Addressing functionalities of agricultural robotic (agribots) and automation in the agriculture practices: What’s next?

M. N. Ahmad, M. Anuar, Nordiana Abd Aziz, Mohd Azwan Mohd Bakri, Zulkifli Hashim, Idris Abu Seman
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This is followed by the navigation of a vehicle using a laser range finder (LRF) to a point-to-go aim location in the plantation by generating a control algorithm equipped with a sensor for an autonomous agricultural vehicle to detect the landmarks in the row-type plantation setting. The second technology is related to an automation device by developing an automated detector and counter (Oto-BaCTM) for bagworm census using deep learning with a Faster Regional Convolutional Neural Network (Faster R-CNN) and normal camera. Meanwhile the third technology is related to agribots via the design and development of a fully automated Agriculture robot (Agribot) for harvesting underground plants (rhizomes) with the assistance of transmission and receiving parts using microcontroller software. Another agribot technology would be on the development of Thorvald II agricultural robotic system, utilising a modularity hardware whereby the robot consists of standard modules and can be reconstructed to handle tasks in various types of environments. The first automation technology results showed the performance of the navigation systems to operate the tractor autonomously along the test path without any crashes on the guide cones. The second automation technology on the Oto-BaCTM performance, produced a positive Pearson product-moment correlation coefficient between the two variables (percentages of detection and temperature), R2 = 0.997 and p = 0.02 for Trial 1 and R2 = 0.888 and p = 0.04 for Trial 2. Meanwhile, the third technology on the Agribot, successfully picked up the rhizome plants, sprayed pesticides, and traced of the soil moisture content. 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引用次数: 2

