Process Monitoring in Friction Stir Welding Using Convolutional Neural Networks
Abstract
:1. Introduction
2. Related Work
- CNNs provide greater accuracy than FCNNs and RNNs do for detecting cavities.
- A non-destructive, data-based, and segment-wise prediction of cavities is possible.
3. Experimental Procedure
3.1. Welding Experiments
3.2. Data Acquisition and Pre-Processing
3.3. Material Testing
3.4. Artificial Neural Network (ANN) Modeling, Training, Validation, and Test
4. Experimental Results
4.1. Data Set
4.2. Comparison of Different Process Variables
4.3. Dependence of the Validation Accuracy on the Sampling Rate and the Amount of Training Data
5. Discussion
- By using the CNN, a higher prediction accuracy was achieved than by using the FCNN or the RNN.
- It could be shown that a non-destructive, data-based, and segment-wise prediction of cavities is possible.
- To further increase the prediction accuracy, it is recommended to improve the quality of the training data in future research work. An identification of the cavities in the welds used for training the CNNs by means of phased array ultrasonics or computed tomography scans could significantly increase the accuracy, but will also considerably raise the cost for the weld inspection.
- Further prospective research should also address the question of whether other welding imperfections (e.g., internal imperfections such as the hook and root flaws such as the bonded joint remnant [30]) can be recognized by evaluating the process variables using CNNs.
- Another future step should be the combination of the presented approach for process monitoring by means of ANNs with an intelligent process optimization. Promising modern algorithms for the optimization of the process parameters in FSW are Bayesian optimization and reinforcement learning [31].
- It is assumed that the presented approach is also applicable in other welding techniques. One example could be the monitoring of optical coherence tomography data in laser beam welding [32]. This must be verified.
6. Conclusions
- CNNs are well suited for process monitoring in FSW. This applies to both surface defects and internal defects.
- When evaluating the accuracy achieved when using ANNs, it must be considered whether the welds were labeled uniformly or segment-wise.
- The prediction accuracy when applying CNNs for process monitoring in FSW initially increases significantly with an increasing sampling rate and with a growing amount of training data. However, as the sampling rate and the amount of training data continue to rise, the rate of improvement of the prediction accuracy drops.
Supplementary Materials
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
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Probe Radius rP | Shoulder Radius rS | Conical Probe Angle β | Probe Length hP | Concave Shoulder Angle γ |
---|---|---|---|---|
3 mm | 7 mm | 10° | 3.7 mm | 10° |
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Hartl, R.; Bachmann, A.; Habedank, J.B.; Semm, T.; Zaeh, M.F. Process Monitoring in Friction Stir Welding Using Convolutional Neural Networks. Metals 2021, 11, 535. https://doi.org/10.3390/met11040535
Hartl R, Bachmann A, Habedank JB, Semm T, Zaeh MF. Process Monitoring in Friction Stir Welding Using Convolutional Neural Networks. Metals. 2021; 11(4):535. https://doi.org/10.3390/met11040535
Chicago/Turabian StyleHartl, Roman, Andreas Bachmann, Jan Bernd Habedank, Thomas Semm, and Michael F. Zaeh. 2021. "Process Monitoring in Friction Stir Welding Using Convolutional Neural Networks" Metals 11, no. 4: 535. https://doi.org/10.3390/met11040535
APA StyleHartl, R., Bachmann, A., Habedank, J. B., Semm, T., & Zaeh, M. F. (2021). Process Monitoring in Friction Stir Welding Using Convolutional Neural Networks. Metals, 11(4), 535. https://doi.org/10.3390/met11040535