信息提炼的物理学为具有极端不连续的高阶微分逆问题提供了深度学习。

Mingsheng Peng, Hesheng Tang
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引用次数: 0

摘要

由于使用全局光滑激活函数,特别是当未知参数表现出空间分布特征时,深度学习及其增强变体在解决以极端不连续和高阶参数化微分方程为特征的逆问题时遇到了挑战。诸如不连续载荷、边界截断和材料性质的突变等现象引入了导数的奇异性,从而导致梯度流中的病态信息。为了解决这些限制,我们提出了一个信息提炼的物理信息深度学习框架,该框架结合了降阶建模、多层次域分解和病态抑制机制。该框架捕获了由不连续引起的高度局部区域内变量的快速变化。通过信息传播机制和信息蒸馏,抑制了系统梯度流中的病态信息。即使在特定子网失败的情况下,该框架也保留了大多数子网的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Information-distilled physics informed deep learning for high order differential inverse problems with extreme discontinuities.

Standard physics informed deep learning and their enhanced variants encounter challenges in addressing inverse problems characterized by extreme discontinuities and high-order parameterized differential equations due to the use of globally smooth activation functions, especially when the unknown parameters exhibit spatially distributed characteristics. Phenomena such as discontinuous loads, boundary truncations, and abrupt changes in material properties introduce singularities in the derivatives, which in turn lead to ill-conditioned information in the gradient flow. To address these limitations, here we propose an information-distilled physics-informed deep-learning framework that combines reduced-order modeling, multi-level domain decomposition, and an ill-conditioning-suppression mechanism. The framework captures rapid variations in variables within highly localized regions induced by discontinuities. Through an information propagation mechanism and information distillation, the ill-conditioned information in the gradient flow of the system is suppressed. Even in scenarios where specific subnetworks fail, the framework preserves the accuracy of the majority of subnetworks.

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