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Improving accuracy of air pollution exposure measurements: Statistical correction of a municipal low-cost airborne particulate matter sensor network

机译:提高空气污染曝光测量的准确性:市政低成本空中颗粒物传感器网络的统计校正

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Low-cost air quality sensors can help increase spatial and temporal resolution of air pollution exposure measurements. These sensors, however, most often produce data of lower accuracy than higher-end instruments. In this study, we investigated linear and random forest models to correct PM2.5 measurements from the Denver Department of Public Health and Environment (DDPHE)'s network of low-cost sensors against measurements from co-located U.S. Environmental Protection Agency Federal Equivalence Method (FEM) monitors. Our training set included data from five DDPHE sensors from August 2018 through May 2019. Our testing set included data from two newly deployed DDPHE sensors from September 2019 through mid-December 2019. In addition to PM2.5, temperature, and relative humidity from the low-cost sensors, we explored using additional temporal and spatial variables to capture unexplained variability in sensor measurements. We evaluated results using spatial and temporal cross-validation techniques. For the long-term dataset, a random forest model with all time-varying covariates and length of arterial roads within 500 m was the most accurate (testing RMSE = 2.9 mg/m(3) and R-2 = 0.75; leave-one-location-out (LOLO)-validation metrics on the training set: RMSE = 2.2 mg/m(3) and R-2 = 0.93). For on-the-fly correction, we found that a multiple linear regression model using the past eight weeks of low-cost sensor PM2.5, temperature, and humidity data plus a near-highway indicator predicted each new week of data best (testing RMSE = 3.1 mu g/m(3) and R-2 = 0.78; LOLO-validation metrics on the training set: RMSE = 2.3 mg/m(3) and R-2 = 0.90). The statistical methods detailed here will be used to correct low-cost sensor measurements to better understand PM2.5 pollution within the city of Denver. This work can also guide similar implementations in other municipalities by highlighting the improved accuracy from inclusion of variables other than temperature and relative humidity to improve accuracy of low-cost sensor PM2.5 data. (C) 2020 The Author(s). Published by Elsevier Ltd.
机译:低成本空气质量传感器可以帮助增加空气污染暴露测量的空间和时间分辨率。然而,这些传感器最常产生比高端仪器更低的准确性数据。在本研究中,我们调查了线性和随机森林模型,以纠正丹佛公共卫生和环境(DDPHE)的低成本传感器网络的测量来纠正来自Co-Sound Fearing Fearal Protection Federal AstanceCence方法的测量(FEM)监视器。我们的培训集包括来自2018年8月至2019年5月的五个Ddphe传感器的数据。我们的测试集包括来自2019年9月至2019年12月中旬的两个新部署的Ddphe传感器的数据。除了PM2.5,温度和相对湿度低成本传感器,我们探索使用额外的时间和空间变量来捕获传感器测量中的不可解释的可变性。我们使用空间和时间交叉验证技术评估结果。对于长期数据集,500米内具有所有时变协变量和动脉道长度的随机森林模型最准确(测试RMSE = 2.9 mg / m(3)和R-2 = 0.75;休假 - 训练集的分配(lolo) - 验证度量:Rmse = 2.2 mg / m(3)和R-2 = 0.93)。对于在线校正,我们发现,使用过去八周的低成本传感器PM2.5,温度和湿度数据加上近高速公路指示器预测每周的数据最佳(测试) RMSE = 3.1 mu g / m(3)和r-2 = 0.78;训练集上的LOLO验证指标:RMSE = 2.3 mg / m(3)和R-2 = 0.90)。这里详述的统计方法将用于校正低成本的传感器测量,以更好地了解丹佛市内的PM2.5污染。这项工作还可以通过在包含温度和相对湿度以外的变量的提高以提高低成本传感器PM2.5数据的准确性来指导其他市政当局中的类似实施。 (c)2020提交人。 elsevier有限公司出版

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