Towards Controllable Generative Design: A Conceptual Design Generation Approach Leveraging the FBS Ontology and Large Language Models

Liuqing Chen, H. Zuo, Zebin Cai, Y. Yin, Yuan Zhang, Lingyun Sun, Peter R.N. Childs, Boheng Wang
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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.
实现可控生成设计:利用 FBS 本体论和大型语言模型的概念设计生成方法
设计工程领域的最新研究主要集中在使用大型语言模型(LLMs)等人工智能技术来辅助早期设计。工程师或设计师可以利用 LLMs 探索、验证和比较成千上万个生成的概念刺激,并做出最终选择。这被视为计算机辅助设计中生成方法地位的重大进步。然而,在实际设计任务中,由于 LLM 缺乏透明度和可控性,往往很难指导 LLM 获得新颖的概念解决方案并符合要求。本研究提出了一种利用 LLM 来推断高质量设计概念的功能-行为-结构(FBS)本体的方法。基于 FBS 模型的提示设计将设计任务分解为三个子任务,包括功能推理、行为推理和结构推理。在每个子任务中,都指定了提示模板和规范符号,以指导 LLM 生成概念。用户可以通过判断和评估生成的功能-结构对来确定所选概念。为了评估概念生成方法,我们进行了一次对比实验。根据概念评估结果,我们的方法在概念评估中得分最高,与基线方法相比,生成的概念更新颖、更有用、更实用、成本更低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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