Feature Enforcing PINN (FE-PINN): A Framework to Learn the Underlying-Physics Features Before Target Task

08/17/2023
by   Mahyar Jahaninasab, et al.
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In this work, a new data-free framework called Feature Enforcing Physics Informed Neural Network (FE-PINN) is introduced. This framework is capable of learning the underlying pattern of any problem with low computational cost before the main training loop. The loss function of vanilla PINN due to the existence of two terms of partial differential residuals and boundary condition mean squared error is imbalanced. FE-PINN solves this challenge with just one minute of training instead of time-consuming hyperparameter tuning for loss function that can take hours. The FE-PINN accomplishes this process by performing a sequence of sub-tasks. The first sub-task learns useful features about the underlying physics. Then, the model trains on the target task to refine the calculations. FE-PINN is applied to three benchmarks, flow over a cylinder, 2D heat conduction, and an inverse problem of calculating inlet velocity. FE-PINN can solve each case with, 15x, 2x, and 5x speed up accordingly. Another advantage of FE-PINN is that reaching lower order of value for loss function is systematically possible. In this study, it was possible to reach a loss value near 1e-5 which is challenging for vanilla PINN. FE-PINN also has a smooth convergence process which allows for utilizing higher learning rates in comparison to vanilla PINN. This framework can be used as a fast, accurate tool for solving a wide range of Partial Differential Equations (PDEs) across various fields.

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