EMPRESS. V. Metallicity Diagnostics of Galaxies over 12+log(O/H)=~6.9-8.9 Established by a Local Galaxy Census: Preparing for JWST Spectroscopy
Kimihiko Nakajima, Masami Ouchi, Yi Xu, Michael Rauch, Yuichi, Harikane, Moka Nishigaki, Yuki Isobe, Haruka Kusakabe, Tohru Nagao, Yoshiaki, Ono, Masato Onodera, Yuma Sugahara, Ji Hoon Kim, Yutaka Komiyama, Chien-Hsiu, Lee, Fakhri S. Zahedy

TL;DR
This paper establishes reliable optical-line gas metallicity diagnostics for extremely metal-poor galaxies, covering a broad metallicity range, and prepares tools for future JWST spectroscopy to study galaxy evolution.
Contribution
It introduces new metallicity diagnostics validated with a large local galaxy sample, improving accuracy especially using H-beta equivalent width, and provides data for upcoming JWST observations.
Findings
R23-index is the most accurate metallicity indicator with 0.14 dex uncertainty.
Other indicators show large scatter in very metal-poor galaxies.
Using H-beta equivalent width improves metallicity estimation accuracy.
Abstract
We present optical-line gas metallicity diagnostics established by the combination of local SDSS galaxies and the largest compilation of extremely metal-poor galaxies (EMPGs) including new EMPGs identified by the Subaru EMPRESS survey. A total of 103 EMPGs are included that cover a large parameter space of magnitude (Mi=-19 to -7) and H-beta equivalent width (10-600 Ang), i.e., wide ranges of stellar mass and star-formation rate. Using reliable metallicity measurements of the direct method for these galaxies, we derive the relationships between strong optical-line ratios and gas-phase metallicity over the range of 12+log(O/H)=~6.9-8.9 corresponding to 0.02-2 solar metallicity Zsun. We confirm that R23-index, ([OIII]+[OII])/H-beta, is the most accurate metallicity indicator with the metallicity uncertainty of 0.14 dex over the range among various popular metallicity indicators. The other…
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