Design and Testing of a Wheeled Crop-Growth-Monitoring Robot Chassis
Abstract
:1. Introduction
2. Materials and Methods
2.1. Overall Design of the Wheeled Robot
2.2. Mechanical Mechanism Design and Dynamic Simulation of Wheeled Robot Chassis
2.2.1. Mechanical Mechanism Design of Wheeled Robot Chassis
2.2.2. Dynamic Simulation in Adams
2.3. Sensing Unit
2.4. Control System
3. Test and Results
3.1. Test Design
3.2. Test Devices
3.2.1. Wheeled Crop-Growth-Monitoring Robot Chassis
3.2.2. ASD FieldSpec HandHeld 2 Handheld Field Spectrometer
3.2.3. LAI-2200C Vegetation Canopy Analyzer
3.3. Test Method
3.4. Data Analysis
3.5. Test Results
3.6. Discussion
4. Conclusions
- (1)
- This article focused on disclosing the mechanical structure of a high-clearance robot chassis and demonstrated its application in wheat growth monitoring. Subsequent research will further consider using this chassis combined with AI technology to better realize smart functions such as automatic navigation and intelligent obstacle avoidance;
- (2)
- A model of the wheeled crop-growth-monitoring robot chassis was built in Pro/E based on the mechanical structural design. The kinematic stability was analyzed in Adams. According to the simulation results, the displacement of its mass center was smaller than 2 mm and the pitching angle stayed at 0° when the robot chassis was on flat pavement. When crossing obstacles (10 cm deep pits and 10 cm high bumps), the displacements along the body height direction were 1.78 cm and 1.46 cm, which were only 1.6% and 1.3% of the body height, respectively. The test results showed that the mass center remained unchanged when the wheeled robot chassis was running on flat pavement; during field operation, the maximum mass center displacement was 1.51 cm, which was only 1.3% of the body height. Thus, the wheeled robot chassis shows high operational stability;
- (3)
- The motions of the wheeled crop-growth-monitoring robot chassis in the field were controlled by the self-developed LabVIEW upper-computer software platform. Functions such as the acquisition, analysis, display, and management of data collected from the environment information sensors and crop growth sensors are integrated into this software platform, which helped to overcome the shortcomings of separate operations between the robot chassis control system and the sensor test software and simplified the test flow;
- (4)
- According to the tests, the NDVI and RVI obtained by the wheeled robot chassis were highly consistent with those obtained with the ASD FieldSpec HandHeld 2 spectrometer. The agronomic parameters suggest that the spectral vegetation indexes acquired by the wheeled robot chassis can favorably predict the LAI, LDW, and LNA of wheat. In conclusion, the proposed wheeled crop-growth-monitoring robot chassis can achieve stable, real-time, and accurate monitoring of wheat growth.
Author Contributions
Funding
Data Availability Statement
Acknowledgments
Conflicts of Interest
References
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Yao, L.; Yuan, H.; Zhu, Y.; Jiang, X.; Cao, W.; Ni, J. Design and Testing of a Wheeled Crop-Growth-Monitoring Robot Chassis. Agronomy 2023, 13, 3043. https://doi.org/10.3390/agronomy13123043
Yao L, Yuan H, Zhu Y, Jiang X, Cao W, Ni J. Design and Testing of a Wheeled Crop-Growth-Monitoring Robot Chassis. Agronomy. 2023; 13(12):3043. https://doi.org/10.3390/agronomy13123043
Chicago/Turabian StyleYao, Lili, Huali Yuan, Yan Zhu, Xiaoping Jiang, Weixing Cao, and Jun Ni. 2023. "Design and Testing of a Wheeled Crop-Growth-Monitoring Robot Chassis" Agronomy 13, no. 12: 3043. https://doi.org/10.3390/agronomy13123043
APA StyleYao, L., Yuan, H., Zhu, Y., Jiang, X., Cao, W., & Ni, J. (2023). Design and Testing of a Wheeled Crop-Growth-Monitoring Robot Chassis. Agronomy, 13(12), 3043. https://doi.org/10.3390/agronomy13123043