Gravitational waves from Sco X-1: A comparison of search methods and prospects for detection with advanced detectors
C. Messenger, H. J. Bulten, S. G. Crowder, V. Dergachev, D. K., Galloway, E. Goetz, R. J. G. Jonker, P. D. Lasky, G. D. Meadors, A. Melatos,, S. Premachandra, K. Riles, L. Sammut, E. H. Thrane, J. T. Whelan, and Y., Zhang

TL;DR
This paper compares various search algorithms for detecting continuous gravitational waves from Sco X-1 using simulated data, highlighting their relative sensitivities and prospects for future detection with advanced detectors like LIGO and Virgo.
Contribution
It presents a comprehensive mock-data challenge to evaluate and compare the performance of different search methods for Sco X-1 gravitational waves.
Findings
Search sensitivity can detect signals close to the torque-balance limit.
A factor of 2 in strain separates the quietest detectable signal from the torque-balance limit.
Future improvements could enable probing below the torque-balance strain limit.
Abstract
The low-mass X-ray binary Scorpius X-1 (Sco X-1) is potentially the most luminous source of continuous gravitational-wave radiation for interferometers such as LIGO and Virgo. For low-mass X-ray binaries this radiation would be sustained by active accretion of matter from its binary companion. With the Advanced Detector Era fast approaching, work is underway to develop an array of robust tools for maximizing the science and detection potential of Sco X-1. We describe the plans and progress of a project designed to compare the numerous independent search algorithms currently available. We employ a mock-data challenge in which the search pipelines are tested for their relative proficiencies in parameter estimation, computational efficiency, robust- ness, and most importantly, search sensitivity. The mock-data challenge data contains an ensemble of 50 Scorpius X-1 (Sco X-1) type signals,…
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