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A Data-Driven Approach to Soil Moisture Collection and Prediction

机译:土壤水分收集和预测的数据驱动方法

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Agriculture has been one of the most under-investigated areas in technology, and the development of Precision Agriculture (PA) is still in its early stages. This paper proposes a data-driven methodology on building PA solutions for collection and data modeling systems. Soil moisture, a key factor in the crop growth cycle, is selected as an example to demonstrate the effectiveness of our data-driven approach. On the collection side, a reactive wireless sensor node is developed that aims to capture the dynamics of soil moisture using MicaZ mote and VH400 soil moisture sensor. The prototyped device is tested on field soil to demonstrate its functionality and the responsiveness of the sensors. On the data analysis side, a unique, site-specific soil moisture prediction framework is built on top of models generated by the machine learning techniques SVM (support vector machine) and RVM (relevance vector machine). The framework predicts soil moisture n days ahead based on the same soil and environmental attributes that can be collected by our sensor node. Due to the large data size required by the machine learning algorithms, our framework is evaluated under the Illinois historical data, not field collected sensor data. It achieves low error rates (15%) and high correlations (95%) between predicted values and actual values across 9 different sites when forecasting soil moisture about 2 weeks ahead. Also, it is shown that the prediction outputs can remain accurate over a long period of time (one year) when reliable data are fed to the model every 45 days.
机译:农业一直是技术下的最普遍的技术领域之一,精密农业(PA)的发展仍处于早期阶段。本文提出了一种在构建集合和数据建模系统的PA解决方案的数据驱动方法。选择土壤水分,作物生长循环中的关键因素作为示例,以证明我们的数据驱动方法的有效性。在收集方面,开发了一种反应性无线传感器节点,旨在使用MICAZ MOTE和VH400土壤湿度传感器捕获土壤水分动态。原型设备在现场土壤上进行测试,以展示其功能和传感器的响应性。在数据分析方面,独特的现场特定的土壤湿度预测框架建立在机器学习技术SVM(支持向量机)和RVM(相关矢量机)产生的模型顶部。该框架根据我们的传感器节点收集的相同土壤和环境属性,预先预测土壤水分N天。由于机器学习算法所需的数据大小,我们的框架在伊利诺伊州历史数据下进行评估,而不是现场收集的传感器数据。当预测未来2周后,它在预测土壤湿度时,在预测值和实际值之间实现了低误差率(15%)和高相关(95%)。此外,当可靠的数据每45天送到模型时,预测输出可以在很长一段时间内保持精确(一年)。

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