1
Latent neural PDE solver: A reduced-order modeling framework for partial differential equations
2
Mamba Neural Operator: Who Wins? Transformers vs. State-Space Models for PDEs
3
State-space models are accurate and efficient neural operators for dynamical systems
4
On the Benefits of Memory for Modeling Time-Dependent PDEs
5
Continuum Attention for Neural Operators
6
Transformers as Neural Operators for Solutions of Differential Equations with Finite Regularity
7
CaFA: Global Weather Forecasting with Factorized Attention on Sphere
8
Gabor-Filtered Fourier Neural Operator for solving Partial Differential Equations
9
DPOT: Auto-Regressive Denoising Operator Transformer for Large-Scale PDE Pre-Training
10
A hybrid iterative method based on MIONet for PDEs: Theory and numerical examples
11
Neural functional a posteriori error estimates
12
Transolver: A Fast Transformer Solver for PDEs on General Geometries
13
A Mathematical Guide to Operator Learning
14
Neural Spectral Methods: Self-supervised learning in the spectral domain
15
Improved Operator Learning by Orthogonal Attention
16
MgNO: Efficient Parameterization of Linear Operators via Multigrid
17
Neural operators for accelerating scientific simulations and design
18
Geometry-Informed Neural Operator for Large-Scale 3D PDEs
19
PDE-Refiner: Achieving Accurate Long Rollouts with Neural PDE Solvers
20
Reducing operator complexity in Algebraic Multigrid with Machine Learning Approaches
21
Representation Equivalent Neural Operators: a Framework for Alias-free Operator Learning
22
Scalable Transformer for PDE Surrogate Modeling
23
Long-term predictions of turbulence by implicit U-Net enhanced Fourier neural operator
24
Invariant preservation in machine learned PDE solvers via error correction
25
GPT-PINN: Generative Pre-Trained Physics-Informed Neural Networks toward non-intrusive Meta-learning of parametric PDEs
26
GNOT: A General Neural Operator Transformer for Operator Learning
27
A Neural PDE Solver with Temporal Stencil Modeling
28
Convolutional Neural Operators for robust and accurate learning of PDEs
29
Solving High-Dimensional PDEs with Latent Spectral Models
30
MG-GNN: Multigrid Graph Neural Networks for Learning Multilevel Domain Decomposition Methods
31
A Physics-informed Diffusion Model for High-fidelity Flow Field Reconstruction
32
Fast Sampling of Diffusion Models via Operator Learning
33
Mitigating spectral bias for the multiscale operator learning
34
Residual-based error correction for neural operator accelerated infinite-dimensional Bayesian inverse problems
35
Nonlinear Reconstruction for Operator Learning of PDEs with Discontinuities
36
Towards Multi-spatiotemporal-scale Generalized PDE Modeling
37
Clifford Neural Layers for PDE Modeling
38
Learning robust marking policies for adaptive mesh refinement
39
Physics-Informed Deep Neural Operator Networks
40
Learning to correct spectral methods for simulating turbulent flows
41
Transformer for Partial Differential Equations' Operator Learning
42
U-NO: U-shaped Neural Operators
43
The Cost-Accuracy Trade-Off In Operator Learning With Neural Networks
44
Forecasting Global Weather with Graph Neural Networks
45
Learning Operators with Coupled Attention
46
Factorized Fourier Neural Operators
47
Physics-Informed Neural Operator for Learning Partial Differential Equations
48
Multiwavelet-based Operator Learning for Differential Equations
49
U-FNO - an enhanced Fourier neural operator based-deep learning model for multiphase flow
50
Convergence Rates for Learning Linear Operators from Noisy Data
51
On universal approximation and error bounds for Fourier Neural Operators
52
Greedy training algorithms for neural networks and applications to PDEs
53
Optimization-Based Algebraic Multigrid Coarsening Using Reinforcement Learning
54
Choose a Transformer: Fourier or Galerkin
55
Learning the solution operator of parametric partial differential equations with physics-informed DeepONets
56
Reinforcement Learning for Adaptive Mesh Refinement
57
Learning optimal multigrid smoothers via neural networks
58
Machine learning–accelerated computational fluid dynamics
59
Fourier Neural Operator for Parametric Partial Differential Equations
60
HiPPO: Recurrent Memory with Optimal Polynomial Projections
61
Solver-in-the-Loop: Learning from Differentiable Physics to Interact with Iterative PDE-Solvers
62
Denoising Diffusion Probabilistic Models
63
An adaptive surrogate modeling based on deep neural networks for large-scale Bayesian inverse problems
64
Learning nonlinear operators via DeepONet based on the universal approximation theorem of operators
65
Data-driven discovery of coordinates and governing equations
66
Learning to Optimize Multigrid PDE Solvers
67
Physics-informed neural networks: A deep learning framework for solving forward and inverse problems involving nonlinear partial differential equations
68
Super-convergence: very fast training of neural networks using large learning rates
69
Solving high-dimensional partial differential equations using deep learning
70
Attention is All you Need
71
A Posteriori Modeling Error Estimates for the Assumption of Perfect Incompressibility in the Navier-Stokes Equation
