Internet of Things (IoT) for Soil Moisture Detection Using Time Series Model

Iman Setiawan, J. Junaidi, Fadjryani Fadjryani, Fika Reski Amaliah
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Abstract

Technology in agriculture has been widely and massively applied. One of them is automation technology and the use of big data through the Internet of Things (IoT). The use of IoT allows a process to run automatically without human intervention. Extreme weather changes and narrow land use are one of the main problems in agriculture. The development of IoT devices has been widely developed regarding this subject. One of them is a soil moisture detection system. This study aims to build an IoT soil moisture detection system. The system will use a sensor as input which is then processed in a microcontroller device and the prediction results are sent to the IoT cloud platform. Prediction results are obtained using a time series model and then its performance is evaluated using RMSE. This model was chosen because the structure of the observed soil moisture data is based on time. The results of this study indicate that the soil moisture IoT system can work well. This is supported by the results of the prediction evaluation value of the RMSE = 1.175682x10-5 model which is very small.
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基于时间序列模型的土壤湿度检测物联网
农业技术得到了广泛而大规模的应用。其中之一是自动化技术和通过物联网(IoT)使用大数据。物联网的使用允许流程在没有人为干预的情况下自动运行。极端天气变化和狭窄的土地利用是农业的主要问题之一。围绕这一主题,物联网设备的发展得到了广泛的发展。其中之一是土壤湿度检测系统。本研究旨在构建物联网土壤湿度检测系统。该系统将使用传感器作为输入,然后在微控制器设备中进行处理,并将预测结果发送到物联网云平台。首先利用时间序列模型获得预测结果,然后利用RMSE对其性能进行评价。由于土壤水分观测数据的结构是基于时间的,所以选择了该模型。研究结果表明,土壤水分物联网系统可以很好地发挥作用。RMSE = 1.175682 × 10-5模型的预测评价值非常小,结果也支持了这一点。
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审稿时长
12 weeks
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