Paper
29 August 2024 Research on quality prediction of resistance spot welding based on knowledge graph
Zhen Zhang, Yan Jiang
Author Affiliations +
Proceedings Volume 13249, International Conference on Computer Vision, Robotics, and Automation Engineering (CRAE 2024); 132490B (2024) https://doi.org/10.1117/12.3041836
Event: 2024 International Conference on Computer Vision, Robotics and Automation Engineering, 2024, Kunming, China
Abstract
Welding data has a dual dependence on time and space. A welding defect prediction model based on Graph Convolutional Neural Network (GCN) and Long Short Term Memory Network (LSTM) is proposed to address the issue of insufficient spatiotemporal feature extraction in previous welding defect prediction. Taking real-time welding data from automobile factories as the research object, combined with knowledge of welding fragmentation and diversity, a welding defect knowledge graph based on root cause analysis was established for the first time. Then, use graph convolutional neural network GCN to capture the spatial relationships of each input node, and use LSTM to capture the temporal changes of welding data. Fusion features are used to predict welding defects. Compared with classical models such as GCN and LSTM, the proposed GCN-LSTM model improves accuracy and performs better in evaluation metrics such as accuracy, ROC curve, AUC, and recall curve. This study has reference significance for optimizing welding processes and improving welding quality.
(2024) Published by SPIE. Downloading of the abstract is permitted for personal use only.
Zhen Zhang and Yan Jiang "Research on quality prediction of resistance spot welding based on knowledge graph", Proc. SPIE 13249, International Conference on Computer Vision, Robotics, and Automation Engineering (CRAE 2024), 132490B (29 August 2024); https://doi.org/10.1117/12.3041836
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KEYWORDS
Feature extraction

Machine learning

Convolutional neural networks

Defect detection

Feature fusion

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