Defectoscopic and Geometric Features of Defects That Occur in Sheet Metal and Their Description Based on Statistical Analysis
Abstract
:1. Introduction
- −
- Identifying technological reasons for the formation of defects during rolling;
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- Studying and systematizing the morphological description of defects of different shapes and determining their description’s parameter ranges.
2. Technological and Morphological Prerequisites for Classification
Technological Defects and Causes of Their Occurrence
3. Method for Detecting Defective Zones
4. Defect Geometry Analysis
5. Morphological Analysis Results
6. Attribute Selection
- −
- Eccentricity of the defect ellipse, which shows the proximity of its shape to the circle (Eccentricity);
- −
- The angle (in radians) that forms the main axis of the defect ellipse in the strip rolling direction (Orientation);
- −
- Defect ellipse length versus defect perimeter ratio (El_len/Per);
- −
- The minor axis versus the major axis of the defect ellipse ratio (Min_A/Maj_A).
6.1. Selection of Classifiers
6.2. Classification Results
7. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Acknowledgments
Conflicts of Interest
Appendix A
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Model | DSC | IoU |
---|---|---|
Developed model | 0.912 | 0.894 |
Kun Qian [24] | 0.915 and 0.905 | – |
Han Yu et al. [25] | – | 0.86 |
Y. Zhu et al. [26] | – | 0.847 |
Aslam, Y. et al. [27] | 0.917 | – |
Hyeonho Kim [28] | – | 0.854 and 0.846 |
Parameter Name | Parameter Geometry | Geometric Content Description |
---|---|---|
Orientation | | Defect orientation relative to the strip rolling direction |
Area | | Defect area |
Perimeter | | Defect perimeter shows the development of its edge |
Eccentricity | | Eccentricity shows the degree of “elongation” of the defect shape |
Maximum and minimum axes of the defect when describing its ellipse | | Allows the defect size and shape to be established |
Defect Subclass | Causes of Formation | The Scheme of the Analyzed Defects | Morphological Description of Defects Analyzed |
---|---|---|---|
Scratches | Jamming and actuation of individual rollers and harnessing | | Defects are oriented parallel to the strip movement direction. They have a clear-cut thin thread-like front that runs through the entire image. |
Lines | Adhesion of metal particles to the roll surface and their sliding on the strip surface | | Defects are oriented parallel to the strip movement direction but less clearly than cracks. They have a rough front, the edges of which show “cuts”, and plastically deformed microzones due to scratching of the metal. |
Attritions | Strip friction against the drive parts of the process equipment | | Defects of arbitrary orientation. They have a matte surface and a large area. The defect color may be inhomogeneous across its area due to depth differences in different areas. |
Attribute Selection | |||
---|---|---|---|
Attribute | Expert Opinion | Statistical Methods | Weka |
Eccentricity | ✓ | ✓ | ✓ |
Orientation | ✓ | ✓ | ✓ |
El_len/Per | ✓ | ||
Min_A/Maj_A | ✓ | ✓ | ✓ |
Major_Axis_Length | ✓ |
Statistical Values of Attributes | ||||
---|---|---|---|---|
Attribute | Minimum | Maximum | Mean | STD |
Eccentricity | 0.404 | 1.000 | 0.966 | 0.077 |
Major_axis_length | 13.621 | 1632.084 | 180.683 | 161.164 |
Orientation | −1.570 | 1.570 | −0.053 | 0.647 |
El_len/Per | 0.271 | 1.156 | 0.838 | 0.114 |
Min_A/Maj_A | 0.020 | 0.915 | 0.174 | 0.173 |
Classifiers Models Quality Comparison | |||
---|---|---|---|
Attribute | Correctly Classified Instances | Kappa Statistics | Mean Absolute Error |
J48 | 69.36% | 0.533 | 0.239 |
REPTree | 70.83% | 0.558 | 0.239 |
LMT | 73.21% | 0.593 | 0.226 |
Random forest | 73.95% | 0.605 | 0.230 |
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Konovalenko, I.; Maruschak, P.; Kozbur, H.; Brezinová, J.; Brezina, J.; Guzanová, A. Defectoscopic and Geometric Features of Defects That Occur in Sheet Metal and Their Description Based on Statistical Analysis. Metals 2021, 11, 1851. https://doi.org/10.3390/met11111851
Konovalenko I, Maruschak P, Kozbur H, Brezinová J, Brezina J, Guzanová A. Defectoscopic and Geometric Features of Defects That Occur in Sheet Metal and Their Description Based on Statistical Analysis. Metals. 2021; 11(11):1851. https://doi.org/10.3390/met11111851
Chicago/Turabian StyleKonovalenko, Ihor, Pavlo Maruschak, Halyna Kozbur, Janette Brezinová, Jakub Brezina, and Anna Guzanová. 2021. "Defectoscopic and Geometric Features of Defects That Occur in Sheet Metal and Their Description Based on Statistical Analysis" Metals 11, no. 11: 1851. https://doi.org/10.3390/met11111851
APA StyleKonovalenko, I., Maruschak, P., Kozbur, H., Brezinová, J., Brezina, J., & Guzanová, A. (2021). Defectoscopic and Geometric Features of Defects That Occur in Sheet Metal and Their Description Based on Statistical Analysis. Metals, 11(11), 1851. https://doi.org/10.3390/met11111851