Bayesian Mesh Optimization for Graph Neural Networks to Enhance Engineering Performance Prediction
Jangseop Park, Namwoo Kang

TL;DR
This paper introduces a Bayesian GNN framework for 3D surrogate modeling in engineering, directly learning from CAD meshes to improve prediction accuracy and handle complex geometries effectively.
Contribution
It proposes a novel Bayesian mesh optimization approach within a GNN framework for accurate 3D performance prediction from CAD models.
Findings
Optimal mesh size improves surrogate accuracy
Mesh quality significantly affects prediction performance
Bayesian optimization effectively determines mesh parameters
Abstract
In engineering design, surrogate models are widely employed to replace computationally expensive simulations by leveraging design variables and geometric parameters from computer-aided design (CAD) models. However, these models often lose critical information when simplified to lower dimensions and face challenges in parameter definition, especially with the complex 3D shapes commonly found in industrial datasets. To address these limitations, we propose a Bayesian graph neural network (GNN) framework for a 3D deep-learning-based surrogate model that predicts engineering performance by directly learning geometric features from CAD using mesh representation. Our framework determines the optimal size of mesh elements through Bayesian optimization, resulting in a high-accuracy surrogate model. Additionally, it effectively handles the irregular and complex structures of 3D CADs, which…
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Taxonomy
TopicsNeural Networks and Applications · Manufacturing Process and Optimization · Fault Detection and Control Systems
MethodsGraph Neural Network
