Sonoma Technology, 1450 N. McDowell Blvd., Suite 200, Petaluma, CA 94954, USA.
Department of Atmospheric and Oceanic Sciences, University of Colorado Boulder, Boulder, CO 80309, USA.
Sensors (Basel). 2019 Oct 29;19(21):4701. doi: 10.3390/s19214701.
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 PM 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 R = 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 (R = 0.60 - 0.68 at two sites). In a multi-linear regression model, the deviation between sensor and reference measurements of PM had the highest correlation with dew point and relative humidity. Sensor measurements were used to estimate the PM 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 ( value = 0.24) was observed.
低成本传感器可以提供空气污染时空变化的深入了解,只要付出足够的努力来确保数据质量。在这里,19 个 AirBeam 颗粒物(PM)传感器从 2016 年 12 月部署到 2017 年 1 月,以确定加利福尼亚州萨克拉门托的 PM 空间变化。在研究之前和之后,19 个传感器被部署并与监管空气质量监测站相匹配。在所有相匹配的测量期间,传感器都表现出高度的精度(所有传感器的 Pearson R 值为 0.98-0.99),漂移很小。开发了一种特定于传感器的校正因子,以便每个传感器报告可比的值。在研究期间,传感器与监管监测器具有中等程度的相关性(两个站点的 R 值为 0.60-0.68)。在多元线性回归模型中,传感器与参考测量的 PM 之间的偏差与露点和相对湿度的相关性最高。使用传感器测量来估计 PM 的空间变化,发现平均两两发散系数为 0.22,范围为 0.14 到 0.33,表明分布大多均匀。在环境正义(EJ)和非 EJ 社区之间,未观察到平均传感器 PM 浓度有显著差异(value = 0.24)。