Global Stress Generation and Spatiotemporal Super-Resolution Physics-Informed Operator Under Dynamic Loading for Two-Phase Random Materials

23 Pages Posted: 26 Apr 2025

See all articles by Tengfei Xing

Tengfei Xing

Tongji University

Xiaodan Ren

Tongji University

Jie Li

Tongji University

Abstract

Material stress analysis is a critical aspect of material design and performance optimization. Under dynamic loading, the global stress evolution in materials exhibits complex spatiotemporal characteristics, especially in two-phase random materials (TRMs). Such kind of material failure is often associated with stress concentration, and the phase boundaries are key locations where stress concentration occurs. In practical engineering applications, the spatiotemporal resolution of acquired microstructural data and its dynamic stress evolution is often limited. This poses challenges for deep learning methods in generating high-resolution spatiotemporal stress fields, particularly for accurately capturing stress concentration regions. In this study, we propose a framework for global stress generation and spatiotemporal super-resolution in TRMs under dynamic loading. First, we introduce a diffusion model-based approach, named as Spatiotemporal Stress Diffusion (STS-diffusion), for generating global spatiotemporal stress data. This framework incorporates Space-Time U-Net (STU-net), and we systematically investigate the impact of different attention positions on model accuracy. Next, we develop a physics-informed network for spatiotemporal super-resolution, termed as Spatiotemporal Super-Resolution Physics-Informed Operator (ST-SRPINN). The proposed ST-SRPINN is an unsupervised learning method. The influence of data-driven and physics-informed loss function weights on model accuracy is explored in detail. Benefiting from physics-based constraints, ST-SRPINN requires only low-resolution stress field data during training and can upscale the spatiotemporal resolution of stress fields to arbitrary magnifications. Case studies demonstrate that our proposed framework achieves remarkable accuracy and generalization capability in both spatiotemporal stress field generation and super-resolution enhancement.

Keywords: Two-phase random materials, Global stress analysis, Spatiotemporal super-resolution, Stress concentration, Deep learning, Physics-informed

Suggested Citation

Xing, Tengfei and Ren, Xiaodan and Li, Jie, Global Stress Generation and Spatiotemporal Super-Resolution Physics-Informed Operator Under Dynamic Loading for Two-Phase Random Materials. Available at SSRN: https://ssrn.com/abstract=5232203 or http://dx.doi.org/10.2139/ssrn.5232203

Tengfei Xing

Tongji University ( email )

1239 Siping Road
Shanghai, 200092
China

Xiaodan Ren

Tongji University ( email )

1239 Siping Road
Shanghai, 200092
China

Jie Li (Contact Author)

Tongji University ( email )

1239 Siping Road
Shanghai, 200092
China

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