Literature DB >> 31454609

Estimation of the spatial distribution of heavy metal in agricultural soils using airborne hyperspectral imaging and random forest.

Kun Tan1, Huimin Wang2, Lihan Chen2, Qian Du3, Peijun Du4, Cencen Pan2.   

Abstract

Hyperspectral imaging, with the hundreds of bands and high spectral resolution, offers a promising approach for estimation of heavy metal concentration in agricultural soils. Using airborne imagery over a large-scale area for fast retrieval is of great importance for environmental monitoring and further decision support. However, few studies have focused on the estimation of soil heavy metal concentration by airborne hyperspectral imaging. In this study, we utilized the airborne hyperspectral data in LiuXin Mine of China obtained from HySpex VNIR-1600 and HySpex SWIR-384 sensor to establish the spectral-analysis-based model for retrieval of heavy metals concentration. Firstly, sixty soil samples were collected in situ, and their heavy metal concentrations (Cr, Cu, Pb) were determined by inductively coupled plasma-mass spectrometry analysis. Due to mixed pixels widespread in airborne hyperspectral images, spectral unmixing was conducted to obtain purer spectra of the soil and to improve the estimation accuracy. Ten of estimated models, including four different random forest models (RF)-standard random forest (SRF), regularized random forest (RRF), guided random forest (GRF), and guided regularized random forest (GRRF)-were introduced for hyperspectral estimated model in this paper. Compared with the estimation results, the best accuracy for Cr, Cu, and Pb is obtained by RF. It shows that RF can predict the three heavy metals better than other models in this area. For Cr, Cu, Pb, the best model of RF yields Rp2 values of 0.75,0.68 and 0.74 respectively, and the values of RMSEp are 5.62, 8.24, and 2.81 (mg/kg), respectively. The experiments show the average estimated values are close to the truth condition and the high estimated values concentrated near several industries, valifating the effectiveness of the presented method.
Copyright © 2019 Elsevier B.V. All rights reserved.

Entities:  

Keywords:  Airborne hyperspectral remote sensing; Random forest; Soil heavy metal

Year:  2019        PMID: 31454609     DOI: 10.1016/j.jhazmat.2019.120987

Source DB:  PubMed          Journal:  J Hazard Mater        ISSN: 0304-3894            Impact factor:   10.588


  6 in total

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Authors:  Thiago C Cavalcanti; Hah Min Lew; Kyungsu Lee; Sang-Yeon Lee; Moo Kyun Park; Jae Youn Hwang
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2.  The New Hyperspectral Analysis Method for Distinguishing the Types of Heavy Metal Copper and Lead Pollution Elements.

Authors:  Jianhong Zhang; Min Wang; Keming Yang; Yanru Li; Yaxing Li; Bing Wu; Qianqian Han
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4.  Retrieving zinc concentrations in topsoil with reflectance spectroscopy at Opencast Coal Mine sites.

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5.  Prediction of nickel concentration in peri-urban and urban soils using hybridized empirical bayesian kriging and support vector machine regression.

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6.  Detecting Asymptomatic Infections of Rice Bacterial Leaf Blight Using Hyperspectral Imaging and 3-Dimensional Convolutional Neural Network With Spectral Dilated Convolution.

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  6 in total

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