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Smart Green: An Internet-of-Things Framework for Smart Irrigation

机译:智能与绿色:物联网智能灌溉框架

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摘要

Irrigation is one of the most water-intensive agricultural activities in the world, which has been increasing over time. Choosing an optimal irrigation management plan depends on having available data in the monitoring field. A smart agriculture system gathers data from several sources; however, the data are not guaranteed to be free of discrepant values (i.e., outliers), which can damage the precision of irrigation management. Furthermore, data from different sources must fit into the same temporal window required for irrigation management and the data preprocessing must be dynamic and automatic to benefit users of the irrigation management plan. In this paper, we propose the Smart&Green framework to offer services for smart irrigation, such as data monitoring, preprocessing, fusion, synchronization, storage, and irrigation management enriched by the prediction of soil moisture. Outlier removal techniques allow for more precise irrigation management. For fields without soil moisture sensors, the prediction model estimates the matric potential using weather, crop, and irrigation information. We apply the predicted matric potential approach to the Van Genutchen model to determine the moisture used in an irrigation management scheme. We can save, on average, between 56.4% and 90% of the irrigation water needed by applying the Zscore, MZscore and Chauvenet outlier removal techniques to the predicted data.
机译:灌溉是世界上用水量最大的农业活动之一,并且随着时间的推移一直在增加。选择最佳的灌溉管理计划取决于监视领域中是否有可用数据。智能农业系统从多个来源收集数据;但是,不能保证数据没有差异值(即离群值),这会损害灌溉管理的精度。此外,来自不同来源的数据必须适合灌溉管理所需的相同时间窗口,并且数据预处理必须是动态且自动的,以使灌溉管理计划的用户受益。在本文中,我们提出了Smart&Green框架来为智能灌溉提供服务,例如数据监测,预处理,融合,同步,存储以及通过预测土壤湿度而丰富的灌溉管理。离群值去除技术可实现更精确的灌溉管理。对于没有土壤湿度传感器的田地,预测模型会使用天气,作物和灌溉信息来估计基质潜力。我们将预测的矩阵势方法应用于Van Genutchen模型,以确定灌溉管理方案中使用的水分。通过将Zscore,MZscore和Chauvenet离群值去除技术应用于预测数据,我们平均可以节省56.4%至90%的灌溉水。

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