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2012.11798
Cited By
APIK: Active Physics-Informed Kriging Model with Partial Differential Equations
22 December 2020
Jialei Chen
Zhehui Chen
Chuck Zhang
C. F. J. Wu
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Papers citing
"APIK: Active Physics-Informed Kriging Model with Partial Differential Equations"
8 / 8 papers shown
Title
Stochastic PDE representation of random fields for large-scale Gaussian process regression and statistical finite element analysis
Kim Jie Koh
F. Cirak
AI4CE
24
9
0
23 May 2023
Gaussian Process Priors for Systems of Linear Partial Differential Equations with Constant Coefficients
Marc Härkönen
Markus Lange-Hegermann
Bogdan Raiță
32
15
0
29 Dec 2022
Parameter Inference based on Gaussian Processes Informed by Nonlinear Partial Differential Equations
Zhao-Xia Li
Shih-Feng Yang
Jeff Wu
11
2
0
22 Dec 2022
PAGP: A physics-assisted Gaussian process framework with active learning for forward and inverse problems of partial differential equations
Jiahao Zhang
Shiqi Zhang
Guang Lin
43
3
0
06 Apr 2022
Bayesian Calibration of Imperfect Computer Models using Physics-Informed Priors
Michail Spitieris
I. Steinsland
AI4CE
28
6
0
17 Jan 2022
Failure-averse Active Learning for Physics-constrained Systems
Cheolhei Lee
Xing Wang
Jianguo Wu
Xiaowei Yue
AI4CE
19
7
0
27 Oct 2021
Bayesian Numerical Methods for Nonlinear Partial Differential Equations
Junyang Wang
Jon Cockayne
O. Chkrebtii
T. Sullivan
Chris J. Oates
59
19
0
22 Apr 2021
Local Gaussian process approximation for large computer experiments
R. Gramacy
D. Apley
127
392
0
02 Mar 2013
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