TL;DR
This paper introduces pyMCZ, an open-source Python tool that uses Monte Carlo sampling to accurately estimate oxygen abundances and their uncertainties from strong emission line measurements in astrophysics.
Contribution
The paper presents a new Python implementation of metallicity calibration methods that improves uncertainty characterization through Monte Carlo sampling, expanding previous IDL-based tools.
Findings
Produces synthetic distributions for oxygen abundance and other parameters
Provides smaller statistical uncertainties compared to previous methods
Includes visualization tools for analyzing abundance distributions
Abstract
We present the open-source Python code pyMCZ that determines oxygen abundance and its distribution from strong emission lines in the standard metallicity calibrators, based on the original IDL code of Kewley & Dopita (2002) with updates from Kewley & Ellison (2008), and expanded to include more recently developed calibrators. The standard strong-line diagnostics have been used to estimate the oxygen abundance in the interstellar medium through various emission line ratios in many areas of astrophysics, including galaxy evolution and supernova host galaxy studies. We introduce a Python implementation of these methods that, through Monte Carlo sampling, better characterizes the statistical oxygen abundance confidence region including the effect due to the propagation of observational uncertainties. These uncertainties are likely to dominate the error budget in the case of distant…
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