TGPT-PINN addresses nonlinear model reduction challenges by incorporating a shock-capturing loss function and a parameter-dependent transform layer. The algorithm efficiently approximates functions with discontinuities and achieves high accuracy with minimal snapshots. It outperforms traditional methods like EIM in capturing complex functions accurately. The TGPT-PINN architecture consists of pre-trained networks integrated with a transform layer, enabling efficient model reduction for parametric PDEs.
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