Poster Title:  Bifidelity Data-assisted Neural Networks In Nonintrusive Reduced-order Modeling
Poster Abstract: 

We present a new nonintrusive reduced basis method when a cheap low-fidelity model and expensive high-fidelity model are available. The method relies on proper orthogonal decomposition (POD) to generate the high-fidelity reduced basis and a shallow multilayer perceptron to learn the high-fidelity reduced coefficients. In contrast to other methods, one distinct feature of the proposed method is to incorporate the features extracted from the low-fidelity data as the input feature, this approach not only improves the predictive capability of the neural network but also enables the decoupling of the high-fidelity simulation from the online stage. Due to its nonintrusive nature, it is applicable to general parameterized problems.

Poster ID:  B-5
Poster File:  PDF document ICERM.pdf
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