Rapidly-Declining Hostless Type Ia Supernova KSP-OT-201509b from the KMTNet Supernova Program: Transitional Nature and Constraint on $^{56}$Ni Distribution and Progenitor Type
Dae-Sik Moon, Yuan Qi Ni, Maria R. Drout, Santiago, Gonz\'alez-Gait\'an, Niloufar Afsariardchi, Hong Soo Park, Youngdae Lee, Sang, Chul Kim, John Antoniadis, Dong-Jin Kim, and Yongseok Lee

TL;DR
This paper presents the discovery and analysis of a rapidly-declining, hostless Type Ia supernova with detailed light curve modeling, revealing its transitional nature, $^{56}$Ni distribution, and likely double-degenerate progenitor.
Contribution
It provides the first detailed multi-color light curve analysis of a hostless, rapidly-declining Type Ia supernova, constraining its explosion parameters and progenitor scenario.
Findings
Identified the supernova as a transitional Type Ia with specific decline and color parameters.
Estimated $^{56}$Ni mass of 0.32 solar masses and ejecta mass of 0.84 solar masses.
Supported a double-degenerate progenitor scenario based on host galaxy absence and light curve analysis.
Abstract
We report the early discovery and multi-color () high-cadence light curve analyses of a rapidly-declining sub-Chandrasekhar Type Ia supernova KSP-OT-201509b (= AT2015cx) from the KMTNet Supernova Program. The Phillips parameter and color stretch parameter of KSP-OT-201509b (= AT2015cx) are 1.62 mag and 0.54, respectively, at an inferred redshift of 0.072. These, together with other measured parameters (such as the strength of the secondary -band peak, colors and luminosity), identify the source to be a rapidly-declining Type Ia of transitional nature that is closer to Branch Normal than 91bg-like. Its early light curve evolution and bolometric luminosity are consistent with those of homologously expanding ejecta powered by radioactive decay and a Type Ia SN explosion with 0.32 0.01 of synthesized Ni mass,…
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