Abstract
The application of non-destructive evaluation approaches has attracted strong interests in modern automotive industries. This study presents an autonomous deep-computing framework to analyze raw videos from infrared systems and to predict weld nugget shape and size with unprecedented accuracy and speed. In a comprehensive training and testing experiment with 90 videos (seven sets of welding material stack-ups), a new method was developed to assemble sufficient datasets for neural network training. Our framework successfully predicts all the nugget shapes with F1 scores that range from 0.84 to 0.92. The total training time on Nvidia DGX station takes less than 10 min for each set of welding material stack-up. The real inference time of an individual dataset (with 30 video frames) takes about 0.005 s. The procedure and methods developed in the study can be applied to other image-based weld property prediction, as well as other manufacturing processes. Furthermore, our well-trained neural networks take limited memory resources (2.3 MB) and are suitable for embedded microprocessors for in-situ welding quality control as edge computing within an intelligent welding framework.
| Original language | English |
|---|---|
| Article number | 102183 |
| Journal | Robotics and Computer-Integrated Manufacturing |
| Volume | 72 |
| DOIs | |
| State | Published - Dec 2021 |
Funding
This research was partially funded by the US Department of Energy, Office of Nuclear Energy (Advanced Methods for Manufacturing Program), Office of Science (Advanced Scientific Computing Research Program), and the AI Initiative at Oak Ridge National Laboratory. The research used computing resources within the Computing and Data Environment for Science at Oak Ridge National Laboratory, which is managed by UT-Battelle LLC for the Department of Energy. This research was partially funded by the US Department of Energy , Office of Nuclear Energy (Advanced Methods for Manufacturing Program), Office of Science (Advanced Scientific Computing Research Program), and the AI Initiative at Oak Ridge National Laboratory. The research used computing resources within the Computing and Data Environment for Science at Oak Ridge National Laboratory, which is managed by UT-Battelle LLC for the Department of Energy.
Keywords
- Artificial intelligence
- Autonomous prediction
- Deep neural network
- Nondestructive evaluation
- Spot welding
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Dive into the research topics of 'Autonomous nondestructive evaluation of resistance spot welded joints'. Together they form a unique fingerprint.Datasets
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A Labelled training and testing dataset for autonomous non-destructive evaluation for Resistance SPOT welding
Wang, D. (Creator), Zhou, J. (Creator), Chen, J. (Creator) & Feng, Z. (Creator), Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (United States). Oak Ridge Leadership Computing Facility (OLCF); Oak Ridge National Laboratory (ORNL), Oak Ridge, TN (United States), Sep 4 2019
Dataset