Instituto Universitário de Lisboa (ISCTE-IUL), Department of Science, Information and Technology, 1649-026 Lisbon, Portugal.
Instituto de Telecomunições (IT), 1049-001 Lisbon, Portugal.
Sensors (Basel). 2021 Apr 28;21(9):3079. doi: 10.3390/s21093079.
Presently, saving natural resources is increasingly a concern, and water scarcity is a fact that has been occurring in more areas of the globe. One of the main strategies used to counter this trend is the use of new technologies. On this topic, the Internet of Things has been highlighted, with these solutions being characterized by offering robustness and simplicity, while being low cost. This paper presents the study and development of an automatic irrigation control system for agricultural fields. The developed solution had a wireless sensors and actuators network, a mobile application that offers the user the capability of consulting not only the data collected in real time but also their history and also act in accordance with the data it analyses. To adapt the water management, Machine Learning algorithms were studied to predict the best time of day for water administration. Of the studied algorithms (Decision Trees, Random Forest, Neural Networks, and Support Vectors Machines) the one that obtained the best results was Random Forest, presenting an accuracy of 84.6%. Besides the ML solution, a method was also developed to calculate the amount of water needed to manage the fields under analysis. Through the implementation of the system it was possible to realize that the developed solution is effective and can achieve up to 60% of water savings.
目前,节约自然资源越来越受到关注,水资源短缺是全球更多地区正在发生的事实。应对这一趋势的主要策略之一是使用新技术。在这个主题上,物联网已经得到了强调,这些解决方案的特点是提供鲁棒性和简单性,同时成本低。本文介绍了农业领域自动灌溉控制系统的研究与开发。开发的解决方案具有无线传感器和执行器网络,以及一个移动应用程序,使用户不仅能够查询实时收集的数据,还能够查询其历史数据,并根据分析的数据进行操作。为了适应水资源管理,研究了机器学习算法来预测最佳的浇水时间。在所研究的算法(决策树、随机森林、神经网络和支持向量机)中,随机森林获得了最好的结果,准确率为 84.6%。除了机器学习解决方案,还开发了一种方法来计算管理分析中的农田所需的水量。通过系统的实施,可以实现开发的解决方案是有效的,可以实现高达 60%的节水。