Deep Generative Models in Engineering Design: A Review
Lyle Regenwetter, Amin Heyrani Nobari, Faez Ahmed

TL;DR
This review paper discusses the rise and application of deep generative models in engineering design, highlighting recent advances, challenges, and future research directions for automated design synthesis.
Contribution
It provides a comprehensive overview of recent deep generative models used in engineering design, including algorithms, datasets, and applications, and discusses key challenges and future solutions.
Findings
DGMs have rapidly increased in popularity since 2016.
DGMs like GANs, VAEs, and DRL are effective in structural and materials design.
Current challenges include handling constraints and modeling multiple design aspects.
Abstract
Automated design synthesis has the potential to revolutionize the modern engineering design process and improve access to highly optimized and customized products across countless industries. Successfully adapting generative Machine Learning to design engineering may enable such automated design synthesis and is a research subject of great importance. We present a review and analysis of Deep Generative Machine Learning models in engineering design. Deep Generative Models (DGMs) typically leverage deep networks to learn from an input dataset and synthesize new designs. Recently, DGMs such as feedforward Neural Networks (NNs), Generative Adversarial Networks (GANs), Variational Autoencoders (VAEs), and certain Deep Reinforcement Learning (DRL) frameworks have shown promising results in design applications like structural optimization, materials design, and shape synthesis. The prevalence…
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