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Bayesian Numerical Homogenization

Bayesian Numerical Homogenization

25 June 2014
H. Owhadi
ArXivPDFHTML

Papers citing "Bayesian Numerical Homogenization"

27 / 27 papers shown
Title
Data-Efficient Kernel Methods for Learning Differential Equations and Their Solution Operators: Algorithms and Error Analysis
Data-Efficient Kernel Methods for Learning Differential Equations and Their Solution Operators: Algorithms and Error Analysis
Yasamin Jalalian
Juan Felipe Osorio Ramirez
Alexander W. Hsu
Bamdad Hosseini
H. Owhadi
48
0
0
02 Mar 2025
Error Analysis of Kernel/GP Methods for Nonlinear and Parametric PDEs
Error Analysis of Kernel/GP Methods for Nonlinear and Parametric PDEs
Pau Batlle
Yifan Chen
Bamdad Hosseini
H. Owhadi
Andrew M. Stuart
34
17
0
08 May 2023
Physics-Guided, Physics-Informed, and Physics-Encoded Neural Networks in
  Scientific Computing
Physics-Guided, Physics-Informed, and Physics-Encoded Neural Networks in Scientific Computing
Salah A. Faroughi
N. Pawar
C. Fernandes
Maziar Raissi
Subasish Das
N. Kalantari
S. K. Mahjour
PINN
AI4CE
37
49
0
14 Nov 2022
Gaussian Process Hydrodynamics
Gaussian Process Hydrodynamics
H. Owhadi
40
1
0
21 Sep 2022
Use of BNNM for interference wave solutions of the gBS-like equation and comparison with PINNs
S. Vadyala
S. N. Betgeri
36
0
0
07 Aug 2022
A Deep Learning Approach for Predicting Two-dimensional Soil
  Consolidation Using Physics-Informed Neural Networks (PINN)
A Deep Learning Approach for Predicting Two-dimensional Soil Consolidation Using Physics-Informed Neural Networks (PINN)
Yue Lu
Gang Mei
F. Piccialli
PINN
AI4CE
25
25
0
09 Apr 2022
Probabilistic learning inference of boundary value problem with
  uncertainties based on Kullback-Leibler divergence under implicit constraints
Probabilistic learning inference of boundary value problem with uncertainties based on Kullback-Leibler divergence under implicit constraints
Christian Soize
30
5
0
10 Feb 2022
Scientific Machine Learning through Physics-Informed Neural Networks:
  Where we are and What's next
Scientific Machine Learning through Physics-Informed Neural Networks: Where we are and What's next
S. Cuomo
Vincenzo Schiano Di Cola
F. Giampaolo
G. Rozza
Maizar Raissi
F. Piccialli
PINN
31
1,190
0
14 Jan 2022
Subspace Decomposition based DNN algorithm for elliptic type multi-scale
  PDEs
Subspace Decomposition based DNN algorithm for elliptic type multi-scale PDEs
Xi-An Li
Z. Xu
Lei Zhang
27
27
0
10 Dec 2021
Stochastic Processes Under Linear Differential Constraints : Application
  to Gaussian Process Regression for the 3 Dimensional Free Space Wave Equation
Stochastic Processes Under Linear Differential Constraints : Application to Gaussian Process Regression for the 3 Dimensional Free Space Wave Equation
Iain Henderson
P. Noble
O. Roustant
21
1
0
23 Nov 2021
Probabilistic Numerical Method of Lines for Time-Dependent Partial
  Differential Equations
Probabilistic Numerical Method of Lines for Time-Dependent Partial Differential Equations
Nicholas Kramer
Jonathan Schmidt
Philipp Hennig
32
18
0
22 Oct 2021
Computational Graph Completion
Computational Graph Completion
H. Owhadi
24
24
0
20 Oct 2021
Learning Partial Differential Equations in Reproducing Kernel Hilbert
  Spaces
