Robotic Multi-Boll Cotton Harvester System Integration and Performance Evaluation

Shekhar Thapa, Glen C. Rains, Wesley M. Porter, Guoyu Lu, Xianqiao Wang, Canicius J. Mwitta, S. Virk
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Abstract

Several studies on robotic cotton harvesters have designed their end-effectors and harvesting algorithms based on the approach of harvesting a single cotton boll at a time. These robotic cotton harvesting systems often have slow harvesting times per boll due to limited computational speed and the extended time taken by actuators to approach and retract for picking individual cotton bolls. This study modified the design of the previous version of the end-effector with the aim of improving the picking ratio and picking time per boll. This study designed and fabricated a pullback reel to pull the cotton plants backward while the rover harvested and moved down the row. Additionally, a YOLOv4 cotton detection model and hierarchical agglomerative clustering algorithm were implemented to detect cotton bolls and cluster them. A harvesting algorithm was then developed to harvest the cotton bolls in clusters. The modified end-effector, pullback reel, vacuum conveying system, cotton detection model, clustering algorithm, and straight-line path planning algorithm were integrated into a small red rover, and both lab and field tests were conducted. In lab tests, the robot achieved a picking ratio of 57.1% with an average picking time of 2.5 s per boll. In field tests, picking ratio was 56.0%, and it took an average of 3.0 s per boll. Although there was no improvement in the lab setting over the previous design, the robot’s field performance was significantly better, with a 16% higher picking ratio and a 46% reduction in picking time per boll compared to the previous end-effector version tested in 2022.
机器人多棉铃棉花收割机系统集成与性能评估
一些关于机器人棉花收割机的研究都是基于一次收割单个棉铃的方法来设计末端执行器和收割算法的。这些机器人棉花收获系统往往由于计算速度有限,以及执行器在采摘单个棉铃时接近和缩回所需的时间较长,导致每个棉铃的收获时间较慢。本研究修改了前一版本末端执行器的设计,旨在提高采摘率和每棉铃的采摘时间。本研究设计并制造了一个回拉式卷轴,在漫游者收割棉花并顺行移动时将棉株向后拉。此外,还采用了 YOLOv4 棉花检测模型和分层聚类算法来检测棉铃并对其进行聚类。然后开发了一种收获算法,以收获成簇的棉铃。改进后的末端执行器、回拉卷轴、真空输送系统、棉花检测模型、聚类算法和直线路径规划算法被集成到一个小型红色漫游车中,并进行了实验室和实地测试。在实验室测试中,机器人的采摘率达到了 57.1%,每包棉花的平均采摘时间为 2.5 秒。在实地测试中,机器人的采摘率为 56.0%,每个棉铃的平均采摘时间为 3.0 秒。虽然在实验室环境中,机器人的性能没有比以前的设计有所改进,但在实地测试中,机器人的性能却有了明显提高,与 2022 年测试的以前的末端执行器版本相比,机器人的采摘率提高了 16%,每个棉铃的采摘时间缩短了 46%。
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CiteScore
4.70
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