quercushernandez / ThermodynamicsGNNLinks
Code for the paper "Thermodynamics-informed graph neural networks" published in IEEE Transactions on Artificial Intelligence (TAI).
☆102Updated last year
Alternatives and similar repositories for ThermodynamicsGNN
Users that are interested in ThermodynamicsGNN are comparing it to the libraries listed below
Sorting:
- Multi-fidelity reduced-order surrogate modeling☆24Updated 2 months ago
- A Computational Fluid Dynamics (CFD) course with Python☆93Updated last year
- In this repository, you will find the different python scripts to train the available models on the AirfRANS dataset proposed at the Neur…☆56Updated 7 months ago
- ☆74Updated 9 months ago
- PhyGeoNet: Physics-Informed Geometry-Adaptive Convolutional Neural Networks for Solving Parametric PDEs on Irregular Domain☆87Updated 4 years ago
- GCA-ROM is a library which implements graph convolutional autoencoder architecture as a nonlinear model order reduction strategy.☆36Updated 2 months ago
- Deep Learning for Reduced Order Modelling☆100Updated 3 years ago
- Stiff-PINN: Physics-Informed Neural Network for Stiff Chemical Kinetics☆63Updated 3 years ago
- Physics-informed graph neural Galerkin networks: A unified framework for solving PDE-governed forward and inverse problems☆56Updated 3 years ago
- Data-driven Reynolds stress modeling with physics-informed machine learning☆93Updated 6 years ago
- ☆112Updated 6 months ago
- A curated list of awesome Machine Learning projects in Fluid Dynamics☆102Updated 3 years ago
- Reduced-Order Modeling of Fluid Flows with Transformers☆24Updated 2 years ago
- flowTorch - a Python library for analysis and reduced-order modeling of fluid flows☆156Updated 5 months ago
- Sparse Physics-based and Interpretable Neural Networks☆51Updated 3 years ago
- Modified Meshgraphnets with more features☆54Updated 6 months ago
- ☆54Updated 2 years ago
- Gaussian process-based interpretable latent space dynamics identification through deep autoencoder☆34Updated last week
- Tensoflow 2 implementation of physics informed deep learning.☆27Updated 4 years ago
- ☆61Updated 5 months ago
- Discontinuity Computing Using Physics-Informed Neural Network☆24Updated last year
- ☆54Updated 2 years ago
- Source code of 'Deep transfer operator learning for partial differential equations under conditional shift'.☆73Updated 2 years ago
- Implementation of 'Physics-Informed Neural Networks for Shell Structures' (European Journal of Mechanics A)☆42Updated last year
- ☆30Updated last year
- Proper Orthogonal Decomposition - Radial Basis Function (POD-RBF) Network☆68Updated last year
- Multifidelity deep neural operators for efficient learning of partial differential equations with application to fast inverse design of n…☆35Updated 2 years ago
- A sequential DeepONet model implementation that uses a recurrent neural network (GRU and LSTM) in the branch and a feed-forward neural ne…☆16Updated last year
- Computational Fluid Dynamics based on PyTorch and the Lattice Boltzmann Method☆256Updated last week
- This repository contains code, which was used to generate large-scale results in the HINTS paper.☆30Updated 10 months ago