Estimating Soil Particle Density using Visible Near-infrared Spectroscopy and a Simple, Two-compartment Pedotransfer Function

被引:12
|
作者
Manage, Lashya P. Marakkala [1 ]
Katuwal, Sheela [1 ]
Norgaard, Trine [1 ]
Knadel, Maria [1 ]
Moldrup, Per [2 ]
de Jonge, Lis W. [1 ]
Greve, Mogens Humlekrog [1 ]
机构
[1] Aarhus Univ, Dept Agroecol, Blichers Alle 20,POB 50, DK-8830 Tjele, Denmark
[2] Aalborg Univ, Dept Civil Engn, Thomas Manns Vej 23, DK-9220 Aalborg, Denmark
关键词
DIFFUSE-REFLECTANCE SPECTROSCOPY; ORGANIC-MATTER; CARBON; CLAY; FIELD; REGRESSION; MOISTURE; TEXTURE; SPECTRA; ALBERTA;
D O I
10.2136/sssaj2018.06.0217
中图分类号
S15 [土壤学];
学科分类号
0903 ; 090301 ;
摘要
The average particle density (rho(d)) is a fundamental soil property, used for calculating the total porosity. Traditional rho(d) measurement by pycnometer method is tedious and time-consuming. In this study, visible-near-infrared (vis-NIR) spectroscopy and a simple two-compartment linear and curvilinear pedotransfer function only requiring knowledge of soil organic matter content (OM) were tested and compared as alternative, indirect, rapid, and cost-effective methods. Soil rho(d) was measured by water pycnometer on 179 soils representing a wide range of OM (0.002-0.767 kg kg(-1)), whereas soil spectra were measured on air-dry samples by vis-NIR spectroscopy. The rho(d) models were developed using partial least squares regression with leave-one-out-cross-validation using vis-NIR spectral data, and a simple two-compartment pedotransfer function, rho(d) = A(OM) + B(1 - OM) using the OM content. Predictive abilities of these two methods were tested using three different datasets: (i) minerals soils (OM < 0.1 kg kg(-1)), (ii) organic soils (OM > 0.1 kg kg(-1)), and (iii) all soils. Calibrating the two-compartment pedotransfer function for the entire dataset gave expected values for the individual particle densities of OM (A = 1.244 g cm(-3)) and mineral particles (B = 2.615 g cm(-3)). The vis-NIR spectroscopy model successfully predicted soil p d for the entire dataset (R-2 = 0.87, RMSECV = 0.10 g cm(-3)), with a poorer performance than the two-compartment linear model (R-2 = 0.96, RMSE = 0.06 g cm(-3)). Using only the mineral soils data did not suffice to obtain realistic and accurate vis-NIR spectroscopy (R-2 = 0.62, RMSECV = 0.02 g cm(-3)) or OM based (R-2 = 0.80, RMSE = 0.02 g cm(-3)) models for pd, illustrating the importance of the wide range of OM content considered in the present study.
引用
收藏
页码:37 / 47
页数:11
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