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Missing Data Estimation in a Low-Cost Sensor Network for Measuring Air Quality: a Case Study in Aburra Valley

机译:用于测量空气质量的低成本传感器网络中的数据估计:Aburra Valley的案例研究

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摘要

According to the World Health Organization (WHO), air pollution is currently one leading cause of death around the world. As a result, some projects have emerged to monitor air quality through the implementation of low-cost Wireless Sensor Networks (WSNs). However, the type of technology and the sensors' location have an impact on data quality, resulting in a considerable amount of missing data. This hinders the proper implementation of methodologies for sensor calibration and data leverage for dispersion analysis of pollutants and prediction of pollution episodes. This paper presents a methodology based on matrix factorization (MF) to recover missing data from a low-cost WSN for particulate matter PM2.5 measurement. Using the proposed methodology with the study case in Aburra Valley, Colombia, it is shown that is possible to recover 40% missing data with less than 12% errors, obtaining better results than those presented by other methods found in the literature.
机译:根据世界卫生组织(世卫组织),空气污染目前是世界各地死亡的主要原因。 因此,一些项目已经出现通过实施低成本无线传感器网络(WSN)来监测空气质量。 但是,技术类型和传感器的位置对数据质量产生影响,导致相当大量的缺失数据。 这阻碍了用于传感器校准和数据利用的方法的正确实施,以便对污染物分散分析和污染发作预测。 本文介绍了基于矩阵分解(MF)的方法,以从低成本WSN恢复缺失数据,用于颗粒物质PM2.5测量。 在哥伦比亚Aburra Valley的研究案例中使用所提出的方法,表明可以恢复40%缺失的数据,误差小于12%,获得比在文献中的其他方法所呈现的结果更好的结果。

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