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A machine learning approach for efficient uncertainty quantification
  using multiscale methods

A machine learning approach for efficient uncertainty quantification using multiscale methods

12 November 2017
Shing Chan
A. Elsheikh
ArXivPDFHTML

Papers citing "A machine learning approach for efficient uncertainty quantification using multiscale methods"

9 / 9 papers shown
Title
Adaptive and Parallel Multiscale Framework for Modeling Cohesive Failure
  in Engineering Scale Systems
Adaptive and Parallel Multiscale Framework for Modeling Cohesive Failure in Engineering Scale Systems
Sion Kim
Ezra Kissel
Karel Matous
AI4CE
27
1
0
18 Apr 2024
Uncertainty quantification of two-phase flow in porous media via
  coupled-TgNN surrogate model
Uncertainty quantification of two-phase flow in porous media via coupled-TgNN surrogate model
Jun Yu Li
Dongxiao Zhang
Tianhao He
Q. Zheng
AI4CE
27
6
0
28 May 2022
Predicting Mechanically Driven Full-Field Quantities of Interest with
  Deep Learning-Based Metamodels
Predicting Mechanically Driven Full-Field Quantities of Interest with Deep Learning-Based Metamodels
S. Mohammadzadeh
Emma Lejeune
AI4CE
28
28
0
24 Jul 2021
On generalized residue network for deep learning of unknown dynamical
  systems
On generalized residue network for deep learning of unknown dynamical systems
Zhen Chen
D. Xiu
AI4CE
19
46
0
23 Jan 2020
Data-Driven Deep Learning of Partial Differential Equations in Modal
  Space
Data-Driven Deep Learning of Partial Differential Equations in Modal Space
Kailiang Wu
D. Xiu
20
149
0
15 Oct 2019
Data Driven Governing Equations Approximation Using Deep Neural Networks
Data Driven Governing Equations Approximation Using Deep Neural Networks
Tong Qin
Kailiang Wu
D. Xiu
PINN
34
270
0
13 Nov 2018
Data-driven polynomial chaos expansion for machine learning regression
Data-driven polynomial chaos expansion for machine learning regression
Emiliano Torre
S. Marelli
P. Embrechts
Bruno Sudret
31
130
0
09 Aug 2018
Deep convolutional encoder-decoder networks for uncertainty
  quantification of dynamic multiphase flow in heterogeneous media
Deep convolutional encoder-decoder networks for uncertainty quantification of dynamic multiphase flow in heterogeneous media
S. Mo
Yinhao Zhu
N. Zabaras
Xiaoqing Shi
Jichun Wu
AI4CE
14
272
0
02 Jul 2018
Dropout as a Bayesian Approximation: Representing Model Uncertainty in
  Deep Learning
Dropout as a Bayesian Approximation: Representing Model Uncertainty in Deep Learning
Y. Gal
Zoubin Ghahramani
UQCV
BDL
287
9,167
0
06 Jun 2015
1