生成设计
生成语法
计算机科学
本体论
概念设计
人机交互
设计语言
软件工程
系统工程
人工智能
自然语言处理
工程制图
程序设计语言
工程类
公制(单位)
哲学
运营管理
认识论
作者
Liuqing Chen,Haoyu Zuo,Zebin Cai,Yuan Yin,Yuan Zhang,Lingyun Sun,Peter Childs,Boheng Wang
出处
期刊:Journal of Mechanical Design
日期:2024-05-21
卷期号:146 (12)
摘要
Abstract Recent research in the field of design engineering is primarily focusing on using AI technologies such as Large Language Models (LLMs) to assist early-stage design. The engineer or designer can use LLMs to explore, validate, and compare thousands of generated conceptual stimuli and make final choices. This was seen as a significant stride in advancing the status of the generative approach in computer-aided design. However, it is often difficult to instruct LLMs to obtain novel conceptual solutions and requirement-compliant in real design tasks, due to the lack of transparency and insufficient controllability of LLMs. This study presents an approach to leverage LLMs to infer Function–Behavior–Structure (FBS) ontology for high-quality design concepts. Prompting design based on the FBS model decomposes the design task into three sub-tasks including functional, behavioral, and structural reasoning. In each sub-task, prompting templates and specification signifiers are specified to guide the LLMs to generate concepts. User can determine the selected concepts by judging and evaluating the generated function–structure pairs. A comparative experiment has been conducted to evaluate the concept generation approach. According to the concept evaluation results, our approach achieves the highest scores in concept evaluation, and the generated concepts are more novel, useful, functional, and low cost compared to the baseline.
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