Article ID | Journal | Published Year | Pages | File Type |
---|---|---|---|---|
4976995 | Mechanical Systems and Signal Processing | 2017 | 11 Pages |
Abstract
Our study aims at developing an effective quality monitoring system in small scale resistance spot welding of titanium alloy. The measured electrical signals were interpreted in combination with the nugget development. Features were extracted from the dynamic resistance and electrode voltage curve. A higher welding current generally indicated a lower overall dynamic resistance level. A larger electrode voltage peak and higher change rate of electrode voltage could be detected under a smaller electrode force or higher welding current condition. Variation of the extracted features and weld quality was found more sensitive to the change of welding current than electrode force. Different neural network model were proposed for weld quality prediction. The back propagation neural network was more proper in failure load estimation. The probabilistic neural network model was more appropriate to be applied in quality level classification. A real-time and on-line weld quality monitoring system may be developed by taking advantages of both methods.
Related Topics
Physical Sciences and Engineering
Computer Science
Signal Processing
Authors
Xiaodong Wan, Yuanxun Wang, Dawei Zhao, YongAn Huang,