Abstract

Effective pretreatment of spectral reflectance is vital to model accuracy in soil parameter estimation. However, the classic integer derivative has some disadvantages, including spectral information loss and the introduction of high-frequency noise. In this paper, the fractional order derivative algorithm was applied to the pretreatment and partial least squares regression (PLSR) was used to assess the clay content of desert soils. Overall, 103 soil samples were collected from the Ebinur Lake basin in the Xinjiang Uighur Autonomous Region of China, and used as data sets for calibration and validation. Following laboratory measurements of spectral reflectance and clay content, the raw spectral reflectance and absorbance data were treated using the fractional derivative order from the 0.0 to the 2.0 order (order interval: 0.2). The ratio of performance to deviation (RPD), determinant coefficients of calibration (), root mean square errors of calibration (RMSEC), determinant coefficients of prediction (), and root mean square errors of prediction (RMSEP) were applied to assess the performance of predicting models. The results showed that models built on the fractional derivative order performed better than when using the classic integer derivative. Comparison of the predictive effects of 22 models for estimating clay content, calibrated by PLSR, showed that those models based on the fractional derivative 1.8 order of spectral reflectance ( = 0.907, RMSEC = 0.425%, = 0.916, RMSEP = 0.364%, and RPD = 2.484 ≥ 2.000) and absorbance ( = 0.888, RMSEC = 0.446%, = 0.918, RMSEP = 0.383% and RPD = 2.511 ≥ 2.000) were most effective. Furthermore, they performed well in quantitative estimations of the clay content of soils in the study area.

Highlights

  • Direct measurements of various physical and chemical properties of soil are more accurate than estimations via remote sensing methods; they often require intensive field investigations that can be restricted by limited funds and labor [1]

  • Compared with the integer derivative, the fractional derivative has a narrower order interval, which could reveal greater information of spectral reflectance, because the order is extended to non-integers, which could add detailed curves among the integer derivative spectral curves

  • The fractional derivative algorithm was used for the pretreatment of spectral reflectance

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Summary

Introduction

Direct measurements of various physical and chemical properties of soil are more accurate than estimations via remote sensing methods; they often require intensive field investigations that can be restricted by limited funds and labor [1]. Remote sensing is considered a promising alternative approach to conventional methods for estimating soil properties. Predicting soil clay content by reflectance spectroscopy study design, data collection and analysis, decision to publish, or preparation of the manuscript

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