Using Deep Learning to Localize Gravitational Wave Sources
Chayan Chatterjee, Linqing Wen, Kevin Vinsen, Manoj Kovalam, Amitava, Datta

TL;DR
This paper presents a deep learning approach using an artificial neural network to accurately localize gravitational wave sources on the sky, achieving high classification accuracy across various angular resolutions and rapid processing times.
Contribution
The study introduces a novel deep neural network model for gravitational wave localization that outperforms traditional methods in speed and maintains high accuracy across multiple sky segmentation resolutions.
Findings
Achieved over 90% classification accuracy for coarse sky sectors.
Successfully localized real GW events and compared favorably with BAYESTAR and PE.
Localization time per signal is approximately 0.018 seconds.
Abstract
In this paper, we report on the construction of a deep Artificial Neural Network (ANN) to localize simulated gravitational wave signals in the sky with high accuracy. We have modelled the sky as a sphere and have considered cases where the sphere is divided into 18, 50, 128, 1024, 2048 and 4096 sectors. The sky direction of the gravitational wave source is estimated by classifying the signal into one of these sectors based on it's right ascension and declination values for each of these cases. In order to do this, we have injected simulated binary black hole gravitational wave signals of component masses sampled uniformly between 30-80 solar mass into Gaussian noise and used the whitened strain values to obtain the input features for training our ANN. We input features such as the delays in arrival times, phase differences and amplitude ratios at each of the three detectors Hanford,…
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