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Calibration of Portable Particulate Matter–Monitoring Device using Web Query and Machine Learning

机译:使用Web查询和机器学习对便携式颗粒物监测设备进行校准

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摘要

Background Monitoring and control of PMsub2.5/sub are being recognized as key to address health issues attributed to PMsub2.5/sub. Availability of low-cost PMsub2.5/sub sensors made it possible to introduce a number of portable PMsub2.5/sub monitors based on light scattering to the consumer market at an affordable price. Accuracy of light scattering–based PMsub2.5/sub monitors significantly depends on the method of calibration. Static calibration curve is used as the most popular calibration method for low-cost PMsub2.5/sub sensors particularly because of ease of application. Drawback in this approach is, however, the lack of accuracy. Methods This study discussed the calibration of a low-cost PMsub2.5/sub-monitoring device (PMD) to improve the accuracy and reliability for practical use. The proposed method is based on construction of the PMsub2.5/sub sensor network using Message Queuing Telemetry Transport (MQTT) protocol and web query of reference measurement data available at government-authorized PM monitoring station (GAMS) in the republic of Korea. Four machine learning (ML) algorithms such as support vector machine, k-nearest neighbors, random forest, and extreme gradient boosting?were used as regression models to calibrate the PMD measurements of PMsub2.5/sub. Performance of each ML algorithm was evaluated using stratified K-fold cross-validation, and a linear regression model was used as a reference. Results Based on the performance of ML algorithms used, regression of the output of the PMD to PMsub2.5/sub concentrations data available from the GAMS through web query was effective. The extreme gradient boosting algorithm showed the best performance with a mean coefficient of determination (Rsup2/sup) of 0.78 and standard error of 5.0 μg/msup3/sup, corresponding to 8% increase in Rsup2/sup and 12% decrease in root mean square error in comparison with the linear regression model. Minimum 100 hours of calibration period was found required to calibrate the PMD to its full capacity. Calibration method proposed poses a limitation on the location of the PMD being in the vicinity of the GAMS. As the number of the PMD participating in the sensor network increases, however, calibrated PMDs can be used as reference devices to nearby PMDs that require calibration, forming a calibration chain through MQTT protocol. Conclusions Calibration of a low-cost PMD, which is based on construction of PMsub2.5/sub sensor network using MQTT protocol and web query of reference measurement data available at a GAMS, significantly improves the accuracy and reliability of a PMD, thereby making practical use of the low-cost PMD possible.
机译:对PM 2.5 的背景监视和控制被认为是解决归因于PM 2.5 的健康问题的关键。低成本PM 2.5 传感器的可用性使得可以将许多基于光散射的便携式PM 2.5 监视器以可承受的价格引入消费市场。基于光散射的PM 2.5 监测仪的准确性很大程度上取决于校准方法。静态校准曲线被用作低成本PM 2.5 传感器的最流行校准方法,尤其是因为易于使用。但是,这种方法的缺点是缺乏准确性。方法本研究讨论了低成本PM 2.5 监视设备(PMD)的校准,以提高实际使用的准确性和可靠性。所提出的方法是基于使用消息队列遥测传输(MQTT)协议构建PM 2.5 传感器网络并在共和国政府授权的PM监测站(GAMS)上对参考测量数据进行网络查询的。韩国。支持向量机,k-近邻,随机森林和极限梯度增强等四种机器学习算法被用作回归模型来校准PM 2.5 的PMD测量。使用分层K折交叉验证评估每种ML算法的性能,并使用线性回归模型作为参考。结果基于所用ML算法的性能,通过网络查询将GAD的PMD输出转换为GA 2.5 浓度数据是有效的。极限梯度增强算法表现出最佳性能,平均测定系数(R 2 )为0.78,标准误为5.0μg/ m 3 ,对应增加8%。与线性回归模型相比,R 2 中的均方根误差降低了12%。发现至少需要100小时的校准时间才能将PMD校准到最大容量。提出的校准方法限制了PMD在GAMS附近的位置。但是,随着参与传感器网络的PMD数量的增加,可以将已校准的PMD用作附近需要校准的PMD的参考设备,从而通过MQTT协议形成校准链。结论低成本PMD的校准是基于使用MQTT协议构建PM 2.5 传感器网络并通过网络查询GAMS上的参考测量数据进行的,从而显着提高了PMD的准确性和可靠性。 ,从而可以实际使用低成本的PMD。

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