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Physics-guided machine learning for surrogate modeling in fluid mechanics

ORAL

Abstract

Recently, computational modeling has shifted towards the use of statistical inference, deep learning, and other data-driven modeling frameworks. Although this shift in modeling holds promise in many applications like design optimization and real-time control by lowering the computational burden, training deep learning models needs a huge amount of data. This big data is not always available for scientific problems and leads to poorly generalizable data-driven models. This gap can be furnished by leveraging information from physics-based simplified approximations. In particular, we combine the information from simplified analytical models with the noisy data obtained either from experiments or computational fluid dynamics simulations (high-fidelity models) through a neural network. We illustrate the proposed physics-guided machine learning framework for different test cases like boundary layer flow reconstruction, airfoil force prediction, and projection-based reduced order modeling. This multi-fidelity information fusion framework produces physically consistent models that attempt to achieve better generalizability than data-driven models obtained purely based on data. This work builds a bridge between extensive simplified physics-based theories and data-driven modeling paradigm and paves the way for using hybrid physics and machine learning modeling approaches for next-generation digital twin technologies.

Publication: 1. Pawar, Suraj, et al. "Physics guided machine learning using simplified theories." Physics of Fluids 33.1 (2021): 011701.<br>2. Pawar, Suraj, et al. "Model fusion with physics-guided machine learning: Projection-based reduced-order modeling." Physics of Fluids 33.6 (2021): 067123.

Presenters

  • Suraj A Pawar

    Oklahoma State University-Stillwater

Authors

  • Suraj A Pawar

    Oklahoma State University-Stillwater

  • Omer San

    Oklahoma State University-Stillwater, Oklahoma State University

  • Adil Rasheed

    Norwegian University of Science and Technology