A Multi-Fidelity Graph U-Net Model for Accelerated Physics Simulations
Rini Jasmine Gladstone, Hadi Meidani

TL;DR
This paper introduces a Multi-Fidelity Graph U-Net model that leverages multi-fidelity data to significantly improve the accuracy and efficiency of physics simulations using GNNs, reducing data needs and training time.
Contribution
The paper presents a novel Multi-Fidelity U-Net architecture that enhances GNN performance for physics simulations by effectively integrating multi-fidelity data levels.
Findings
Outperforms traditional single-fidelity GNN models in accuracy.
Requires less training data and computational resources.
Faster training with only minor accuracy reduction.
Abstract
Physics-based deep learning frameworks have shown to be effective in accurately modeling the dynamics of complex physical systems with generalization capability across problem inputs. Data-driven networks like GNN, Neural Operators have proved to be very effective in generalizing the model across unseen domain and resolutions. But one of the most critical issues in these data-based models is the computational cost of generating training datasets. Complex phenomena can only be captured accurately using deep networks with large training datasets. Furthermore, numerical error of training samples is propagated in the model errors, thus requiring the need for accurate data, i.e. FEM solutions on high-resolution meshes. Multi-fidelity methods offer a potential solution to reduce the training data requirements. To this end, we propose a novel GNN architecture, Multi-Fidelity U-Net, that…
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Taxonomy
TopicsDistributed and Parallel Computing Systems · Scientific Computing and Data Management
MethodsConcatenated Skip Connection · Convolution · *Communicated@Fast*How Do I Communicate to Expedia? · Max Pooling · U-Net · Features Explanation Method
