Machine Learning: Science and Technology (Jan 2024)
Machine learning visualization tool for exploring parameterized hydrodynamics
Abstract
We are interested in the computational study of shock hydrodynamics, i.e. problems involving compressible solids, liquids, and gases that undergo large deformation. These problems are dynamic and nonlinear and can exhibit complex instabilities. Due to advances in high performance computing it is possible to parameterize a hydrodynamic problem and perform a computational study yielding $\mathcal{O}\left(\textrm{TB}\right)$ of simulation state data. We present an interactive machine learning tool that can be used to compress, browse, and interpolate these large simulation datasets. This tool allows computational scientists and researchers to quickly visualize ‘what-if’ situations, perform sensitivity analyses, and optimize complex hydrodynamic experiments.
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