jdppthk / parallelized-reservoir-computing
This repository contains code for parallelized prediction of spatiotemporal chaotic data using reservoir computing as described in the paper: Model-Free Prediction of Large Spatiotemporally Chaotic Systems from Data: A Reservoir Computing Approach (Physical Review Letters, 120, 024102 (2018)).
☆33Updated 4 years ago
Related projects ⓘ
Alternatives and complementary repositories for parallelized-reservoir-computing
- A data-driven method to calculate the Lyapunov exponent of a dynamical system employing a GRU-RNN.☆40Updated 3 months ago
- RNN architectures trained with Backpropagation and Reservoir Computing (RC) methods for forecasting high-dimensional chaotic dynamical sy…☆89Updated last year
- Spatio-temporal forecasting of Lorenz96 with RC-ESN, RNN-LSTM and ANN☆37Updated 4 years ago
- A python implementation of Physics-informed Spline Learning for nonlinear dynamics discovery.☆24Updated 3 years ago
- Source code of "Learning nonlinear operators in latent spaces for real-time predictions of complex dynamics in physical systems."☆52Updated 3 months ago
- A simulation of the Kuramoto-Sivashinsky Equation in Python and MATLAB☆25Updated 5 years ago
- Deep learning assisted dynamic mode decomposition☆19Updated 3 years ago
- implementation of physics-informed variational auto-encoder☆13Updated last year
- Multistep Neural Networks for Data-driven Discovery of Nonlinear Dynamical Systems☆60Updated 4 years ago
- ☆39Updated 3 months ago
- Update PDEKoopman code to Tensorflow 2☆22Updated 3 years ago
- Research project conducted at Pacific Northwest National Laboratory, exploring the use of physics-informed autoencoders to predict fluid …☆32Updated last year
- Codes for Linear and Nonlinear Disambiguation Optimization (LANDO)☆26Updated 2 years ago
- Physics-informed convolutional-recurrent neural networks for solving spatiotemporal PDEs☆21Updated 2 years ago
- Physics-informed learning of governing equations from scarce data☆115Updated last year
- ☆28Updated last year
- ☆20Updated 2 years ago
- KTH-FlowAI / beta-Variational-autoencoders-and-transformers-for-reduced-order-modelling-of-fluid-flows☆21Updated 9 months ago
- PECANNs: Physics and Equality Constrained Artificial Neural Networks☆20Updated last year
- Physics-encoded recurrent convolutional neural network☆41Updated 2 years ago
- Physics Informed Fourier Neural Operator☆17Updated 11 months ago
- Implementing a physics-informed DeepONet from scratch☆22Updated last year
- Pytorch implementation of Bayesian physics-informed neural networks☆42Updated 3 years ago
- Boosting the training of physics informed neural networks with transfer learning☆25Updated 3 years ago
- Implementation of fast PINN optimization with RBA weights☆42Updated last month
- Discovers high dimensional models from 1D data using deep delay autoencoders☆29Updated last year
- This repository contains the code and models for our paper "Investigating and Mitigating Failure Modes in Physics-informed Neural Network…☆16Updated 11 months ago
- DeepONet extrapolation☆24Updated last year
- Official implementation of "PhyGNNet: Solving spatiotemporal PDEs with Physics-informed Graph Neural Network"☆34Updated last year
- Python codes for Locally Adaptive Activation Function (LAAF) used in deep neural networks. Please cite this work as "A D Jagtap, K Kawa…☆38Updated last year