A UAV-Based Framework for Semi-Automated Thermographic Inspection of Belt Conveyors in the Mining Industry
Abstract
:1. Introduction
- The implementation and test of an UAV-based thermographic inspection procedure for belt conveyor rollers;
- A discussion about several factors influencing thermographic inspection of rollers;
- The creation of a labeled dataset of thermal images for supervised machine learning studies;
- A review of the main techniques to monitor conveyor belt rollers.
2. Problem Statement
3. Background and Related Work
3.1. Roller Structure and Failure Detection
- Acoustic: Depending on the construction materials and internal characteristics, the bearing has specific acoustic emissions [2]. Despite the difficulty to isolate and process the frequencies of interest, an increase in amplitude or disturbances in the roller’s sound signature can indicate incipient bearing failure, emphasizing the predictive behavior of this signal [3].
- Thermal: When the roller is rotating, there is friction between its internal parts. A malfunction on the bearing increases the friction and so the temperature. Different thresholds can be used to evaluate the failure stage, but a 5 C increase in comparison to adjacent bearings is already an indication of an early stage malfunction [4] or an uneven roller that wears faster.
- Vibration: Changes in the natural vibration frequencies evidence the malfunctions in the bearings. As with the acoustic signal, it is not trivial to isolate and process frequencies to diagnose failures based on vibration, but several techniques can be used [3]. It is also possible to classify the defect according to the vibration [5].
3.2. Condition Monitoring Techniques
- Distributed Temperature Sensing (DTS), which is based on Raman Optical Time-Domain Reflectometry (OTDR) principle [14]. Using this technique, Hu et al. [15] achieved a spatial resolution of 3 m with the uncertainty of 2 C in a 10 km installation in an underground coal mine. The authors reported the meticulous calibration to insulate external factors in temperature measurement as the main drawback. Raman OTDR technology is still receiving improvements [16] and several commercial systems are based on it [17,18,19].
- Distributed Acoustic Sensing (DAS) that is based on Rayleigh Coherent Optical-Time Domain Reflectometry (C-OTDR) principle [20] and relatively recent when compared to other DOFS technologies for roller’s condition monitoring [21]. There is ongoing research [22] and advanced-stage field tests [23], both with promising results. However, the launch of commercial solutions still depends on the ability to isolate and extract the condition from the frequencies issued by the bearings [24], since BCS and the environment where they operate are intrinsically noisy.
4. Proposed Solution
4.1. Sensing Platform
4.1.1. Data Capture
4.1.2. Assess Roller’s Condition
4.1.3. Roller Identification
4.2. Back-end Platform
4.2.1. Middleware
4.2.2. Back-End Systems
5. Experiments and Results
5.1. Basic Premises
5.1.1. Distance from the Camera to the Rollers
5.1.2. Operation Condition and Production Rate
5.1.3. Roller Failure Identification
5.2. Prior Object Recognition
Object Recognition Performance
5.3. Failure Identification
Failure Identification Performance
6. Conclusions and Future Work
Author Contributions
Funding
Conflicts of Interest
References
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Temperature Threshold ( C) | Number of Failures | Algorithm | TP | FP | Precision (%) | Recall (%) | Score (%) |
---|---|---|---|---|---|---|---|
35 | 142 | MP | 142 | 155 | 47.81 | 100 | 64.69 |
MP+DT | 142 | 30 | 82.56 | 100 | 90.45 | ||
40 | 12 | MP | 12 | 45 | 21.05 | 100 | 34.78 |
MP+DT | 12 | 2 | 85.71 | 100 | 92.31 | ||
45 | 0 | MP | 0 | 6 | - | - | - |
MP+DT | 0 | 1 | - | - | - |
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Carvalho, R.; Nascimento, R.; D’Angelo, T.; Delabrida, S.; G. C. Bianchi, A.; Oliveira, R.A.R.; Azpúrua, H.; Uzeda Garcia, L.G. A UAV-Based Framework for Semi-Automated Thermographic Inspection of Belt Conveyors in the Mining Industry. Sensors 2020, 20, 2243. https://doi.org/10.3390/s20082243
Carvalho R, Nascimento R, D’Angelo T, Delabrida S, G. C. Bianchi A, Oliveira RAR, Azpúrua H, Uzeda Garcia LG. A UAV-Based Framework for Semi-Automated Thermographic Inspection of Belt Conveyors in the Mining Industry. Sensors. 2020; 20(8):2243. https://doi.org/10.3390/s20082243
Chicago/Turabian StyleCarvalho, Regivaldo, Richardson Nascimento, Thiago D’Angelo, Saul Delabrida, Andrea G. C. Bianchi, Ricardo A. R. Oliveira, Héctor Azpúrua, and Luis G. Uzeda Garcia. 2020. "A UAV-Based Framework for Semi-Automated Thermographic Inspection of Belt Conveyors in the Mining Industry" Sensors 20, no. 8: 2243. https://doi.org/10.3390/s20082243
APA StyleCarvalho, R., Nascimento, R., D’Angelo, T., Delabrida, S., G. C. Bianchi, A., Oliveira, R. A. R., Azpúrua, H., & Uzeda Garcia, L. G. (2020). A UAV-Based Framework for Semi-Automated Thermographic Inspection of Belt Conveyors in the Mining Industry. Sensors, 20(8), 2243. https://doi.org/10.3390/s20082243