The prediction of dynamical stability of power grids becomes more important and challenging with increasing shares of renewable energy sources due to their decentralized structure, reduced inertia and volatility. We investigate the feasibility of applying graph neural networks (GNN) to predict dynamic stability of synchronisation in complex power grids using the single-node basin stability (SNBS) as a measure. To do so, we generate two synthetic datasets for grids with 20 and 100 nodes respectively and estimate SNBS using Monte-Carlo sampling. Those datasets are used to train and evaluate the performance of eight different GNN-models. All models use the full graph without simplifications as input and predict SNBS in a nodal-regression-setup...
Power flow analysis is an important tool in power engineering for planning and operating power syste...
With the increased penetration of wind energy into the power grid, it has become increasingly import...
International audienceWe propose a neural network architecture that emulates the behavior of a physi...
The prediction of dynamical stability of power grids becomes more important and challenging with inc...
One of the key challenges for the success of the energy transition towards renewable energies is the...
To analyse the relationship between stability against large perturbations and topological properties...
We introduce three new datasets of synthetically generated power grids. It contains for each grid th...
We propose an end-to-end framework based on a Graph Neural Network (GNN) to balance the power flows ...
In recent years, a large number of photovoltaic (PV) systems have been added to the electrical grid ...
The current standard operational strategy within electrical power systems is done following determin...
Keywords:network theory, power grids, synchronization The synchrony of electric power systems is imp...
Power grids sustain modern society by supplying electricity and thus their stability is a crucial fa...
Worldwide targets are set for the increase of renewable power generation in electricity networks on ...
The reducing cost of renewable energy resources, such as solar photovoltaics (PV) and wind farms, is...
This talk will focus on preliminary results from Reconstructability Analysis (RA) models, Bayesian N...
Power flow analysis is an important tool in power engineering for planning and operating power syste...
With the increased penetration of wind energy into the power grid, it has become increasingly import...
International audienceWe propose a neural network architecture that emulates the behavior of a physi...
The prediction of dynamical stability of power grids becomes more important and challenging with inc...
One of the key challenges for the success of the energy transition towards renewable energies is the...
To analyse the relationship between stability against large perturbations and topological properties...
We introduce three new datasets of synthetically generated power grids. It contains for each grid th...
We propose an end-to-end framework based on a Graph Neural Network (GNN) to balance the power flows ...
In recent years, a large number of photovoltaic (PV) systems have been added to the electrical grid ...
The current standard operational strategy within electrical power systems is done following determin...
Keywords:network theory, power grids, synchronization The synchrony of electric power systems is imp...
Power grids sustain modern society by supplying electricity and thus their stability is a crucial fa...
Worldwide targets are set for the increase of renewable power generation in electricity networks on ...
The reducing cost of renewable energy resources, such as solar photovoltaics (PV) and wind farms, is...
This talk will focus on preliminary results from Reconstructability Analysis (RA) models, Bayesian N...
Power flow analysis is an important tool in power engineering for planning and operating power syste...
With the increased penetration of wind energy into the power grid, it has become increasingly import...
International audienceWe propose a neural network architecture that emulates the behavior of a physi...