Department of Mechanical Engineering, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
Center for Atmospheric and Particle Studies, Carnegie Mellon University, Pittsburgh, PA 15213, USA.
Int J Environ Res Public Health. 2019 Jul 15;16(14):2523. doi: 10.3390/ijerph16142523.
Air quality monitoring has traditionally been conducted using sparsely distributed, expensive reference monitors. To understand variations in PM on a finely resolved spatiotemporal scale a dense network of over 40 low-cost monitors was deployed throughout and around Pittsburgh, Pennsylvania, USA. Monitor locations covered a wide range of site types with varying traffic and restaurant density, varying influences from local sources, and varying socioeconomic (environmental justice, EJ) characteristics. Variability between and within site groupings was observed. Concentrations were higher near the source-influenced sites than the Urban or Suburban Residential sites. Gaseous pollutants (NO and SO) were used to differentiate between traffic (higher NO concentrations) and industrial (higher SO concentrations) sources of PM. Statistical analysis proved these differences to be significant (coefficient of divergence > 0.2). The highest mean PM concentrations were measured downwind (east) of the two industrial facilities while background level PM concentrations were measured at similar distances upwind (west) of the point sources. Socioeconomic factors, including the fraction of non-white population and fraction of population living under the poverty line, were not correlated with increases in PM or NO concentration. The analysis conducted here highlights differences in PM concentration within site groupings that have similar land use thus demonstrating the utility of a dense sensor network. Our network captures temporospatial pollutant patterns that sparse regulatory networks cannot.
空气质量监测传统上采用稀疏分布、昂贵的参考监测器进行。为了在精细分辨率的时空尺度上了解 PM 的变化,在美国宾夕法尼亚州匹兹堡市及其周边地区部署了一个由 40 多个低成本监测器组成的密集网络。监测器的位置涵盖了广泛的站点类型,包括交通和餐馆密度不同、受当地污染源影响不同以及社会经济(环境正义,EJ)特征不同的地区。在站点分组之间和内部观察到了可变性。受源影响的站点附近的浓度高于城市或郊区住宅站点。气态污染物(NO 和 SO)用于区分 PM 的交通(NO 浓度较高)和工业(SO 浓度较高)源。统计分析证明这些差异具有统计学意义(离散系数>0.2)。在两个工业设施的下风(东)方向测量到的 PM 浓度最高,而在点源的上风(西)相同距离处测量到背景水平的 PM 浓度。社会经济因素,包括非白人人口比例和生活在贫困线以下的人口比例,与 PM 或 NO 浓度的增加没有相关性。这里进行的分析突出了具有相似土地利用的站点分组内 PM 浓度的差异,从而证明了密集传感器网络的实用性。我们的网络捕捉到了稀疏监管网络无法捕捉的时空污染物模式。