72
Discovering governing equations from data by sparse identification of nonlinear dynamical systems
73
Certified Reduced Basis Methods for Parametrized Partial Differential Equations
74
The Exponentially Convergent Trapezoidal Rule
75
A Posteriori Error Estimation Techniques for Finite Element Methods
76
An efficient second order in time scheme for approximating long time statistical properties of the two dimensional Navier–Stokes equations
77
Long Time Stability of a Classical Efficient Scheme for Two-dimensional Navier-Stokes Equations
78
A Posteriori Error Estimation Based on Potential and Flux Reconstruction for the Heat Equation
79
Blow-up or no blow-up? A unified computational and analytic approach to 3D incompressible Euler and Navier–Stokes equations
80
Explicit Upper Bounds for Dual Norms of Residuals
81
A Posteriori Estimates for Partial Differential Equations
82
Spectral Methods: Evolution to Complex Geometries and Applications to Fluid Dynamics (Scientific Computation)
83
Stability and Convergence of the Crank-Nicolson/Adams-Bashforth scheme for the Time-Dependent Navier-Stokes Equations
84
Fourth-Order Time-Stepping for Stiff PDEs
85
Accurate, stable and efficient Navier-Stokes solvers based on explicit treatment of the pressure term
86
A posteriori error estimates for finite element discretizations of the heat equation
87
Analysis of finite difference schemes for unsteady Navier-Stokes equations in vorticity formulation
88
A posteriori error estimation for nonlinear variational problems by duality theory
89
Fully Reliable Localized Error Control in the FEM
90
Projection method I: convergence and numerical boundary layers
91
Efficient Spectral-Galerkin Method I. Direct Solvers of Second- and Fourth-Order Equations Using Legendre Polynomials
92
On the stability of the unsmoothed
Fourier method for hyperbolic equations
93
A unified approach to a posteriori error estimation using element residual methods
94
Compact finite difference schemes with spectral-like resolution
95
Mixed spectral element approximation of the Navier-Stokes equations in the stream-function and vorticity formulation
96
High-order splitting methods for the incompressible Navier-Stokes equations
97
The local structure of turbulence in incompressible viscous fluid for very large Reynolds numbers
98
A posteriori error estimates for the Stokes problem
99
Nonlinear Galerkin methods: The finite elements case
100
A posteriori error estimators for the Stokes equations
101
Stability analysis of finite-difference, pseudospectral and Fourier-Galerkin approximations for time-dependent problems
102
On the Statistical Properties of Two-Dimensional Decaying Turbulence
103
Pseudospectral methods for solution of the incompressible Navier-Stokes equations
104
Finite element approximation of the nonstationary Navier-Stokes problem, part II: Stability of solutions and error estimates uniform in time
105
The emergence of isolated coherent vortices in turbulent flow
106
Two-dimensional turbulence
108
Stability of the Fourier method
109
On spaces of Triebel—Lizorkin type
110
Comparison of Pseudospectral and Spectral Approximation
111
Numerical Simulation of Incompressible Flows Within Simple Boundaries. I. Galerkin (Spectral) Representations
112
Spectral Calculations of Isotropic Turbulence: Efficient Removal of Aliasing Interactions
113
On the Elimination of Aliasing in Finite-Difference Schemes by Filtering High-Wavenumber Components
114
Generalized Functions, Volume 2: Spaces of Fundamental and Generalized Functions
115
Numerical solution of the Navier-Stokes equations
116
On the attainable order of Runge-Kutta methods
117
Mechanism of the production of small eddies from large ones
118
Alias-Free Mamba Neural Operator
119
Prometheus: Out-of-distribution Fluid Dynamics Modeling with Disentangled Graph ODE
120
Generative Diffusion for 3D Turbulent Flows
121
Neural Operator: Learning Maps Between Function Spaces With Applications to PDEs
122
Learning Chaotic Dynamics in Dissipative Systems
123
Harisiqbal88/plotneuralnet v1.0.0
124
Mixed finite element methods and applications , volume 44
125
Finite element methods for Navier-Stokes equations: theory and algorithms , volume 5
126
Poincaré constants for finite element stars
127
Pseudo-differential operators and symmetries: background analysis and advanced topics , volume 2
128
Reduced Basis Approximation and A Posteriori Error Estimation for Parametrized Partial Differential Equations
129
Functional analysis , volume 55
130
Finite Element Methods for the Incompressible Navier-Stokes Equations
131
Adaptive Finite Element Methods
132
An a posteriori error estimate for finite element approximations of the Navier-Stokes equations
133
Advanced Engineering Electromagnetics
134
Navier-Stokes Equations and Nonlinear Functional Analysis
135
Numerical analysis of spectral methods : theory and applications
136
Non-homogeneous boundary value problems and applications
137
Computer Methods in Applied Mechanics and Englneerlng a Posteriori Error Estimation in Finite Element Analysis
138
Continuous spatiotemporal Transformer
139
(Ex2) Same with above, k 0 = 8 . A sample trajectory can be found in