Nonlinear Peculiar-Velocity Analysis and PCA
Abstract
We allow for nonlinear effects in the likelihood analysis of peculiar velocities, and obtain ∼35%-lower values for the cosmological density parameter and for the amplitude of mass-density fluctuations. The power spectrum in the linear regime is assumed to be of the flat ΛCDM model (h = 0.65, n = 1) with only Ω_m free. Since the likelihood is driven by the nonlinear regime, we "break" the power spectrum at k_b∼ 0.2 (h^{-1}Mpc)^{-1} and fit a two-parameter power-law at k > k b . This allows for an unbiased fit in the linear regime. Tests using improved mock catalogs demonstrate a reduced bias and a better fit. We find for the Mark III and SFI data Ω_m = 0.35± 0.09 with σ_8Ω_m^{0.6} = 0.55± 0.10 (90% errors). When allowing deviations from ΛCDM, we find an indication for a wiggle in the power spectrum in the form of an excess near k ∼ 0.05 and a deficiency at k ∼ 0.1 (h^{-1}Mpc)^{-1} - a "cold flow" which may be related to a feature indicated from redshift surveys and the second peak in the CMB anisotropy. A χ^2 test applied to principal modes demonstrates that the nonlinear procedure improves the goodness of fit. The Principal Component Analysis (PCA) helps identifying spatial features of the data and fine-tuning the theoretical and error models. We address the potential for optimal data compression using PCA.
- Publication:
-
Mining the Sky
- Pub Date:
- 2001
- DOI:
- 10.1007/10849171_25
- arXiv:
- arXiv:astro-ph/0101499
- Bibcode:
- 2001misk.conf..236D
- Keywords:
-
- Astrophysics
- E-Print:
- 15 pages, LaTex, in Mining the Sky, July 31 - August 4, 2000, Garching, Germany