Abstract

The study reported here examined, as the research subject, surface soils in the Liuxin mining area of Xuzhou, and explored the heavy metal content and spectral data by establishing quantitative models with Multivariable Linear Regression (MLR), Generalized Regression Neural Network (GRNN) and Sequential Minimal Optimization for Support Vector Machine (SMO-SVM) methods. The study results are as follows: (1) the estimations of the spectral inversion models established based on MLR, GRNN and SMO-SVM are satisfactory, and the MLR model provides the worst estimation, with R2 of more than 0.46. This result suggests that the stress sensitive bands of heavy metal pollution contain enough effective spectral information; (2) the GRNN model can simulate the data from small samples more effectively than the MLR model, and the R2 between the contents of the five heavy metals estimated by the GRNN model and the measured values are approximately 0.7; (3) the stability and accuracy of the spectral estimation using the SMO-SVM model are obviously better than that of the GRNN and MLR models. Among all five types of heavy metals, the estimation for cadmium (Cd) is the best when using the SMO-SVM model, and its R2 value reaches 0.8628; (4) using the optimal model to invert the Cd content in wheat that are planted on mine reclamation soil, the R2 and RMSE between the measured and the estimated values are 0.6683 and 0.0489, respectively. This result suggests that the method using the SMO-SVM model to estimate the contents of heavy metals in wheat samples is feasible.

Highlights

  • Land reclamation in mining areas is a priority for agricultural production in China [1]

  • Using the regression model based on the Sequential Minimal Optimization for Support Vector Machine (SMO-support vector machine (SVM)) method to estimate the Cd’s content in the wheat that were planted in the reclamation soils of the mining area, the correlation coefficient R2 and root mean square error RMSE between the measured and the estimated values were found to be 0.6683 and 0.0489, respectively, suggesting that it is feasible to use spectral data to estimate the heavy metal content in the wheat planted in the reclamation soils of mining areas

  • The Multivariable Linear Regression (MLR), Generalized Regression Neural Network (GRNN) and SMO-SVM models were established to estimate the heavy metal contents in the reclamation soil of mining areas, and the optimal model was found and used to demonstrate its use in estimating Cd in the wheat planted on mine reclamation soils

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Summary

Introduction

Land reclamation in mining areas is a priority for agricultural production in China [1]. Using a remote sensing spectral analysis method to estimate the content of heavy metals in soil can overcome the shortcomings of traditional sampling methods and monitor the heavy metal pollution in soil dynamically and quickly on a large-scale. Taking the artificial reclamation areas (coal gangue reclamation area and fly-ash reclamation area) of the Liuxin mining area in Xuzhou, China as the case study, this paper establishes quantitative models to simulate the connection between heavy metal contents in mine reclamation soil and characteristic spectral remote sensing parameters, compares the estimation results of different models, and selects the optimal model for the estimation of Cd content in wheat planted in the reclaimed mine soil. The paper further proposes a quick and efficient method that is suitable for large-range monitoring of the heavy metal pollution in mine reclamation soils, as well as the technical support required for the regulation of heavy metal pollution and food security in mining areas

Study Area
Spectral Data Collection
Outdoor
Indoor
Heavy Metal Contents in the Soil Samples
Spectral Data of the Soil Samples
Multivariable Linear Regression
Generalized Regression Neural Network
Sequential Minimal Optimization for Support Vector Machines
A Lagrange function is established as: n
Stress Sensitive Band Selection of Heavy Metal Pollution
Establishment of the MLR Estimation Model
Establishment of the GRNN Estimation Model
Establishment of a thesuitable
Establishment of SMO-SVM Estimation Model
Methods
Determination of the Content of Cd in Wheat
Selection of Stress Sensitive Bands of Cd Pollution in Wheat
Findings
Conclusions
Full Text
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