TY - JOUR
T1 - Hyperspectral inversion of heavy metals in soil of a mining area using extreme learning machine
AU - Ma, Wei Bo
AU - Tan, Kun
AU - Li, Hai Dong
AU - Yan, Qing Wu
N1 - Publisher Copyright:
© 2016, China Environmental Science Press. All rights reserved.
PY - 2016/3/25
Y1 - 2016/3/25
N2 - In recent years, the technology of visible and near infrared spectral inversion of heavy metals in soil of a mining area has been attracting more and more attention. However, the contents of heavy metals in the soil are often so trivial that their spectral characteristics are very fragile and hence the requirements of their inversions and for the models should be much higher. In a study on inversions of heavy metals in the soil of reclaimed mining areas, the technology of extreme learning machine (ELM) was introduced to inversion modeling and compared with the traditional partial least squares re-gression(PLS) and the support vector machine (SVM) methods. After pretreatment and correlation analysis of spectral da-ta, the three models were used to inverse the data of 30 soil samples, and 10 of them were chosen for model validation. Results show that the model of ELM was higher than the models of SVM and PLS inaccuracy of the prediction of Zinc (Zn), Copper (Cu), Cadmium (Cd) and Chromium (Cr) and more or less the same in prediction capacity for Plumbum (Pb) and Arsenic (As) with SVM.
AB - In recent years, the technology of visible and near infrared spectral inversion of heavy metals in soil of a mining area has been attracting more and more attention. However, the contents of heavy metals in the soil are often so trivial that their spectral characteristics are very fragile and hence the requirements of their inversions and for the models should be much higher. In a study on inversions of heavy metals in the soil of reclaimed mining areas, the technology of extreme learning machine (ELM) was introduced to inversion modeling and compared with the traditional partial least squares re-gression(PLS) and the support vector machine (SVM) methods. After pretreatment and correlation analysis of spectral da-ta, the three models were used to inverse the data of 30 soil samples, and 10 of them were chosen for model validation. Results show that the model of ELM was higher than the models of SVM and PLS inaccuracy of the prediction of Zinc (Zn), Copper (Cu), Cadmium (Cd) and Chromium (Cr) and more or less the same in prediction capacity for Plumbum (Pb) and Arsenic (As) with SVM.
KW - Extreme learning machine
KW - Heavy metal
KW - Hyperspectral
KW - Reclaimed mining area
KW - Remote sensing inversion
KW - Soil
UR - https://www.scopus.com/pages/publications/85019696999
U2 - 10.11934/j.issn.1673-4831.2016.02.007
DO - 10.11934/j.issn.1673-4831.2016.02.007
M3 - 文章
AN - SCOPUS:85019696999
SN - 1673-4831
VL - 32
SP - 213
EP - 218
JO - Journal of Ecology and Rural Environment
JF - Journal of Ecology and Rural Environment
IS - 2
M1 - 1673-4831(2016)02-0213-06
ER -