基于无线传感器网络和物联网的智能灌溉系统的开发

IF 2.1 Q3 SOIL SCIENCE Applied and Environmental Soil Science Pub Date : 2022-06-23 DOI:10.1155/2022/7678570
J. Ndunagu, K. Ukhurebor, Moses Akaaza, R. B. Onyancha
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引用次数: 7

摘要

本研究提出了一种采用滴灌方法的智能灌溉系统(SIS),该系统使用无线传感器网络和开源物联网(IoT)云计算平台(“Thingspeak.com”)设计和实现,用于数据收集、存储、数据分析和可视化。该方法结合了硬件和软件组件,根据网络资源(如“weather.com”的天气预报和土壤样本的传感器值)做出灌溉决策。然后在边缘服务器上分析收集到的数据,并每15分钟更新一次。根据该阈值,系统根据灌溉计划启动抽水或停止灌溉过程。开发了一个web应用程序来显示结果,以便我们可以使用android应用程序边缘或web浏览器来监视和控制系统。根据记录和测量的数据,数据为CSV (comma-separated values)格式,包含143731个条目,共10列。使用的样本量包含5722行6列,来自我们的机器学习算法的结果,使用Microsoft Excel和Jupyter Notebook处理和评估滴灌SIS的性能,考虑土壤湿度,土壤温度,阳光,雨水和泵。结果证实了阈值指标的分类评价,从我们的混淆矩阵中计算出的部分指标显示在分类总结结果中,准确率为89%,误分类率(错误率)为10%,灵敏度为79%,特异性为93%,模型的精度为81%。当与K = 6和K = 1的K近邻进行比较时,评估显示预测精度为97%和98%。结果表明,该系统在进行灌溉和管理水资源方面效率高、可靠,可以在农村地区采用,以提高农业生产力。
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Development of a Wireless Sensor Network and IoT-based Smart Irrigation System
This study proposes a smart irrigation system (SIS) using the drip method, which was designed and implemented using wireless sensor networks and an open-source Internet of Things (IoT) cloud computing platform (“Thingspeak.com”) for data collection, storing, data analytics, and visualization. The methodology incorporates the integration of hardware and software components to make irrigation decisions based on web resources like the weather forecast from “weather.com” and sensor values from soil samples. The data collected are then analyzed at the edge server and updated every 15 minutes. Based on the threshold value, the system starts pumping water or stops the irrigation process depending on the irrigation schedule. A web application was developed to display the result so that we could monitor and control the system using an android application edge or a web browser. Based on the data recorded and measured, the data are in comma-separated values (CSV) format and contain 143731 entries with 10 columns. The sample size used contains 5722 rows and 6 columns from the result of our machine learning algorithms using Microsoft Excel and Jupyter Notebook to process and evaluate the performance of the drip SIS, considering the soil moisture, soil temperature, sunlight, rain, and pump. The results confirm the threshold metrics classification evaluation, and some of the metrics computed from our confusion matrix are shown in the classification summary results, showing the accuracy to be 89%, the misclassification rate (error rate) is equal to 10%, the sensitivity is equal to 79%, the specificity is equal to 93%, and the precision of the model is 81%. The evaluation, when compared to K-nearest neighbours using K = 6 and K = 1, shows the prediction accuracy to be 97% and 98%. The results indicate the system is highly efficient and reliable in performing irrigation and managing water resources and can be adopted in rural areas to boost agricultural productivity.
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来源期刊
Applied and Environmental Soil Science
Applied and Environmental Soil Science Earth and Planetary Sciences-Earth-Surface Processes
CiteScore
4.00
自引率
4.50%
发文量
55
审稿时长
18 weeks
期刊介绍: Applied and Environmental Soil Science is a peer-reviewed, Open Access journal that publishes research and review articles in the field of soil science. Its coverage reflects the multidisciplinary nature of soil science, and focuses on studies that take account of the dynamics and spatial heterogeneity of processes in soil. Basic studies of the physical, chemical, biochemical, and biological properties of soil, innovations in soil analysis, and the development of statistical tools will be published. Among the major environmental issues addressed will be: -Pollution by trace elements and nutrients in excess- Climate change and global warming- Soil stability and erosion- Water quality- Quality of agricultural crops- Plant nutrition- Soil hydrology- Biodiversity of soils- Role of micro- and mesofauna in soil
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