Long-wave infrared (LWIR) spectra can be interpreted using a Random Forest machine learning approach to predict mineral species and abundances. In this study, hydrothermally altered carbonate rock core samples from the Fourmile Carlin-type Au discovery, Nevada, were analyzed by LWIR and micro-X-ray fluorescence (μXRF). Linear programming-derived mineral abundances from quantified μXRF data were used as training data to construct a series of Random Forest regression models. The LWIR Random Forest models produced mineral proportion estimates with root mean square errors of 1.17 to 6.75% (model predictions) and 1.06 to 6.19% (compared to quantitative X-ray diffraction data) for calcite, dolomite, kaolinite, white mica, phlogopite, K-feldspar, ...
To develop an automated method for generating predictive crustal dilution maps for kimberlites, shor...
Planetary surfaces can be complex mixtures of coarse and fine particles that exhibit linear and nonl...
A technique for estimating clinoptilolite, montmorillonite, and epsomite mineral abundances from a r...
Long-wave infrared (LWIR) spectra can be interpreted using a Random Forest machine learning approach...
Accurate quantitative mineralogical data has significant implications in mining operations. However,...
Mineral distributions can be determined in drill core samples from a Carlin-type gold deposit, using...
peer reviewedThis work aims to develop a new core logging technique based on reflectance spectroscop...
Accurate characterizations of mineral reactivity require mapping of spatial heterogeneity, and quant...
Attenuated Total Reflectance Fourier transform infrared spectroscopy together with multivariate stat...
Hyperspectral drill core scanning technology (e.g., CoreScan®), which uses visual nearinfrared (VNIR...
Visible-shortwave infrared microimaging reflectance spectroscopy is a new technique to identify mine...
Faced with ongoing depletion of near-surface ore deposits, geologists are increasingly required to e...
Visible-shortwave infrared microimaging reflectance spectroscopy is a new technique to identify mine...
EGU2020: Sharing Geoscience Online, 4-8 May, 2020Minerals are key resources for several industries, ...
The use of a chemometric method, partial least squares (PLS) regression and the infrared technique, ...
To develop an automated method for generating predictive crustal dilution maps for kimberlites, shor...
Planetary surfaces can be complex mixtures of coarse and fine particles that exhibit linear and nonl...
A technique for estimating clinoptilolite, montmorillonite, and epsomite mineral abundances from a r...
Long-wave infrared (LWIR) spectra can be interpreted using a Random Forest machine learning approach...
Accurate quantitative mineralogical data has significant implications in mining operations. However,...
Mineral distributions can be determined in drill core samples from a Carlin-type gold deposit, using...
peer reviewedThis work aims to develop a new core logging technique based on reflectance spectroscop...
Accurate characterizations of mineral reactivity require mapping of spatial heterogeneity, and quant...
Attenuated Total Reflectance Fourier transform infrared spectroscopy together with multivariate stat...
Hyperspectral drill core scanning technology (e.g., CoreScan®), which uses visual nearinfrared (VNIR...
Visible-shortwave infrared microimaging reflectance spectroscopy is a new technique to identify mine...
Faced with ongoing depletion of near-surface ore deposits, geologists are increasingly required to e...
Visible-shortwave infrared microimaging reflectance spectroscopy is a new technique to identify mine...
EGU2020: Sharing Geoscience Online, 4-8 May, 2020Minerals are key resources for several industries, ...
The use of a chemometric method, partial least squares (PLS) regression and the infrared technique, ...
To develop an automated method for generating predictive crustal dilution maps for kimberlites, shor...
Planetary surfaces can be complex mixtures of coarse and fine particles that exhibit linear and nonl...
A technique for estimating clinoptilolite, montmorillonite, and epsomite mineral abundances from a r...