VLBA determination of the distance to nearby star-forming regions V. Dynamical mass, distance and radio structure of V773 Tau A
R. M. Torres (AIfA, CRyA-UNAM), L. Loinard (MPIfR, CRyA-UNAM), A. J., Mioduszewski (NRAO), A. F. Boden (CalTech), R. Franco-Hernandez (AIfA,, UChile), W. H. T. Vlemmings (AIfA, Onsala), L. R. Rodriguez (CRyA-UNAM)

TL;DR
This study uses VLBA observations combined with previous data to precisely measure the orbit, mass, and distance of the V773 Tau A binary system, improving the accuracy of its distance and contributing to understanding the Taurus star-forming region.
Contribution
It provides the most accurate distance measurement to V773 Tau A using VLBA data, refining orbital parameters and demonstrating the effectiveness of VLBA for stellar distance estimation.
Findings
Dynamical masses of primary and secondary are 1.55 and 1.293 Msun.
Distance to V773 Tau A is 132.8 pc with high precision.
VLBA observations improve the accuracy of stellar distances by nearly an order of magnitude.
Abstract
(ABRIDGED) We present multi-epoch Very Long Baseline Array (VLBA) observations of V773 Tau A, the 51-day binary subsystem in the multiple young stellar system V773 Tau. Combined with previous interferometric and radial velocity measurements, these new data enable us to improve the characterization of the physical orbit of the A subsystem. In particular, we infer updated dynamical masses for the primary and the secondary components of 1.55 pm 0.11 Msun, and 1.293 pm 0.068 Msun, respectively, and an updated orbital parallax distance to the system of 135.7 pm 3.2 pc, all consistent with previous estimates. Using the improved orbit, we can calculate the absolute coordinates of the barycenter of V773 Tau A at each epoch of our VLBA observations, and fit for its trigonometric parallax and proper motion. This provides a direct measurement of the distance to the system almost entirely…
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