SIMBAD references

2021MNRAS.503.2665K - Mon. Not. R. Astron. Soc., 503, 2665-2675 (2021/May-2)

GPU-accelerated periodic source identification in large-scale surveys: measuring P and P.

KATZ M.L., COOPER O.R., COUGHLIN M.W., BURDGE K.B., BREIVIK K. and LARSON S.L.

Abstract (from CDS):

Many inspiraling and merging stellar remnants emit both gravitational and electromagnetic radiation as they orbit or collide. These gravitational wave events together with their associated electromagnetic counterparts provide insight about the nature of the merger, allowing us to further constrain properties of the binary. With the future launch of the Laser Interferometer Space Antenna (LISA), follow-up observations and models are needed of ultracompact binary (UCB) systems. Current and upcoming long baseline time domain surveys will observe many of these UCBs. We present a new fast periodic object search tool capable of searching for generic periodic signals based on the conditional entropy algorithm. This new implementation allows for a grid search over both the period (P) and the time derivative of the period ({dot}P). To demonstrate the usage of this tool, we use a small, hand-picked subset of a UCB population generated from the population synthesis code COSMIC, as well as a custom catalogue for varying periods at fixed intrinsic parameters. We simulate light curves as likely to be observed by future time domain surveys by using an existing eclipsing binary light-curve model accounting for the change in orbital period due to gravitational radiation. We find that a search with {dot}P values is necessary for detecting binaries at orbital periods less than ∼10 min. We also show it is useful in finding and characterizing binaries with longer periods, but at a higher computational cost. Our code is called GCE(GPU-accelerated Conditional Entropy). It is available on Github (https://github.com/mikekatz04/gce).

Abstract Copyright: © 2021 The Author(s) Published by Oxford University Press on behalf of Royal Astronomical Society

Journal keyword(s): gravitational waves - software: data analysis - white dwarfs

Simbad objects: 1

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