BeyondPlanck VI. Noise characterization and modelling
H. T. Ihle, M. Bersanelli, C. Franceschet, E. Gjerl{\o}w, K. J., Andersen, R. Aurlien, R. Banerji, S. Bertocco, M. Brilenkov, M. Carbone, L., P. L. Colombo, H. K. Eriksen, J. R. Eskilt, M. K. Foss, U. Fuskeland, S., Galeotta, M. Galloway, S. Gerakakis, B. Hensley, D. Herman

TL;DR
This paper introduces a Bayesian noise characterization method for Planck LFI data, revealing temporal variations and additional noise components beyond the standard $1/f$ model, improving understanding of instrumental noise.
Contribution
It develops a Bayesian framework for noise parameter estimation, incorporating gap-filling and temporal variation analysis, with application to Planck LFI data.
Findings
Significant temporal variations in noise PSD parameters.
Additional correlated noise components in 30 and 44 GHz channels.
1/f model fits well for 70 GHz, but not for lower frequencies.
Abstract
We present a Bayesian method for estimating instrumental noise parameters and propagating noise uncertainties within the global BeyondPlanck Gibbs sampling framework, and apply this to Planck Low Frequency Instrument (LFI) time-ordered data. Following previous literature, we initially adopt a model for the noise power spectral density (PSD), but find the need for an additional lognormal component in the noise model for the 30 and 44\,GHz bands. We implement an optimal Wiener-filter (or constrained realization) gap-filling procedure to account for masked data. We then use this procedure to both estimate the gapless correlated noise in the time-domain, , and to sample the noise PSD parameters, . In contrast to previous \textit{Planck} analyses, we assume piecewise stationary noise only within each pointing…
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Taxonomy
TopicsScientific Research and Discoveries · Dark Matter and Cosmic Phenomena · Cosmology and Gravitation Theories
