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Timothy Praditia
Timothy Praditia
PhD Student, Department of Stochastic Simulation and Safety Research for Hydrosystems, Institute for
Verified email at iws.uni-stuttgart.de - Homepage
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Year
Pdebench: An extensive benchmark for scientific machine learning
M Takamoto, T Praditia, R Leiteritz, D MacKinlay, F Alesiani, D Pflüger, ...
Advances in Neural Information Processing Systems 35, 1596-1611, 2022
1042022
Multiscale formulation for coupled flow-heat equations arising from single-phase flow in fractured geothermal reservoirs
T Praditia, R Helmig, H Hajibeygi
Computational Geosciences 22 (5), 1305–1322, 2018
462018
Finite volume neural network: Modeling subsurface contaminant transport
T Praditia, M Karlbauer, S Otte, S Oladyshkin, MV Butz, W Nowak
arXiv preprint arXiv:2104.06010, 2021
152021
Composing partial differential equations with physics-aware neural networks
M Karlbauer, T Praditia, S Otte, S Oladyshkin, W Nowak, MV Butz
International Conference on Machine Learning, 10773-10801, 2022
142022
Global sensitivity analysis of a CaO/Ca (OH) 2 thermochemical energy storage model for parametric effect analysis
S Xiao, T Praditia, S Oladyshkin, W Nowak
Applied Energy 285, 116456, 2021
92021
Improving thermochemical energy storage dynamics forecast with physics-inspired neural network architecture
T Praditia, T Walser, S Oladyshkin, W Nowak
Energies 13 (15), 3873, 2020
82020
Learning groundwater contaminant diffusion‐sorption processes with a finite volume neural network
T Praditia, M Karlbauer, S Otte, S Oladyshkin, MV Butz, W Nowak
Water Resources Research 58 (12), e2022WR033149, 2022
62022
Physics-informed neural networks for learning dynamic, distributed and uncertain systems
T Praditia
Stuttgart: Eigenverlag des Instituts für Wasser-und Umweltsystemmodellierung, 2023
32023
The deep arbitrary polynomial chaos neural network or how Deep Artificial Neural Networks could benefit from data-driven homogeneous chaos theory
S Oladyshkin, T Praditia, I Kroeker, F Mohammadi, W Nowak, S Otte
Neural Networks 166, 85-104, 2023
22023
Infering boundary conditions in finite volume neural networks
CC Horuz, M Karlbauer, T Praditia, MV Butz, S Oladyshkin, W Nowak, ...
International Conference on Artificial Neural Networks, 538-549, 2022
22022
Physical domain reconstruction with finite volume neural networks
CC Horuz, M Karlbauer, T Praditia, MV Butz, S Oladyshkin, W Nowak, ...
Applied Artificial Intelligence 37 (1), 2204261, 2023
12023
Finite Volume Neural Networks: a Hybrid Modeling Strategy for Subsurface Contaminant Transport
T Praditia, S Oladyshkin, W Nowak
AGU Fall Meeting Abstracts 2021, H34F-02, 2021
2021
Finite volume neural network: Modeling subsurface contaminant transport
M Karlbauer, S Otte, MV Butz, T Praditia, S Oladyshkin, W Nowak
ArXiv 2104, 2021
2021
Universal Differential Equation for Diffusion-Sorption Problem in Porous Media Flow
T Praditia, S Oladyshkin, W Nowak
EGU General Assembly Conference Abstracts, EGU21-49, 2021
2021
Prognosis of water levels in a moor groundwater system influenced by hydrology and water extraction using an artificial neural network
S Flaig, T Praditia, A Kissinger, U Lang, S Oladyshkin, W Nowak
EGU General Assembly Conference Abstracts, EGU21-3013, 2021
2021
Using physics-based regularization in Artificial Neural Networks to predict thermochemical energy storage systems
T Praditia, T Walser, S Oladyshkin, W Nowak
AGU Fall Meeting Abstracts 2019, IN32B-15, 2019
2019
Multiscale Finite Volume Method for Coupled Single-Phase Flow and Heat Equations in Fractured Porous Media: Application to Geothermal Systems
T Praditia
TU Delft, 2017
2017
Prognosis of water levels in a moor groundwater system influenced by hydrology and water extraction using an artificial neural network (EGU21-3013)
L outperforms MODFLOW, S Flaig, T Praditia, A Kissinger, U Lang, ...
Universal Differential Equation for Diffusion-Sorption Problem in Porous Media Flow (EGU21-49)
T Praditia, S Oladyshkin, W Nowak
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Articles 1–19