A Monte Carlo Approach to Evolution of the Far-Infrared Luminosity Function with BLAST
Gaelen Marsden, Edward L. Chapin, Mark Halpern, Guillaume Patanchon,, Douglas Scott, Matthew D. P. Truch, Elisabetta Valiante, Marco P. Viero,, Donald V. Wiebe

TL;DR
This study models the evolution of the far-infrared luminosity function using Monte Carlo methods and multi-wavelength data, providing insights into galaxy evolution and addressing uncertainties in parameter estimation.
Contribution
It introduces a Monte Carlo Markov Chain approach to constrain the FIR luminosity function evolution, incorporating multiple data sources and addressing parameter uncertainties.
Findings
Fitted the evolution of the FIR luminosity function out to high redshift.
Identified tensions between CIB measurements and redshift distributions near 1 mm.
Demonstrated the importance of future data in resolving model degeneracies.
Abstract
We constrain the evolution of the rest-frame far-infrared (FIR) luminosity function out to high redshift, by combining several pieces of complementary information provided by the deep Balloon-borne Large-Aperture Submillimeter Telescope surveys at 250, 350 and 500 micron, as well as other FIR and millimetre data. Unlike most other phenomenological models, we characterise the uncertainties in our fitted parameters using Monte Carlo Markov Chains. We use a bivariate local luminosity function that depends only on FIR luminosity and 60-to-100 micron colour, along with a single library of galaxy spectral energy distributions indexed by colour, and apply simple luminosity and density evolution. We use the surface density of sources, Cosmic Infrared Background (CIB) measurements and redshift distributions of bright sources, for which identifications have been made, to constrain this model. The…
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