MAXIMIZING AGRICULTURAL WATER EFFICIENCY: INTEGRATING IOT AND SUPERVISED LEARNING FOR SMART IRRIGATION OPTIMIZATION

Krishan Kumar, Rakesh K. Yadav
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Abstract

Optimum utilization of clean water around the globe is essential in order to avoid scarcity. In agriculture, due to the lack of intelligent irrigation systems, consumes more amount of fresh water. Smart irrigation using IoT technologies can solve the problem by achieving effective utilization of water. By examining ground parameters such soil temperature, air moisture, soil moisture, humidity, and weather data (precipitation) from the website, this research project forecasts the irrigation schedule. When designing intelligent irrigation, soil moisture is a key consideration. It is suggested that a hybrid machine learning algorithm be used to estimate the soil moisture for the next days using field, environmental, and weather data in order to accomplish smart irrigation. The field data are gathered by sensors and are transmitted via wifi to the server and the web-based interface is developed to visualize the current field data, weather data, and schedule of the next irrigation. The system is fully autonomous which starts and stops the irrigation based on the result of the algorithm. This work depicts the architecture of the system and describes the information processing of the results for a month. The accuracy of the propsed algorithm is good and has a minimum error rate of predicted soil moisture.
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最大限度地提高农业用水效率:整合物联网和监督学习以优化智能灌溉
为了避免水资源匮乏,必须在全球范围内优化利用清洁水。在农业领域,由于缺乏智能灌溉系统,消耗了大量淡水。利用物联网技术进行智能灌溉可以有效利用水资源,从而解决这一问题。本研究项目通过检测土壤温度、空气湿度、土壤湿度、湿度等地面参数以及网站上的气象数据(降水量),预测灌溉时间表。在设计智能灌溉时,土壤湿度是一个关键的考虑因素。建议使用混合机器学习算法,利用田间、环境和天气数据估算未来几天的土壤湿度,以实现智能灌溉。田间数据由传感器收集,并通过 Wifi 传输到服务器,开发的网络界面可直观显示当前的田间数据、天气数据和下一次灌溉的时间表。该系统完全自主,可根据算法结果启动和停止灌溉。这项工作描述了系统的结构,并介绍了一个月的结果信息处理情况。所采用算法的准确性很高,预测的土壤湿度误差率最小。
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