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基于高光谱技术的场地土壤重金属污染快速调查研究

陈浩峰 方彦奇 杨奎 彭江英 赵国凤 贾朔

中国资源综合利用2024,Vol.42Issue(6):206-210,215,6.
中国资源综合利用2024,Vol.42Issue(6):206-210,215,6.DOI:10.3969/j.issn.1008-9500.2024.06.052

基于高光谱技术的场地土壤重金属污染快速调查研究

Study on Rapid Investigation of Heavy Metal Pollution in Site Soil Based on Hyperspectral Technology

陈浩峰 1方彦奇 1杨奎 1彭江英 1赵国凤 1贾朔1

作者信息

  • 1. 江苏省航空对地探测与智能感知工程研究中心||江苏省地质勘查技术院,南京 210049
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摘要

Abstract

In order to accurately predict the distribution of heavy metals in the soil of the site and achieve rapid investigation of soil heavy metal pollution,the soil in the landfill area of a certain waste additive factory is taken as the research object,based on hyperspectral data,univariate regression model,partial least squares regression model,and support vector machine model are used to estimate the content of heavy metals such as Cr,Ni,Cu,Zn,Cd,Pb,As,and Hg in the soil.The results show that there is a negative correlation between soil spectral reflectance and the content of various heavy metals;the partial least squares regression model and support vector machine model have better prediction accuracy for 8 heavy metals than univariate regression model,and the partial least squares regression model is the best estimation model for Cd,Pb,Cr,and Ni,while the support vector machine model is the best prediction model for Cu,As,Zn,and Hg;the trend of soil heavy metal inversion results in the research area is basically consistent with the laboratory analysis results,and the distribution of high value areas and extreme points is also relatively consistent,which can delineate areas with heavy metal pollution risks and provide technical support to achieve rapid investigation of soil heavy metal pollution on the site.

关键词

土壤/重金属/高光谱反射率/偏最小二乘回归模型/支持向量机模型

Key words

soil/heavy metals/hyperspectral reflectance/partial least squares regression model/support vector machine model

分类

农业科技

引用本文复制引用

陈浩峰,方彦奇,杨奎,彭江英,赵国凤,贾朔..基于高光谱技术的场地土壤重金属污染快速调查研究[J].中国资源综合利用,2024,42(6):206-210,215,6.

基金项目

江苏省地矿局科研项目(2019KY11、202004196K1K、2021KY14). (2019KY11、202004196K1K、2021KY14)

中国资源综合利用

OACHSSCD

1008-9500

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