Squat Detection of Railway Switches and Crossings Using Point Machine Vibration Measurements
Abstract
1. Introduction
2. Materials and Methods
2.1. Track Layout and the Testbed
2.2. Measurement Setup
2.2.1. Accelerometer
2.2.2. Data Acquisition
2.3. Test Runs
2.4. Post-Processing
2.4.1. High-Pass filtering
2.4.2. Wavelet
2.4.3. Time to Spatial Domain Conversion
2.4.4. Smoothing Speed Signal
2.4.5. Re-Sampling
2.4.6. Synchronising
2.4.7. Expected Events Chart
3. Results and Discussions
3.1. Squat Detection
3.2. General Trends of the Impact Events
3.3. Normalising Peak-to-Peak Amplitude to the 1 m/s Case
- They are located in the middle of the S&C and are not far from the accelerometer.
- They are not too close to the starting point where many events were happening at the same time.
- They are not too far away from the starting point either, so the amplitude value can be detected.
- They are close to each other and the speed of the bogie was within 1 ± 0.2 m/s.
3.4. Statistics of the Estimated Amplitude for 1 m/s Case
3.5. Linear Regression for Estimated Amplitude versus Squat Depth
4. Conclusions and Future Works
- It is possible to extract and locate 6 out of 7 squats og 4 mm depth within a 13 m range from the accelerometer.
- It is possible to extract and locate 4 out of 6 squats of 1 mm depth that is within around a 13 m range from the accelerometer.
- It is challenging to extract and locate accurately both 1 mm and 4 mm depth squats that are further than around 22 m away from the accelerometer.
- The mean normalised amplitude value for squat F increases from 0.76 g to 1.24 g when the squat depth increases from 1 mm to 4 mm with standard deviations of 0.34 g and 0.09 g, respectively.
- The mean normalised amplitude value for squat G increases from 0.35 g to 1.63 g when the squat depth increases from 1 mm to 4 mm with standard deviations of 0.14 g and 0.71 g, respectively.
- It is possible to fit a linear model to the normalised amplitude versus squat depth for squats F and G with the data collected.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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General info | Size 1 | Size 2 | ||||
---|---|---|---|---|---|---|
Rail Number | Squat Name | From | Squat Diameter | Max Depth | Squat Diameter | Max Depth |
(m) | (mm) | (mm) | (mm) | (mm) | ||
4 | A | 5.7 | 43 | 1.2 | 62 | 3.7 |
4 | B | 6.7 | 41 | 1.0 | 61 | 3.9 |
1 | C | 7.27 | 42 | 1.0 | 63 | 3.7 |
3 | D | 10.68 | 42 | 1.0 | 66 | 4.4 |
1 | E | 12.47 | 0 | 0 | 65 | 3.7 |
3 | F | 18.04 | 42 | 1.1 | 65 | 4.2 |
1 | G | 19.32 | 42 | 1.0 | 64 | 3.7 |
1 | H | 28.02 | 42 | 1.5 | 62 | 4.7 |
3 | I | 29.23 | 42 | 1.4 | 62 | 4.3 |
3 | J | 32.14 | 42 | 1.2 | 63 | 4.4 |
1 | K | 34 | 42 | 1.1 | 61 | 4.1 |
Name | Range (Hz) | Sensitivity (mV/g) | Destruction Limit (g) | Resonant Frequency (kHz) |
---|---|---|---|---|
KS91C | 0.3−37,000 | 10 ± 20% | 10,000 | >60 (+25 dB) |
Test Scenario | Repetitions | Date |
---|---|---|
Without squats | 3 | 31 March 2020 |
1 mm squats | 3 | 6 April 2020 |
4 mm squats | 3 (2 valid) | 9 April 2020 |
Squat Name | Detected | Location Error < 0.5 m |
---|---|---|
A | Yes | Yes |
B | Yes | Yes |
C | No | No |
D | No | No |
E | N/A | N/A |
F | Yes | Yes |
G | Yes | Yes |
H | No | No |
I | No | No |
J | No | No |
K | No | No |
Squat Name | Detected | Location Error < 0.5 m |
---|---|---|
A | Yes | Yes |
B | Yes | Yes |
C | Yes | Yes |
D | No | No |
E | Yes | Yes |
F | Yes | Yes |
G | Yes | Yes |
H | No | No |
I | No | No |
J | No | No |
K | No | No |
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Zuo, Y.; Lundberg, J.; Najeh, T.; Rantatalo, M.; Odelius, J. Squat Detection of Railway Switches and Crossings Using Point Machine Vibration Measurements. Sensors 2023, 23, 3666. https://doi.org/10.3390/s23073666
Zuo Y, Lundberg J, Najeh T, Rantatalo M, Odelius J. Squat Detection of Railway Switches and Crossings Using Point Machine Vibration Measurements. Sensors. 2023; 23(7):3666. https://doi.org/10.3390/s23073666
Chicago/Turabian StyleZuo, Yang, Jan Lundberg, Taoufik Najeh, Matti Rantatalo, and Johan Odelius. 2023. "Squat Detection of Railway Switches and Crossings Using Point Machine Vibration Measurements" Sensors 23, no. 7: 3666. https://doi.org/10.3390/s23073666
APA StyleZuo, Y., Lundberg, J., Najeh, T., Rantatalo, M., & Odelius, J. (2023). Squat Detection of Railway Switches and Crossings Using Point Machine Vibration Measurements. Sensors, 23(7), 3666. https://doi.org/10.3390/s23073666