Abstract

Soil spectroscopy is a promising alternative to evaluate and monitor soil and water quality, particularly in mountainous agricultural lands characterized by intense degradation and limited soil tests reports; a few studies have evaluated the feasibility of VIS-NIR spectroscopy to predict Mehlich 3 (M3) extractable nutrients. This study aimed to (i) examine the potential of VIS-NIR spectroscopy in combination with partial least squares regression to predict M3-extractable elements (Ca, K, Mg, P, Fe, Cd, Cu, Mn, Pb, and Zn) and basic soil properties (clay, silt, sand, CaCO3, pH, and soil organic carbon-SOC), (ii) find optimal pre-processing techniques, and (iii) determine primary prediction mechanisms for spectrally featureless soil properties. Topsoil samples were collected from a representative area (114 samples from 525 ha) located in the mountainous region of NW Azerbaijan. A series of pre-processing steps and transformations were applied to the spectral data, and the models were calibrated and evaluated based on the coefficient of determination (R2), root mean square error (RMSE), and the residual prediction deviation (RPD). The leave-one-out cross-validated predictions showed that the first derivative spectra produce higher prediction accuracies (R2 = 0.51–0.91; RPD = 1.20–2.29) for most soil properties. The evaluation of the model performance with optimal pre-processing techniques revealed that both calibration and validation models produce considerable differences in RPD values associated with sample size and the random partition of the calibration or validation subsets. The prediction models were excellent or very good (RPD > 2.0) for CaCO3, SOC, sand, silt, Ca, and Pb, good or fair (1.4 < RPD < 2.0) for clay, K, Cd, pH, Fe, Mn, and Cu, and poor (1.0 < RPD < 1.4) for Mg, P, and Zn. Principal component and correlation, stepwise regression analysis, and variable importance in projection procedures allowed to elucidate the underlying prediction mechanisms. Unlike the previous studies, the spectral estimations of pH, Ca, Mg, P, Fe, Pb, and Cd concentrations were linked to their correlation with CaCO3 rather than soil organic matter, whereas Mg and P concentrations were also connected to Fe-oxides. Soil particle sizes contributed to predicting K concentration but confounded the prediction of P and Zn concentration. The weaker correlations of Mn, Cu or Zn with CaCO3, particle sizes, SOC, Fe, and spectral data yielded to their lower prediction accuracy. The major prediction mechanisms for M3-extractable elements relied on their relations with CaCO3, pH, clay content and mineralogy, and exchangeable cations in the context of their association with land use. The results can be used in mountain lands to evaluate and control the effect of management on soil quality indices and land degradation neutrality. Further studies are needed to develop most advantageous sampling schemes and modeling.

Highlights

  • Land-use intensification associated with land-use change and conventional agriculture significantly affects soil properties, quality, and ecosystem services, and comprises important aspects for future sustainable land management [1]

  • We examined the potential of VIS-NIR reflectance spectroscopy and Partial least squares regression (PLSR) modelling to predict Mehlich 3 (M3)-extractable elements and basic soil properties, while focusing on the effect of different pre-processing techniques and prediction mechanisms for M3-extractable elements

  • The spectral estimation of M3-extractable elements was mostly related to their correlation with CaCO3 rather than other soil properties and soil organic matter; the latter showed a negligible effect in this case

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Summary

Introduction

Land-use intensification associated with land-use change and conventional agriculture significantly affects soil properties, quality, and ecosystem services, and comprises important aspects for future sustainable land management [1]. The number of studies examining the potential of applications of reflectance spectroscopy in agriculture is steadily increasing all over the world [4]. Many of these investigations have evaluated individual wavelength ranges separately, while others have combined several ranges of wavelength to estimate soil properties and quality indices [1,5–7]. Among these techniques, laboratory-based visible and near infrared spectroscopy (VIS-NIR or NIR) has been reported as an alternative to traditional soil analytical methods, which are often time consuming and costly, providing limited information on the soil spatial variability [4,8–10]

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