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Scientific Machine Learning Workflows for Phase-Change Heat Transfer Applications

ORAL

Abstract

Scientific Machine Learning (SciML) models show promise in various fields, including phase-change heat transfer. However, obtaining diverse and accurately labeled datasets for training remains a significant challenge, particularly in this domain where evaporation and bubble dynamics play a critical role in determining heat transfer efficiency. Specialized experimental setups, including instrumentation, sensors, and high-speed visualization techniques, incur substantial costs and challenges. This greatly limits the availability of high-fidelity datasets that encompass a wide range of operating conditions necessary to train generalizable SciML models. Numerical simulations can offer high-fidelity multiscale data to complement and enhance experimental measurements. However, training SciML models with large spatio-temporal simulation datasets requires scalable workflows for distributed memory systems with efficient cache and memory management. In this talk, we will present an approach to address these challenges using Flash-X, an open-source simulation software, and BoxKit, a Python interface for managing simulation data. Our computational pipeline integrates numerical simulations, experimental data, and SciML models, enabling learning predictive models capable of handling large 4D spatio-temporal datasets for thermal science applications.

Publication: - Hassan, S., Feeney, A., Dhruv, A., Kim, J., Suh, Y., Ryu, J., Won, Y., Chandramowlishwaran, A. (2023), "BubbleML: A multi-<br>physics dataset and benchmarks for machine learning", NeurIPS, 2023 (preprint)<br><br>- Dhruv, A., "BoxKit: A Python library for managing analysis of block-structured simulation datasets", The Journal of Open-Source Software, 2023 (preprint)

Presenters

  • Akash V Dhruv

    Argonne National Laboratory

Authors

  • Akash V Dhruv

    Argonne National Laboratory

  • Shakeel Hasan

    University of California, Irvine

  • Arthur Feeney

    University of California, Irvine

  • Aparna Chandramowlishwaran

    University of California, Irvine

  • Anshu Dubey

    Argonne National Laboratory