Exploring Variational Graph Autoencoders for Distribution Grid Data Generation
By: Syed Zain Abbas, Ehimare Okoyomon
Potential Business Impact:
Creates fake power grids for computer learning.
To address the lack of public power system data for machine learning research in energy networks, we investigate the use of variational graph autoencoders (VGAEs) for synthetic distribution grid generation. Using two open-source datasets, ENGAGE and DINGO, we evaluate four decoder variants and compare generated networks against the original grids using structural and spectral metrics. Results indicate that simple decoders fail to capture realistic topologies, while GCN-based approaches achieve strong fidelity on ENGAGE but struggle on the more complex DINGO dataset, producing artifacts such as disconnected components and repeated motifs. These findings highlight both the promise and limitations of VGAEs for grid synthesis, underscoring the need for more expressive generative models and robust evaluation. We release our models and analysis as open source to support benchmarking and accelerate progress in ML-driven power system research.
Similar Papers
Data Enrichment Opportunities for Distribution Grid Cable Networks using Variational Autoencoders
Machine Learning (CS)
Fixes missing info in power lines for better upkeep.
VAE-based Feature Disentanglement for Data Augmentation and Compression in Generalized GNSS Interference Classification
Machine Learning (CS)
Makes GPS signals work better by shrinking data.
Distribution Matching Variational AutoEncoder
CV and Pattern Recognition
Makes AI draw better pictures by changing how it learns.