The First Systematic Study of Type Ibc Supernova Multi-band Light Curves
Maria R. Drout (1), Alicia M. Soderberg (1), A. Gal-Yam (2), S. B., Cenko (3), D. B. Fox (4), D. C. Leonard (5), D. J. Sand (6,7), D.-S. Moon, (8), I. Arcavi (2), Y. Green (2) ((1) Harvard U., (2) Weizmann, (3) UC, Berkeley, (4) PSU, (5) SDSU, (6) LCOGT, (7) UCSB

TL;DR
This study provides the first uniform, systematic analysis of multi-band light curves for 25 Type Ibc supernovae, revealing their luminosity, extinction, and explosion properties, and comparing normal and broad-lined types.
Contribution
It introduces a new photometric color evolution technique for host galaxy extinction correction and offers a comprehensive statistical analysis of SNe Ibc light curves and their physical parameters.
Findings
SNe Ibc have significant host galaxy extinction, E(B-V)≈0.4 mag.
Normal SNe Ib and Ic are statistically indistinguishable in luminosity and decline rate.
Broad-lined SNe Ic are more luminous and energetic than normal SNe Ibc.
Abstract
We present detailed optical photometry for 25 Type Ibc supernovae within d\approx150 Mpc obtained with the robotic Palomar 60-inch telescope in 2004-2007. This study represents the first uniform, systematic, and statistical sample of multi-band SNe Ibc light curves available to date. We correct the light curves for host galaxy extinction using a new technique based on the photometric color evolution, namely, we show that the (V-R) color of extinction-corrected SNe Ibc at t\approx10 days after V-band maximum is tightly distributed, (V-R)=0.26+-0.06 mag. Using this technique, we find that SNe Ibc typically suffer from significant host galaxy extinction, E(B-V)\approx0.4 mag. A comparison of the extinction-corrected light curves for SNe Ib and Ic reveals that they are statistically indistinguishable, both in luminosity and decline rate. We report peak absolute magnitudes of M_R=-17.9+-0.9…
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