Abstract

It is found that the remote sensing parameters such as spectral range, spectral resolution and signal-to-noise ratio directly affect the estimation accuracy of soil moisture content. However, the lack of research on the relationship between the parameters and estimation accuracy restricts the prolongation of application. Therefore, this study took the demand for this application as the foothold for developing spectrometry. Firstly, a method based on sensitivity analysis of soil radiative transfer model-successive projection algorithm (SA-SPA) was proposed to select sensitive wavelengths. Then, the spectral resampling method was used to select the best spectral resolution in the corresponding sensitive wavelengths. Finally, the noise-free spectral data simulated by the soil radiative transfer model was added with Gaussian random noise to change the signal-to-noise ratio, so as to explore the influence of signal-to-noise ratio on the estimation accuracy. The research results show that the estimation accuracy obtained through the SA-SPA (RMSEP < 12.1 g kg−1) is generally superior to that from full-spectrum data (RMSEP < 14 g kg−1). At selected sensitive wavelengths, the best spectral resolution is 34 nm, and the applicable signal-to-noise ratio ranges from 150 to 350. This study provides technical support for the efficient estimation of soil moisture content and the development of spectrometry, which comprehensively considers the common influence of spectral range, spectral resolution and signal-to-noise ratio on the estimation accuracy of soil moisture content.

Highlights

  • IntroductionSoil moisture content seriously affects the physical and chemical properties of soil [1]

  • This article is an open access articleSoil moisture content seriously affects the physical and chemical properties of soil [1].The monitoring of soil moisture content plays a decisive role in crop yield estimation, drought monitoring, and evapotranspiration [2,3,4,5]

  • Based on the soil moisture content inversion model previously constructed by the author and its reverse form, the sensitive wavelengths of soil moisture content, the best spectral resolution and the applicable signal-to-noise ratio (SNR) range were selected

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Summary

Introduction

Soil moisture content seriously affects the physical and chemical properties of soil [1]. The monitoring of soil moisture content plays a decisive role in crop yield estimation, drought monitoring, and evapotranspiration [2,3,4,5]. With the characteristics of high spatial resolution and rich spectral information, spectral remote sensing technology will gradually replace the traditional monitoring methods based on chemical analysis [6,7]. Spectral remote sensing data plays an indispensable role in soil resources survey, environmental protection and other fields [8]. It is found that the parameters such as spectral range, signal-to-noise ratio (SNR) and spectral resolution directly affect the estimation accuracy, and the lack of research on the relationship between spectral remote sensing parameters and estimation accuracy restricts the prolongation of application [9]

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