Generative VS non-Generative Models in Engineering Shape Optimization
Muhammad Usama, Zahid Masood, Shahroz Khan, Konstantinos Kostas,, Panagiotis Kaklis

TL;DR
This paper compares generative and non-generative models for shape optimization, showing non-generative models can be more effective and efficient in constructing design spaces for airfoil and hydrofoil design.
Contribution
It demonstrates that non-generative models, with proper shape encoding and physics-informed spaces, can outperform generative models in design validity and coverage.
Findings
Non-generative models produce fewer invalid designs.
Non-generative models achieve comparable or better design space coverage.
Cost-effective non-generative approaches can match or outperform generative models.
Abstract
In this work, we perform a systematic comparison of the effectiveness and efficiency of generative and non-generative models in constructing design spaces for novel and efficient design exploration and shape optimization. We apply these models in the case of airfoil/hydrofoil design and conduct the comparison on the resulting design spaces. A conventional Generative Adversarial Network (GAN) and a state-of-the-art generative model, the Performance-Augmented Diverse Generative Adversarial Network (PaDGAN), are juxtaposed with a linear non-generative model based on the coupling of the Karhunen-Lo\`eve Expansion and a physics-informed Shape Signature Vector (SSV-KLE). The comparison demonstrates that, with an appropriate shape encoding and a physics-augmented design space, non-generative models have the potential to cost-effectively generate high-performing valid designs with enhanced…
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Taxonomy
TopicsManufacturing Process and Optimization · Design Education and Practice
