A Novel Machine Learning based Autonomous Farming Robot for Small-Scale Chili Plantations

Q3 Engineering Advances in Technology Innovation Pub Date : 2022-08-29 DOI:10.31357/ait.v2i3.5461
Kasun Thushara, Fazlun Rifaza Noordeen, Kaveesha N. Ranasinghe, Chamitha D. Alwis, Madushanka N. Dharmaweera, Bhathiya M. Pilanawithana
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引用次数: 0

Abstract

The agricultural sector is a major economic force in Sri Lanka, which contributes to the national economy, food security, and employment. The traditional methods practiced by farmers mainly drove the growth of the agriculture sector over the last 2500 years. However, these traditional methods have often been ineffective against pest attacks in recent years causing significant losses to farmers and threatening food security. To counter these issues, officials and researchers have started formulating novel technology-based smart solutions. This study proposes a smart, autonomous mobile robot that can help detect pests and diseases in advance and assist in crop estimation of chili plants. The model is created as such for pest and plant disease detection in small-scale chili plantations with the hope of using it in other crop types for the same purpose in the future. Thus, the proposed approach together with the developed model can be used to enhance the growth of other plants as well. Identification of the type of garden and the detection of pests and plant diseases are achieved using machine learning techniques while the identification of nutrient deficiencies is achieved using image processing techniques. This proposed mobile robot incorporates sensory inputs, machine learning, robotics, and image processing. Furthermore, a mobile application acts as the interface between the user and the robot.
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一种新型的基于机器学习的小型辣椒种植园自主农业机器人
农业是斯里兰卡的主要经济力量,为国民经济、粮食安全和就业做出了贡献。在过去2500年里,农民实践的传统方法主要推动了农业部门的发展。然而,近年来,这些传统方法往往对害虫袭击无效,给农民造成重大损失并威胁到粮食安全。为了解决这些问题,官员和研究人员已经开始制定新的基于技术的智能解决方案。本研究提出了一种智能、自主的移动机器人,可以帮助提前检测害虫和疾病,并协助辣椒植物的作物估计。该模型是为小规模辣椒种植园的病虫害检测而创建的,并希望将来将其用于其他作物类型以达到同样的目的。因此,所提出的方法以及所开发的模型也可用于促进其他植物的生长。花园类型的识别和病虫害的检测是使用机器学习技术实现的,而营养缺乏的识别是使用图像处理技术实现的。这个提议的移动机器人结合了感官输入、机器学习、机器人和图像处理。此外,移动应用程序充当用户和机器人之间的接口。
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来源期刊
Advances in Technology Innovation
Advances in Technology Innovation Energy-Energy Engineering and Power Technology
CiteScore
1.90
自引率
0.00%
发文量
18
审稿时长
12 weeks
期刊最新文献
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