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IoT Monitoring System for Early Detection of Agricultural Pests and Diseases

机译:物联网监测系统,用于农业病虫害的早期发现

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Technological revolution in farming has been led by advances in sensing technologies. Nowadays the ability of applying the state of the art related to Internet of Things (IoT) is intensely increasing however, the development of daily long-distance agricultural systems is still in its early stage. As agricultural sector continues to be suffering with climate changes, the current challenges of the less favorable climatic conditions thrives the greater risks of transboundary plant pests and diseases; which affect crops production, as well as threatening food security and some significant losses to the farmers. In this research we have combined the sensors devices using wireless sensors networks(WSN), to build a farmland environmental monitoring platform that can simultaneously monitor eight important environmental parameters identified as high correlation to boom pests and diseases in plantation. The overall structure of the system enabled real-time monitoring and acquisition of the huge amount of data on daily basis. Due to this reason, we have researched insight of these collected data using machine learning technique through the algorithms like KNN, Random Forest, Logistic Regression and Linear Regression. The objective of this paper is to do an experiment on benefit of using IoT system in farmland for data collection and analysis for identifying a prediction model which can be used for predicting outbreaks of plantation diseases with better accuracy.
机译:传感技术的进步带动了农业技术革命。如今,应用与物联网(IoT)相关的最新技术的能力正在急剧提高,但是,日常长途农业系统的开发仍处于早期阶段。随着农业部门继续遭受气候变化的困扰,当前气候条件不利的挑战使跨界植物病虫害的更大风险日益增加;这会影响农作物的生产,并威胁到粮食安全,并给农民造成重大损失。在这项研究中,我们结合了使用无线传感器网络(WSN)的传感器设备,构建了一个农田环境监测平台,该平台可以同时监测八个重要的环境参数,这些参数被确定与种植园中的病虫害高度相关。该系统的整体结构可实现每日实时监视和采集大量数据。因此,我们使用机器学习技术通过KNN,随机森林,逻辑回归和线性回归等算法研究了这些收集的数据的洞察力。本文的目的是进行一项实验,以利用农田中的物联网系统进行数据收集和分析,从而确定可用于更好地预测人工林疾病暴发的预测模型。

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