Cosmoglobe DR2. III. Improved modelling of zodiacal light with COBE-DIRBE through global Bayesian analysis
M. San, A. Bonato, M. Galloway, E. Gjerl{\o}w, D. J. Watts, R. Aurvik, A. Basyrov, L. A. Bianchi, M. Brilenkov, H. K. Eriksen, U. Fuskeland, K. A. Glasscock, L. T. Hergt, D. Herman, J. G. S. Lunde, A. I. Silva Martins, D. Sponseller, N.-O. Stutzer, R. M. Sullivan, H. Thommesen

TL;DR
This paper introduces an improved zodiacal light model for COBE-DIRBE data using global Bayesian analysis, integrating multiple datasets and jointly fitting astrophysical parameters to refine foreground subtraction in infrared sky maps.
Contribution
It presents a new Bayesian zodiacal light model that re-derives parameters using combined datasets and accounts for excess stationary radiation, advancing DIRBE foreground modeling.
Findings
Relative differences between models are less than 3% at key wavelengths.
Zero-levels in DR2 maps are significantly lower than previous models.
Residual zodiacal light signals remain, indicating further refinement is needed.
Abstract
We present an improved zodiacal light (ZL) model for COBE-DIRBE derived through global Bayesian analysis within the Cosmoglobe Data Release 2 framework. The parametric form of the ZL model is inspired by the original DIRBE model by Kelsall et al. (K98), but the specific best-fit parameter values are re-derived using the combination of DIRBE Calibrated Individual Observations, Planck HFI sky maps, and WISE and Gaia compact object catalogs. Furthermore, the ZL parameters are fitted jointly with astrophysical parameters, such as thermal dust and starlight emission, and the new model takes into account excess radiation that appears stationary in solar-centric coordinates as reported in a companion paper. The relative differences between the predicted signals from K98 and our new model are in the 12 and 25 m channels over the full sky. The zero-levels of the cleaned DR2…
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