Learning mid-IR emission spectra of polycyclic aromatic hydrocarbon populations from observations
Sacha Foschino (1), Olivier Bern\'e (1), Christine Joblin (1) ((1), IRAP, Universit\'e de Toulouse, CNRS, CNES, UPS, Toulouse, France)

TL;DR
This paper introduces a fast, robust unsupervised learning method to analyze JWST spectral data, enabling insights into the chemical diversity of PAH populations and VSGs in space.
Contribution
The authors develop a linear fitting and blind signal separation approach tailored for JWST spectral cubes, demonstrating its effectiveness on ISO data and revealing chemical variations.
Findings
Identified spectra corresponding to different PAH and VSG populations.
First application of BSS to the 3 μm spectral range revealing aliphatics.
Method shows promise for analyzing large JWST datasets.
Abstract
The JWST will deliver large data sets of high-quality spectral data over the 0.6-28 m range. It will combine sensitivity, spectral and spatial resolution. Specific tools are required to provide efficient scientific analysis of such large data sets. Our aim is to illustrate the potential of unsupervised learning methods to get insights into chemical variations in the populations that carry the aromatic infrared bands (AIBs), more specifically PAH species and carbonaceous very small grains (VSGs). We present a method based on linear fitting and blind signal separation (BSS) for extracting representative spectra for a spectral data set. The method is fast and robust, which ensures its applicability to JWST spectral cubes. We tested this method on a sample of ISO-SWS data, which resemble most closely the JWST spectra in terms of spectral resolution and coverage. Four representative…
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