Robust forecasts on fundamental physics from the foreground-obscured, gravitationally-lensed CMB polarization
Josquin Errard, Stephen M. Feeney, Hiranya V. Peiris, Andrew H. Jaffe

TL;DR
This paper evaluates the ability of current and future CMB experiments to accurately forecast inflationary signals by effectively removing foreground contamination and lensing effects, aiding in experiment design and collaboration.
Contribution
It provides a comprehensive, self-consistent forecast framework for CMB experiments' capabilities to clean foregrounds and lensing, optimizing their scientific output.
Findings
Combining data from diverse experiments enhances component separation and delensing.
Foreground removal and lensing mitigation significantly improve inflationary parameter constraints.
The online tool aids experiment design and collaboration planning.
Abstract
[Abridged] Recent results from the BICEP, Keck Array and Planck Collaborations demonstrate that Galactic foregrounds are an unavoidable obstacle in the search for evidence of inflationary gravitational waves in the cosmic microwave background (CMB) polarization. Beyond the foregrounds, the effect of lensing by intervening large-scale structure further obscures all but the strongest inflationary signals permitted by current data. With a plethora of ongoing and upcoming experiments aiming to measure these signatures, careful and self-consistent consideration of experiments' foreground- and lensing-removal capabilities is critical in obtaining credible forecasts of their performance. We investigate the capabilities of instruments such as Advanced ACTPol, BICEP3 and Keck Array, CLASS, EBEX10K, PIPER, Simons Array, SPT-3G and SPIDER, and projects as COrE+, LiteBIRD-ext, PIXIE and Stage IV,…
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