Learning Partial Differential Equations in Reproducing Kernel Hilbert Spaces
George Stepaniants
49
15
0
26 Aug 2021
Bayesian Numerical Methods for Nonlinear Partial Differential Equations
Bayesian Numerical Methods for Nonlinear Partial Differential Equations
Junyang Wang
Jon Cockayne
O. Chkrebtii
T. Sullivan
Chris J. Oates
61
19
0
22 Apr 2021
Solving and Learning Nonlinear PDEs with Gaussian Processes
Solving and Learning Nonlinear PDEs with Gaussian Processes
Yifan Chen
Bamdad Hosseini
H. Owhadi
Andrew M. Stuart
32
153
0
24 Mar 2021
Data-driven geophysical forecasting: Simple, low-cost, and accurate
  baselines with kernel methods
Data-driven geophysical forecasting: Simple, low-cost, and accurate baselines with kernel methods
B. Hamzi
R. Maulik
H. Owhadi
AI4TS
17
28
0
13 Feb 2021
Data-driven rogue waves and parameter discovery in the defocusing NLS
  equation with a potential using the PINN deep learning
Data-driven rogue waves and parameter discovery in the defocusing NLS equation with a potential using the PINN deep learning
Li Wang
Zhenya Yan
27
80
0
18 Dec 2020
Symplectic Gaussian Process Regression of Hamiltonian Flow Maps
Symplectic Gaussian Process Regression of Hamiltonian Flow Maps
K. Rath
C. Albert
B. Bischl
U. Toussaint
25
29
0
11 Sep 2020
Weak SINDy For Partial Differential Equations
Weak SINDy For Partial Differential Equations
Daniel Messenger
David M. Bortz
26
169
0
06 Jul 2020
Deep regularization and direct training of the inner layers of Neural
  Networks with Kernel Flows
Deep regularization and direct training of the inner layers of Neural Networks with Kernel Flows
G. Yoo
H. Owhadi
24
21
0
19 Feb 2020
Physics Informed Extreme Learning Machine (PIELM) -- A rapid method for
  the numerical solution of partial differential equations
Physics Informed Extreme Learning Machine (PIELM) -- A rapid method for the numerical solution of partial differential equations
Vikas Dwivedi
Balaji Srinivasan
PINN
19
190
0
08 Jul 2019
A Modern Retrospective on Probabilistic Numerics
A Modern Retrospective on Probabilistic Numerics
Chris J. Oates
T. Sullivan
AI4CE
24
64
0
14 Jan 2019
Bayesian Probabilistic Numerical Methods
Bayesian Probabilistic Numerical Methods
Jon Cockayne
Chris J. Oates
T. Sullivan
Mark Girolami
27
164
0
13 Feb 2017
Probabilistic Numerical Methods for PDE-constrained Bayesian Inverse
  Problems
Probabilistic Numerical Methods for PDE-constrained Bayesian Inverse Problems
Jon Cockayne
Chris J. Oates
T. Sullivan
Mark Girolami
AI4CE
24
79
0
15 Jan 2017
Inferring solutions of differential equations using noisy multi-fidelity
  data
Inferring solutions of differential equations using noisy multi-fidelity data
M. Raissi
P. Perdikaris
George Karniadakis
AI4CE
24
286
0
16 Jul 2016
Gamblets for opening the complexity-bottleneck of implicit schemes for
  hyperbolic and parabolic ODEs/PDEs with rough coefficients
Gamblets for opening the complexity-bottleneck of implicit schemes for hyperbolic and parabolic ODEs/PDEs with rough coefficients
H. Owhadi
Lei Zhang
AI4CE
23
69
0
24 Jun 2016
Probabilistic Numerical Methods for Partial Differential Equations and
  Bayesian Inverse Problems
Probabilistic Numerical Methods for Partial Differential Equations and Bayesian Inverse Problems
Jon Cockayne
Chris J. Oates
T. Sullivan
Mark Girolami
35
45
0
25 May 2016
1