Research on a Novel Locating Method for Track Inspection Based on Onboard Sensors in Maglev Train
Abstract
:1. Introduction
2. Signal Characteristics of Guideway Inspection Sensor
2.1. Levitation Gap Signal
2.2. Guidance Gap Signal
2.3. Tooth-Slot Signal
2.4. Comparison of the Signals
3. Method for Locating from the Guideway Inspection Data
4. Processing of the Sensor Signal
4.1. Obtaining the Speed Information
- (A1)
- Identify the running direction based on the phase difference between the preliminary beam joint pulse extracted from the guidance gap signal and the levitation gap signal;
- (A2)
- Obtain the preliminary tooth-slot signal by reshaping the raw tooth-slot data with parameters identified from the running direction;
- (A3)
- Fuse the preliminary tooth-slot signals on both left and right sides and perform anti-interference filtering. The method is to observe the corresponding width and change rate of the tooth surface of the signal on both sides at the same time. Divide the signal quality into different situations as noninterference, single-side interference, and double-side interference. Then, process them separately to obtain the corrected tooth-slot signal without interference, as shown by the blue line in Figure 8a;
- (A4)
- Extract the preliminary beam joint position of the stator surface from the levitation gap signal;
- (A5)
- Fuse the preliminary beam joint position and the corrected tooth-slot signal to obtain the accurate beam joint position synchronized with the tooth-slot phase at the stator surface, which is called the tooth-slot beam joint, as shown by the red line in Figure 8b;
- (A6)
- Locate the accurate beam end position based on the tooth-slot beam joint information on the stator surface, and calculate the type (representing the length) of the track beam by counting the corrected teeth within the track beam;
- (A7)
- Check and correct the beam type by comparing the length with the accurate length obtained from the positioning analysis in step (B4);
- (A8)
- Check and correct the tooth-slot recognition results in the beam range using the accurate beam length on the stator surface;
- (A9)
- Calculate the velocity through accurate tooth-slot identification results; the final vehicle velocity curve obtained is shown in Figure 8c.
4.2. Obtaining the Spatial Mileage Information
- (B1)
- Identify the characteristic track structures such as turnouts by using the direction information identified in step (A1) and the preliminary beam joint position identified in step (A4) to obtain the train’s route ID;
- (B2)
- Obtain the operating condition information through the combination of the operating track and the operating direction information;
- (B3)
- Obtain the absolute space mileage of the characteristic reference point () of the corresponding route ID from the route database;
- (B4)
- Obtain the absolute space mileage at the beam end position, the beam type, and the pier ID by combining the relative space mileage () of the tooth-slot beam joint with the position of the reference point. The information is calibrated with the design value, and the result is shown in Figure 9a;
- (B5)
- Calculate and calibrate the absolute space mileage () within each beam using information such as the corrected tooth-slot signal, the absolute position of the beam end, and the running direction information; the result is shown in Figure 9b;
- (B6)
- Calculate the corresponding absolute space mileage for each guidance gap channel by the obtained space mileage on stator surface, as shown in Figure 9c.
4.3. Domain Conversion of the Data
- (1)
- Calculate the absolute space mileage for each piece of tooth-slot data in the stator surface as a reference based on the calibrated tooth-slot beam joint data;
- (2)
- Based on the reference of the tooth-slot data, the space mileage of the levitation gap sensor and the guidance gap sensors at each sample are respectively calculated, and the speed-independent gap signals in the spatial domain are obtained, as shown in Figure 10b;
- (3)
- Calibrate the signal from each gap sensor separately with the absolute space mileage as a unified scale to realize the signal synchronization for all channels. The synchronized gap signals are shown in Figure 10c.
5. Results
6. Discussion
- (1)
- The recognition rate is related to the running track of the train. The tooth-slot recognition rate of track B is significantly higher than that of track A. This may be due to the arrangement of the stator pack and the mileage of the route being based on track B in the design;
- (2)
- The recognition rate of track A is related to the longitudinal direction and the lateral direction at the same time. Although the definitions of the left and right sides of the equipment and track are not changed under each working condition, the results show that the data quality on the right side is significantly better than that on the left side when running in the forward direction, while the opposite is true when running in the reverse direction. It is still unable to explain the reasons; thus, it needs further attention in future research.
