Abstract Machine learning approaches for solving partial differential equations require learning mappings between function spaces. While convolutional or graph neural networks …
This paper explores the recent advancements in enhancing Computational Fluid Dynamics (CFD) tasks through Machine Learning (ML) techniques. We begin by introducing …
The long runtime of high-fidelity partial differential equation (PDE) solvers makes them unsuitable for time-critical applications. We propose to accelerate PDE solvers using …
X Luo, H Wang, Z Huang, H Jiang… - Advances in …, 2024 - proceedings.neurips.cc
Modeling interacting dynamical systems, such as fluid dynamics and intermolecular interactions, is a fundamental research problem for understanding and simulating complex …
Eddy-resolving turbulence simulations are essential for understanding and controlling complex unsteady fluid dynamics, with significant implications for engineering and scientific …
Neural operators, which can act as implicit solution operators of hidden governing equations, have recently become popular tools for learning the responses of complex real …
N Liu, S Jafarzadeh, Y Yu - Advances in Neural Information …, 2024 - proceedings.neurips.cc
Fourier neural operators (FNOs) can learn highly nonlinear mappings between function spaces, and have recently become a popular tool for learning responses of complex …
Z Li, B Dong, P Zhang - Journal of Computational Physics, 2024 - Elsevier
Data assimilation is crucial in a wide range of applications, but it often faces challenges such as high computational costs due to data dimensionality and incomplete understanding of …
Recently, Neural Fields have emerged as a powerful modelling paradigm to represent continuous signals. In a conditional neural field, a field is represented by a latent variable …