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Measuring Spatial and Temporal PM2.5 Variations in Sacramento, California, Communities Using a Network of Low-Cost Sensors

机译:测量使用低成本传感器网络的萨克拉门托,加利福尼亚州萨克拉门托的空间和时间PM2.5变化

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摘要

Low-cost sensors can provide insight on the spatio-temporal variability of air pollution, provided that sufficient efforts are made to ensure data quality. Here, 19 AirBeam particulate matter (PM) sensors were deployed from December 2016 to January 2017 to determine the spatial variability of PM2.5 in Sacramento, California. Prior to, and after, the study, the 19 sensors were deployed and collocated at a regulatory air monitoring site. The sensors demonstrated a high degree of precision during all collocated measurement periods (Pearson R2 = 0.98 − 0.99 across all sensors), with little drift. A sensor-specific correction factor was developed such that each sensor reported a comparable value. Sensors had a moderate degree of correlation with regulatory monitors during the study (R2 = 0.60 − 0.68 at two sites). In a multi-linear regression model, the deviation between sensor and reference measurements of PM2.5 had the highest correlation with dew point and relative humidity. Sensor measurements were used to estimate the PM2.5 spatial variability, finding an average pairwise coefficient of divergence of 0.22 and a range of 0.14 to 0.33, indicating mostly homogeneous distributions. No significant difference in the average sensor PM concentrations between environmental justice (EJ) and non-EJ communities (p value = 0.24) was observed.
机译:低成本传感器可以对空气污染的时空变异性提供洞察力,只要采取足够的努力以确保数据质量。在这里,19 AirBeam颗粒物(PM)传感器的部署,从2016年12月到2017年一月,以确定PM2.5的加利福尼亚州萨克拉曼多的空间变异。在此后,在研究之前,在监管空气监测部位部署并并沉积了19个传感器。传感器在所有并置测量时段(Pearson R2 = 0.98 - 0.99横穿所有传感器)时,传感器展示了高精度,漂移。开发了传感器特定的校正因子,使得每个传感器报告了相当的值。在研究期间,传感器与调节监测器的相关程度相比(R2 = 0.60-0-68)。在多线性回归模型中,PM2.5的传感器和参考测量之间的偏差与露点和相对湿度具有最高的相关性。传感器测量值被用来估算PM2.5空间变异,发现为0.22发散和〜0.33的范围内的0.14的平均成对系数,表明大部分均匀的分布。观察到环境司法(EJ)和非EJ社区之间的平均传感器PM浓度没有显着差异(P值= 0.24)。

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