7. Conclusions
- (1)
- Higher absolute locating accuracy. Compared with the traditional method of accumulating the relative position sensor signal and correcting with the LRF signal, which usually takes about 15 beams (approximately 370 m, depending on the arrangement of the LRF) to clear the accumulated error of the beam end (there may be a small amount of accumulated error of mileage between two LRFs), this method automatically corrects the absolute position of the beam end for each beam, so there is no cumulative error in the whole journey;
- (2)
- Higher relative locating accuracy. Compared with the traditional method with the GPS receiver and other third-party hardware that can only locate the track beam roughly, this method can obtain a locating accuracy better than that of the long stator tooth-slot period (86 mm), thereby enabling a better pertinence of track inspection;
- (3)
- Higher train speed compatibility. As the locating accuracy is not affected by the speed of the maglev train, not only can this method be used in the current 430 km/h maglev track inspection system, but it can also be applied to the next generation 600 km/h or higher maglev track inspection fields with the same accuracy;
- (4)
- With operating condition automatic recognition. Compared with the traditional method that requires additional hardware to obtain operating condition information such as the direction, track ID, and maximum speed from the on-board CAN bus, this method can automatically extract the aforementioned information directly from the data of the track inspection sensor, reducing the hardware requirements for track inspection equipment;
- (5)
- High independence of track inspection equipment. Compared with the traditional method, which needs special hardware channels for vehicle network and OCS locating sensors, this method directly analyzes the track inspection data to obtain the locating information, which effectively improves the independence of the track inspection equipment.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Serial Number | Signal Name | Signal Type | Source Sensor | Sensor Position | Corresponding Track Surface |
---|---|---|---|---|---|
1 | Levitation Gap Left | Linear Displacement | Levitation Gap Sensor | Levitation Electromagnet | Left Stator Surface |
2 | Levitation Gap Right | Linear Displacement | Levitation Gap Sensor | Levitation Electromagnet | Right Stator Surface |
3 | Guidance Gap Left Upper | Linear Displacement | Guidance Gap Sensor | Guidance Electromagnet | Upper Left Guidance Surface |
4 | Guidance Gap Right Upper | Linear Displacement | Guidance Gap Sensor | Guidance Electromagnet | Upper Right Guidance Surface |
5 | Guidance Gap Left Lower | Linear Displacement | Guidance Gap Sensor | Guidance Electromagnet | Lower Left Guidance Surface |
6 | Guidance Gap Right Lower | Linear Displacement | Guidance Gap Sensor | Guidance Electromagnet | Lower Right Guidance Surface |
7 | Tooth-slot signal Left | Square Wave Pulse | Levitation Gap Sensor | Levitation Electromagnet | Left Stator Surface |
8 | Tooth-slot signal Right | Square Wave Pulse | Levitation Gap Sensor | Levitation Electromagnet | Right Stator Surface |
No. | Items | Lev-Gap Signal | Gui-Gap Signal | Tooth-Slot Signal | Remarks |
---|---|---|---|---|---|
1 | Speed info. | Include indirectly | Include indirectly | Include but interfered | |
2 | Relative locating info. | Include but interfered | Include but interfered | Include but interfered | |
3 | Locating resolution | Track beam | Functional component | Stator tooth | Ideal signal |
4 | Position phase difference | No | Different for each channel | No | |
5 | Absolute locating info. | Include indirectly | Contain indirectly | No | |
6 | Beam joint info. | Contain but interfered | More interfered | No |
SN | Dir. | Trk. | Side | Samples /Row | Beam Joints Ident. | Teeth Ident. (Preliminary) | Teeth Ident. (Corrected) | ||||||||
---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|---|
Theo. Qty. /pcs | Ident. Qty. /pcs | Recon. Rate /% | Theo. Qty. /T | Ident. Qty. /T | Error Qty. /T | Recon. Rate /% | Result. Qty. /T | Corr. Qty. /T | Error Qty. /T | Recon. Rate /% | |||||
1 | + | A | L | 4,420,000 | 1184 | 1184 | 100 | 338,482 | 338,620 | 138 | 99.959 | 338,482 | 138 | 0 | 100 |
2 | + | A | R | 4,420,000 | 1184 | 1184 | 100 | 338,482 | 338,486 | 4 | 99.999 | 338,482 | 4 | 0 | 100 |
3 | - | A | L | 4,450,000 | 1184 | 1184 | 100 | 338,480 | 338,481 | 1 | 100.000 | 338,480 | 1 | 0 | 100 |
4 | - | A | R | 4,450,000 | 1184 | 1184 | 100 | 338,480 | 338,681 | 201 | 99.941 | 338,480 | 201 | 0 | 100 |
5 | + | B | L | 4,900,000 | 1181 | 1181 | 100 | 338,607 | 338,608 | 1 | 100.000 | 338,607 | 1 | 0 | 100 |
6 | + | B | R | 4,900,000 | 1181 | 1181 | 100 | 338,607 | 338,608 | 1 | 100.000 | 338,607 | 1 | 0 | 100 |
7 | - | B | L | 4,920,000 | 1181 | 1181 | 100 | 338,607 | 338,607 | 0 | 100 | 338,607 | 0 | 0 | 100 |
8 | - | B | R | 4,920,000 | 1181 | 1181 | 100 | 338,607 | 338,607 | 0 | 100 | 338,607 | 0 | 0 | 100 |
Total | 37,380,000 | 9460 | 9460 | 100 | 2,708,352 | 2,708,698 | 346 | 99.987 | 2,708,352 | 346 | 0 | 100 |
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Yuan, Y.; Luo, Y.; Ye, F.; Zhu, Z.; Zeng, G.; Wang, G. Research on a Novel Locating Method for Track Inspection Based on Onboard Sensors in Maglev Train. Sensors 2021, 21, 3236. https://doi.org/10.3390/s21093236
Yuan Y, Luo Y, Ye F, Zhu Z, Zeng G, Wang G. Research on a Novel Locating Method for Track Inspection Based on Onboard Sensors in Maglev Train. Sensors. 2021; 21(9):3236. https://doi.org/10.3390/s21093236
Chicago/Turabian StyleYuan, Yihong, Yanyun Luo, Feng Ye, Zhiwei Zhu, Guofeng Zeng, and Guoqiang Wang. 2021. "Research on a Novel Locating Method for Track Inspection Based on Onboard Sensors in Maglev Train" Sensors 21, no. 9: 3236. https://doi.org/10.3390/s21093236
APA StyleYuan, Y., Luo, Y., Ye, F., Zhu, Z., Zeng, G., & Wang, G. (2021). Research on a Novel Locating Method for Track Inspection Based on Onboard Sensors in Maglev Train. Sensors, 21(9), 3236. https://doi.org/10.3390/s21093236