TRIZ-GPT: An LLM-Augmented Method For Problem-Solving

Abstract

TRIZ, the Theory of Inventive Problem Solving, is derived from a comprehensive analysis of patents across various domains, offering a framework and practical tools for problem-solving. Despite its potential to foster innovative solutions, the complexity and abstractness of TRIZ methodology often make its application challenging. This can require users to have a deep understanding of the theory, as well as substantial practical experience and knowledge across various disciplines. The advent of Large Language Models (LLMs) presents an opportunity to address these challenges by leveraging their extensive knowledge bases and reasoning capabilities for innovative solution generation within TRIZ-based problem-solving process. This study explores and evaluates the application of LLMs within the TRIZ-based problem-solving process. The construction of TRIZ case collections establishes a solid empirical foundation for our experiments and offers valuable resources to the TRIZ community. A specifically designed workflow, utilizing step-by-step reasoning and evaluation-validated prompt strategies, effectively transforms concrete problems into TRIZ problems and finally generates inventive solutions. We present a case study in the mechanical engineering field that highlights the practical application of this LLM-augmented method. This showcases GPT-4’s ability to generate solutions that closely resonate with original solutions and suggests more implementation mechanisms.

Publication
In International Design Engineering Technical Conferences and Computers and Information in Engineering Conference
陈柳青
陈柳青
博士生导师

主要研究方向:智能设计,智能交互,设计大数据,创意设计,AR/VR,用户体验,Web前端/UI。

宋亚轩
宋亚轩
2023级博士生
丁世贤
丁世贤
2024级硕士生