GLUE: Generative Latent Unification of Expertise-Informed Engineering Models
By: Tim Aebersold, Soheyl Massoudi, Mark D. Fuge
Potential Business Impact:
Designs complex machines faster and better.
Engineering complex systems (aircraft, buildings, vehicles) requires accounting for geometric and performance couplings across subsystems. As generative models proliferate for specialized domains (wings, structures, engines), a key research gap is how to coordinate frozen, pre-trained submodels to generate full-system designs that are feasible, diverse, and high-performing. We introduce Generative Latent Unification of Expertise-Informed Engineering Models (GLUE), which orchestrates pre-trained, frozen subsystem generators while enforcing system-level feasibility, optimality, and diversity. We propose and benchmark (i) data-driven GLUE models trained on pre-generated system-level designs and (ii) a data-free GLUE model trained online on a differentiable geometry layer. On a UAV design problem with five coupling constraints, we find that data-driven approaches yield diverse, high-performing designs but require large datasets to satisfy constraints reliably. The data-free approach is competitive with Bayesian optimization and gradient-based optimization in performance and feasibility while training a full generative model in only 10 min on a RTX 4090 GPU, requiring more than two orders of magnitude fewer geometry evaluations and FLOPs than the data-driven method. Ablations focused on data-free training show that subsystem output continuity affects coordination, and equality constraints can trigger mode collapse unless mitigated. By integrating unmodified, domain-informed submodels into a modular generative workflow, this work provides a viable path for scaling generative design to complex, real-world engineering systems.
Similar Papers
Case Studies of Generative Machine Learning Models for Dynamical Systems
Systems and Control
AI learns to make airplane simulations more real.
UniUGP: Unifying Understanding, Generation, and Planing For End-to-end Autonomous Driving
CV and Pattern Recognition
Helps self-driving cars learn from more videos.
REGLUE Your Latents with Global and Local Semantics for Entangled Diffusion
CV and Pattern Recognition
Makes AI draw better pictures faster.