Data-driven conceptual design methods and tools aim to inspire human ideation for new design concepts by providing external inspirational stimuli. In prior studies, the stimuli have been limited in terms of coverage, granularity, and retrieval guidance. Here, we present a knowledge based expert system that provides design stimuli across the semantic, document and field levels simultaneously from all fields of engineering and technology and that follows creativity theories to guide the retrieval and use of stimuli according to the knowledge distance. The system is centered on the use of a network of all technology fields in the patent classification system, to store and organize the world's cumulative data on the technological knowledge, concepts, and solutions in the total patent database according to statistically estimated knowledge distance between technology fields. In turn, knowledge distance guides the network-based exploration and retrieval of inspirational stimuli for inferences across near and far fields to generate new design ideas by analogy and combination. With two case studies, we showcase the effectiveness of using the system to explore and retrieve multilevel inspirational stimuli and generate new design ideas for both problem solving and open ended innovation. These case studies also demonstrate the computer aided ideation process, which is data-driven, computationally augmented, theoretically grounded, visually inspiring, and rapid.
翻译:由数据驱动的概念设计方法和工具旨在通过提供外部激励刺激刺激,激发人类对新设计概念的观念。在以前的研究中,刺激在覆盖面、颗粒度和检索指导方面受到限制。在这里,我们提出了一个以知识为基础的专家系统,从所有工程和技术领域同时提供语义、文档和实地层次的设计刺激,并遵循创造性理论,以指导根据知识距离检索和使用刺激新概念。该系统以利用专利分类系统中所有技术领域的网络为中心,储存和组织全世界关于技术知识、概念和解决方案的累积数据,根据统计估计技术领域之间的知识距离,在全部专利数据库中加以储存和组织。反过来,知识远程指导网络的探索和检索,从所有工程和技术领域同时提供启发性刺激,通过类比和组合产生新的设计构想。通过两个案例研究,我们展示了利用该系统探索和检索多层次激励性系统的有效性,并生成关于技术知识知识、概念、概念和解决方案的积累,以便根据统计估计技术领域之间的距离。这些案例研究还指导基于网络的探索和检索的启发性激励力,还展示了快速的计算机升级和快速驱动的计算过程。