Cherenkov telescope array extragalactic survey discovery potential and the impact of axion-like particles and secondary gamma rays
(2017)
A transient search using combined human and machine classifications
Monthly Notices of the Royal Astronomical Society Oxford University Press 472:2 (2017) 1315-1323
Abstract:
Large modern surveys require efficient review of data in order to find transient sources such as supernovae, and to distinguish such sources from artefacts and noise. Much effort has been put into the development of automatic algorithms, but surveys still rely on human review of targets. This paper presents an integrated system for the identification of supernovae in data from Pan-STARRS1, combining classifications from volunteers participating in a citizen science project with those from a convolutional neural network. The unique aspect of this work is the deployment, in combination, of both human and machine classifications for near real-time discovery in an astronomical project. We show that the combination of the two methods outperforms either one used individually. This result has important implications for the future development of transient searches, especially in the era of LSST and other large-throughput surveys.Resolved, expanding jets in the Galactic black hole candidate XTE J1908+094
Monthly Notices of the Royal Astronomical Society Oxford University Press (OUP) 468:3 (2017) 2788-2802
Cherenkov telescope array extragalactic survey discovery potential and the impact of axion-like particles and secondary gamma rays
ASTROPARTICLE PHYSICS 93 (2017) 8-16
Black Hole Mergers in Galactic Nuclei Induced by the Eccentric Kozai-Lidov Effect
(2017)