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. 2021 Nov 5;11:21730. doi: 10.1038/s41598-021-01023-w

Figure 2.

Figure 2

A magnified look at the steps to produce an ML inverse model illustrating how the transfer learning paradigm uses both synthetic data from reduced-order models as well as high-fidelity models. Note that in this workflow, we used Patzek model as the reduced-order model, but the same workflow can be used with other reduced-order model choices that may be physics-based or even data-driven.