Assisted Tea Leaf Picking: The Design and Simulation of a 6-DOF Stewart Parallel Lifting Platform
Author:
Wang Zejun1, Yang Chunhua1, Che Raoqiong1, Li Hongxu1, Chen Yaping1, Chen Lijiao1, Yuan Wenxia1, Yang Fang1, Tian Juan1, Wang Baijuan1
Affiliation:
1. College of Tea Science, Yunnan Agricultural University, Kunming 650201, China
Abstract
The 6-DOF Stewart parallel elevation platform serves as the platform for mounting the tea-picking robotic arm, significantly impacting the operational scope, velocity, and harvesting precision of the robotic arm. Utilizing the Stewart setup, a parallel elevation platform with automated lifting and leveling capabilities was devised, ensuring precise halts at designated elevations for seamless harvesting operations. The effectiveness of the platform parameter configuration and the reasonableness of the posture changes were verified. Firstly, the planting mode and growth characteristics of Yunnan large-leaf tea trees were analyzed to determine the preset path, posture changes, and mechanism stroke of the Stewart parallel lifting platform, thereby determining the basic design specifications of the platform. Secondly, a 3D model was established using SolidWorks, a robust adaptive PD control model was built using MATLAB for simulation, and dynamic calculations were carried out through data interaction in Simulink and ADAMS. Finally, the rationality of the lifting platform design requirements was determined based on simulation data, a 6-DOF Stewart parallel lifting platform was manufactured, and a motion control system was built for experimental verification according to the design specifications and simulation data. The results showed that the maximum deviation angle around the X, Y, and Z axes was 10°, the maximum lifting distance was 15 cm, the maximum load capacity was 60 kg, the platform response error was within ±0.1 mm, and the stable motion characteristics reached below the millimeter level, which can meet the requirements of automated operation of the auxiliary picking robotic arm.
Funder
Development and Demonstration of Intelligent Agriculture Data Sensing Technology and Equipment in Plateau Mountainous Areas Study of Yunnan Big Leaf Tea Tree Phenotypic Plasticity Characteristics Selection Mechanism Based on AI-driven Data Fusion Smart Tea Industry Technology Task of Menghai County, Yunnan Province
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