A celestial reference frame derived from observations with the Very Long Baseline Interferometry Global Observing System
Hana Krasna, Christopher S. Jacobs, Matthias Schartner, Patrick, Charlot

TL;DR
This paper presents a new celestial reference frame derived from five years of VGOS VLBI data, demonstrating high precision and systematic analysis compared to existing frames, with implications for improving southern hemisphere observations.
Contribution
The paper introduces the VIE2023-VG CRF based on extensive VGOS data, detailing source selection, scheduling, and comparison with ICRF3-SX, highlighting improvements in source position accuracy.
Findings
VIE2023-VG CRF includes 418 sources with median errors of 30-47 microas.
The CRF shows systematic distortions up to 60 microas compared to ICRF3-SX.
Southern hemisphere observations are limited, affecting the global frame accuracy.
Abstract
Aims: We computed a celestial reference frame (CRF) from Very Long Baseline Interferometry (VLBI) Global Observing System (VGOS) data after five years of regular observations (155 multi-baseline 24-hour VGOS sessions until 2024.0). In this paper we document the source selection and scheduling strategies for the individual sessions, and investigate the effect of using this new VGOS CRF in the analysis of individual geodetic VLBI sessions. We carried out several comparisons with ICRF3-SX, and with VIE2023sx CRF which includes VLBI S/X data until 2024.0. Furthermore, we studied the effect of more frequent estimations of tropospheric parameters on the estimated CRF in the current VGOS network. We evaluated the VIE2023-VG CRF in the geodetic analysis of VGOS sessions where the source positions were fixed to either the VIE2023-VG CRF or to ICRF3-SX. Results: The current VIE2023-VG CRF is…
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