This study proposes graph neural network (GNN) architectures to accelerate Computer Aided Engineering (CAE) simulations by building fast surrogate models. Three graph structures were evaluated: (i) purely random node selection, (ii) a coarse lattice in the xy-plane combined with random nodes, and (iii) the same structure as (ii) plus long-range edges in the z-direction. Finite element method simulations generated stress distributions (axial SZ and circumferential ST) from various temperature fields in a cylindrical model consisting of ~10,000 triangular mesh nodes. Five-fold cross-validation showed that (ii) improved R² from 0.80/0.76 to 0.88/0.80 compared to (i), and (iii) further increased ST prediction to 0.82. The proposed architectures also allowed deeper networks with more hidden units without overfitting. These results demonstrate that coarse lattices and long-range edges effectively enhance both accuracy and generalization for ML-based CAE surrogate modeling
SAKAMOTO et al. (Wed,) studied this question.