Data-driven synchronization-avoiding algorithms in the explicit distributed structural analysis of soft tissue

@article{Tong2022DatadrivenSA,
  title={Data-driven synchronization-avoiding algorithms in the explicit distributed structural analysis of soft tissue},
  author={Guoxiang Grayson Tong and Daniele E. Schiavazzi},
  journal={ArXiv},
  year={2022},
  volume={abs/2207.02194}
}
We propose a data-driven framework to increase the computational efficiency of the explicit finite element method in the structural analysis of soft tissue. An encoder-decoder long short-term memory deep neural network is trained based on the data produced by an explicit, distributed finite element solver. We leverage this network to predict synchronized displacements at shared nodes, minimizing the amount of communication between processors. We perform extensive numerical experiments to quantify… 

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