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Browsing by Author "Nishant Kumar Sinha"

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    PublicationArticle
    Regional soil organic carbon prediction models based on a multivariate analysis of the Mid-infrared hyperspectral data in the middle Indo-Gangetic plains of India
    (Elsevier B.V., 2022) Seema; A.K. Ghosh; Kuntal Mouli Hati; Nishant Kumar Sinha; Nilimesh Mridha; Biswabara Sahu
    Soil organic carbon (SOC) sequestration provides an opportunity to mitigate climate change impacts, since soils are the largest store of terrestrial carbon. Accurate estimates of SOC content across landscapes are therefore important to monitor and manage efficiently these SOC stocks. Mid-infrared (MIR) spectroscopy has been increasingly applied as a rapid, cost-effective, and accurate method for predictive soil analysis. This study assessed the performance of MIR spectroscopy for SOC prediction at a regional scale in the Indo-Gangetic plains, 280 soil samples were collected covering Inceptisols, Entisols and Alfisols and their spectra recorded. Five preprocessing techniques ((absorbance, multiplicative scatter correction (MSC), standard normal variate (SNV), Savitzky–Golay smoothing first derivative (SG-FD) and Savitzky–Golay smoothing second derivative (SG-SD)) and four multivariate methods (partial least-squares regression (PLSR), random forest (RF), support vector regression (SVR) and multivariate adaptive regression splines (MARS)) were evaluated to predict SOC from MIR spectra. The considerable prediction accuracy and robustness were achieved using the PLSR model (RV2 = 0.78, RMSEV = 0.04, and RPDV = 2.07), RF model (RV2 = 0.65, RMSEV = 0.09, and RPDV = 1.01), SVR model (RV2 = 0.65, RMSEV = 0.09, and RPDV = 1.12), and MARS model (RV2 = 0.67, RMSEV = 0.09, and RPDV = 1.20). Findings from this study identified the reliability of SOC determinations by examining how preprocessing techniques and multivariate methods affect spectral analyses. © 2022 Elsevier B.V.
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