Research and Experiment on Cruise Control of a Self-Propelled Electric Sprayer Chassis
Abstract
:1. Introduction
2. Materials and Methods
2.1. Test Platform Construction
2.2. Analysis of the Overall Cruise Control Model Architecture
- (1)
- The deformation of the tires and the ground are neglected.
- (2)
- The entire body of the sprayer is symmetrical from left to right.
- (3)
- The tires are in a pure rolling state without side slip or slip, and the tire–road adhesion is ideal.
2.3. Modeling of Cruise Control Dynamics
2.3.1. Modeling of Inverse Longitudinal Dynamical Systems
2.3.2. Four-Wheel Torque Distribution Strategy
2.3.3. Modeling of Motor Systems
2.3.4. Chassis Dynamics Modeling
2.4. Design of Constant Speed Cruise Control Method Based on Fuzzy PID
2.4.1. General Architecture of Cruise Control System for Self-Propelled Sprayers
2.4.2. Upper and Lower Level Controller Design
3. Analysis of Simulation and Field Test Results
3.1. Analysis of Simulation Test Results
3.1.1. Four-Wheel Torque Distribution Strategy Validation
- (1)
- In Scenario 1, as the sprayer operates on a level road, using the sprayer’s center of gravity position as the optimal torque distribution reference, it is determined from the established mathematical model that the center of gravity is located in the rear half of the sprayer, with equal mass on both sides. Consequently, the torque applied to the two rear wheels is equal and slightly greater than that applied to the front wheels.
- (2)
- In Scenario 2, during the first 10 s, the torque distribution is similar to Scenario 1. After 10 s, when the sprayer ascends the slope, with the left two wheels of the sprayer positioned lower due to the center of gravity being towards the rear, the left rear wheel should have the highest driving torque.
- (3)
- In Scenario 3, the torque distribution during the first 10 s aligns with Scenario 1. After 10 s, when the sprayer climbs the slope, the torque applied to the two rear wheels is equal, as is the torque applied to the two front wheels, with the rear wheel torque exceeding that of the front wheels.
- (4)
- In Scenario 4, the torque distribution during the first 10 s is consistent with Scenario 1. After 10 s, when the sprayer ascends the slope with a 10° pitch angle and lateral tilt, the left rear wheel has the highest driving torque.
3.1.2. Cruise Control Function Verification
- (1)
- The effectiveness of the set speed cruise control during the sprayer’s transition and transport was validated. The following typical scenario was simulated: the sprayer travels on a level road with an initial speed of 5 km/h and zero initial acceleration, maintaining a constant weight. To test the robustness of the control system, an external disturbance in the form of a slope change was introduced between 5 and 10 s, causing the body of the sprayer to pitch at a 10° angle. The simulation results for speed and acceleration are illustrated in Figure 12a,b.
- (2)
- The cruise control performance during spraying operations was validated under the following typical scenario: the sprayer starts from rest in the field and periodically adjusts the set desired speed. Additionally, as the spraying operation progresses, the sprayer’s weight gradually decreases. Starting from 15 s until the end of the simulation, a 10° pitch disturbance was introduced. The simulation results for speed and acceleration are shown in Figure 13a,b.
3.2. Analysis of Field Vehicle Test Results
3.2.1. Transit Transportation Test
Horizontal Straight-Line Acceleration
Straight-Line Uphill Driving
3.2.2. Fieldwork Trials
4. Discussion
- (1)
- Establishment of a dynamic model for slope driving conditions based on an analysis of the sprayer’s longitudinal dynamic characteristics.
- (2)
- Implementation of simulation experiments under external disturbances and variations in vehicle weight using a hierarchical control structure with upper-layer PID and lower-layer fuzzy PID control. Results indicate rapid speed adjustment response times of less than 0.1 s, with an overshoot of only 1.6%. The control system demonstrates effective speed tracking capabilities across various simulated scenarios.
- (3)
- Evaluation of the stability of the sprayer’s cruise control function through on-road tests using a sensor-equipped test platform. Results show minimal speed deviation and effective maintenance of stable speed during straight-line acceleration and uphill driving scenarios.
- (1)
- Considering the slip of each wheel during sprayer operation, incorporating slip rate control to enhance the precision of torque control.
- (2)
- Building upon the existing research, introducing advanced control techniques such as adaptive control, sliding mode control, or other more complex nonlinear control methods to more accurately capture the system’s nonlinear characteristics, thereby designing more efficient and reliable control strategies.
5. Conclusions
- (1)
- Based on the analysis of the longitudinal dynamic characteristics of a self-propelled electric sprayer on sloped terrain, a simplified model of the sprayer’s dynamic system was established by combining relevant vehicle data under the assumption of simplification.
- (2)
- Simulation experiments were conducted using a hierarchical control structure based on upper-level PID control and lower-level fuzzy PID control, considering external disturbances and variations in vehicle weight. The results showed that the system had a very short response time for speed adjustment, less than 0.1 s, with an overshoot of only 1.6%. In the simulation experiments involving simultaneous variations in vehicle weight and slope, the control system exhibited a response time of less than 0.2 s, with minimal overshoot and steady-state errors. These three sets of simulation experiments verified the rationality of the torque distribution algorithm and the effectiveness of the cruise control algorithm in tracking the vehicle speed.
