Abstract
Data, information and knowledge are strongly involved in Engineering Design (ED) process. Despite the crucial role played by data in the design process, there is a lack of studies about how different data are used and generated by the various phases of the ED process. This study is a first attempt to fill this gap by mapping which data types are involved in the different ED phases from a research perspective. In order to achieve this objective, we used a methodology based on Text Mining. Firstly, we retrieve a corpus of scientific papers related to ED; then, we build two lexicons to recognize ED phases and data types; finally, we collect these entities within ED papers and map the relations between them. The methodology application allows the building of a network graph for visualizing the relations among data lexicon and ED lexicon. Then, we investigate the specific relations among data types and ED phases by building a heatmap to investigate data types from 3 different perspective. The insight coming from our analysis shows that ED studies have a great potential in the usage of many data sources, but also that there exist some gaps to be solved in order to reach a more effective data usage in the context of ED.
Author supplied keywords
Cite
CITATION STYLE
Chiarello, F., Coli, E., Giordano, V., Fantoni, G., & Bonaccorsi, A. (2021). Data for engineering design: Maps and gaps. In Proceedings of the Design Society (Vol. 1, pp. 821–830). Cambridge University Press. https://doi.org/10.1017/pds.2021.82
Register to see more suggestions
Mendeley helps you to discover research relevant for your work.