Planetary surfaces can be complex mixtures of coarse and fine particles that exhibit linear and nonlinear mixing behaviors at mid-infrared (MIR) wavelengths. Machine learning multivariate analysis can estimate modal mineralogy of mixtures and is favorable because it does not assume linear mixing across wavelengths. We used partial least squares (PLS) and least absolute shrinkage and selection operator (lasso), two types of machine learning, to build MIR spectral models to determine the surface mineralogy of the asteroid (101955) Bennu using OSIRIS-REx Thermal Emission Spectrometer (OTES) data. We find that PLS models outperform lasso models. The cross-validated root-mean-square error of our final PLS models (consisting of 317 unique spectra...
In an effort to both bolster the spectral database on ordinary chondrites and constrain our ability ...
International audienceEarly spectral data from the Origins, Spectral Interpretation, Resource Identi...
We describe the capabilities, radiometric stability, and calibration of a custom vacuum environment ...
This is supporting data for the paper titled "Machine Learning Mid-Infrared Spectral Models for Pred...
Context. Chemical and mineral compositions of asteroids reflect the formation and history of our Sol...
We present spectral measurements of a suite of mineral mixtures and meteorites that are possible ana...
International audienceWe report an unexpected variability among mid-infrared spectra (IRTF and Spitz...
Context. The OSIRIS-REx Visible and InfraRed Spectrometer onboard the Origins, Spectral Interpretati...
Context. Our knowledge of near-Earth asteroid (NEA) composition is important for planetary research,...
International audienceContext. The NASA Origins, Spectral Interpretation, Resource Identification, a...
In an effort to both bolster the spectral database on ordinary chondrites and constrain our ability ...
International audienceEarly spectral data from the Origins, Spectral Interpretation, Resource Identi...
We describe the capabilities, radiometric stability, and calibration of a custom vacuum environment ...
This is supporting data for the paper titled "Machine Learning Mid-Infrared Spectral Models for Pred...
Context. Chemical and mineral compositions of asteroids reflect the formation and history of our Sol...
We present spectral measurements of a suite of mineral mixtures and meteorites that are possible ana...
International audienceWe report an unexpected variability among mid-infrared spectra (IRTF and Spitz...
Context. The OSIRIS-REx Visible and InfraRed Spectrometer onboard the Origins, Spectral Interpretati...
Context. Our knowledge of near-Earth asteroid (NEA) composition is important for planetary research,...
International audienceContext. The NASA Origins, Spectral Interpretation, Resource Identification, a...
In an effort to both bolster the spectral database on ordinary chondrites and constrain our ability ...
International audienceEarly spectral data from the Origins, Spectral Interpretation, Resource Identi...
We describe the capabilities, radiometric stability, and calibration of a custom vacuum environment ...