Quantifying the informativity of emission lines to infer physical conditions in giant molecular clouds. I. Application to model predictions
Lucas Einig, Pierre Palud, Antoine Roueff, J\'er\^ome Pety, Emeric, Bron, Franck Le Petit, Maryvonne Gerin, Jocelyn Chanussot, Pierre Chainais,, Pierre-Antoine Thouvenin, David Languignon, Ivana Be\v{s}li\'c, Simon, Coud\'e, Helena Mazurek, Jan H. Orkisz, Miriam G. Santa-Maria

TL;DR
This paper introduces a statistical method using mutual information to evaluate the effectiveness of different emission lines in constraining physical conditions in giant molecular clouds, aiding observational strategies.
Contribution
It develops a quantitative criterion to assess the informational value of emission lines and their combinations for probing ISM physical parameters, applied to model predictions.
Findings
Short integration of CO lines provides significant info on column density.
Optimal line sets vary with physical regimes like cloud extinction.
Surface-emitted lines are crucial for constraining UV illumination.
Abstract
Observations of ionic, atomic, or molecular lines are performed to improve our understanding of the interstellar medium (ISM). However, the potential of a line to constrain the physical conditions of the ISM is difficult to assess quantitatively, because of the complexity of the ISM physics. The situation is even more complex when trying to assess which combinations of lines are the most useful. Therefore, observation campaigns usually try to observe as many lines as possible for as much time as possible. We search for a quantitative statistical criterion to evaluate the constraining power of a (or combination of) tracer(s) with respect to physical conditions in order to improve our understanding of the statistical relationships between ISM tracers and physical conditions and helps observers to motivate their observation proposals. The best tracers are obtained by comparing the mutual…
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