Abstract

This paper presents and explores the functionalities of automation and agricultural robotics (agribots) in recent years for agricultural operations. The explicit challenges fronting agribots and automation with regards to the operative implementation of Industry 4.0 are discussed. In this paper, several research works and developments on automation and agribots from different scopes and field areas are reviewed to explore recent agricultural practices. The first technology is on the automation work on developing a control algorithm that uses a single sensor that could recognise landmarks in the row-type plantation environment. This is followed by the navigation of a vehicle using a laser range finder (LRF) to a point-to-go aim location in the plantation by generating a control algorithm equipped with a sensor for an autonomous agricultural vehicle to detect the landmarks in the row-type plantation setting. The second technology is related to an automation device by developing an automated detector and counter (Oto-BaCTM) for bagworm census using deep learning with a Faster Regional Convolutional Neural Network (Faster R-CNN) and normal camera. Meanwhile the third technology is related to agribots via the design and development of a fully automated Agriculture robot (Agribot) for harvesting underground plants (rhizomes) with the assistance of transmission and receiving parts using microcontroller software. Another agribot technology would be on the development of Thorvald II agricultural robotic system, utilising a modularity hardware whereby the robot consists of standard modules and can be reconstructed to handle tasks in various types of environments. The first automation technology results showed the performance of the navigation systems to operate the tractor autonomously along the test path without any crashes on the guide cones. The second automation technology on the Oto-BaCTM performance, produced a positive Pearson product-moment correlation coefficient between the two variables (percentages of detection and temperature), R2 = 0.997 and p = 0.02 for Trial 1 and R2 = 0.888 and p = 0.04 for Trial 2. Meanwhile, the third technology on the Agribot, successfully picked up the rhizome plants, sprayed pesticides, and traced of the soil moisture content. Finally, the last automation technology which was on the development of Thorvald II, came out with positive results on the pass traction test, all obstacles, and the incline test. The harvesting robot detected the ripe tomatoes at a 95% success rate by implementing the self-developed algorithm that applied the Adaboost and APV classifiers. However, a 5% miss detection occurred due to the leaf obstruction. The multi-robot system can be designed to handle pest control tasks via UAVs and UGVs. For weed patch recognition, the developed algorithms showed their robustness by precisely distinguishing and mapping the crop rows with a 100% accuracy, while the inter-row weed patches with an accuracy of 85%, and it was proposed to detect the early growth stage based on the weed maps through site-specific weed management. By implementing a 3D fruit detection algorithm, the precision for pepper, eggplant, and guava datasets was 0.864, 0.886, and 0.888, while the recall dataset was 0.889, 0.762, and 0.812, respectively. The proposed algorithm was effective and robust; hence it is appropriate to be applied as an agricultural harvesting robot. A roadmap in applying swarm robotics is described towards the weed control problems and is being implemented within the Swarm Robotics for Agricultural Applications scope. Thus, a baseline result was introduced specifically for monitoring and mapping out weeds in a field via a swarm of UAVs. Hence, the impact on the use of agribots and automation technologies is the realization of a more efficient systems potential to be operated in safe conditions and are cost effective for the farmers, allowing farmers to focus more on improving overall production yields. As a recommendation, there is a need for research and development of multipurpose and adaptive algorithms to be incorporated into different sensor platforms.
解决农业机器人(agribots)和自动化在农业实践中的功能:下一步是什么?
本文介绍并探讨了近年来自动化和农业机器人(agribots)在农业操作中的功能。讨论了农业机器人和自动化在工业4.0的有效实施方面面临的明确挑战。本文综述了自动化和农业机器人在不同范围和领域的研究工作和进展,以探讨最近的农业实践。第一项技术是开发一种控制算法的自动化工作,该算法使用一个传感器,可以识别成行式种植园环境中的地标。随后,使用激光测距仪(LRF)的车辆通过生成配备传感器的控制算法导航到种植园内的点到点目标位置,用于自动农业车辆检测行式种植园设置中的地标。第二项技术与自动化设备相关,通过使用深度学习与Faster区域卷积神经网络(Faster R-CNN)和普通摄像机开发自动检测器和计数器(otto - bactm)来进行bagworm普查。同时,第三项技术与农业机器人有关,通过设计和开发全自动农业机器人(Agribot),在微控制器软件的传输和接收部件的帮助下,用于收获地下植物(根茎)。另一项农业机器人技术将是Thorvald II农业机器人系统的开发,利用模块化硬件,机器人由标准模块组成,可以重构以处理各种环境中的任务。第一次自动化技术测试结果表明,导航系统能够在测试路径上自动驾驶牵引车,而不会碰撞导向锥。第二种自动化技术对otto - bactm性能的影响,在两个变量(检测百分比和温度)之间产生了正的Pearson积差相关系数,试验1的R2 = 0.997和p = 0.02,试验2的R2 = 0.888和p = 0.04。同时,在农业机器人上的第三项技术,成功地采摘了根茎植物,喷洒了农药,并追踪了土壤含水量。最后,在Thorvald II上开发的最后一项自动化技术,在通过牵引力测试、所有障碍测试和倾斜度测试中取得了积极的结果。通过采用Adaboost和APV分类器的自主开发算法,收获机器人以95%的成功率检测成熟的西红柿。然而,由于叶片阻塞,有5%的检测漏检。多机器人系统可以通过无人机和ugv来处理害虫控制任务。在杂草斑块识别方面,所开发的算法具有较强的鲁棒性,对作物行间杂草斑块的精确识别和定位准确率为100%,对行间杂草斑块的识别准确率为85%,并提出了基于杂草地图的生长早期阶段检测方法。通过实现三维水果检测算法,辣椒、茄子和番石榴数据集的检测精度分别为0.864、0.886和0.888,召回率分别为0.889、0.762和0.812。该算法具有较好的鲁棒性和有效性;因此,它适合作为农业收获机器人应用。描述了应用群体机器人解决杂草控制问题的路线图,并在农业应用群体机器人范围内实施。因此,引入了一个基线结果,专门用于通过一群无人机监测和绘制田地中的杂草。因此,对农业机器人和自动化技术使用的影响是实现更高效的系统潜力,在安全条件下运行,对农民来说具有成本效益,使农民能够更多地关注提高整体产量。作为建议,有必要研究和开发多用途和自适应算法,以纳入不同的传感器平台。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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