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Geometric Priors for Scientific Generative Models in Inertial Confinement Fusion

24 November 2021
Ankita Shukla
Rushil Anirudh
E. Kur
Jayaraman J. Thiagarajan
P. Bremer
B. Spears
Tammy Ma
Pavan Turaga
    GAN
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Abstract

In this paper, we develop a Wasserstein autoencoder (WAE) with a hyperspherical prior for multimodal data in the application of inertial confinement fusion. Unlike a typical hyperspherical generative model that requires computationally inefficient sampling from distributions like the von Mis Fisher, we sample from a normal distribution followed by a projection layer before the generator. Finally, to determine the validity of the generated samples, we exploit a known relationship between the modalities in the dataset as a scientific constraint, and study different properties of the proposed model.

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