Successful material selection is critical in designing and manufacturing products for design automation. Designers leverage their knowledge and experience to create high-quality designs by selecting the most appropriate materials through performance, manufacturability, and sustainability evaluation. Intelligent tools can help designers with varying expertise by providing recommendations learned from prior designs. To enable this, we introduce a graph representation learning framework that supports the material prediction of bodies in assemblies. We formulate the material selection task as a node-level prediction task over the assembly graph representation of CAD models and tackle it using Graph Neural Networks (GNNs). Evaluations over three experimental protocols performed on the Fusion 360 Gallery dataset indicate the feasibility of our approach, achieving a 0.75 top-3 micro-f1 score. The proposed framework can scale to large datasets and incorporate designers' knowledge into the learning process. These capabilities allow the framework to serve as a recommendation system for design automation and a baseline for future work, narrowing the gap between human designers and intelligent design agents.
翻译:成功的材料选择对于设计和制造设计自动化所需的产品至关重要。设计者利用其知识和经验,通过性能、制造业和可持续性评价选择最合适的材料,从而创造高质量的设计。智能工具可以帮助具有不同专门知识的设计者,提供从先前设计中获得的建议。为此,我们引入了一个图形代表学习框架,支持对集会机构进行材料预测。我们将材料选择任务作为CAD模型组装图的节点预测任务,并利用图形神经网络(GNNSs)来解决这个问题。在Fusion 360图片库数据集上进行的三项实验协议的评估表明了我们的方法的可行性,实现了0.75至3的顶级微f1分。拟议的框架可以扩大数据集的规模,并将设计者的知识纳入学习过程。这些能力使得框架成为设计自动化的建议系统和未来工作的基线,缩小了人类设计者和智能设计剂之间的差距。