2023
DOI: 10.3390/electronics12204360
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Random Convolutional Kernels for Space-Detector Based Gravitational Wave Signals

Ruben Poghosyan,
Yuan Luo

Abstract: Neural network models have entered the realm of gravitational wave detection, proving their effectiveness in identifying synthetic gravitational waves. However, these models rely on learned parameters, which necessitates time-consuming computations and expensive hardware resources. To address this challenge, we propose a gravitational wave detection model tailored specifically for binary black hole mergers, inspired by the Random Convolutional Kernel Transform (ROCKET) family of models. We conduct a rigorous a… Show more

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