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Sensor Fusion for IoT-based Intelligent Agriculture System

机译:基于物联网的智能农业系统的传感器融合

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Sensors in agriculture are in use from weather monitoring to autonomous watering. Using low-cost sensors allows designers to create a prototype for a hardware environment to implement data acquisition and mining process. Thus, the relation between sensors can be understood and a test environment for sensor fusion can be created. In this paper, different input devices are synchronized by using a microcontroller system and each data, obtained from the sensors, are sent wirelessly by an (Internet of Things) IoT device to the cloud, by recording and monitoring from the graphical user interface on the web as a real-time environment to apply data mining algorithms thereafter. This study uses the regression trees to obtain the sensor data relations from 8 different data related to light, temperature, humidity, rain, soil moisture, atmospheric pressure, air quality, and dew point. Each sensor data has a different effect on the agricultural monitoring, however, reducing the number of sensors can reduce the cost of a system, by giving still accurate observations via sensor substitution proposed. Therefore, by using the regression trees, the classification of sensor data is inspected in this study. A test prototype of the hardware together with the software design is created for data monitoring and sensor fusion in different combinations. In the end, after fusion tests for all possible cases, outstanding results for each sensor substitution is presented. Temperature and dew point can be obtained using other sensors by fusing the train data on the regression tree by 92% and 84% accuracy respectively with a 5% numerical error margin in the leaf nodes on the regression tree.
机译:从天气监测到自动浇水,农业传感器都在使用中。使用低成本传感器,设计人员可以为硬件环境创建原型,以实施数据采集和挖掘过程。因此,可以理解传感器之间的关系,并且可以创建用于传感器融合的测试环境。在本文中,使用微控制器系统对不同的输入设备进行同步,并通过(物联网)IoT设备将从传感器获取的每个数据无线发送到云,并通过记录和监视来自图形用户界面的设备进行监视。网络作为一种实时环境,之后可以应用数据挖掘算法。该研究使用回归树从与光,温度,湿度,雨水,土壤湿度,大气压力,空气质量和露点有关的8种不同数据中获取传感器数据关系。每个传感器数据对农业监测都有不同的影响,但是,通过建议的传感器替换仍可提供准确的观测值,减少传感器的数量可以降低系统的成本。因此,通过使用回归树,在这项研究中检查了传感器数据的分类。创建硬件的测试原型以及软件设计,以不同的组合进行数据监视和传感器融合。最后,在对所有可能的情况进行融合测试之后,给出了每种传感器替代产品的出色结果。通过将回归树上的火车数据分别以92%和84%的精度与5%的数值误差裕度融合到回归树上的叶节点上,可以使用其他传感器获得温度和露点。

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