Intelligent WSN System for Water Quality Analysis Using Machine Learning Algorithms: A Case Study (Tahuando River from Ecuador)

Remote. Sens. Pub Date : 2020-06-20 DOI:10.3390/rs12121988
P. Rosero-Montalvo, V. F. L. Batista, Jaime Riascos, Diego Hernán Peluffo-Ordóñez
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引用次数: 5

Abstract

This work presents a wireless sensor network (WSN) system able to determine the water quality of rivers. Particularly, we consider the Tahuando River from Ibarra, Ecuador, as a case study. The main goal of this research is to determine the river’s status throughout its route, by generating data reports into an interactive user interface. To this end, we use an array of sensors collecting several measures such as: turbidity, temperature, water quality, pH, and temperature. Subsequently, from the information collected on an Internet-of-Things (IoT) server, we develop a data analysis scheme with both data representation and supervised classification. As an important result, our system outputs a map that shows the contamination levels of the river at different regions. Furthermore, in terms of data analysis performance, the proposed system reduces the data matrix by 97% from its original size, while it reaches a classification performance over 90%. Furthermore, as an additional remarkable result, we here introduce the so-called quantitative metric of balance (QMB), which measures the balance or ratio between performance and power consumption.
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基于机器学习算法的智能WSN水质分析系统——以厄瓜多尔Tahuando河为例
本文提出了一种能够确定河流水质的无线传感器网络(WSN)系统。特别地,我们以厄瓜多尔伊巴拉的Tahuando河为例进行研究。本研究的主要目标是通过在交互式用户界面中生成数据报告来确定河流在整个路线中的状态。为此,我们使用一系列传感器收集一些测量数据,如:浊度、温度、水质、pH值和温度。随后,从物联网(IoT)服务器上收集的信息,我们开发了一个数据表示和监督分类的数据分析方案。作为一个重要的结果,我们的系统输出了一张地图,显示了河流在不同地区的污染水平。此外,在数据分析性能方面,该系统将数据矩阵的大小从原始大小减少了97%,而分类性能达到90%以上。此外,作为一个额外的显著结果,我们在这里引入了所谓的平衡定量度量(QMB),它测量性能和功耗之间的平衡或比率。
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