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Journal of Computational Physics, Volume 516
Volume 516, 2024
- Wei Zhang, Xuelong Gu, Wenjun Cai, Yushun Wang:
Maximum bound principle preserving additive partitioned Runge-Kutta schemes for the Allen-Cahn equation. 113279 - Wenbo Cao, Jiahao Song, Weiwei Zhang
:
Solving high-dimensional parametric engineering problems for inviscid flow around airfoils based on physics-informed neural networks. 113285 - Lanhao Zhao, Yingtang Di, Jia Mao:
A coupled FDEM-IBM-level set method for water entry of multiple flexible objects. 113290 - Zhuohang Wu, Yu-Xin Ren:
A shock capturing artificial viscosity scheme in consistent with the compact high-order finite volume methods. 113291 - Shu Yamashita
, Shintaro Matsushita
, Tetsuya Suekane:
Conservative transport model for surfactant on the interface based on the phase-field method. 113292 - Zhihua Wang
, Wenqiang Zhang, Xuerui Mao
, Kwing-So Choi, Shuguang Li:
A consistent phase-field model for three-phase flows with cylindrical/spherical interfaces. 113297 - Caterina Millevoi
, Nicolò Spiezia, Massimiliano Ferronato:
On Physics-Informed Neural Networks training for coupled hydro-poromechanical problems. 113299
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