Estimate of soil heavy metal in a mining region using PCC-SVM-RFECV-AdaBoost combined with reflectance spectroscopy

被引:9
作者
Wang, Yueyue [1 ]
Niu, Ruiqing [1 ,2 ]
Lin, Guo [3 ]
Xiao, Yingxu [1 ]
Ma, Hangling [1 ]
Zhao, Lingran [4 ]
机构
[1] China Univ Geosci, Sch Geophys & Geomatics, Wuhan 430074, Peoples R China
[2] Henan Sci & Technol Innovat Ctr Nat Resources, Applicat Res Informat Percept Technol, Xinyang 464000, Henan, Peoples R China
[3] Univ Colorado Boulder, Dept Atmospher & Ocean Sci, Boulder, CO 80309 USA
[4] China Univ Geosci, Sch Automation, Wuhan 430074, Peoples R China
关键词
Soil heavy metal; Hyperspectral; Spectral transformation; Characteristic wavebands select; Inversion modeling; RANDOM FOREST; HYPERSPECTRAL INVERSION; MINERAL PROSPECTIVITY; LOGISTIC-REGRESSION; POLLUTION SOURCES; CLASSIFICATION; MODELS; SELECTION; CONTAMINATION; PARAMETERS;
D O I
10.1007/s10653-023-01488-w
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Soil contamination with heavy metals is a relatively serious issue in China. Traditional soil heavy metal survey methods cannot meet the demand for rapid and real-time large-scale area soil heavy metal surveys. We chose a typical mining area in Henan Province as the study area, collected 124 soil samples in the field and obtained their soil hyperspectral data indoors using a spectrometer. After different spectral transformations of the soil spectral curves, Pearson correlation coefficients (PCC) between them and the heavy metals Cd, Cr, Cu, and Ni were calculated, and after correlation evaluation, the best spectral transformations for each heavy metal were determined and preselected characteristic wavebands were obtained. Then the support vector machine recursive feature elimination cross-validation (SVMRFECV) is used to select among the preselected feature wavebands to obtain the final modeled wavebands, and the Adaptive Boosting (AdaBoost), Gradient Boosting Decision Tree (GBDT), Random Forest (RF), and Partial Least Squares (PLS) methods were used to establish the inversion model. The results showed that the PCC-SVM-RFECV can effectively select characteristic wavebands with high contribution to modeling from high-dimensional data. Spectral transformations methods can improve the correlation of spectra with heavy metals. The location and quantity of characteristic wavebands for the four heavy metals were different. The accuracy of Ada Boost was significantly better than that of GBDT, RF, and PLS (i.e., Ni: R2AdaBoost = 0.735, R-GBDT(2) = 0.679, R-RF(2) = 0.596, R-PLS (2)= 0.510 ). This study can provide a technical reference for the use of hyperspectral inversion models for large-scale monitoring of soil heavy metal content.
引用
收藏
页码:9103 / 9121
页数:19
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[21]  
[贺军亮 He Junliang], 2015, [遥感技术与应用, Remote Sensing Technology and Application], V30, P407
[22]   Application of Stochastic Models in Identification and Apportionment of Heavy Metal Pollution Sources in the Surface Soils of a Large-Scale Region [J].
Hu, Yuanan ;
Cheng, Hefa .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2013, 47 (08) :3752-3760
[23]   Estimate of heavy metal contamination in soils after a mining accident using reflectance spectroscopy [J].
Kemper, T ;
Sommer, S .
ENVIRONMENTAL SCIENCE & TECHNOLOGY, 2002, 36 (12) :2742-2747
[24]   Integrating spectral indices with environmental parameters for estimating heavy metal concentrations in rice using a dynamic fuzzy neural-network model [J].
Liu, Meiling ;
Liu, Xiangnan ;
Wu, Menxin ;
Li, Lufeng ;
Xiu, Lina .
COMPUTERS & GEOSCIENCES, 2011, 37 (10) :1642-1652
[25]  
Lu Jie, 2012, Journal of Applied Sciences, V30, P105, DOI 10.3969/j.issn.0255-8297.2012.01.016
[26]  
[马群 Ma Qun], 2010, [自然资源学报, Journal of Natural Resources], V25, P1834
[27]  
Ma Wei-bo, 2016, Journal of Ecology and Rural Environment, V32, P213
[28]   PREDICTING SOIL HEAVY METAL BASED ON RANDOM FOREST MODEL [J].
Ma, Weibo ;
Tan, Kun ;
Du, Peijun .
2016 IEEE INTERNATIONAL GEOSCIENCE AND REMOTE SENSING SYMPOSIUM (IGARSS), 2016, :4331-4334
[29]   Prediction of soil parameters using the spectral range between 350 and 15,000 nm: A case study based on the Permanent Soil Monitoring Program in Saxony, Germany [J].
Riedel, Frank ;
Denk, Michael ;
Mueller, Ingo ;
Barth, Natalja ;
Glaesser, Cornelia .
GEODERMA, 2018, 315 :188-198
[30]   Machine learning predictive models for mineral prospectivity: An evaluation of neural networks, random forest, regression trees and support vector machines [J].
Rodriguez-Galiano, V. ;
Sanchez-Castillo, M. ;
Chica-Olmo, M. ;
Chica-Rivas, M. .
ORE GEOLOGY REVIEWS, 2015, 71 :804-818