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Machine learning based digital twin for stochastic nonlinear multi-degree of freedom dynamical system
29 March 2021
Shailesh Garg
Ankush Gogoi
S. Chakraborty
B. Hazra
AI4CE
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Papers citing
"Machine learning based digital twin for stochastic nonlinear multi-degree of freedom dynamical system"
9 / 9 papers shown
Title
State estimation with limited sensors -- A deep learning based approach
Y. Kumar
Pranav Bahl
S. Chakraborty
40
29
0
27 Jan 2021
Transfer learning based multi-fidelity physics informed deep neural network
S. Chakraborty
PINN
OOD
AI4CE
72
165
0
19 May 2020
Machine learning based digital twin for dynamical systems with multiple time-scales
S. Chakraborty
S. Adhikari
AI4CE
38
87
0
12 May 2020
Simulation free reliability analysis: A physics-informed deep learning based approach
S. Chakraborty
AI4CE
33
16
0
04 May 2020
The role of surrogate models in the development of digital twins of dynamic systems
S. Chakraborty
S. Adhikari
R. Ganguli
SyDa
48
106
0
25 Jan 2020
Aleatoric and Epistemic Uncertainty in Machine Learning: An Introduction to Concepts and Methods
Eyke Hüllermeier
Willem Waegeman
PER
UD
244
1,415
0
21 Oct 2019
An Energy Approach to the Solution of Partial Differential Equations in Computational Mechanics via Machine Learning: Concepts, Implementation and Applications
E. Samaniego
C. Anitescu
S. Goswami
Vien Minh Nguyen-Thanh
Hongwei Guo
Khader M. Hamdia
Timon Rabczuk
X. Zhuang
PINN
AI4CE
205
1,379
0
27 Aug 2019
Transfer learning enhanced physics informed neural network for phase-field modeling of fracture
S. Goswami
C. Anitescu
S. Chakraborty
Timon Rabczuk
PINN
72
610
0
04 Jul 2019
A Gaussian process latent force model for joint input-state estimation in linear structural systems
R. Nayek
S. Chakraborty
S. Narasimhan
25
91
0
29 Mar 2019
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