Recovering the pattern speeds of edge-on barred galaxies via an orbit-superposition method
Abstract
We developed an orbit-superposition method for edge-on barred galaxies and evaluated its capability to recover the bar pattern speed p. We selected three simulated galaxies (Au-18, Au-23, and Au-28) with known pattern speeds from the Auriga simulations and created MUSE-like mock data sets with edge-on views (inclination angles θ T85) and various bar azimuthal angles T. For mock data sets with side-on bars ( T50), the model-recovered pattern speeds p encompass the true pattern speeds T within the model uncertainties (1σ confidence levels, 68\%) for 10 of 12 cases. The average model uncertainty within the 1σ confidence levels is equal to 10\%. For mock data sets with end-on bars ( T30), the model uncertainties of p depend significantly on the bar azimuthal angles T, with the uncertainties of cases with T=10 approaching 30\%. However, by imposing a stricter constraint on the bar morphology (p bar0.50), the average uncertainties are reduced to 14\% , and p still encompass T within the model uncertainties for three of four cases. For all the models that we create in this paper, the 2σ (95\%) confidence levels of the model-recovered pattern speeds p always cover the true values T.
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