AI-artifacts in engineering change management – a systematic literature review

被引:0
作者
Peter Burggräf
Johannes Wagner
Till Saßmannshausen
Tim Weißer
Ognjen Radisic-Aberger
机构
[1] University of Siegen,
来源
Research in Engineering Design | 2024年 / 35卷
关键词
Artificial intelligence; Engineering Change; Automation; Engineering Change Management; Machine Learning;
D O I
暂无
中图分类号
学科分类号
摘要
Changes and modifications to existing products, known as engineering changes (EC), are common in complex product development. They require appropriate implementation planning and supervision to mitigate the economic downsides due to complexity. These tasks, however, take a high administrative toll on the organization. In response, automation by computer tools has been suggested. Due to the underlying process complexity, the application of artificial intelligence (AI) is advised. To support research and development of new AI-artifacts for EC management (ECM), a knowledge base is required. Thus, this paper aims to gather insights from existing approaches and discover literature gaps by conducting a systematic literature review. 39 publications applying AI methods and algorithms in ECM were identified and subsequently discussed. The analysis shows that the methods vary and are mostly utilized for predicting change propagation and knowledge retrieval. The review’s results suggest that AI in EC requires developing distributed AI systems to manage the ensuing complexity. Additionally, five concrete suggestions are presented as future research needs: Research on metaheuristics for optimizing EC schedules, testing of stacked machine learning methods for process outcome prediction, establishment of process supervision, development of the mentioned distributed AI systems for automation, and validation with industry partners.
引用
收藏
页码:215 / 237
页数:22
相关论文
共 205 条
[1]  
Arnarsson IÖ(2019)Supporting knowledge re-use with effective searches of related engineering documents - a comparison of search engine and natural language processing-based algorithms Proc Int Conf Eng Des 1 2597-2606
[2]  
Frost O(2021)Natural language processing methods for knowledge management—Applying document clustering for fast search and grouping of engineering documents Concurr Eng 29 142-152
[3]  
Gustavsson E(1996)Managing engineering change: market opportunities and manufacturing costs Prod Oper Manag 5 335-356
[4]  
Stenholm D(2022)Engineering changes - research findings and future directions IJENM 13 66-726
[5]  
Jirstrand M(2001)Engineering change: A theoretical assessment and a case study Production Planning & Control 12 717-376
[6]  
Malmqvist J(2018)Design science research contributions: finding a balance between artifact and theory J Assoc Inform Syst 19 358-19
[7]  
Arnarsson IÖ(2006)Engineering change request management in a new product development process Euro Jrnl of Inn Mnagmnt 9 5-234
[8]  
Frost O(2022)Concepts of change propagation analysis in engineering design Res Eng Design 15 233-352
[9]  
Gustavsson E(2018)Statistics versus machine learning Nat Methods 2 343-143
[10]  
Jirstrand M(2022)Data-based method for the implementation planning of engineering changes in the automotive industry Proc Des Soc 33 132-492