cDVGAN: One Flexible Model for Multi-class Gravitational Wave Signal and Glitch Generation
Tom Dooney, Lyana Curier, Daniel Tan, Melissa Lopez, Chris Van Den Broeck, Stefano Bromuri

TL;DR
cDVGAN is a novel conditional GAN model that generates realistic gravitational wave signals and glitches, improving data augmentation for GW detection and classification tasks.
Contribution
The paper introduces cDVGAN, a new conditional GAN with an auxiliary derivative discriminator, enhancing the realism and diversity of simulated GW and glitch data.
Findings
cDVGAN outperforms baseline GANs in replicating GW and glitch features.
Synthetic data from cDVGAN improves CNN detection performance by up to 4.2% AUC.
Hybrid samples from cDVGAN enhance real GW signal classification.
Abstract
Simulating realistic time-domain observations of gravitational waves (GWs) and GW detector glitches can help in advancing GW data analysis. Simulated data can be used in downstream tasks by augmenting datasets for signal searches, balancing data sets for machine learning, and validating detection schemes. In this work, we present Conditional Derivative GAN (cDVGAN), a novel conditional model in the Generative Adversarial Network framework for simulating multiple classes of time-domain observations that represent gravitational waves (GWs) and detector glitches. cDVGAN can also generate generalized hybrid samples that span the variation between classes through interpolation in the conditioned class vector. cDVGAN introduces an additional player into the typical 2-player adversarial game of GANs, where an auxiliary discriminator analyzes the first-order derivative time-series. Our results…
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Taxonomy
TopicsGeophysics and Gravity Measurements
MethodsBLIP: Bootstrapping Language-Image Pre-training
