Gas–Solid Coupling Dynamic Modeling and Transverse Vibration Suppression for Ultra-High-Speed Elevator
Abstract
1. Introduction
- A gas–solid coupling dynamic model for ultra-high-speed elevators is established, and a control method based on the LQR has been proposed.
- Simulation analysis of the flow field characteristics inside high-speed elevator shafts is executed, leading to a calculation formula for air excitation corresponding to the elevator car motion state, with an R-square as high as 0.999.
- The key weight matrix Q and R parameters in the LQR controller are optimized utilizing a multi-objective genetic algorithm, considering both control performance and cost of the elevator.
- When the speed is 6 m/s, 8 m/s, and 10 m/s, compared with PID control, the proposed LQR-based method can significantly reduce the transverse acceleration by 7.55%, 8.47%, and 10.27%. The higher the speed, the more effective the proposed LQR-based method is.
2. Modeling of External Excitation
2.1. Air Excitation Modeling
2.1.1. Turbulence Model
2.1.2. Numerical Simulation of the Airflow Within the Shaft
- (1)
- The elevator car and the elevator frame are considered to be symmetrically installed with a rectangular shape, and their centers of mass are located on the centerline of the hoistway.
- (2)
- The guide shoes and shock absorbers are simplified to a spring–damper system.
- (3)
- The influence of the hoisting ropes on the car’s transverse vibrations is neglected.
2.2. Guide Excitation Modeling
3. Gas–Solid Coupling Dynamic Modeling of Ultra-High-Speed Elevator
3.1. Dynamic Modeling of Elevator Transverse Vibration
3.2. Establishment of System State Equation
4. Proposed LQR-Based Vibration Suppression Method
4.1. Linear Quadratic Regulator
4.2. Multi-Objective Genetic Algorithm
4.3. Design and Parameter Optimization of LQR Controller
5. Results and Discussion
5.1. Comparison Results of Control Methods
5.2. Multidimensional Performance Evaluation
5.3. Speed Sensitivity Research
- Although speed increase typically heightens air resistance, in some cases, it can stabilize the airflow between the elevator car and hoistway, thereby reducing aerodynamic-induced vibration.
- At high speeds, the interaction between airflow and the guide shoe–guide rail contact may become closer, potentially mitigating vibrations caused by guide rail unevenness.
5.4. Limitations and Robustness Analysis
- Speed dependency: We tested 10 times each at 6 m/s, 8 m/s, and 10 m/s, and the time results for each run are as follows: At 6 m/s: s. At 8 m/s: s;. At 10 m/s: s. It can be observed that higher operating speeds do not significantly increase aerodynamic complexity and do not prolong the simulation time for each evaluation.
- Model complexity impact: Obviously, more complex models will lead to an increase in simulation time. We tested 10 times using the LQR method, PID method, and uncontrolled conditions (), and the time results for each run are as follows: LQR: s; PID: s; without control: s. In 10 tests, the PID method consumed slightly longer time than the LQR method, which is related to the differentiation and integration in the calculation process, but this part has little impact on the overall time. In short, the more complex the control method (the more complex the model), the longer the time required for a single Simulink calculation, and the longer the time consumed by the entire MOGA.
- Mean shift increases baseline vibration.
- Variance expansion ( grows after numerous cycles) amplifies stochastic disturbances.
- Peak deformation intensification causes intermittent high-amplitude impulses ( events will increase).
6. Conclusions
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
Nomenclature
Car quality | |
Car’s moment of inertia | |
Frame quality | |
Frame moment of inertia | |
Stiffness coefficient of the supporting components at the bottom of the car and the frame | |
Damping coefficient of the supporting components at the bottom of the car and the frame | |
Stiffness coefficient of the upper support components of the car and the frame | |
Stiffness coefficient of the lower supporting components of the car and the frame | |
Damping coefficient of the upper support components of the car and the frame | |
Damping coefficient of the lower supporting components of the car and the frame | |
Stiffness coefficient of the rolling guide shoe spring | |
Damping coefficient of the rolling guide shoe spring | |
The vertical distance from the center of mass of the car to the top of the car | |
The vertical distance from the center of mass of the car to the bottom of the car | |
The vertical distance from the center of mass of the car frame to the top of the frame | |
The vertical distance from the center of mass of the car frame to the bottom of the frame | |
The vertical distance from the center of mass of the car frame to the top of the car | |
The vertical distance from the center of mass of the car frame to the bottom of the car | |
The horizontal distance from the center of mass of the car to the side wall of the car | |
Active control force | |
Guide rail displacement excitation | |
