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Journal of Graphics ›› 2025, Vol. 46 ›› Issue (4): 864-873.DOI: 10.11996/JG.j.2095-302X.2025040864

• Digital Design and Manufacture • Previous Articles     Next Articles

Data mining and deep structured semantic model-based process sequence recommendation method

ZHENG Jiahui(), GUO Yu, WU Tao, WANG Shengbo, HUANG Shaohua(), ZHENG Kaiwen   

  1. College of Mechanical & Electrical Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing Jiangsu 210016, China
  • Received:2024-09-25 Revised:2024-12-26 Online:2025-08-30 Published:2025-08-11
  • Contact: HUANG Shaohua
  • About author:First author contact:

    ZHENG Jiahui (2000-), master student. His main research interests cover intelligent manufacturing, digital manufacturing and artificial intelligence. E-mail:zheng_jiahui@nuaa.edu.cn

  • Supported by:
    China Aeronautical Science Foundation(2023M043052001)

Abstract:

To address the challenge of “data overload” encountered with traditional “experience-driven” methods in aerospace manufacturing process designs, we propose a process sequence recommendation method based on data mining and deep semantic models. This method integrates the PrefixSpan algorithm and BERT to extract typical manufacturing process sequences and their associated capabilities from component instance data, thereby constructing a reusable and updatable manufacturing process knowledge base. Building on this foundation, an enhanced spatial channel attention mechanism is introduced to accommodate the characteristics of aerospace manufacturing data, enabling implicit feature extraction form part instance data. Additionally, to mitigate the “cold start” issue caused by the uneven component instance distribution, self-supervised learning is employed to uncover the deep structure of the data, thereby ensuring the model’s generalization ability and improving its capability to learn from small sample instances. By combining a dual-channel attention-based deep semantic model with self-supervised learning, this approach effectively extract features, acquire knowledge, and accurately recommend process sequences suitable for aerospace manufacturing, even in the presence of data imbalance. Finally, a case study involving a specific aerospace component was conducted to validate the proposed method. Experimental results demonstrate that this method consistently outperforms benchmark models across various metrics in manufacturing process sequence recommendation, confirming its effectiveness and fulfilling the intelligent process design requirements of aerospace engineers.

Key words: data mining, self-supervised learning, deep semantic models, aviation complex parts, manufacturing sequence recommendation

CLC Number: