrieval of soil water content based on the semi-empirical model that have crucial significance are provided

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