New Photometric Calibration of the Wide Field Camera 3 Detectors

Authors: A. Calamida (Space Telescope Science Institute), V. Bajaj (Space Telescope Science Institute), J. Mack (Space Telescope Science Institute), M. Marinelli (Space Telescope Science Institute), J. Medina (Space Telescope Science Institute), A. Pidgeon (Space Telescope Science Institute), V. Kozhurina-Platais (Space Telescope Science Institute), C. Shanahan (Space Telescope Science Institute), D. Som (Space Telescope Science Institute)

arXiv: 2205.13014v1 - DOI (astro-ph.IM)
38 pages, 23 figures, accepted for publication on the Astronomical Journal

Abstract: We present a new photometric calibration of the WFC3-UVIS and WFC3-IR detectors based on observations collected from 2009 to 2020 for four white dwarfs, namely GRW+70~5824, GD~153, GD~71, G191B2B, and a G-type star, P330E. These calibrations include recent updates to the Hubble Space Telescope primary standard white dwarf models and a new reference flux for Vega. Time-dependent inverse sensitivities for the two WFC3-UVIS chips, UVIS1 and UVIS2, were calculated for all 42 full-frame filters, after accounting for temporal changes in the observed count rates with respect to a reference epoch in 2009. We also derived new encircled energy values for a few filters and improved sensitivity ratios for the two WFC3-UVIS chips by correcting for sensitivity changes with time. Updated inverse sensitivity values for the 20 WFC3-UVIS quad filters and for the 15 WF3-IR filters were derived by using the new models for the primary standards and the new Vega reference flux and, in the case of the IR detector, new flat fields. However, these values do not account for any sensitivity changes with time. The new calibration provides a photometric internal precision better than 0.5% for the wide-, medium-, and narrow-band WFC3-UVIS filters, 5% for the quad filters, and 1% for the WFC3-IR filters. As of October 15, 2020, an updated set of photometric keywords are populated in the WFC3 image headers.

Submitted to arXiv on 25 May. 2022

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