2024
DOI: 10.1002/nag.3787
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A multi‐fidelity residual neural network based surrogate model for mechanical behaviour of structured sand

Zhihao Zhou,
Zhen‐Yu Yin,
Geng‐Fu He
et al.

Abstract: The structured sand presents significant interparticle bonding and anisotropy, resulting in significant differences in the physical and mechanical properties from the pure sand. This study proposes a new surrogate model based on the concept of multi‐fidelity residual neural network (MR‐NN) as an alternative to DEM simulation for predicting the mechanical behaviours of structured sand with different initial anisotropy and saving largely computational costs. The model is initially trained using low‐fidelity (LF)… Show more

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