Resampling to accelerate cross-correlation searches for continuous gravitational waves from binary systems
Grant David Meadors, Badri Krishnan, Maria Alessandra Papa, John T., Whelan, Yuanhao Zhang

TL;DR
This paper introduces a resampling method that accelerates cross-correlation searches for continuous gravitational waves from binary systems, enabling longer integrations and improved sensitivity in less time.
Contribution
The paper presents a resampling technique that is approximately 20 times faster than previous methods, allowing more efficient and sensitive searches for gravitational waves from binary systems.
Findings
Resampling speeds up cross-correlation searches by 20x in key frequency bands.
Speed-up enables longer integration times, increasing sensitivity by up to 51%.
Method scales well with longer data sets, promising significant improvements in future searches.
Abstract
Continuous-wave (CW) gravitational waves (GWs) call for computationally-intensive methods. Low signal-to-noise ratio signals need templated searches with long coherent integration times and thus fine parameter-space resolution. Longer integration increases sensitivity. Low-mass x-ray binaries (LMXBs) such as Scorpius X-1 (Sco X-1) may emit accretion-driven CWs at strains reachable by current ground-based observatories. Binary orbital parameters induce phase modulation. This paper describes how resampling corrects binary and detector motion, yielding source-frame time series used for cross-correlation. Compared to the previous, detector-frame, templated cross-correlation method, used for Sco X-1 on data from the first Advanced LIGO observing run (O1), resampling is about 20x faster in the costliest, most-sensitive frequency bands. Speed-up factors depend on integration time and search…
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