SurroFlow: A Flow-Based Surrogate Model for Parameter Space Exploration and Uncertainty Quantification
Abstract
Existing deep learning-based surrogate models facilitate efficient data generation, but fall short in uncertainty quantification, efficient parameter space exploration, and reverse prediction. In our work, we introduce SurroFlow, a novel normalizing flow-based surrogate model, to learn the invertible transformation between simulation parameters and simulation outputs. The model not only allows accurate predictions of simulation outcomes for a given simulation parameter but also supports uncertainty quantification in the data generation process. Additionally, it enables efficient simulation parameter recommendation and exploration. We integrate SurroFlow and a genetic algorithm as the backend of a visual interface to support effective user-guided ensemble simulation exploration and visualization. Our framework significantly reduces the computational costs while enhancing the reliability and exploration capabilities of scientific surrogate models.
Keywords
Cite
@article{arxiv.2407.12884,
title = {SurroFlow: A Flow-Based Surrogate Model for Parameter Space Exploration and Uncertainty Quantification},
author = {Jingyi Shen and Yuhan Duan and Han-Wei Shen},
journal= {arXiv preprint arXiv:2407.12884},
year = {2024}
}
Comments
To be published in Proc. IEEE VIS 2024