Machine-assisted classification of potential biosignatures in earth-like exoplanets using low signal-to-noise ratio transmission spectra
David S. Duque-Casta\~no, Jorge I. Zuluaga, Lauren Flor-Torres

TL;DR
This paper presents a machine learning approach to classify low SNR transmission spectra of Earth-like exoplanets for biosignatures, aiding in efficient detection with limited observational data.
Contribution
The study introduces a novel machine-learning methodology trained on synthetic spectra to identify biosignatures in noisy exoplanet transmission data, optimizing future observational strategies.
Findings
Models accurately classify spectra with SNR as low as 4.
Most inhabited planets could be identified with 4-10 transits using JWST.
Method enhances detection efficiency for biosignatures in exoplanet atmospheres.
Abstract
The search for atmospheric biosignatures in Earth-like exoplanets is one of the most pressing challenges in observational astrobiology. Detecting biogenic gases in terrestrial planets requires high-resolution observations and long integration times. In this work, we developed and tested a general machine-learning methodology designed to classify transmission spectra with low Signal-to-Noise Ratio (SNR) according to their potential to contain biosignatures or bioindicators. To achieve this, we trained a set of models capable of classifying noisy transmission spectra (including stellar contamination) as containing methane, ozone, and/or water (multilabel classification), or simply as being interesting for follow-up observations (binary classification). The models were trained using synthetic spectra of planets similar to TRAPPIST-1 e, generated with the package MultiREx. The…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research
