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Jan Niklas Fuhg
ORCID
Publication Activity (10 Years)
Years Active: 2019-2024
Publications (10 Years): 20
Top Topics
Labeled Data
Alternative Formulations
Neural Network
Gaussian Process Regression
Top Venues
CoRR
J. Comput. Phys.
Nat. Comput. Sci.
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Publications
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Govinda Anantha Padmanabha
,
Jan Niklas Fuhg
,
Cosmin Safta
,
Reese E. Jones
,
Nikolaos Bouklas
Improving the performance of Stein variational inference through extreme sparsification of physically-constrained neural network models.
CoRR
(2024)
Jan Niklas Fuhg
,
Govinda Anantha Padmanabha
,
Nikolaos Bouklas
,
Bahador Bahmani
,
WaiChing Sun
,
Nikolaos N. Vlassis
,
Moritz Flaschel
,
Pietro Carrara
,
Laura De Lorenzis
A review on data-driven constitutive laws for solids.
CoRR
(2024)
Adnan Eghtesad
,
Jan Niklas Fuhg
,
Nikolaos Bouklas
NN-EVP: A physics informed neural network-based elasto-viscoplastic framework for predictions of grain size-aware flow response under large deformations.
CoRR
(2023)
Jan Niklas Fuhg
,
Reese E. Jones
,
Nikolaos Bouklas
Extreme sparsification of physics-augmented neural networks for interpretable model discovery in mechanics.
CoRR
(2023)
Kshitiz Upadhyay
,
Jan Niklas Fuhg
,
Nikolaos Bouklas
,
K. T. Ramesh
Physics-informed Data-driven Discovery of Constitutive Models with Application to Strain-Rate-sensitive Soft Materials.
CoRR
(2023)
Jan Niklas Fuhg
,
Nikolaos Bouklas
,
Reese E. Jones
Stress representations for tensor basis neural networks: alternative formulations to Finger-Rivlin-Ericksen.
CoRR
(2023)
Jan Niklas Fuhg
,
Nikolaos Bouklas
The mixed Deep Energy Method for resolving concentration features in finite strain hyperelasticity.
J. Comput. Phys.
451 (2022)
Jan Niklas Fuhg
,
Craig M. Hamel
,
Kyle Johnson
,
Reese Jones
,
Nikolaos Bouklas
Modular machine learning-based elastoplasticity: generalization in the context of limited data.
CoRR
(2022)
Jan Niklas Fuhg
,
Arnav Karmarkar
,
Teeratorn Kadeethum
,
Hongkyu Yoon
,
Nikolaos Bouklas
Deep Convolutional Ritz Method: Parametric PDE surrogates without labeled data.
CoRR
(2022)
Jan Niklas Fuhg
,
Nikolaos Bouklas
The mixed deep energy method for resolving concentration features in finite strain hyperelasticity.
CoRR
(2021)
Teeratorn Kadeethum
,
Daniel O'Malley
,
Jan Niklas Fuhg
,
Youngsoo Choi
,
Jonghyun Lee
,
Hari S. Viswanathan
,
Nikolaos Bouklas
A framework for data-driven solution and parameter estimation of PDEs using conditional generative adversarial networks.
Nat. Comput. Sci.
1 (12) (2021)
Jan Niklas Fuhg
,
Michele Marino
,
Nikolaos Bouklas
Local approximate Gaussian process regression for data-driven constitutive laws: Development and comparison with neural networks.
CoRR
(2021)
Jan Niklas Fuhg
,
Amelie Fau
,
Nikolaos Bouklas
Interval and fuzzy physics-informed neural networks for uncertain fields.
CoRR
(2021)
Jan Niklas Fuhg
,
Nikolaos Bouklas
On physics-informed data-driven isotropic and anisotropic constitutive models through probabilistic machine learning and space-filling sampling.
CoRR
(2021)
Jan Niklas Fuhg
,
Christoph Böhm
,
Nikolaos Bouklas
,
Amelie Fau
,
Peter Wriggers
,
Michele Marino
Model-data-driven constitutive responses: application to a multiscale computational framework.
CoRR
(2021)
Teeratorn Kadeethum
,
Daniel O'Malley
,
Jan Niklas Fuhg
,
Youngsoo Choi
,
Jonghyun Lee
,
Hari S. Viswanathan
,
Nikolaos Bouklas
A framework for data-driven solution and parameter estimation of PDEs using conditional generative adversarial networks.
CoRR
(2021)
Dengpeng Huang
,
Jan Niklas Fuhg
,
Christian Weißenfels
,
Peter Wriggers
A machine learning based plasticity model using proper orthogonal decomposition.
CoRR
(2020)
Jan Niklas Fuhg
,
Amelie Fau
An innovative adaptive kriging approach for efficient binary classification of mechanical problems.
CoRR
(2019)
Jan Niklas Fuhg
,
Amelie Fau
Surrogate model approach for investigating the stability of a friction-induced oscillator of Duffing's type.
CoRR
(2019)
Jan Niklas Fuhg
Adaptive surrogate models for parametric studies.
CoRR
(2019)