- (3)
- An experimental platform for the entire vehicle chassis was built on the actual vehicle to evaluate the stability of the cruise control function of the sprayer by collecting acceleration and velocity data using sensors. During the horizontal straight-line acceleration phase in transportation transition, the measured maximum deviation in speed was 0.15 m/s, with a maximum deviation rate of 7.5%. The acceleration remained close to zero during the cruise control phase, with a root mean square value of 0.06. During the straight-line uphill travel phase in transportation transition, the root mean square velocity values during stable travel (horizontal and uphill phases) were 2.24 m/s and 2.28 m/s, respectively, with deviation rates from the desired values of 0.9% and 2.7%. During field operations, the root mean square velocity of the sprayer was 1.35 m/s, with a deviation rate from the desired speed of 2.8%. The experimental results further validated the correctness of the model construction and the rationality and accuracy of the experiments, providing strong support for the cruise control of the sprayer.
Author Contributions
Funding
Institutional Review Board Statement
Data Availability Statement
Conflicts of Interest
References
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Parameter Name | Parameter Unit | Description |
---|---|---|
Chassis drive form | / | Four-wheel independent motor drive |
Steering form | / | Four-wheel independent motor steering |
Vehicle full load mass | kg | 450 |
Sprayer wheelbase | mm | 1200 |
Ground clearance | mm | 600 |
Maximum working speed | km/h | 20.0 |
Minimum working speed | km/h | 3.0 |
e | ec | ||||||
---|---|---|---|---|---|---|---|
NB | NM | NS | ZO | PS | PM | PB | |
NB | PB/NB/PS | PB/NB/NS | PM/NM/NB | PM/NM/NB | PS/NS/NB | ZO/ZO/NM | ZO/ZO/PS |
NM | PB/NB/PS | PB/NB/NS | PM/NM/NB | PS/NS/NM | PS/NS/NM | ZO/ZO/NS | NS/ZO/ZO |
NS | PM/NB/ZO | PM/NM/NS | PM/NS/NM | PS/NS/NM | ZO/ZO/NM | NS/PS/NS | NS/PS/ZO |
ZO | PM/NM/ZO | PM/NM/NS | PS/NS/NS | ZO/ZO/NS | NS/PS/NS | NM/PM/NS | NM/PM/ZO |
PS | PS/NM/ZO | PS/NS/ZO | ZO/ZO/ZO | NS/PS/ZO | NS/PS/ZO | NM/PM/ZO | NM/PB/ZO |
PM | PS/ZO/PB | ZO/ZO/NS | NS/PS/NS | NM/PS/PS | NM/PM/PS | NM/PB/PS | NB/PB/PB |
PB | ZO/ZO/PB | ZO/ZO/PM | NM/PS/PM | NM/PM/PM | NM/PM/PS | NB/PB/PS | NB/PB/PB |
Test Scene | Test Grouping | Road Conditions | Driving Conditions |
---|---|---|---|
Transit transportation | Group 1 | Asphalt concrete roads | Accelerate in a straight line to a constant speed |
Group 2 | Concrete pavement | Driving straight uphill | |
Field operations | Group 3 | Compacted dirt road | Accelerate in a straight line to a constant speed |
Parameter Name | Maximum Values | Minimum Value | RMS Value |
---|---|---|---|
Speed (m/s) | 2.13 | 1.85 | 1.91 |
Acceleration (m/s2) | 0.08 | −0.01 | 0.06 |
Parameter Name | Maximum Values | Minimum Value | RMS Value |
---|---|---|---|
Speed when traveling horizontally (m/s) | 2.39 | 2.14 | 2.24 |
Speed when traveling uphill (m/s) | 2.38 | 2.11 | 2.28 |
Acceleration while traveling horizontally (m/s2) | 0.08 | −0.09 | 0.063 |
Acceleration when traveling uphill (m/s2) | 0.27 | −0.03 | 0.221 |
Pitch angle when traveling horizontally (°) | 1.55 | 0.12 | 1.47 |
Pitch angle when traveling uphill (°) | 9.35 | 7.64 | 8.42 |
Parameter Name | Maximum Values | Minimum Value | RMS Value |
---|---|---|---|
Speed (m/s) | 1.41 | 1.28 | 1.35 |
Acceleration (m/s2) | 0.64 | −0.03 | 0.013 |
Pitch angle (°) | 9.24 | 2.89 | 13.74 |
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Zhou, L.; Hu, C.; Chen, Y.; Guo, P.; Zhang, L.; Liu, J.; Chen, Y. Research and Experiment on Cruise Control of a Self-Propelled Electric Sprayer Chassis. Agriculture 2024, 14, 902. https://doi.org/10.3390/agriculture14060902
Zhou L, Hu C, Chen Y, Guo P, Zhang L, Liu J, Chen Y. Research and Experiment on Cruise Control of a Self-Propelled Electric Sprayer Chassis. Agriculture. 2024; 14(6):902. https://doi.org/10.3390/agriculture14060902
Chicago/Turabian StyleZhou, Lingxi, Chenwei Hu, Yuxiang Chen, Peijie Guo, Liwei Zhang, Jinyi Liu, and Yu Chen. 2024. "Research and Experiment on Cruise Control of a Self-Propelled Electric Sprayer Chassis" Agriculture 14, no. 6: 902. https://doi.org/10.3390/agriculture14060902
APA StyleZhou, L., Hu, C., Chen, Y., Guo, P., Zhang, L., Liu, J., & Chen, Y. (2024). Research and Experiment on Cruise Control of a Self-Propelled Electric Sprayer Chassis. Agriculture, 14(6), 902. https://doi.org/10.3390/agriculture14060902