Air excitation of the shaft flow field effect | |
Air velocity vector | |
Air density | |
Velocity components of U in the , , and coordinate directions | |
Pressure | |
Dynamic viscosity of air | |
Turbulent viscosity coefficient | |
Empirical constants | |
Viscous stress | |
The position of the action surface unit | |
The position of the car’s center of mass | |
Transverse force influence coefficient | |
Overturning moment influence coefficient | |
Deflection angle | |
Transverse displacement | |
Equivalent aerodynamic load | |
Equivalent aerodynamic torque | |
The state cost weight matrix | |
Control cost weight matrix |
Appendix A
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2 | 4 | 6 | 8 | 10 | ||
---|---|---|---|---|---|---|
4 | 1.443328 | 2.820529 | 4.433297 | 5.847365 | 7.3607995 | |
0.618003 | 1.0108336 | 1.9515373 | 2.0938242 | 3.1336382 | ||
6 | 3.295254 | 6.7790241 | 10.148966 | 13.594114 | 16.945068 | |
1.350664 | 2.5176488 | 4.2651951 | 5.1110839 | 6.820766 | ||
8 | 5.714808 | 11.594293 | 17.849078 | 27.131752 | 30.916064 | |
2.568629 | 4.3573907 | 7.6928151 | 10.613392 | 13.341611 | ||
10 | 9.473283 | 18.867489 | 27.128074 | 39.512653 | 48.962687 | |
3.877174 | 7.3896428 | 11.632615 | 15.696517 | 20.812077 | ||
12 | 13.207638 | 26.184425 | 39.162721 | 52.128905 | 65.367814 | |
5.472908 | 11.094941 | 16.469281 | 22.089928 | 27.486092 |
Aerodynamic Load | Deviation Angle/° | |||||
---|---|---|---|---|---|---|
0.5 | 1 | 1.5 | 2 | 2.5 | ||
4 | 17.251313 | 34.505746 | 52.871793 | 71.051558 | 91.897572 | |
7.868474 | 14.97594 | 22.961873 | 30.512319 | 37.802049 | ||
6 | 38.561698 | 77.617425 | 118.40733 | 159.92379 | 205.83671 | |
17.462975 | 34.716924 | 51.357129 | 68.417756 | 84.439622 | ||
8 | 68.351175 | 137.96199 | 209.92972 | 284.15439 | 364.88847 | |
30.941648 | 59.233599 | 90.979506 | 121.32131 | 149.41584 | ||
10 | 106.55557 | 215.40127 | 327.46022 | 443.79444 | 569.06771 | |
48.171635 | 92.279483 | 141.81271 | 189.18662 | 232.75207 | ||
12 | 153.12809 | 309.96903 | 471.02111 | 638.66358 | 818.20037 | |
69.106236 | 132.5533 | 203.83158 | 271.97316 | 334.42207 |
Parameters | Unit | Value |
---|---|---|
1100 | ||
1600 | ||
2400 | ||
8600 | ||
900,000 | ||
3,600,000 | ||
200,000 | ||
170,000 | ||
2300 | ||
1800 | ||
120,000 | ||
2000 | ||
1.6 | ||
1.4 | ||
3.3 | ||
4.5 | ||
1.25 | ||
1.75 | ||
0.5 |
Optimized LQR Control | Unoptimized LQR Control | PID Control | Without Control | |
---|---|---|---|---|
Performance index () | 5.192 × 103 | 1.621 × 104 | 5.787 × 103 | 2.141 × 104 |
Control cost () | 41.943 | 4.726 | 24.832 | 0 |
Displacement of the car frame off the centerline () | 8.653 × 10−4 | 8.705 × 10−4 | 8.931 × 10−4 | 8.894 × 10−4 |
Displacement of the car relative to the frame () | 2.006 × 10−4 | 5.538 × 10−4 | 3.278 × 10−4 | 5.702 × 10−4 |
Transverse acceleration at the bottom of the car () | 0.037 | 0.114 | 0.041 | 0.130 |
Control force () | 90.558 | 17.502 | 54.633 | 0 |
Control force () | 114.787 | 17.502 | 91.056 | 0 |
Control force () | 215.523 | 16.261 | 168.792 | 0 |
Control force () | 194.744 | 16.261 | 168.792 | 0 |
Optimized LQR Control | Unoptimized LQR Control | PID Control | Without Control | |
---|---|---|---|---|
Performance index () | 4.583 × 103 | 1.838 × 104 | 5.007 × 103 | 2.141 × 104 |
Control cost () | 40.302 | 5.342 | 24.887 | 0 |
Displacement of the car frame off the centerline () | 8.706 × 10−4 | 8.724 × 10−4 | 9.082 × 10−4 | 9.361 × 10−4 |
Displacement of the car relative to the frame () | 2.131 × 10−4 | 5.470 × 10−4 | 3.349 × 10−4 | 5.961 × 10−4 |
Transverse acceleration at the bottom of the car () | 0.032 | 0.130 | 0.035 | 0.151 |
Optimized LQR Control | Unoptimized LQR Control | PID Control | Without Control | |
---|---|---|---|---|
Performance index () | 4.161 × 103 | 1.638 × 104 | 4.495 × 103 | 2.176 × 104 |
Control cost () | 38.871 | 5.641 | 24.172 | 0 |
Displacement of the car frame off the centerline () | 8.453 × 10−4 | 8.670 × 10−4 | 8.721 × 10−4 | 9.957 × 10−4 |
Displacement of the car relative to the frame () | 2.336 × 10−4 | 5.636 × 10−4 | 3.535 × 10−4 | 6.155 × 10−4 |
Transverse acceleration at the bottom of the car () | 0.029 | 0.116 | 0.032 | 0.154 |
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Jiang, J.; Qin, C.; Xia, P.; Liu, C. Gas–Solid Coupling Dynamic Modeling and Transverse Vibration Suppression for Ultra-High-Speed Elevator. Actuators 2025, 14, 319. https://doi.org/10.3390/act14070319
Jiang J, Qin C, Xia P, Liu C. Gas–Solid Coupling Dynamic Modeling and Transverse Vibration Suppression for Ultra-High-Speed Elevator. Actuators. 2025; 14(7):319. https://doi.org/10.3390/act14070319
Chicago/Turabian StyleJiang, Jiacheng, Chengjin Qin, Pengcheng Xia, and Chengliang Liu. 2025. "Gas–Solid Coupling Dynamic Modeling and Transverse Vibration Suppression for Ultra-High-Speed Elevator" Actuators 14, no. 7: 319. https://doi.org/10.3390/act14070319
APA StyleJiang, J., Qin, C., Xia, P., & Liu, C. (2025). Gas–Solid Coupling Dynamic Modeling and Transverse Vibration Suppression for Ultra-High-Speed Elevator. Actuators, 14(7), 319. https://doi.org/10.3390/act14070319