TL;DR
AGNfitter is a Bayesian MCMC tool that fits AGN spectral energy distributions across multiple wavelengths, enabling detailed physical parameter estimation and effective classification of AGN types based on their emission properties.
Contribution
It introduces a comprehensive Bayesian approach with a large model library to simultaneously analyze nuclear and host galaxy emissions, improving AGN classification accuracy.
Findings
Accurately classifies AGN as Type1 or Type2 using SED fitting.
Achieves high completeness and efficiency in AGN classification.
Provides robust estimates of physical parameters like luminosities and dust properties.
Abstract
We present AGNfitter, a publicly available open-source algorithm implementing a fully Bayesian Markov Chain Monte Carlo method to fit the spectral energy distributions (SEDs) of active galactic nuclei (AGN) from the sub-mm to the UV, allowing one to robustly disentangle the physical processes responsible for their emission. AGNfitter makes use of a large library of theoretical, empirical, and semi-empirical models to characterize both the nuclear and host galaxy emission simultaneously. The model consists of four physical emission components: an accretion disk, a torus of AGN heated dust, stellar populations, and cold dust in star forming regions. AGNfitter determines the posterior distributions of numerous parameters that govern the physics of AGN with a fully Bayesian treatment of errors and parameter degeneracies, allowing one to infer integrated luminosities, dust attenuation…
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