Magnetic Flux Leakage Sensing and Artificial Neural Network Pattern Recognition-Based Automated Damage Detection and Quantification for Wire Rope Non-Destructive Evaluation
Abstract
:1. Introduction
2. Theoretical Background
2.1. Magnetic Flux Leakage-Based Damage Detection Technique
2.2. Signal Processing for Improving Signal Quality
2.3. Establishing Threshold Levels Using the GEV Distribution for Damage Detection
2.4. Damage Quantification Using MFL Signal Based Damage Indexes
2.5. ANN Based Pattern Recognition for Damage Quantification
3. Experimental Study
3.1. Experimental Setup & Procedure
3.2. MFL Based Damage Detection Results
3.3. Quantitative MFL Signal Analysis Using Damage Indexes
3.3.1. Analysis and Quantification of the Leakage Flux Signal with Increasing Damage Depth
3.3.2. Analysis and Quantification of the Leakage Flux Signal with Increasing Damage Width
3.4. ANN Based Wire Rope Damage Size Estimation
3.4.1. Procedure of ANN Based Damage Size Estimation
3.4.2. Depth Estimation of Wire Rope Damage Using the ANN
3.4.3. Width Estimation of Wire Rope Damage Using the ANN
5. Conclusions
- (1)
- Magnetic flux leakage was detected at locations with actual damage by using a Hall sensor located near the damage.
- (2)
- The MFL signals at the damaged areas became more apparent via the enveloping process based on the Hilbert transform.
- (3)
- Envelopes of the MFL signal exceeded the thresholds based on the GEV distribution around areas with actual damage.
- (4)
- Damage indexes were extracted to quantify the MFL signals; these damage indexes can classify the damage size according to increases in damage size.
- (5)
- Four types of damage indexes based on the relationship between the envelope signal and the threshold were proposed. These damage indexes can improve the accuracy of quantification of the damage size.
- (6)
- Two-step ANN based pattern recognition was applied to estimate the depth and width of the damage. The ANN classifier was trained using multi-dimensional damage indexes extracted from the MFL signals; the trained ANN classifier can successfully estimate the size of damage with little error.
Acknowledgments
Author Contributions
Conflicts of Interest
References
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No. | Direction | Specification of the Damage | |||||||
---|---|---|---|---|---|---|---|---|---|
Wire #1 | Upper | Damage #1-2 | Damage #1-4 | Damage #1-6 | Damage #1-8 | ||||
Location | 150 mm | Location | 350 mm | Location | 550 mm | Location | 750 mm | ||
Depth | 0.5 mm | Depth | 0.5 mm | Depth | 0.5 mm | Depth | 0.5 mm | ||
Width | 1 mm | Width | 3 mm | Width | 6 mm | Width | 9 mm | ||
Under | Damage #1-1 | Damage #1-3 | Damage #1-5 | Damage #1-7 | |||||
Location | 50 mm | Location | 250 mm | Location | 450 mm | Location | 650 mm | ||
Depth | 0.5 mm | Depth | 0.5 mm | Depth | 0.5 mm | Depth | 0.5 mm | ||
Width | 0.5 mm | Width | 2 mm | Width | 4 mm | Width | 8 mm | ||
Wire #2 | Upper | Damage #2-2 | Damage #2-4 | Damage #2-6 | Damage #2-8 | ||||
Location | 150 mm | Location | 350 mm | Location | 550 mm | Location | 750 mm | ||
Depth | 1 mm | Depth | 1 mm | Depth | 1 mm | Depth | 1 mm | ||
Width | 1 mm | Width | 3 mm | Width | 6 mm | Width | 9 mm | ||
Under | Damage #2-1 | Damage #2-3 | Damage #2-5 | Damage #2-7 | |||||
Location | 50 mm | Location | 250 mm | Location | 450 mm | Location | 650 mm | ||
Depth | 1 mm | Depth | 1 mm | Depth | 1 mm | Depth | 1 mm | ||
Width | 0.5 mm | Width | 2 mm | Width | 4 mm | Width | 8 mm | ||
No. | Direction | Specification of the Damage | |||||||
---|---|---|---|---|---|---|---|---|---|
Wire #3 | Upper | Damage #3-2 | Damage #3-4 | Damage #3-6 | Damage #3-8 | ||||
Location | 150 mm | Location | 350 mm | Location | 550 mm | Location | 750 mm | ||
Depth | 1.5 mm | Depth | 1.5 mm | Depth | 1.5 mm | Depth | 1.5 mm | ||
Width | 1 mm | Width | 3 mm | Width | 6 mm | Width | 9 mm | ||
Under | Damage #3-1 | Damage #3-3 | Damage #3-5 | Damage #3-7 | |||||
Location | 50 mm | Location | 250 mm | Location | 450 mm | Location | 650 mm | ||
Depth | 1.5 mm | Depth | 1.5 mm | Depth | 1.5 mm | Depth | 1.5 mm | ||
Width | 0.5 mm | Width | 2 mm | Width | 4 mm | Width | 8 mm | ||
Wire #4 | Upper | Damage #4-2 | Damage #4-4 | Damage #4-6 | Damage #4-8 | ||||
Location | 150 mm | Location | 350 mm | Location | 550 mm | Location | 750 mm | ||
Depth | 2 mm | Depth | 2 mm | Depth | 2 mm | Depth | 2 mm | ||
Width | 1 mm | Width | 3 mm | Width | 6 mm | Width | 9 mm | ||
Under | Damage #4-1 | Damage #4-3 | Damage #4-5 | Damage #4-7 | |||||
Location | 50 mm | Location | 250 mm | Location | 450 mm | Location | 650 mm | ||
Depth | 2 mm | Depth | 2 mm | Depth | 2 mm | Depth | 2 mm | ||
Width | 0.5 mm | Width | 2 mm | Width | 4 mm | Width | 8 mm | ||
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Kim, J.-W.; Park, S. Magnetic Flux Leakage Sensing and Artificial Neural Network Pattern Recognition-Based Automated Damage Detection and Quantification for Wire Rope Non-Destructive Evaluation. Sensors 2018, 18, 109. https://doi.org/10.3390/s18010109
Kim J-W, Park S. Magnetic Flux Leakage Sensing and Artificial Neural Network Pattern Recognition-Based Automated Damage Detection and Quantification for Wire Rope Non-Destructive Evaluation. Sensors. 2018; 18(1):109. https://doi.org/10.3390/s18010109
Chicago/Turabian StyleKim, Ju-Won, and Seunghee Park. 2018. "Magnetic Flux Leakage Sensing and Artificial Neural Network Pattern Recognition-Based Automated Damage Detection and Quantification for Wire Rope Non-Destructive Evaluation" Sensors 18, no. 1: 109. https://doi.org/10.3390/s18010109
APA StyleKim, J. -W., & Park, S. (2018). Magnetic Flux Leakage Sensing and Artificial Neural Network Pattern Recognition-Based Automated Damage Detection and Quantification for Wire Rope Non-Destructive Evaluation. Sensors, 18(1), 109. https://doi.org/10.3390/s18010109