Digital Fringe Projection-Based Clamping Force Estimation Algorithm for Railway Fasteners
Abstract
:1. Introduction
2. System Overview
3. Methodology
3.1. Structured-Light Reconstruction System
3.2. Clamping Force Estimation Algorithm
3.2.1. Point Cloud Denoising
3.2.2. Point Cloud Registration and Specific Region Selection
- Coarse Registration Using FPFHIn the FPFH algorithm, the estimated normals of point clouds are used to calculate the local features of the point clouds. It is an improved version of the point feature histograms (PFH) algorithm [28]. FPFH feature descriptors are robust under different sampling densities. In the method described in this study, the FPFH features of the reference point cloud and those of the point cloud to be matched are calculated, then the method proposed by Zhou et al. [28] is used to find the matching features between the two. After this, the coarse registration of the point cloud is conducted. For the calculation of FPFH features, three feature values of a pair of points in the point cloud need to be calculated. Suppose that points and have normals and in their neighborhoods. Then, a local coordinate system can be established on one of the points , as shown in Figure 3. Based on the positions of the normals and the two points, three angles can be obtained, and then the eigenvalues used by FPFH can be obtained as:The feature descriptor is calculated as follows.Step 1: Solve the surface normal for each point in the point cloud.Step 2: Calculate the point pair feature for each point and the k adjacent points. Place the three values in a histogram by normalizing each eigenvalue and then apportioning them into b intervals of the same size, thereby obtaining a histogram with intervals formed by the combinations of the three sets of intervals. The histogram generated by these k point pair features can be used as a simplified point feature histogram (SPFH) for point .Step 3: Generate the SPFH for each of the k points adjacent to .Step 4: Generate the final FPFH descriptor of based on SPFH features with different weights:
- Fine Registration Using ICP Algorithm: After FPFHAfter FPFH coarse registration has been performed, the two point clouds will or should roughly coincide; then, the iterative closest point (ICP) algorithm is applied for fine registration. This algorithm solves a rigid body transformation to minimize the following objective functions:
3.2.3. Comparisons with Multiple Reference Point Clouds
3.2.4. Estimation of Point Cloud Distance Distribution
3.2.5. Regression Analysis
4. Testing, Results, and Analysis
4.1. Evaluation of the 3D Reconstruction System
4.2. Point Cloud Preprocessing Experiment
4.3. Point Cloud Comparison Experiment and Analysis
4.4. Analysis of Regression Effects
4.5. Evaluation of Algorithm
- Tested by giving fasteners random stress. Because the elastic state of the rail fastener is often random, a random clamping torque can be applied and recorded, and then the algorithm can be predicted and evaluated. During the experiment, we applied a random loop pressure from 0 to 120 N·m to the fastener.
- Testing the fastener in two states: full tightening and loosening. In a batch work environment, it is necessary to monitor whether the fasteners are in a tight or loose state condition, so this method can be used to evaluate whether the algorithm has a direct binary judgement. Tensile torque requirements for Type II fasteners range between 100 and 140 N·m, in line with the TB/T 3065-2002 standard of the Chinese rail industry mentioned above. In this paper, we use more than 100 N·m fasteners and fasteners in or near a loose state (tightening torque less than 30 N·m) for the algorithm prediction.
- Test by gradually increasing the fastener stress. To compare the two methods, the fasteners are tightened in a step-by-step fashion. For each clamping torque, the torque was changed from 20 N·m to 110 N·m, increasing by approximately 10 N·m each time, with two 3D scans at different angles.
5. Conclusions
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Scan No. | No. of Scan Points | Radius of Fitted Sphere (mm) | Maximum Error (mm) | RMSE of Fit (mm) |
---|---|---|---|---|
1 | 2501 | 10.0863 | 0.3141 | 0.0566 |
2 | 2920 | 10.0175 | 0.4860 | 0.0824 |
3 | 3019 | 10.0991 | 0.5953 | 0.0585 |
4 | 2975 | 10.0252 | 0.3144 | 0.0584 |
5 | 3055 | 10.0357 | 0.3152 | 0.0532 |
Registration Method | No. of Tests | No. of Registration Failures | Successful Registration Rate | Average Time Spent onRegistration (s) | Average Registration RMSE (mm) |
---|---|---|---|---|---|
ICP | 132 | 7 | 94.70% | 2.7121 | 0.4464 |
FGR | 132 | 125 | 5.30% | 0.5403 | 1.5622 |
ISS | 132 | 65 | 49.24% | 0.3558 | 1.3390 |
FPFH | 132 | 2 | 98.48% | 1.1528 | 0.5210 |
FGR + ICP | 132 | 2 | 98.48% | 1.7718 | 0.3587 |
ISS + ICP | 132 | 1 | 99.24% | 1.8444 | 0.3467 |
FPFH + ICP | 132 | 0 | 100% | 2.4011 | 0.3292 |
Regression Method | Tightening Torque (N·m) | Clamping Force (kN) | ||
---|---|---|---|---|
Maximum Error | RMSE | Maximum Error | RMSE | |
LSR | 72.504 | 19.505 | 15.169 | 4.080 |
SVR | 49.664 | 11.923 | 10.390 | 2.494 |
PLSR | 26.225 | 9.744 | 5.486 | 2.038 |
Ridge Regression | 25.302 | 9.274 | 5.293 | 1.940 |
Test Method | Tightening Torque RMSE (N·m) | Clamping Force RMSE (kN) | Average Time Spent on Prediction (s) |
---|---|---|---|
Random Stress | 13.530 | 2.831 | 24.53 |
Fully tightened and loosened stress | 11.887 | 2.487 | 23.16 |
Regularly increase stress | 13.383 | 2.800 | 24.29 |
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Fan, Z.; Hong, Y.; Wang, Y.; Niu, Y.; Zhang, H.; Chu, C. Digital Fringe Projection-Based Clamping Force Estimation Algorithm for Railway Fasteners. Sensors 2023, 23, 3299. https://doi.org/10.3390/s23063299
Fan Z, Hong Y, Wang Y, Niu Y, Zhang H, Chu C. Digital Fringe Projection-Based Clamping Force Estimation Algorithm for Railway Fasteners. Sensors. 2023; 23(6):3299. https://doi.org/10.3390/s23063299
Chicago/Turabian StyleFan, Zhengji, Yingping Hong, Yunfeng Wang, Yanan Niu, Huixin Zhang, and Chengqun Chu. 2023. "Digital Fringe Projection-Based Clamping Force Estimation Algorithm for Railway Fasteners" Sensors 23, no. 6: 3299. https://doi.org/10.3390/s23063299
APA StyleFan, Z., Hong, Y., Wang, Y., Niu, Y., Zhang, H., & Chu, C. (2023). Digital Fringe Projection-Based Clamping Force Estimation Algorithm for Railway Fasteners. Sensors, 23(6), 3299. https://doi.org/10.3390/s23063299