Engineering design research integrating artificial intelligence (AI) into computer-aided design (CAD) and computer-aided engineering (CAE) is actively being conducted. This study proposes a deep learning-based CAD/CAE framework in the conceptual design phase that automatically generates 3D CAD designs and evaluates their engineering performance. The proposed framework comprises seven stages: (1) 2D generative design, (2) dimensionality reduction, (3) design of experiment in latent space, (4) CAD automation, (5) CAE automation, (6) transfer learning, and (7) visualization and analysis. The proposed framework is demonstrated through a road wheel design case study and indicates that AI can be practically incorporated into an end-use product design project. Engineers and industrial designers can jointly review a large number of generated 3D CAD models by using this framework along with the engineering performance results estimated by AI and find conceptual design candidates for the subsequent detailed design stage.
翻译:目前正在积极进行将人工智能(AI)纳入计算机辅助设计(CAD)和计算机辅助工程(CAE)的工程设计研究,该研究提议在概念设计阶段建立一个深层次的基于学习的CAD/CAE框架,自动生成3D CAD设计并评估其工程性能,拟议框架包括七个阶段:(1) 2D 基因设计,(2) 维度降低,(3) 潜层实验设计,(4) CAD自动化,(5) CAE自动化,(6) 转移学习,(7) 可视化和分析,拟议框架通过道路轮式设计案例研究得到证明,表明可实际将AI纳入最终用途产品设计项目,工程师和工业设计师可联合审查大量生成的3D CAD模型,同时使用AI估计的工程性能结果,并为随后的详细设计阶段寻找概念设计候选人。