TL;DR
This paper introduces IH-GAN, a conditional generative model that accurately maps material properties to complex unit cell geometries for cellular structures, enhancing design flexibility and structural performance.
Contribution
It proposes a novel implicit function parameterization combined with a deep generative model to improve inverse design of cellular structures based on desired properties.
Findings
High accuracy in property-to-geometry mapping ($R^2$ > 98%)
Significant reduction in structural stress and displacement
Effective generation of diverse unit cells satisfying target properties
Abstract
Variable-density cellular structures can overcome connectivity and manufacturability issues of topologically optimized structures, particularly those represented as discrete density maps. However, the optimization of such cellular structures is challenging due to the multiscale design problem. Past work addressing this problem generally either only optimizes the volume fraction of single-type unit cells but ignores the effects of unit cell geometry on properties, or considers the geometry-property relation but builds this relation via heuristics. In contrast, we propose a simple yet more principled way to accurately model the property to geometry mapping using a conditional deep generative model, named Inverse Homogenization Generative Adversarial Network (IH-GAN). It learns the conditional distribution of unit cell geometries given properties and can realize the one-to-many mapping…
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