Author:
Zhuang Cunbo,Liu Ziwen,Liu Jianhua,Ma Hailong,Zhai Sikuan,Wu Ying
Abstract
AbstractThe assembly process of aerospace products such as satellites and rockets has the characteristics of single- or small-batch production, a long development period, high reliability, and frequent disturbances. How to predict and avoid quality abnormalities, quickly locate their causes, and improve product assembly quality and efficiency are urgent engineering issues. As the core technology to realize the integration of virtual and physical space, digital twin (DT) technology can make full use of the low cost, high efficiency, and predictable advantages of digital space to provide a feasible solution to such problems. Hence, a quality management method for the assembly process of aerospace products based on DT is proposed. Given that traditional quality control methods for the assembly process of aerospace products are mostly post-inspection, the Grey-Markov model and T-K control chart are used with a small sample of assembly quality data to predict the value of quality data and the status of an assembly system. The Apriori algorithm is applied to mine the strong association rules related to quality data anomalies and uncontrolled assembly systems so as to solve the issue that the causes of abnormal quality are complicated and difficult to trace. The implementation of the proposed approach is described, taking the collected centroid data of an aerospace product’s cabin, one of the key quality data in the assembly process of aerospace products, as an example. A DT-based quality management system for the assembly process of aerospace products is developed, which can effectively improve the efficiency of quality management for the assembly process of aerospace products and reduce quality abnormalities.
Funder
National Key Research and Development Program of China
National Natural Science Foundation of China
National Defense Fundamental Research Foundation of China
Equipment Pre-research Foundation of China
Beijing Institute of Technology Research Fund Program for Young Scholars
Publisher
Springer Science and Business Media LLC
Subject
Industrial and Manufacturing Engineering,Mechanical Engineering
Reference34 articles.
1. L P Liu, F Zhu, J Chen, et al. A quality control method for complex product selective assembly processes. International Journal of Production Research, 2013, 51(18): 5437-5449.
2. C Zhuang, J Gong, J Liu. Digital twin-based assembly data management and process traceability for complex products. Journal of Manufacturing Systems, 2021, 58: 118-131.
3. Y Hong. Data mining for classroom teaching quality based on fuzzy comprehensive evaluation. Computer Science, 2008, 35(2): 154-156, 170.
4. S Zheng. Dynamic quality control in assembly systems. LIE Transactions, 2000, 32: 797–806.
5. E J Tuegel, A R Ingraffea, T G Eason, et al. Reengineering aircraft structural life prediction using a digital twin. International Journal of Aerospace Engineering, 2011: 15498.
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