Implementation of an in-field IoT system for precision irrigation management

Younsuk Dong, Benjamin Werling, Zhichao Cao, Gen Li
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Abstract

Due to the impact of climate change on agriculture and the emergence of water security issues, proper irrigation management has become increasingly important to overcome the challenges. The Internet of Things (IoT) technology is being utilized in agriculture for collecting field information and sharing it through websites in real time. This study discusses the efforts taken to develop an IoT-based sensor station, a user-friendly website, and a smartphone app for irrigation management. In addition, the demonstration of the IoT-based sensor station and its effectiveness are discussed. Before deploying the sensor station, soil moisture sensor calibration was conducted using a laboratory experiment. Overall, the calibrated soil moisture sensors met the statistical criteria for both sand [root mean squared error (RMSE) = 0.01 cm3/cm3, index of agreement (IA) = 0.97, and mean bias error (MBE) = 0.01] and loamy sand (RMSE = 0.023 cm3/cm3, IA = 0.98, and MBE = −0.02). This article focuses on case studies from corn, blueberry, and tomato fields in Michigan, USA. In the corn and blueberry fields, the evaluation of irrigation practices of farmer's using an IoT-based sensor technology was considered. In the tomato field, a demonstration of automation irrigation was conducted. Overirrigation was observed using the IoT-based sensor station in some fields that have sandy soil and use a drip irrigation system. In the blueberry demonstration field, the total yield per plant (p = 0.025) and 50-berry weights (p = 0.013) were found to be higher with the recommended irrigation management than the farmer's existing field. In the tomato demonstration field, there were no statistical differences in the number of marketable tomatoes (p = 0.382) and their weights (p = 0.756) between the farmer's existing method and the recommended irrigation strategy. However, 30% less water was applied to the recommended irrigation strategy plot. Thus, the result showed that the IoT-based sensor irrigation strategy can save up to 30% on irrigation while maintaining the same yields and quality of the product.
实施用于精确灌溉管理的田间物联网系统
由于气候变化对农业的影响以及水安全问题的出现,适当的灌溉管理对于克服挑战变得越来越重要。农业领域正在利用物联网(IoT)技术收集田间信息,并通过网站实时共享。本研究讨论了为开发一个基于物联网的传感器站、一个用户友好型网站和一个用于灌溉管理的智能手机应用程序所做的努力。此外,还讨论了基于物联网的传感器站的演示及其有效性。在部署传感器站之前,利用实验室实验对土壤水分传感器进行了校准。总体而言,校准后的土壤水分传感器符合沙土(均方根误差 (RMSE) = 0.01 cm3/cm3,一致指数 (IA) = 0.97,平均偏差误差 (MBE) = 0.01)和壤土(均方根误差 (RMSE) = 0.023 cm3/cm3,一致指数 (IA) = 0.98,平均偏差误差 (MBE) = -0.02)的统计标准。本文重点对美国密歇根州的玉米田、蓝莓田和番茄田进行了案例研究。在玉米田和蓝莓田,使用基于物联网的传感器技术对农民的灌溉实践进行了评估。在番茄田,进行了自动化灌溉演示。在一些沙质土壤和使用滴灌系统的田地里,使用物联网传感器站观察到了过度灌溉现象。在蓝莓示范田中,发现采用建议的灌溉管理后,每株总产量(p = 0.025)和 50 粒果实重量(p = 0.013)均高于农民现有的田地。在番茄示范田,农民现有方法和推荐灌溉策略在可上市番茄数量(p = 0.382)和重量(p = 0.756)方面没有统计学差异。然而,推荐灌溉策略地块的用水量减少了 30%。因此,结果表明,基于物联网的传感器灌溉策略可以在保持相同产量和产品质量的前提下节省多达 30% 的灌溉用水。
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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