论文标题
使用生成的预训练的变压器生物学启发的设计概念生成
Biologically Inspired Design Concept Generation Using Generative Pre-Trained Transformers
论文作者
论文摘要
自然界中的生物系统已经发展了数百万年,以适应环境和生存。他们开发的许多功能对于解决现代行业的技术问题可能是鼓舞人心的和有益的。这导致了一种特定形式的划分形式,称为生物风格的设计(BID)。尽管已证明出价作为设计方法有益,但生物学与工程之间的差距不断阻碍设计师有效地应用该方法。因此,我们探索了人工智能(AI)的最新进展,以弥合数据驱动的方法。本文提出了一种基于生成培训的语言模型(PLM)的生成设计方法,以自动检索和映射生物学类比,并以自然语言的形式产生出价。最新的生成预训练的变压器,即GPT-3,用作基本PLM。根据问题空间表示的松弛,从PLM识别并微调了三种类型的设计概念生成器。机器评估器也经过微调,以评估生成的投标概念中域之间的映射相关性。该方法被评估,然后在一个现实世界中使用,该项目在其概念设计阶段设计轻加权飞行汽车的结果表明,我们的方法可以产生良好的性能的投标概念。
Biological systems in nature have evolved for millions of years to adapt and survive the environment. Many features they developed can be inspirational and beneficial for solving technical problems in modern industries. This leads to a specific form of design-by-analogy called bio-inspired design (BID). Although BID as a design method has been proven beneficial, the gap between biology and engineering continuously hinders designers from effectively applying the method. Therefore, we explore the recent advance of artificial intelligence (AI) for a data-driven approach to bridge the gap. This paper proposes a generative design approach based on the generative pre-trained language model (PLM) to automatically retrieve and map biological analogy and generate BID in the form of natural language. The latest generative pre-trained transformer, namely GPT-3, is used as the base PLM. Three types of design concept generators are identified and fine-tuned from the PLM according to the looseness of the problem space representation. Machine evaluators are also fine-tuned to assess the mapping relevancy between the domains within the generated BID concepts. The approach is evaluated and then employed in a real-world project of designing light-weighted flying cars during its conceptual design phase The results show our approach can generate BID concepts with good performance.