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基于激光雷达的温室电动履带式拖拉机自主导航系统研究

Research on autonomous navigation system of greenhouse electric crawler tractor based on LiDAR.

作者信息

Guo Huiping, Li Yi, Wang Hao, Wang Tingwei, Rong Linrui, Wang Haoyu, Wang Zihao, Wang Chensi, Zhang Jiao, Huo Yaobin, Guo Shaomeng

机构信息

College of Mechanical and Electronic Engineering, Northwest Agriculture and Forestry University, Yangling, Shaanxi, China.

Northern Agricultural Equipment Scientific Observation and Experimental Station, Ministry of Agriculture and Rural Affairs, Yangling, Shaanxi, China.

出版信息

Front Plant Sci. 2024 May 15;15:1377269. doi: 10.3389/fpls.2024.1377269. eCollection 2024.

Abstract

The application of autonomous navigation technology of electric crawler tractors is an important link in the development of intelligent greenhouses. Aiming at the characteristics of enclosed and narrow space and uneven ground potholes in greenhouse planting, to improve the intelligence level of greenhouse electric crawler tractors, this paper develops a navigation system of electric crawler tractors for the greenhouse planting environment based on LiDAR technology. The navigation hardware system consists of five modules: the information perception module, the control module, the communication module, the motion module, and the power module. The software system is composed of three layers: the application layer, the data processing layer, and the execution layer. The developed navigation system uses LiDAR, Inertial Measurement Unit (IMU) and wheel speed sensor to sense the greenhouse environment and the crawler tractor's information, employs the Gmapping algorithm to build the greenhouse environment map, and utilizes the adaptive Monte Carlo positioning algorithm for positioning. The simulation test of different global path planning algorithms in Matlab shows that the A* algorithm obtains the optimal overall global path. In the scene of map 5, the path planned by the A* algorithm is the most significant, and the number of inflection points is reduced by 40.00% and 87.50%, respectively; meanwhile, the path length is the same as that of the Dijkstra algorithm, but the runtime is reduced by 68.87% and 81.49%, respectively; compared with the RRT algorithm, the path length is reduced by 7.27%. Therefore, the A* algorithm and the Dynamic Window Approach (DWA) method are used for tractor navigation and obstacle avoidance, which ensures global path optimality while also achieving effective local path planning for obstacle avoidance. The test results suggest that the maximum lateral deviation of the built map is 6 cm, and the maximum longitudinal deviation is 16 cm, which meets the requirement of map accuracy. Additionally, the results of the navigation accuracy test indicate that the maximum lateral deviation of navigation is less than 13 cm, the average lateral deviation is less than 7 cm, and the standard lateral deviation is less than 8 cm. The maximum heading deviation is less than 14°, the average heading deviation is less than 7°, and the standard deviation is less than 8°. These results show that the developed navigation system meets the navigation accuracy requirements of electric crawler tractors in the greenhouse environment.

摘要

电动履带式拖拉机自主导航技术的应用是智能温室发展中的重要环节。针对温室种植中空间封闭狭窄、地面坑洼不平的特点,为提高温室电动履带式拖拉机的智能化水平,本文基于激光雷达技术开发了一种适用于温室种植环境的电动履带式拖拉机导航系统。导航硬件系统由信息感知模块、控制模块、通信模块、运动模块和动力模块五个模块组成。软件系统由应用层、数据处理层和执行层三层构成。所开发的导航系统利用激光雷达、惯性测量单元(IMU)和轮速传感器来感知温室环境和履带式拖拉机的信息,采用Gmapping算法构建温室环境地图,并利用自适应蒙特卡洛定位算法进行定位。在Matlab中对不同全局路径规划算法进行的仿真测试表明,A算法获得了最优全局路径。在地图5场景中,A算法规划的路径效果最为显著,拐点数量分别减少了40.00%和87.50%;同时,路径长度与迪杰斯特拉算法相同,但运行时间分别减少了68.87%和81.49%;与RRT算法相比,路径长度减少了7.27%。因此,采用A*算法和动态窗口方法(DWA)进行拖拉机导航和避障,在确保全局路径最优的同时,也实现了有效的局部避障路径规划。测试结果表明,所构建地图的最大横向偏差为6厘米,最大纵向偏差为16厘米,满足地图精度要求。此外,导航精度测试结果表明,导航的最大横向偏差小于13厘米,平均横向偏差小于7厘米,标准横向偏差小于8厘米。最大航向偏差小于14°,平均航向偏差小于7°,标准差小于8°。这些结果表明,所开发的导航系统满足电动履带式拖拉机在温室环境中的导航精度要求。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/c4ef/11133607/f54c44bc8650/fpls-15-1377269-g001.jpg

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