RESEARCH ON DESIGN AND QUALITY TRACEABILITY OF AERO-ENGINE PRODUCTION BASED ON CBR
Volume 6, Issue 3, Pp 38-43, 2024
DOI: 10.61784/jcsee3015
Author(s)
JunShi Luo1, Qiong He1*, Shuang Yu2
Affiliation(s)
1School of Management Information and Engineering, Beijing Information Science and Technology University, Beijing, 100192, China.
2Aero Engine Academy of China, Beijing, 101399, China.
Corresponding Author
Qiong He
ABSTRACT
Productivity and traceability play an important role in aero-engine production. Aero-engine production is complex and there are many factors affecting its quality. CBR plays a significant role in this field. CBR model construction includes key technologies such as case entry, retrieval, revision and update. In terms of productive application, CBR can provide historical data reference, comprehensively evaluate performance indicators, consider cost factors, assist in evaluating manufacturability and reduce design risks. In the application of traceability, CBR is helpful to trace the source and use of parts, the history of production technology, the historical data of quality inspection, the history of failure and maintenance, and the performance and changes of raw materials. Through CBR technology, the productive design can be carried out in the product development stage, and the whole process of engine production can be effectively monitored and traced.
KEYWORDS
CBR case-based reasoning; Aero-engine manufacturing; Productivity; Traceability
CITE THIS PAPER
JunShi Luo, Qiong He, Shuang Yu. Research on design and quality traceability of aero-engine production based on CBR. Journal of Computer Science and Electrical Engineering. 2024, 6(3): 38-43. DOI: 10.61784/jcsee3015.
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