TY - JOUR
T1 - New data-driven estimation of metal element in rocks using a hyperspectral data and geochemical data
AU - Ma, Xiumei
AU - Wang, Jinlin
AU - Zhou, Kefa
AU - Zhang, Wenqiang
AU - Zhang, Zhixing
AU - De Maeyer, Philippe
AU - Van de Voorde, Tim
N1 - Funding Information:
This work was supported by the Science and Technology Major Project of the Xinjiang Uygur Autonomous Region, China (2021A03001-3), the Third Xinjiang Scientific Expedition Program (grant number 2022xjkk1306), The Chinese Academy of Sciences Strategic Leading Science and Technology Special Project (Class A) “Low carbon energy metal minerals (lithium, rare earth, cobalt, nickel, copper) prospecting, storage and efficient extraction” Project, Topic 3: Carbonate clay type lithium deposit mineralization law and resource storage
Publisher Copyright:
© 2024 The Authors
PY - 2024/2
Y1 - 2024/2
N2 - The inversion of Cu contents in rocks based on hyperspectral remote sensing is indicative of geochemical exploration as well as mineral resource exploration. Due to the strong redundancy of band information in hyperspectral data, characteristic band selection is the key to improving the accuracy of metal element inversion models in hyperspectral data. In this study, we proposed a framework that innovatively focuses on secondary screening method (SSM) as the core, allowing users to add different data preprocessing methods and machine learning algorithms to the framework based on expert experience, to obtain high-precision metal element inversion models suitable for sampling data. we first preprocessed the measured spectral curves using the first order derivative, second order derivative, continuum removal, multiple scattering correction and variance analysis to highlight band absorption characteristics. In addition, we performed SSM to obtain Cu-related characteristic bands, which were further used as input data to train and compare the performance of Partial Least Square Regression (PLSR), Support Vector Regression (SVR), Multi-Layer Perceptron (MLP), Random Forest (RF) and Gradient Boosting Regression Tree (GBRT). The results show that both the spectral pretreatment and modeling method could potentially impact the inversion accuracy. The accuracy of the ensemble method applied in fresh faces data (i.e., a CR-SSM-RF with R2 values of 0.77 and CR-SSM-GBRT with R2 values of 0.81) performed better than other models with an accuracy improvement of up to 80%. Compared to the full band model, the accuracy of characteristic bands selection model increased 50%. This also illustrates that the CR-SSM-RF or CR-SSM-GBRT model significantly improves the accuracy of the inversion of Cu contents in rocks compared to the original spectral reflectance. Our study provides a new idea for selecting different spectral preprocessing methods as the input values for the future model and will also offer an executable framework for the inversion of Cu contents in rocks of different lithology on a large scale in the future.
AB - The inversion of Cu contents in rocks based on hyperspectral remote sensing is indicative of geochemical exploration as well as mineral resource exploration. Due to the strong redundancy of band information in hyperspectral data, characteristic band selection is the key to improving the accuracy of metal element inversion models in hyperspectral data. In this study, we proposed a framework that innovatively focuses on secondary screening method (SSM) as the core, allowing users to add different data preprocessing methods and machine learning algorithms to the framework based on expert experience, to obtain high-precision metal element inversion models suitable for sampling data. we first preprocessed the measured spectral curves using the first order derivative, second order derivative, continuum removal, multiple scattering correction and variance analysis to highlight band absorption characteristics. In addition, we performed SSM to obtain Cu-related characteristic bands, which were further used as input data to train and compare the performance of Partial Least Square Regression (PLSR), Support Vector Regression (SVR), Multi-Layer Perceptron (MLP), Random Forest (RF) and Gradient Boosting Regression Tree (GBRT). The results show that both the spectral pretreatment and modeling method could potentially impact the inversion accuracy. The accuracy of the ensemble method applied in fresh faces data (i.e., a CR-SSM-RF with R2 values of 0.77 and CR-SSM-GBRT with R2 values of 0.81) performed better than other models with an accuracy improvement of up to 80%. Compared to the full band model, the accuracy of characteristic bands selection model increased 50%. This also illustrates that the CR-SSM-RF or CR-SSM-GBRT model significantly improves the accuracy of the inversion of Cu contents in rocks compared to the original spectral reflectance. Our study provides a new idea for selecting different spectral preprocessing methods as the input values for the future model and will also offer an executable framework for the inversion of Cu contents in rocks of different lithology on a large scale in the future.
KW - Continuum removal method
KW - Cu element
KW - Gradient Boosting Regression Tree
KW - Hyperspectral remote sensing
KW - Inversion accuracy
UR - http://www.scopus.com/inward/record.url?scp=85183653631&partnerID=8YFLogxK
U2 - 10.1016/j.oregeorev.2024.105877
DO - 10.1016/j.oregeorev.2024.105877
M3 - Article
AN - SCOPUS:85183653631
SN - 0169-1368
VL - 165
JO - Ore Geology Reviews
JF - Ore Geology Reviews
M1 - 105877
ER -