2024
DOI: 10.1108/hff-01-2024-0077
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Efficient modeling of liquid splashing via graph neural networks with adaptive filter and aggregator fusion

Jinyao Nan,
Pingfa Feng,
Jie Xu
et al.

Abstract: Purpose The purpose of this study is to advance the computational modeling of liquid splashing dynamics, while balancing simulation accuracy and computational efficiency, a duality often compromised in high-fidelity fluid dynamics simulations. Design/methodology/approach This study introduces the fluid efficient graph neural network simulator (FEGNS), an innovative framework that integrates an adaptive filtering layer and aggregator fusion strategy within a graph neural network architecture. FEGNS is designed… Show more

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