Development and Validation of a Double-Sensor Hump Calibration Method for Articulated Vehicle Model Identification
Abstract
:1. Introduction
- A parameter sensitivity analysis of a tractor-semitrailer model was performed to optimize the number and position of smartphone sensors. The easily accessible sensor data combined with a multiple population genetic algorithm (MPGA) made the DHCM a low-cost yet effective method for calibrating unladen articulated vehicle models. In addition, the DHCM, supplemented by analytical methods and the finite element method (FEM), was being extended for the identification of laden articulated vehicle models.
- The proposed DHCM and the existing SHCM were employed to calibrate a 2-axle sedan and a 5-axle tractor-semitrailer models. This demonstrated the superiority of the DHCM over the SHCM regarding the calibration of articulated vehicle models.
- The vertical acceleration responses were simulated by substituting the road profiles into the equations of the calibrated models. The PSDs of the simulated accelerations were then compared with those of the measured accelerations to confirm the validity of the models calibrated with the DHCM.
2. DHCM for Articulated Vehicle Model Identification
2.1. SHCM for 2-Axle Vehicle Model Identification
2.2. SHCM for Articulated Vehicle Model Identification
2.3. Parameter Sensitivity Analysis
2.4. The Proposed DHCM
2.5. DHCM for Laden Vehicle Model Identification
3. Calibration Results
3.1. Instrumentation
3.2. Calibration of the 2-Axle Vehicle Model
3.3. Calibration of the Articulated Vehicle Model
3.4. Dynamic Characteristics of Calibrated Models
4. Validation Results
4.1. Principle of Acceleration Simulation
4.2. Comparison between PSDs of Measured and Simulated Acceleration
4.2.1. Measured Acceleration PSD for the 2-Axle Vehicle
4.2.2. Comparison of PSDs for the 2-Axle Vehicle
4.2.3. Measured Acceleration PSD for the Articulated Vehicle
4.2.4. Comparison of PSDs for the Articulated Vehicle
4.3. Comparison of RMS Values
5. Conclusions and Discussions
5.1. Conclusions
- The existing SHCM is suitable for calibrating small-sized vehicle models but not for multi-axle articulated vehicle models.
- Parameter sensitivity analysis of a 5-axle tractor-semitrailer model reveals that the vehicle models should be calibrated using two sensors installed on the front and rear articulated parts of the vehicle.
- Based on the optimal sensor arrangement, the DHCM can be conveniently implemented using smartphones to record the vehicle responses and an MPGA to determine the vehicle parameters.
- The DHCM, supplemented by analytical methods and the FEM, is suitable for the identification of laden articulated vehicle models and specific vehicle parameters, including the height of the laden semitrailer’s COG.
- Regardless of vehicle type, the measured PSD agrees better with the simulated PSD from models calibrated with the DHCM than with that from models calibrated with the SHCM, indicating that the DHCM is suitable for calibrating small-sized vehicle models and articulated vehicle models.
- Relative RMS errors from the articulated vehicle model calibrated with the DHCM are below 16% within 2–20 Hz, demonstrating that this model realistically simulates the dynamic response of an articulated vehicle in the low-frequency range.
5.2. Discussions
- The test vehicle should be driven on a flat road during the DHCM. Class A-B roads are therefore recommended.
- Further work could focus on integrating the DHCM into low-cost hardware.
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Sensor Locations | Methods | Normalized Parameters (Lf: m) | |||||||||
---|---|---|---|---|---|---|---|---|---|---|---|
Lf | mfn | mrn | IZn | kfn | krn | cfn | crn | ktfn | ktrn | ||
Lm | SHCM | 1.43 | 0.07 | 0.08 | 1.78 | 32.42 | 58.94 | 1.85 | 2.84 | 642.66 | 606.71 |
Lf | SHCM | 1.07 | 0.07 | 0.06 | 1.42 | 44.68 | 34.00 | 2.34 | 2.09 | 481.17 | 879.74 |
Lr | SHCM | 1.38 | 0.02 | 0.15 | 1.66 | 35.68 | 53.64 | 1.47 | 3.39 | 589.45 | 594.84 |
Lf and Lr | DHCM | 1.18 | 0.06 | 0.10 | 1.76 | 41.67 | 47.77 | 2.18 | 2.97 | 448.76 | 408.65 |
Sensor Locations | Methods | Normalized Parameters (Geometric Parameters: m) | ||||||||
---|---|---|---|---|---|---|---|---|---|---|
mSn | m1n | m2n | m3n | m4n | m5n | ITn | ISn | k1n | ||
L1 | SHCM | 2.34 | 0.03 | 0.03 | 0.03 | 0.22 | 0.03 | 2.29 | 26.96 | 60.87 |
L2 | SHCM | 2.50 | 0.30 | 0.16 | 0.06 | 0.40 | 0.46 | 44.79 | 53.29 | 150.93 |
L1 and L2 | DHCM | 4.77 | 0.11 | 0.40 | 0.48 | 0.57 | 0.34 | 45.75 | 95.89 | 198.83 |
k2n | k3n | k4n | k5n | c1n | c2n | c3n | c4n | c5n | ||
L1 | SHCM | 90.21 | 27.13 | 25.19 | 484.11 | 3.85 | 3.01 | 4.46 | 7.67 | 6.40 |
L2 | SHCM | 40.47 | 582.96 | 309.91 | 441.12 | 2.61 | 17.60 | 7.95 | 20.57 | 4.58 |
L1 and L2 | DHCM | 93.02 | 869.88 | 537.26 | 1313.27 | 12.57 | 33.04 | 6.80 | 36.52 | 23.60 |
kt1n | kt2n | kt3n | kt4n | kt5n | a1 | a2 | b1 | b6 | ||
L1 | SHCM | 447.09 | 499.58 | 1371.08 | 573.80 | 1331.17 | 0.43 | 0.84 | 1.24 | 6.51 |
L2 | SHCM | 1170.41 | 2557.61 | 1576.68 | 1610.16 | 646.11 | 0.96 | 0.75 | 1.91 | 4.37 |
L1 and L2 | DHCM | 1460.53 | 4488.70 | 4360.85 | 2689.24 | 808.00 | 0.97 | 0.82 | 1.32 | 4.14 |
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Wu, Y.; Li, Y. Development and Validation of a Double-Sensor Hump Calibration Method for Articulated Vehicle Model Identification. Sensors 2023, 23, 9691. https://doi.org/10.3390/s23249691
Wu Y, Li Y. Development and Validation of a Double-Sensor Hump Calibration Method for Articulated Vehicle Model Identification. Sensors. 2023; 23(24):9691. https://doi.org/10.3390/s23249691
Chicago/Turabian StyleWu, Yuhang, and Yuanqi Li. 2023. "Development and Validation of a Double-Sensor Hump Calibration Method for Articulated Vehicle Model Identification" Sensors 23, no. 24: 9691. https://doi.org/10.3390/s23249691
APA StyleWu, Y., & Li, Y. (2023). Development and Validation of a Double-Sensor Hump Calibration Method for Articulated Vehicle Model Identification. Sensors, 23(24), 9691. https://doi.org/10.3390/s23249691