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  • A physics-informed operator...
    Patel, Ravi G.; Trask, Nathaniel A.; Wood, Mitchell A.; Cyr, Eric C.

    Computer methods in applied mechanics and engineering, 01/2021, Letnik: 373, Številka: C
    Journal Article

    The application of deep learning toward discovery of data-driven models requires careful application of inductive biases to obtain a description of physics which is both accurate and robust. We present here a framework for discovering continuum models from high fidelity molecular simulation data. Our approach applies a neural network parameterization of governing physics in modal space, allowing a characterization of differential operators while providing structure which may be used to impose biases related to symmetry, isotropy, and conservation form. We demonstrate the effectiveness of our framework for a variety of physics, including local and nonlocal diffusion processes and single and multiphase flows. For the flow physics we demonstrate this approach leads to a learned operator that generalizes to system characteristics not included in the training sets, such as variable particle sizes, densities, and concentration. •A regression method for discovering operators from molecular simulations is developed.•The enforcement of physical constraints using inductive biases is explored.•The method is demonstrated using local and nonlocal diffusion processes.•The method’s generalizability is shown using a parameterized flow physics example.