Deep Concept Identification for Generative Design
Ryo Tsumoto, Kentaro Yaji, Yutaka Nomaguchi, Kikuo Fujita

TL;DR
This paper introduces a deep learning framework for concept identification in generative design, enabling effective categorization of diverse structural alternatives to assist designers in decision-making.
Contribution
It proposes a novel deep learning-based approach combining generative modeling, clustering, and classification to structure and interpret design alternatives.
Findings
Successfully applied to a 2D bridge design case study
Generated and categorized diverse design alternatives
Presented concepts and relationships via decision tree
Abstract
A generative design based on topology optimization provides diverse alternatives as entities in a computational model with a high design degree. However, as the diversity of the generated alternatives increases, the cognitive burden on designers to select the most appropriate alternatives also increases. Whereas the concept identification approach, which finds various categories of entities, is an effective means to structure alternatives, evaluation of their similarities is challenging due to shape diversity. To address this challenge, this study proposes a concept identification framework for generative design using deep learning (DL) techniques. One of the key abilities of DL is the automatic learning of different representations of a specific task. Deep concept identification finds various categories that provide insights into the mapping relationships between geometric properties…
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Taxonomy
TopicsManufacturing Process and Optimization · Image Processing and 3D Reconstruction
MethodsLogistic Regression
