Inferring Chemical Disequilibrium Biosignatures for Proterozoic Earth-Like Exoplanets

Authors: Amber V. Young, Tyler D. Robinson, Joshua Krissansen-Totton, Edward W. Schwieterman, Nicholas F. Wogan, Michael J. Way, Linda E. Sohl, Giada N. Arney, Christopher T. Reinhard, Michael R. Line, David C. Catling, James D. Windsor

arXiv: 2311.06083v1 - DOI (astro-ph.EP)
Nature Astronomy. Supplementary information see https://zenodo.org/records/10093798 For Source Data see https://zenodo.org/records/8335447
License: CC BY 4.0

Abstract: Chemical disequilibrium quantified via available free energy has previously been proposed as a potential biosignature. However, exoplanet biosignature remote sensing work has not yet investigated how observational uncertainties impact the ability to infer a life-generated available free energy. We pair an atmospheric retrieval tool to a thermodynamics model to assess the detectability of chemical disequilibrium signatures of Earth-like exoplanets, emphasizing the Proterozoic Eon where atmospheric abundances of oxygen-methane disequilibrium pairs may have been relatively high. Retrieval model studies applied across a range of gas abundances revealed that order-of-magnitude constraints on disequilibrium energy are achieved with simulated reflected-light observations at the high abundance scenario and signal-to-noise ratios (50) while weak constraints are found at moderate SNRs (20\,--\,30) for med\,--\,low abundance cases. Furthermore, the disequilibrium energy constraints are improved by modest thermal information encoded in water vapor opacities at optical and near-infrared wavelengths. These results highlight how remotely detecting chemical disequilibrium biosignatures can be a useful and metabolism-agnostic approach to biosignature detection.

Submitted to arXiv on 10 Nov. 2023

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