Cross-checking SMBH mass estimates in NGC 6958 -- I: Stellar dynamics from adaptive optics-assisted MUSE observations
Sabine Thater, Davor Krajnovi\'c, Peter M. Weilbacher, Dieu D. Nguyen,, Martin Bureau, Michele Cappellari, Timothy A. Davis, Satoru Iguchi, Richard, McDermid, Kyoko Onishi, Marc Sarzi, Glenn van de Ven

TL;DR
This study measures the supermassive black hole mass in NGC 6958 using adaptive optics-assisted stellar dynamics with MUSE data, highlighting the importance of spatial resolution and systematic uncertainties in such estimates.
Contribution
First detailed cross-comparison of stellar- and gas-based black hole mass estimates in NGC 6958 using AO-assisted MUSE data, including dynamical modeling and systematic analysis.
Findings
Measured MBH of approximately 3.6 x 10^8 Msun with axisymmetric Schwarzschild models.
Adding dark matter increases the MBH estimate by about 25%.
Jeans models yield MBH estimates consistent within uncertainties.
Abstract
Supermassive black hole masses (MBH) can dynamically be estimated with various methods and using different kinematic tracers. Different methods have only been cross-checked for a small number of galaxies and often show discrepancies. To understand these discrepancies, detailed cross-comparisons of additional galaxies are needed. We present the first part of our cross-comparison between stellar- and gas-based MBH estimates in the nearby fast-rotating early-type galaxy NGC 6958. The measurements presented here are based on ground-layer adaptive optics-assisted Multi-Unit Spectroscopic Explorer (MUSE) science verification data at around 0.6 arcsec spatial resolution. The spatial resolution is a key ingredient for the measurement and we provide a Gaussian parametrisation of the adaptive optics-assisted point spread function (PSF) for various wavelengths. From the MUSE data, we extracted the…
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