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Adaptive Fusion Graph Network for 3D Strain Field Prediction in Solid Rocket Motor Grains

Published: December 29, 2025 | arXiv ID: 2512.23443v1

By: Jiada Huang , Hao Ma , Zhibin Shen and more

Potential Business Impact:

Predicts rocket fuel cracks faster and better.

Business Areas:
Advanced Materials Manufacturing, Science and Engineering

Local high strain in solid rocket motor grains is a primary cause of structural failure. However, traditional numerical simulations are computationally expensive, and existing surrogate models cannot explicitly establish geometric models and accurately capture high-strain regions. Therefore, this paper proposes an adaptive graph network, GrainGNet, which employs an adaptive pooling dynamic node selection mechanism to effectively preserve the key mechanical features of structurally critical regions, while concurrently utilising feature fusion to transmit deep features and enhance the model's representational capacity. In the joint prediction task involving four sequential conditions--curing and cooling, storage, overloading, and ignition--GrainGNet reduces the mean squared error by 62.8% compared to the baseline graph U-Net model, with only a 5.2% increase in parameter count and an approximately sevenfold improvement in training efficiency. Furthermore, in the high-strain regions of debonding seams, the prediction error is further reduced by 33% compared to the second-best method, offering a computationally efficient and high-fidelity approach to evaluate motor structural safety.

Page Count
27 pages

Category
Physics:
Applied Physics