Predicting Stress in Two-phase Random Materials and Super-Resolution Method for Stress Images by Embedding Physical Information
Journal:
arXiv
Published Date:
Apr 26, 2025
Abstract
Stress analysis is an important part of material design. For materials with
complex microstructures, such as two-phase random materials (TRMs), material
failure is often accompanied by stress concentration. Phase interfaces in
two-phase materials are critical for stress concentration. Therefore, the
prediction error of stress at phase boundaries is crucial. In practical
engineering, the pixels of the obtained material microstructure images are
limited, which limits the resolution of stress images generated by deep
learning methods, making it difficult to observe stress concentration regions.
Existing Image Super-Resolution (ISR) technologies are all based on data-driven
supervised learning. However, stress images have natural physical constraints,
which provide new ideas for new ISR technologies. In this study, we constructed
a stress prediction framework for TRMs. First, the framework uses a proposed
Multiple Compositions U-net (MC U-net) to predict stress in low-resolution
material microstructures. By considering the phase interface information of the
microstructure, the MC U-net effectively reduces the problem of excessive
prediction errors at phase boundaries. Secondly, a Mixed Physics-Informed
Neural Network (MPINN) based method for stress ISR (SRPINN) was proposed. By
introducing the constraints of physical information, the new method does not
require paired stress images for training and can increase the resolution of
stress images to any multiple. This enables a multiscale analysis of the stress
concentration regions at phase boundaries. Finally, we performed stress
analysis on TRMs with different phase volume fractions and loading states
through transfer learning. The results show the proposed stress prediction
framework has satisfactory accuracy and generalization ability.