Semi-Lagrangian (SL) schemes are known as a major numerical tool for solving transport equations with many advantages and have been widely deployed in the fields of computational fluid dynamics, plasma physics modeling, numerical weather prediction, among others. In this work, we develop a novel machine learning-assisted approach to accelerate the conventional SL finite volume (FV) schemes. The proposed scheme avoids the expensive tracking of upstream cells but attempts to learn the SL discretization from the data by incorporating specific inductive biases in the neural network, significantly simplifying the algorithm implementation and leading to improved efficiency. In addition, the method delivers sharp shock transitions and a level of a...
We present FO-PINNs, physics-informed neural networks that are trained using the first-order formula...
Machine learning methods have been lately used to solve partial differential equations (PDEs) and dy...
The theory-guided neural network (TgNN) is a kind of method which improves the effectiveness and eff...
Machine-learning (ML) based discretization has been developed to simulate complex partial differenti...
Physics-informed neural networks (PINNs) leverage neural-networks to find the solutions of partial d...
The finite volume method (FVM) has been one of the primary tools of computational fluid dynamics (CF...
Traditional numerical schemes for simulating fluid flow and transport in porous media can be computa...
We introduce a compositional physics-aware FInite volume Neural Network (FINN) for learning spatiote...
Artificial intelligence (AI) shows great potential to reduce the huge cost of solving partial differ...
We propose the Factorized Fourier Neural Operator (F-FNO), a learning-based approach for simulating ...
We present a machine learning framework that blends image super-resolution technologies with passive...
Kinetic approaches are generally accurate in dealing with microscale plasma physics problems but are...
We present a highly scalable strategy for developing mesh-free neuro-symbolic partial differential e...
Recent works have shown that neural networks are promising parameter-free limiters for a variety of ...
Simulation of plasmas in electromagnetic fields requires numerical solution of a kinetic equation th...
We present FO-PINNs, physics-informed neural networks that are trained using the first-order formula...
Machine learning methods have been lately used to solve partial differential equations (PDEs) and dy...
The theory-guided neural network (TgNN) is a kind of method which improves the effectiveness and eff...
Machine-learning (ML) based discretization has been developed to simulate complex partial differenti...
Physics-informed neural networks (PINNs) leverage neural-networks to find the solutions of partial d...
The finite volume method (FVM) has been one of the primary tools of computational fluid dynamics (CF...
Traditional numerical schemes for simulating fluid flow and transport in porous media can be computa...
We introduce a compositional physics-aware FInite volume Neural Network (FINN) for learning spatiote...
Artificial intelligence (AI) shows great potential to reduce the huge cost of solving partial differ...
We propose the Factorized Fourier Neural Operator (F-FNO), a learning-based approach for simulating ...
We present a machine learning framework that blends image super-resolution technologies with passive...
Kinetic approaches are generally accurate in dealing with microscale plasma physics problems but are...
We present a highly scalable strategy for developing mesh-free neuro-symbolic partial differential e...
Recent works have shown that neural networks are promising parameter-free limiters for a variety of ...
Simulation of plasmas in electromagnetic fields requires numerical solution of a kinetic equation th...
We present FO-PINNs, physics-informed neural networks that are trained using the first-order formula...
Machine learning methods have been lately used to solve partial differential equations (PDEs) and dy...
The theory-guided neural network (TgNN) is a kind of method which improves the effectiveness and eff...