TY - JOUR
T1 - Online welding status monitoring method of T-joint double-sided double arc welding based on multi-source information fusion
AU - Xu, Fengjing
AU - He, Lei
AU - Hou, Zhen
AU - Zuo, Tianyi
AU - Li, Jiacheng
AU - Jin, Shenghao
AU - Wang, Qiang
AU - Zhang, Huajun
N1 - Publisher Copyright:
© 2024 The Society of Manufacturing Engineers
PY - 2024/8/30
Y1 - 2024/8/30
N2 - In modern manufacturing, double-sided double arc (DSDA) welding brings advantages in properties and efficiency for T-shaped joints. However, the double-side forming makes it difficult to detect the imperfections and ensure weld joint quality, which few studies have covered. Most existing methods deal with single-arc welding with limited sensing sources. To fill the gap, an online welding status monitoring method for DSDA welding is proposed based on the fusion of welding current, arc voltage, arc sound, and weld pool images. In pre-processing, the automatic weld pool region of interest (ROI) detection method based on the lightweight YOLO-L model and the waveform denoising algorithm are designed. In feature engineering, waveform signals are analyzed in both the time and frequency domain. A weld pool feature extractor based on a convolutional neural network (CNN) is proposed with good effectiveness and interpretability. The output feature combination is refined by Fisher-based selection and evaluation. In model building, an ensemble learning model based on three high-fit basic learners is proposed, with an accuracy of 98.538 %. The proposed model shows significant advantages over the single basic classifier and other ensemble methods. Experiments verify high precision and robustness, laying a foundation for accurate real-time monitoring of DSDA welding production.
AB - In modern manufacturing, double-sided double arc (DSDA) welding brings advantages in properties and efficiency for T-shaped joints. However, the double-side forming makes it difficult to detect the imperfections and ensure weld joint quality, which few studies have covered. Most existing methods deal with single-arc welding with limited sensing sources. To fill the gap, an online welding status monitoring method for DSDA welding is proposed based on the fusion of welding current, arc voltage, arc sound, and weld pool images. In pre-processing, the automatic weld pool region of interest (ROI) detection method based on the lightweight YOLO-L model and the waveform denoising algorithm are designed. In feature engineering, waveform signals are analyzed in both the time and frequency domain. A weld pool feature extractor based on a convolutional neural network (CNN) is proposed with good effectiveness and interpretability. The output feature combination is refined by Fisher-based selection and evaluation. In model building, an ensemble learning model based on three high-fit basic learners is proposed, with an accuracy of 98.538 %. The proposed model shows significant advantages over the single basic classifier and other ensemble methods. Experiments verify high precision and robustness, laying a foundation for accurate real-time monitoring of DSDA welding production.
KW - Arc sensing
KW - Ensemble learning
KW - Multi-source information fusion
KW - Visual sensing
KW - Welding status monitoring
UR - http://www.scopus.com/inward/record.url?scp=85198240501&partnerID=8YFLogxK
U2 - 10.1016/j.jmapro.2024.06.059
DO - 10.1016/j.jmapro.2024.06.059
M3 - Article
AN - SCOPUS:85198240501
SN - 1526-6125
VL - 124
SP - 1485
EP - 1505
JO - Journal of Manufacturing Processes
JF - Journal of Manufacturing Processes
ER -