First-year Sloan Digital Sky Survey-II (SDSS-II) supernova results: consistency and constraints with other intermediate-redshift datasets
H. Lampeitl (ICG Portsmouth), R. C. Nichol, H.-J. Seo, T., Giannantonio, C. Shapiro, B. Bassett, W. J. Percival, T. M. Davis, B. Dilday,, J. Frieman, P. Garnavich, M. Sako, M. Smith, J. Sollerman, A. C. Becker, D., Cinabro, A. V. Filippenko, R. J. Foley, C. J. Hogan

TL;DR
This paper combines SDSS-II supernova data with other intermediate-redshift measurements to test cosmological models, confirming universe acceleration and constraining dark energy properties with high confidence.
Contribution
It provides a comprehensive analysis of multiple datasets at intermediate redshifts, offering new constraints on dark energy parameters and confirming universe acceleration.
Findings
Evidence for an accelerating universe at >97% confidence from SDSS-II data
Consistent results with Lambda-CDM cosmology from supernova and BAO measurements
Estimated dark energy equation of state w = -0.81 with uncertainties
Abstract
We present an analysis of the luminosity distances of Type Ia Supernovae from the Sloan Digital Sky Survey-II (SDSS-II) Supernova Survey in conjunction with other intermediate redshift (z<0.4) cosmological measurements including redshift-space distortions from the Two-degree Field Galaxy Redshift Survey (2dFGRS), the Integrated Sachs-Wolfe (ISW) effect seen by the SDSS, and the latest Baryon Acoustic Oscillation (BAO) distance scale from both the SDSS and 2dFGRS. We have analysed the SDSS-II SN data alone using a variety of "model-independent" methods and find evidence for an accelerating universe at >97% level from this single dataset. We find good agreement between the supernova and BAO distance measurements, both consistent with a Lambda-dominated CDM cosmology, as demonstrated through an analysis of the distance duality relationship between the luminosity (d_L) and angular diameter…
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