Deployment of an Artificial Intelligent Robot for Weed Management in Legumes Farmland

Adedamola Abdulmatin Adeniji, K. E. Jack, Muhammed Kamil Idris, S. S. Oyewobi, Hamza Musa, Abdulhafeez Oluwatobi Oyelami
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引用次数: 1

Abstract

This groundbreaking research introduces an AI-based approach for revolutionizing weed management in legume farmland, addressing the limitations of traditional methods and introducing a new era of cost-effective and precise weed detection and removal. Traditional methods of removing weeds from farmland involving machinery or chemicals often resulted in high costs and imprecise outcomes. To address these challenges, an advanced image recognition algorithm was proposed, which harnessed smart machines to minimize costs and environmental risks. By utilizing computer vision technology, weeds were accurately identified and targeted for removal. A machine learning model was trained using relevant datasets to enable precise weed management. The AI-powered robot, equipped with advanced image recognition algorithms, demonstrated exceptional accuracy and speed, performing weed removal and decomposition 1.2 times faster than traditional manual labour. This breakthrough in weed management technology offers farmers a means to optimize crop yields, enhance food production, and minimize the environmental impact associated with chemical herbicides. A prototype of the robot was fabricated and evaluated in real-world farming conditions. Field tests were conducted on a bean farm and it’s demonstrated the robot's exceptional accuracy, with only a 2% deviation from the actual weed quantity. This research showcased the potential of AI-based weed management systems in legume farming, offering cost-effective and precise weed detection and removal. This research sets a precedent for the integration of AI in modern agriculture, driving the industry toward a more environmentally conscious and economically viable future. The AI-based weed management system empowers farmers, ensuring bountiful harvests, increased profitability, and a greener, more sustainable tomorrow while attention should be given to manufacturing this model for industrial and or commercial applications.
人工智能机器人在豆科农田杂草管理中的应用
这项开创性的研究引入了一种基于人工智能的方法来彻底改变豆科农田的杂草管理,解决了传统方法的局限性,并引入了一个经济高效、精确的杂草检测和去除的新时代。传统的农田除草方法涉及机械或化学品,往往导致高成本和不精确的结果。为了应对这些挑战,提出了一种先进的图像识别算法,该算法利用智能机器将成本和环境风险降至最低。利用计算机视觉技术,对杂草进行了准确的识别和定位去除。使用相关数据集训练机器学习模型,以实现精确的杂草管理。这款人工智能机器人配备了先进的图像识别算法,表现出了卓越的准确性和速度,除草和分解速度比传统人工快1.2倍。这一杂草管理技术的突破为农民提供了一种优化作物产量、提高粮食产量和减少化学除草剂对环境影响的方法。机器人的原型被制造出来,并在真实的农业条件下进行了评估。在一个豆子农场进行了现场测试,证明了机器人的卓越准确性,与实际杂草数量只有2%的偏差。这项研究展示了基于人工智能的杂草管理系统在豆类农业中的潜力,提供经济有效和精确的杂草检测和清除。这项研究为人工智能在现代农业中的整合开创了先例,推动该行业走向更加环保和经济可行的未来。基于人工智能的杂草管理系统赋予农民权力,确保丰收,提高盈利能力,以及更绿色,更可持续的明天,同时应注意制造这种工业和/或商业应用模式。
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