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A Near Standard Soil Samples Spectra Enhanced Modeling Strategy for Cd Concentration Prediction

Yulong Tu, Bin Zou, Huihui Feng, Mo Zhou, Zhihui Yang, Xiong Ying

2021Remote Sensing22 citationsDOIOpen Access PDF

Abstract

Visible and near-infrared (VNIR) spectroscopy technology for soil heavy metal (HM) concentration prediction has been widely studied. However, its spectral response characteristics are still uncertain. In this study, a near standard soil Cd samples (NSSCd) spectra enhanced modeling strategy was developed in order to to reveal the soil cadmium (Cd) spectral response characteristics and predict its concentration. NSSCd were produced by adding the quantitative Cd solution into background soil. Then, prior spectral bands (i.e., the bands with higher variable importance in projection (VIP) score in NSSCd spectra) were used for predicting Cd concentration in soil samples collected from the Hengyang mining area and Baoding agriculture area. The partial least squares (PLS) and competitive adaptive reweighted sampling-partial least squares (CARS-PLS) were used for validation. Compared to using entire VNIR spectral ranges, the new modeling strategy performed very well, with the coefficient of determination (R2) and the ratio of prediction to deviation (RPD) showing an improvement from 0.63 and 1.72 to 0.71 and 1.95 in Hengyang and from 0.54 and 1.57 to 0.76 and 2.19 in Baoding. These results suggest that NSS prior spectral bands are critical for soil HM prediction. Our results represent an exciting finding for the future design of remote sensing sensors for soil HM detection.

Topics & Concepts

VNIRPartial least squares regressionCoefficient of determinationCadmiumSoil scienceEnvironmental scienceSoil testStandard deviationSampling (signal processing)Relative standard deviationRemote sensingMaterials scienceSoil waterHyperspectral imagingMathematicsDetection limitStatisticsGeologyPhysicsOpticsDetectorMetallurgyGeochemistry and Geologic MappingSpectroscopy and Chemometric AnalysesSoil Geostatistics and Mapping