Rheology and Fluid Dynamics Studies Peer reviewed

A Staged Physics-Informed Neural Network Framework for Viscoelastic Stress Prediction and Pressure Recovery in Polymer Melt Flow

Xuejuan Li, Zhandong Ye, Wei Xu, Chun‐Hui He

Fractals | Jun 22, 2026

Abstract

Abstract

Polymer melt flows are typically accompanied by pronounced viscoelastic effects. Accurate acquisition of the stress and pressure fields during the flow process is of great significance for revealing their transient evolution mechanisms and analyzing related processing behaviors. Although traditional numerical methods can solve the governing equations of viscoelastic flows, they still suffer from high computational cost and implementation complexity in stress computation, pressure recovery, and the characterization of temporal memory effects. In this paper, a low-Reynolds-number two-dimensional Poiseuille-type polymer melt channel flow is considered, and a staged physics-informed neural network framework is developed for viscoelastic stress prediction and pressure field recovery. In the integer-order case, the discrete velocity data are first organized onto a spatio-temporal grid, and then the spatio-temporal coordinates are taken as inputs to predict the three stress components. Based on the predicted stress field, the pressure field is further recovered through the momentum equations, thereby forming a staged solution strategy of “stress prediction-pressure recovery.” After verifying the feasibility of the integer-order model, a time-fractional derivative is introduced, and the historical memory effect in polymer melt flow is characterized by the fractional order α. Meanwhile, the influence of different fractional orders on the stress evolution process is analyzed. The experimental results show that the integer-order model can effectively predict the overall distribution characteristics of the viscoelastic stress components and the pressure field, and the recovered pressure preserves the basic linear decay pattern along the flow direction. In the fractional-order model, while the main spatial structure of the stress field remains stable, the response intensity of the stress components can be regulated by α, which reflects the influence of temporal memory effects on the stress evolution process.

Direct answer

What can I do from this paper page?

Use this page to scan "A Staged Physics-Informed Neural Network Framework for Viscoelastic Stress Prediction and Pressure Recovery in Polymer Melt Flow" quickly: start with the summary and abstract, then check the authors, source, topics, and related papers. From here, open Scollr to follow Rheology and Fluid Dynamics Studies research, save the paper, or map adjacent work.

Authors

Researchers on this paper

Xuejuan Li

first | ORCID 0000-0001-9488-5302

Zhandong Ye

middle

Wei Xu

middle | ORCID 0000-0001-9802-8076

Chun‐Hui He

last | ORCID 0000-0003-0810-5248

Research areas

Follow related topics

Citation

BibTeX

@article{Li2026Staged,
  title = {A Staged Physics-Informed Neural Network Framework for Viscoelastic Stress Prediction and Pressure Recovery in Polymer Melt Flow},
  author = {Xuejuan Li and Zhandong Ye and Wei Xu and Chun‐Hui He},
  journal = {Fractals},
  year = {2026},
  doi = {10.1142/s0218348x26501100},
  url = {https://doi.org/10.1142/s0218348x26501100}
}

FAQ

Using this paper in a discovery workflow

How do I find related work for this paper?

Use the related papers and topic links on this page as starting points. In Scollr, you can also open the paper and build a literature map around its references, citing papers, and related work.

How can I keep up with new Rheology and Fluid Dynamics Studies research papers?

Follow Rheology and Fluid Dynamics Studies research in Scollr. New papers from the topic flow into a personalized feed, and you can save useful studies to revisit later.

Can I cite this paper from this page?

This page includes a static BibTeX block for A Staged Physics-Informed Neural Network Framework for Viscoelastic Stress Prediction and Pressure Recovery in Polymer Melt Flow. Always verify the DOI, source, and publication details against the publisher record before submitting a manuscript.

Follow this research in Scollr

Follow the topics and authors behind this paper, save useful studies, and build a literature map when you are ready to go deeper.

Get the app