Weak-formulated physics-informed modeling and optimization for heterogeneous digital materials.

PNAS Nexus

Department of Mechanical Engineering, University of California, Berkeley, Berkeley, CA 94720, USA.

Published: May 2024

AI Article Synopsis

  • Numerical solutions to PDEs are crucial for material structural design, but traditional methods need a lot of computational power, prompting a search for better optimization algorithms.
  • Direct gradient-based optimization, while useful, struggles with design initialization and complicated sensitivity calculations, making machine learning an appealing solution for managing large parameter spaces.
  • The research introduces a new method using weak formulations in physics-informed neural networks to overcome continuity challenges in structural mechanics, particularly for digital materials, allowing for accurate modeling and faster optimization without the necessity for pretrained models.

Article Abstract

Numerical solutions to partial differential equations (PDEs) are instrumental for material structural design where extensive data screening is needed. However, traditional numerical methods demand significant computational resources, highlighting the need for innovative optimization algorithms to streamline design exploration. Direct gradient-based optimization algorithms, while effective, rely on design initialization and require complex, problem-specific sensitivity derivations. The advent of machine learning offers a promising alternative to handling large parameter spaces. To further mitigate data dependency, researchers have developed physics-informed neural networks (PINNs) to learn directly from PDEs. However, the intrinsic continuity requirement of PINNs restricts their application in structural mechanics problems, especially for composite materials. Our work addresses this discontinuity issue by substituting the PDE residual with a weak formulation in the physics-informed training process. The proposed approach is exemplified in modeling digital materials, which are mathematical representations of complex composites that possess extreme structural discontinuity. This article also introduces an interactive process that integrates physics-informed loss with design objectives, eliminating the need for pretrained surrogate models or analytical sensitivity derivations. The results demonstrate that our approach can preserve the physical accuracy in data-free material surrogate modeling but also accelerates the direct optimization process without model pretraining.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11137755PMC
http://dx.doi.org/10.1093/pnasnexus/pgae186DOI Listing

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