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Generative Ecodesign for Mechanical Products: A Design Workflow

CLEANER ENGINEERING AND TECHNOLOGY(2025)

Natl Univ Singapore | Nanyang Technol Univ | ASTAR

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Abstract
Harnessing advancements in artificial intelligence, generative design holds great potential to support designers in their ecodesign efforts by enabling them to explore design solutions beyond the limits of their imagination and expertise. However, a systematic literature review on the application of generative design in ecodesign reveals a clear underrepresentation, highlighting a missed opportunity in the field. To bridge this gap, a seven-component generative ecodesign workflow for mechanical products was developed. This workflow combines generative design algorithms, typically used for geometry lightweighting, with life cycle thinking. It facilitates the generation, evaluation, and identification of design solutions by considering the design tri-factor: material choice, manufacturing process, and geometry. This represents the first reported product ecodesign tool to integrate generative design with ecodesign principles while simultaneously addressing all three elements of the design tri-factor. To showcase its utility, environmentally optimal design alternatives were created for a mountain bicycle's handlebar stem.
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Key words
Carbon emission,Generative design,Product design,Environmental sustainability,Ecodesign
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要点】:本文提出了一种结合生成设计算法与生命周期思维的七组件生成性生态设计工作流程,旨在为机械产品的生态设计提供一种全新的解决方案。

方法】:研究通过整合生成设计算法、生命周期评估和设计三要素(材料选择、制造工艺、几何形状)开发了一套生成性生态设计流程。

实验】:研究以山地自行车的把立为案例,使用该工作流程生成了环境最优的设计方案,具体数据集未在摘要中提及。