doi.org
Flow Battery Manifold Design With Heterogeneous Inputs Through Generative Adversarial Neural Networks
August 2025 • Eric Seng, Hugh O’Connor, Adam M. Boyce, Josh J. Bailey, Anton van Beek
Abstract Generative machine learning has emerged as a powerful tool for design representation and exploration. However, its application is often constrained by the need for large datasets of existing designs and the lack of interpretability about what features drive optimality. To address these challenges, we introduce a systematic framework for constructing training datasets tailored to generative models and demonstrate how these models can be leveraged for interpretable design. The novelty of this work is twofol…