Notice of RetractionSpectral Features and Regression Model of Mine Vegetation in the Press of Heavy Metal

H. Hong, Yang Feng-jie, Zhou Guang-zhu, Li Yin-ming
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引用次数: 2

Abstract

Vegetation reflectance spectra in field with spectrometer to be tested in this study, used eight kinds of spectral parameters to analysis spectral of vegetation, six kinds of heavy metal content in plant leaves to be measured, then the regression model from the spectral characteristic parameters to the heavy metal content can be built, according to this can inverse heavy metal content with spectral parameters, further analysis the pollution extent of mine vegetation. Sampling areas were polluted by Cr more seriously, secondly was Ni. The 4th point was polluted most seriously by the heavy metal, The regression equations of Pb, Cu, Zn heavy metals had high correlation coefficient. The red valley area and the water absorption area with the Zn content in leaves had a high linear correlation, the red valley depth and the water absorption depth with the Cu content in leaves had a high linear correlation.
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重金属出版社矿山植被光谱特征与回归模型研究
本研究利用光谱仪对野外植被反射光谱进行测试,利用8种光谱参数对植被光谱进行分析,对植物叶片中6种重金属含量进行测量,然后建立从光谱特征参数到重金属含量的回归模型,据此可以用光谱参数反演重金属含量,进一步分析矿山植被的污染程度。采样区Cr污染较严重,其次是Ni。第4点重金属污染最严重,Pb、Cu、Zn重金属回归方程具有较高的相关系数。红谷面积、吸水面积与叶片中Zn含量呈高度线性相关,红谷深度、吸水深度与叶片中Cu含量呈高度线性相关。
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