4.7 Article

Estimating the distribution trend of soil heavy metals in mining area from HyMap airborne hyperspectral imagery based on ensemble learning

Journal

JOURNAL OF HAZARDOUS MATERIALS
Volume 401, Issue -, Pages -

Publisher

ELSEVIER
DOI: 10.1016/j.jhazmat.2020.123288

Keywords

Airborne hyperspectral remote sensing; Soil heavy metal estimation; Heavy metal spectral characteristics; Overfitting; Ensemble learning

Funding

  1. National Natural Science Foundation of China [41871337, 41471356]
  2. Geological Survey Project of China [DD20160068]
  3. research and development fund for the central level scientific research institutes, Nanjing Institute of Environmental Sciences, Ministry of Ecology and Environment [GYZX190101, NIES 2011]
  4. Key Laboratory for National Geographic Census and Monitoring, National Administration of Surveying, Mapping and Geoinformation [2018NGCM08]
  5. Priority Academic Program Development of Jiangsu Higher Education Institutions

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The study explored the estimation of soil heavy metal concentration using airborne hyperspectral imagery and soil sampling, proposing an ensemble learning method that outperformed other methods. Experimental results demonstrated that the method could accurately predict the heavy metal concentrations in the study area.
The problem of heavy metal pollution of soils in China is severe. The traditional spectral methods for soil heavy metal monitoring and assessment cannot meet the needs for large-scale areas. Therefore, in this study, we used HyMap-C airborne hyperspectral imagery to explore the estimation of soil heavy metal concentration. Ninety five soil samples were collected synchronously with airborne image acquisition in the mining area of Yitong County, China. The pre-processed spectrum of airborne images at the sampling point was then selected by the competitive adaptive reweighted sampling (CARS) method. The selected spectral features and the heavy metal data of soil samples were inverted to establish the inversion model. An ensemble learning method based on a stacking strategy is proposed for the inversion modeling of soil samples and image data. The experimental results show that this CARS -Stacking method can better predict the four heavy metals in the study area than other methods. For arsenic (As), chromium (Cr), lead (Pb), and zinc (Zn), the determination coefficients of the test data set (R-p(2)) are 0.73, 0.63, 0.60, and 0.71, respectively. It was found that the estimated results and the distribution trend of heavy metals are almost the same as in actual ground measurements.

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