TopoCtrl: Post-Optimization Topology Editing Toward Target Structural Characteristics
Hongrui Chen, Dat Quoc Ha, Josephine V. Carstensen, Faez Ahmed

TL;DR
TopoCtrl is a novel post-optimization framework that enables explicit control over structural characteristics of topologies by leveraging a latent diffusion model and a regression-guided denoising process.
Contribution
It introduces a new method to directly manipulate structural features in topology optimization results without complex reformulations or iterative procedures.
Findings
Achieves target-aligned topology modifications with preserved structural coherence.
Outperforms naive geometric post-processing in controlling structural characteristics.
Effectively handles both continuous and discrete structural features.
Abstract
Topology optimization can generate high-performance structures, but designers often need to revise the resulting topology in ways that reflect fabrication preferences, structural intuition, or downstream design constraints. In particular, they may wish to explicitly control interpretable structural characteristics such as member thickness, characteristic member length, the number of joints, or the number of members connected to a joint. These quantities are often discrete, non-smooth, or only available through a forward evaluation procedure, making them difficult to impose within conventional optimization pipelines. We present TopoCtrl, a post-optimization control framework that repurposes the latent space of a pre-trained topology foundation model for explicit characteristic-guided editing. Given an optimized topology, TopoCtrl encodes it into the latent space of a latent diffusion…
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