Abstract

Soil organic carbon (SOC) and its labile C fractions play a central role in soil quality and C cycles. This study aimed to investigate the potential of laboratory-based hyperspectral imaging (HSI) spectroscopy to predict and map SOC and its labile C fractions (e.g., dissolved organic C, DOC; readily oxidizable organic C, ROC; and microbial biomass C, MBC) in soil profiles with a high resolution. The HSI images were captured from 16 intact paddy soil profiles to a depth of 100 ± 5 cm from four typical parent materials. The linear (i.e., partial least squares regression, PLSR) and nonlinear (i.e., artificial neural networks, ANN; cubist regression tree, Cubist; Gaussian process regression, GPR; and support vector machine regression, SVMR) multivariate techniques were compared to assess their ability to map the soil C fractions in the profiles. A spectral variable selection technique (i.e., competitive adaptive reweighted sampling, CARS) was applied to these multivariate models (i.e., CARS-PLSR, CARS-ANN, CARS-Cubist, CARS-GPR, and CARS-SVMR). Overall, the results showed that the nonlinear models performed better than the PLSR models in most cases. All optimized multivariate models with CARS achieved prediction performances similar to the full spectrum models, with high Lin's concordance correlation coefficient (LCC) and low root mean square error (RMSE). CARS-SVMR used only 37–70 spectral variables and took less time-consuming on computations (<0.5 min). Considering both the prediction performance and model-run efficiency, the CARS-SVMR models for SOC (LCCP = 0.98, RMSEP = 1.48 g kg−1), DOC (LCCP = 0.93, RMSEP = 100.61 mg kg−1), ROC (LCCP = 0.94, RMSEP = 0.70 g kg−1), and MBC (LCCP = 0.61, RMSEP = 58.12 mg kg−1) were superior to the other optimized models based on the independent validation. It was concluded that HSI spectroscopy coupled with CARS-SVMR is suitable for the high-resolution mapping of SOC and its labile C fractions in the intact paddy soil profiles.

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