Mock data study for next-generation ground-based detectors: The performance loss of matched filtering due to correlated confusion noise
Shichao Wu, Alexander H. Nitz

TL;DR
Next-generation ground-based gravitational-wave detectors will face challenges from overlapping signals creating confusion noise, which can reduce detection sensitivity; this study models these effects and explores mitigation strategies.
Contribution
This paper models the impact of confusion noise on 3G GW detectors and evaluates mitigation methods, providing new insights into detection performance degradation and solutions.
Findings
Performance loss due to confusion noise can reduce redshift reach by up to 38%.
Confusion noise's contribution to SNR is generally negligible compared to instrumental noise.
Single-detector subtraction methods can nearly restore optimal detection sensitivity.
Abstract
The next-generation (3G/XG) ground-based gravitational-wave (GW) detectors such as Einstein Telescope (ET) and Cosmic Explorer (CE) will begin observing in the next decade. Due to the extremely high sensitivity of these detectors, the majority of stellar-mass compact-binary mergers in the entire Universe will be observed. It is also expected that 3G detectors will have significant sensitivity down to 2-7 Hz; the observed duration of binary neutron star signals could increase to several hours or days. The abundance and duration of signals will cause them to overlap in time, which may form a confusion noise that could affect the detection of individual GW sources when using naive matched filtering; matched filtering is only optimal for stationary Gaussian noise. We create mock data for CE and ET using the latest population models informed by the GWTC-3 catalog and investigate the…
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Taxonomy
TopicsInfrared Target Detection Methodologies · Calibration and Measurement Techniques · Distributed Sensor Networks and Detection Algorithms
