Data-driven constitutive meta-modeling of nonlinear rheology via multifidelity neural networks
Milad Saadat,
William H. Hartt V,
Norman J. Wagner
et al.
Abstract:Predicting the response of complex fluids to different flow conditions has been the focal point of rheology and is generally done via constitutive relations. There are, nonetheless, scenarios in which not much is known from the material mathematically, while data collection from samples is elusive, resource-intensive, or both. In such cases, meta-modeling of observables using a parametric surrogate model called multi-fidelity neural networks (MFNNs) may obviate the constitutive equation development step by lev… Show more
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