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Using a network of lower-cost monitors to identify the influence of modifiable factors driving spatial patterns in fine particulate matter concentrations in an urban environment

机译:利用低成本监视器的网络来确定可修改因子驱动空间模式在城市环境中细颗粒物质浓度的影响

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Background There is substantial interest in using networks of lower-cost air quality sensors to characterize urban population exposure to fine particulate matter mass (PM2.5). However, sensor uncertainty is a concern with these monitors. Objectives (1) Quantify the uncertainty of lower-cost PM(2.5)sensors; (2) Use the high spatiotemporal resolution of a lower-cost sensor network to quantify the contribution of different modifiable and non-modifiable factors to urban PM2.5. Methods A network of 64 lower-cost monitors was deployed across Pittsburgh, PA, USA. Measurement and sampling uncertainties were quantified by comparison to local reference monitors. Data were sorted by land-use characteristics, time of day, and wind direction. Results Careful calibration, temporal averaging, and reference site corrections reduced sensor uncertainty to 1 mu g/m(3), similar to 10% of typical long-term average PM(2.5)concentrations in Pittsburgh. Episodic and long-term enhancements to urban PM(2.5)due to a nearby large metallurgical coke manufacturing facility were 1.6 +/- 0.36 mu g/m(3)and 0.3 +/- 0.2 mu g/m(3), respectively. Daytime land-use regression models identified restaurants as an important local contributor to urban PM2.5. PM(2.5)above EPA and WHO daily health standards was observed at several sites across the city. Significance With proper management, a large network of lower-cost sensors can identify statistically significant trends and factors in urban exposure.
机译:背景使用低成本的空气质量传感器网络来描述城市人口暴露于细颗粒物质量(PM2.5)的特征,这是一个很大的兴趣。然而,传感器的不确定性是这些监测器的一个问题。目标(1)量化低成本PM(2.5)传感器的不确定性;(2) 利用低成本传感器网络的高时空分辨率,量化不同可修改和不可修改因素对城市PM2的贡献。5.方法在美国宾夕法尼亚州匹兹堡市部署一个由64名低成本监测仪组成的网络。通过与当地参考监测仪的比较,对测量和采样不确定性进行量化。数据按土地利用特征、一天中的时间和风向进行排序。结果仔细校准、时间平均和参考点校正将传感器不确定度降低到1μg/m(3),类似于匹兹堡典型长期平均PM(2.5)浓度的10%。由于附近的大型冶金焦炭制造厂,城市PM(2.5)的间歇性和长期增强分别为1.6+/-0.36μg/m(3)和0.3+/-0.2μg/m(3)。白天土地利用回归模型确定餐馆是城市PM2的一个重要贡献者。5.全市多个地点的PM(2.5)均高于EPA和WHO的每日卫生标准。重要意义通过适当的管理,一个由低成本传感器组成的大型网络可以识别城市暴露中具有统计意义的趋势和因素。

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