Simultaneously search for multi-target Galactic binary gravitational waves
Abstract
The search for Galactic binary gravitational waves is a critical challenge for future space-based gravitational wave detectors, such as LISA. We propose an innovative approach to simultaneously explore gravitational waves originating from Galactic binaries by developing a new Local Maxima Particle Swarm Optimization (LMPSO) algorithm. This new approach effectively addresses the inaccuracies often associated with signal subtraction contamination, a challenge for traditional iterative subtraction methods, particularly when dealing with low signal-to-noise ratio (SNR) signals (e.g., SNR < 15). We also account for the effects of overlapping signals and degeneracy noise. To demonstrate the effectiveness of our approach, we use residuals from the LISA mock data challenge (LDC1-4), where 10,982 injected sources with SNR 15 have been removed. For the remaining sources with SNR < 15, our method successfully identifies 6,508 signals, yielding a false alarm rate of FAS0.8 = 36.8\%. By focusing on a subset of sources-specifically, those with f > 3 mHz and those with f 3 mHz but SNR 13-we identify 3,406 signals, with a reduced false alarm rate of FAS0.8 = 22.5\%. We further demonstrate that, within the same detection SNR range, our method achieves a comparable or lower FAS than other existing methods.
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