PINNSim: A Simulator for Power System Dynamics based on Physics-Informed Neural Networks
- URL: http://arxiv.org/abs/2303.10256v3
- Date: Thu, 4 Jul 2024 14:03:35 GMT
- Title: PINNSim: A Simulator for Power System Dynamics based on Physics-Informed Neural Networks
- Authors: Jochen Stiasny, Baosen Zhang, Spyros Chatzivasileiadis,
- Abstract summary: We propose a simulator that allows to take significantly larger time steps.
It is based on Physics-Informed Neural Networks (PINNs) for the solution of the dynamics of single components in the power system.
We demonstrate PINNSim on a 9-bus system and show the increased time step size compared to a trapezoidal integration rule.
- Score: 1.2835555561822447
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The dynamic behaviour of a power system can be described by a system of differential-algebraic equations. Time-domain simulations are used to simulate the evolution of these dynamics. They often require the use of small time step sizes and therefore become computationally expensive. To accelerate these simulations, we propose a simulator - PINNSim - that allows to take significantly larger time steps. It is based on Physics-Informed Neural Networks (PINNs) for the solution of the dynamics of single components in the power system. To resolve their interaction we employ a scalable root-finding algorithm. We demonstrate PINNSim on a 9-bus system and show the increased time step size compared to a trapezoidal integration rule. We discuss key characteristics of PINNSim and important steps for developing PINNSim into a fully fledged simulator. As such, it could offer the opportunity for significantly increasing time step sizes and thereby accelerating time-domain simulations.
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