A Novel CMB Component Separation Method: Hierarchical Generalized Morphological Component Analysis

Oct 17, 2019
23 pages
Published in:
  • Mon.Not.Roy.Astron.Soc. 494 (2020) 1, 1507-1529
  • Published: May 1, 2020
e-Print:
DOI:

Citations per year

20192020202120222023142
Abstract: (Oxford University Press)
We present a novel technique for cosmic microwave background (CMB) foreground subtraction based on the framework of blind source separation. Inspired by previous work incorporating local variation to generalized morphological component analysis (GMCA), we introduce hierarchical GMCA (HGMCA), a Bayesian hierarchical graphical model for source separation. We test our method on N_side = 256 simulated sky maps that include dust, synchrotron, free–free, and anomalous microwave emission, and show that HGMCA reduces foreground contamination by |25 per cent25{{\ \rm per\ cent}}| over GMCA in both the regions included and excluded by the Planck UT78 mask, decreases the error in the measurement of the CMB temperature power spectrum to the 0.02–0.03 per cent level at ℓ > 200 (and |<0.26 per cent\lt 0.26{{\ \rm per\ cent}}| for all ℓ), and reduces correlation to all the foregrounds. We find equivalent or improved performance when compared to state-of-the-art internal linear combination type algorithms on these simulations, suggesting that HGMCA may be a competitive alternative to foreground separation techniques previously applied to observed CMB data. Additionally, we show that our performance does not suffer when we perturb model parameters or alter the CMB realization, which suggests that our algorithm generalizes well beyond our simplified simulations. Our results open a new avenue for constructing CMB maps through Bayesian hierarchical analysis.
Note:
  • Updated to reflect accepted MNRAS version
  • methods: data analysis
  • cosmic background radiation