Transforming expertise into Knowledge-Based Engineering tools: A survey of knowledge sourcing in the context of engineering design

作者:

Highlights:

摘要

Research on Engineering Knowledge Management (EKM) has identified challenges with the systematic source of engineering knowledge for the design process optimisation. In this context, Knowledge-Based Engineering (KBE) is acknowledged as a key area within the EKM field and designated by the research community as a potential solution to carry out the effective capture and reuse of expert knowledge. However, papers on KBE for knowledge sourcing are not abundant in the literature and they are also dispersed. From this perspective, this research is an effort to further consolidate the learning gained on industrial practice on how engineering knowledge can be effectively sourced. This is achieved by realising a research survey, where using the resulting insights KBE practice reaching aerospace engineering offices shall be more efficiently delivered through fast and accurate knowledge extraction and encoding into usable methods and tools. The research findings provided by literature survey confirmed the existence of a research gap on knowledge sourcing; and more precisely they underlined the need for an extended KBE development process which integrates Artificial Intelligence (AI) tools and expert intervention to systematically manage the knowledge (using the KM methods and tools) efficiently captured and modelled (employing AI algorithms and expert involvement). Therefore, this paper concludes that there is a need for further research on the knowledge sourcing KBE aspect and presents the integration of KBE systems and AI implementations as a potential solution to develop the extended KBE development process requested by the industry.

论文关键词:Knowledge-based engineering,Knowledge sourcing,Knowledge acquisition,Knowledge capture,Knowledge reuse

论文评审过程:Received 23 October 2014, Revised 11 February 2015, Accepted 1 April 2015, Available online 4 April 2015, Version of Record 13 May 2015.

论文官网地址:https://doi.org/10.1016/j.knosys.2015.04.002