PowerFlowNet

Power flow approximation using message passing Graph Neural Networks

Journal Article (2024)
Author(s)

N. Lin (TU Delft - Intelligent Electrical Power Grids)

S. Orfanoudakis (TU Delft - Intelligent Electrical Power Grids)

Nathan Ordonez Cardenas (Student TU Delft)

Juan S. Giraldo (TNO Amsterdam)

Pedro Pablo Vergara (TU Delft - Intelligent Electrical Power Grids)

Research Group
Intelligent Electrical Power Grids
DOI related publication
https://doi.org/10.1016/j.ijepes.2024.110112
More Info
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Publication Year
2024
Language
English
Research Group
Intelligent Electrical Power Grids
Volume number
160
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Abstract

Accurate and efficient power flow (PF) analysis is crucial in modern electrical networks’ operation and planning. Therefore, there is a need for scalable algorithms that can provide accurate and fast solutions for both small and large scale power networks. As the power network can be interpreted as a graph, Graph Neural Networks (GNNs) have emerged as a promising approach for improving the accuracy and speed of PF approximations by exploiting information sharing via the underlying graph structure. In this study, we introduce PowerFlowNet, a novel GNN architecture for PF approximation that showcases similar performance with the traditional Newton–Raphson method but achieves it 4 times faster in the IEEE 14-bus system and 48 times faster in the realistic case of the French high voltage network (6470rte). Meanwhile, it significantly outperforms other traditional approximation methods, such as the DC power flow, in terms of performance and execution time; therefore, making PowerFlowNet a highly promising solution for real-world PF analysis. Furthermore, we verify the efficacy of our approach by conducting an in-depth experimental evaluation, thoroughly examining the performance, scalability, interpretability, and architectural dependability of PowerFlowNet. The evaluation provides insights into the behavior and potential applications of GNNs in power system analysis.