TY - JOUR
T1 - A digital twin-driven human-machine interactive assembly method based on lightweight multi-target detection and assembly feature generation
AU - Cheng, Dinghao
AU - Hu, Bingtao
AU - Feng, Yixiong
AU - Yang, Jiangxin
AU - Wang, Baicun
AU - Gong, Hao
AU - Tan, Jianrong
N1 - Publisher Copyright:
© 2024 Informa UK Limited, trading as Taylor & Francis Group.
PY - 2024
Y1 - 2024
N2 - In the field of industrial assembly, human-machine interactive assembly methods are frequently used. Lack of virtual and physical mapping, a convoluted guiding system, and low effect precision in the interactive process, a digital twin-driven human-machine interactive assembly method system is proposed as a solution to the mentioned issues. The YOLOv7-tiny lightweight model is used to perform accurate detection of parts. By incorporating attention modules into the backbone network, the feature extraction capability of the model in complicated assembly environments is enhanced. The assembly method proposed is validated using the assembly process of the reducer as an instance. The OpenCV method is employed to produce geometric reference features for parts. The experimental results show that the proposed assembly method can provide visual guidance for the assembly process, improve the traditional list-type assembly component retrieval method, solve the drawbacks of the pre-set assembly guidance in the guidance system that may not be able to adapt to the changes of the assembly results in the actual operation, and can accurately instruct novices how to assemble, which is characterised by easy implementation, low cost and high accuracy, and is of great significance for improving the success rate and assembly efficiency of human-machine interactive assembly.
AB - In the field of industrial assembly, human-machine interactive assembly methods are frequently used. Lack of virtual and physical mapping, a convoluted guiding system, and low effect precision in the interactive process, a digital twin-driven human-machine interactive assembly method system is proposed as a solution to the mentioned issues. The YOLOv7-tiny lightweight model is used to perform accurate detection of parts. By incorporating attention modules into the backbone network, the feature extraction capability of the model in complicated assembly environments is enhanced. The assembly method proposed is validated using the assembly process of the reducer as an instance. The OpenCV method is employed to produce geometric reference features for parts. The experimental results show that the proposed assembly method can provide visual guidance for the assembly process, improve the traditional list-type assembly component retrieval method, solve the drawbacks of the pre-set assembly guidance in the guidance system that may not be able to adapt to the changes of the assembly results in the actual operation, and can accurately instruct novices how to assemble, which is characterised by easy implementation, low cost and high accuracy, and is of great significance for improving the success rate and assembly efficiency of human-machine interactive assembly.
KW - assembly method
KW - Digital twin
KW - human-machine interaction
KW - lightweight
KW - multi-target detection
UR - http://www.scopus.com/inward/record.url?scp=85194578346&partnerID=8YFLogxK
U2 - 10.1080/00207543.2024.2354853
DO - 10.1080/00207543.2024.2354853
M3 - Article
AN - SCOPUS:85194578346
SN - 0020-7543
JO - International Journal of Production Research
JF - International Journal of Production Research
ER -