4.7 Article

A STUDY OF CARBON FEATURES IN TYPE Ia SUPERNOVA SPECTRA

期刊

ASTROPHYSICAL JOURNAL
卷 732, 期 1, 页码 -

出版社

IOP PUBLISHING LTD
DOI: 10.1088/0004-637X/732/1/30

关键词

supernovae: general; supernovae: individual (SN 2010Y, 2010ai, PTF10icb)

资金

  1. NSF [AST-0707669]
  2. Texas Advanced Research Program [ASTRO-ARP-0094]
  3. Hungarian OTKA [K76816]

向作者/读者索取更多资源

One of the major differences between various explosion scenarios of Type Ia supernovae (SNe Ia) is the remaining amount of unburned (C+O) material and its velocity distribution within the expanding ejecta. While oxygen absorption features are not uncommon in the spectra of SNe Ia before maximum light, the presence of strong carbon absorption has been reported only in a minority of objects, typically during the pre-maximum phase. The reported low frequency of carbon detections may be due to low signal-to-noise data, low abundance of unburned material, line blending between C II lambda 6580 and Si II lambda 6355, ejecta temperature differences, asymmetrical distribution effects, or a combination of these. However, a survey of published pre-maximum spectra reveals that more SNe Ia than previously thought may exhibit C II lambda 6580 absorption features and relics of line blending near similar to 6300 angstrom. Here we present new SN Ia observations where spectroscopic signatures of C II lambda 6580 are detected and investigate the presence of C II lambda 6580 in the optical spectra of 19 SNe Ia using the parameterized spectrum synthesis code, SYNOW. Most of the objects in our sample that exhibit C II lambda 6580 absorption features are of the low-velocity gradient subtype. Our study indicates that the morphology of carbon-rich regions is consistent with either a spherical distribution or a hemispheric asymmetry, supporting the recent idea that SN Ia diversity may be a result of off-center ignition coupled with observer line-of-sight effects.

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