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Jochen Stiasny
Jochen Stiasny
Postdoc, Intelligent Electrical Power Grids, Delft University of Technology
Verified email at tudelft.nl
Title
Cited by
Cited by
Year
Sensitivity analysis of electric vehicle impact on low-voltage distribution grids
J Stiasny, T Zufferey, G Pareschi, D Toffanin, G Hug, K Boulouchos
Electric Power Systems Research 191, 106696, 2021
472021
Physics-informed neural networks for non-linear system identification for power system dynamics
J Stiasny, GS Misyris, S Chatzivasileiadis
2021 IEEE Madrid PowerTech, 1-6, 2021
452021
Machine Learning in Power Systems: Is It Time to Trust It?
S Chatzivasileiadis, A Venzke, J Stiasny, G Misyris
IEEE Power and Energy Magazine 20 (3), 32-41, 2022
252022
Learning without Data: Physics-Informed Neural Networks for Fast Time-Domain Simulation
J Stiasny, S Chevalier, S Chatzivasileiadis
2021 IEEE International Conference on Communications, Control, and Computing …, 2021
172021
Transient stability analysis with physics-informed neural networks
J Stiasny, GS Misyris, S Chatzivasileiadis
arXiv preprint arXiv:2106.13638, 2021
152021
Closing the Loop: A Framework for Trustworthy Machine Learning in Power Systems
J Stiasny, S Chevalier, R Nellikkath, B Sævarsson, S Chatzivasileiadis
arXiv preprint arXiv:2203.07505, 2022
132022
Capturing power system dynamics by physics-informed neural networks and optimization
GS Misyris, J Stiasny, S Chatzivasileiadis
2021 60th IEEE Conference on Decision and Control (CDC), 4418-4423, 2021
112021
Bayesian physics-informed neural networks for robust system identification of power systems
S Stock, J Stiasny, D Babazadeh, C Becker, S Chatzivasileiadis
2023 IEEE Belgrade PowerTech, 1-6, 2023
62023
Solving Differential-Algebraic Equations in Power Systems Dynamics with Neural Networks and Spatial Decomposition
J Stiasny, S Chatzivasileiadis, B Zhang
arXiv preprint arXiv:2303.10256, 2023
62023
Physics-informed neural networks for time-domain simulations: Accuracy, computational cost, and flexibility
J Stiasny, S Chatzivasileiadis
Electric Power Systems Research 224, 109748, 2023
42023
Interpretable machine learning for power systems: establishing confidence in SHapley Additive exPlanations
RI Hamilton, J Stiasny, T Ahmad, S Chevalier, R Nellikkath, ...
arXiv preprint arXiv:2209.05793, 2022
22022
Sensitivity analysis of EV impact on distribution grids based on Monte-Carlo simulations
J Stiasny, T Zufferey, G Pareschi, D Toffanin, G Hug, K Boulouchos
Master Thesis, ETH Zurich, 2019
22019
Correctness Verification of Neural Networks Approximating Differential Equations
P Ellinas, R Nellikath, I Ventura, J Stiasny, S Chatzivasileiadis
arXiv preprint arXiv:2402.07621, 2024
12024
Accelerating Dynamical System Simulations with Contracting and Physics-Projected Neural-Newton Solvers
S Chevalier, J Stiasny, S Chatzivasileiadis
Learning for Dynamics and Control Conference, 803-816, 2022
12022
Contracting Neural-Newton Solver
S Chevalier, J Stiasny, S Chatzivasileiadis
arXiv preprint arXiv:2106.02543, 2021
12021
Error estimation for physics-informed neural networks with implicit Runge-Kutta methods
J Stiasny, S Chatzivasileiadis
arXiv preprint arXiv:2401.05211, 2024
2024
Physics-Informed Neural Networks for Power System Dynamics
J Stiasny
Technical University of Denmark, 2023
2023
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