A practical PINN framework for multi-scale problems with multi-magnitude loss terms
Yong Wang, Yanzhong Yao, Jiawei Guo, Zhiming Gao

TL;DR
This paper introduces an improved PINN framework for multi-scale problems that employs a novel loss function and specialized neural network architectures, significantly enhancing accuracy and efficiency over traditional PINNs.
Contribution
The paper proposes a new PINN framework with a regularized loss function and specialized architectures, improving multi-scale problem solutions.
Findings
Enhanced computational accuracy for multi-scale problems
Significant efficiency improvements over conventional PINNs
Outperforms recent state-of-the-art methods
Abstract
For multi-scale problems, the conventional physics-informed neural networks (PINNs) face some challenges in obtaining available predictions. In this paper, based on PINNs, we propose a practical deep learning framework for multi-scale problems by reconstructing the loss function and associating it with special neural network architectures. New PINN methods derived from the improved PINN framework differ from the conventional PINN method mainly in two aspects. First, the new methods use a novel loss function by modifying the standard loss function through a (grouping) regularization strategy. The regularization strategy implements a different power operation on each loss term so that all loss terms composing the loss function are of approximately the same order of magnitude, which makes all loss terms be optimized synchronously during the optimization process. Second, for the…
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Taxonomy
TopicsModel Reduction and Neural Networks · Heat Transfer and Optimization · Nanofluid Flow and Heat Transfer
