Hyper-local source strength retrieval and apportionment of black carbon in an urban area

IF 3.8 Q2 ENVIRONMENTAL SCIENCES
Bicheng Chen , Tammy Thompson , Fotini Katopodes Chow
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引用次数: 0

Abstract

Neighborhood-scale air pollution hotspots have recently been identified through detailed field campaigns, including the 100x100 Black Carbon Experiment which took place in West Oakland, CA, in 2017. Here, high-resolution nested atmospheric simulations are used together with a Bayesian inversion framework to estimate source apportionment at the hyper-local scale for a neighborhood in West Oakland. Forward simulations are performed with the Weather Research and Forecasting (WRF) model using 6 grid nests from 11.25 km to 2 m horizontal resolution. On the finest grid, building geometries are resolved using the immersed boundary method. Seven point sources and four line sources at known locations are included in the forward simulation for two 1-h periods during the 2017 field campaign. Data from 12 black carbon sensors are used to perform source inversion using a Markov Chain Monte Carlo approach, which provides a probability distribution for each of the 11 source strengths. From this, a most-likely plume can be created using the peaks of the distributions, and source apportionment can be estimated for each sensor. In addition, a composite plume can be constructed to indicate 90% confidence that concentrations are above or below a specified value. With this probabilistic analysis, it is possible to determine that more than half of the neighborhood has black carbon concentrations of higher than 0.4 μg/m3, with some areas higher than 3 μg/m3 during the time periods studied.

Abstract Image

城市地区黑碳的超本地源强检索和分配
最近,通过详细的实地活动,包括 2017 年在加利福尼亚州西奥克兰进行的 100x100 黑碳实验,确定了邻里尺度的空气污染热点。在这里,高分辨率嵌套大气模拟与贝叶斯反演框架一起用于估算西奥克兰一个社区超本地尺度的污染源分配。前向模拟使用天气研究与预测(WRF)模型,使用水平分辨率从 11.25 千米到 2 米的 6 个网格嵌套。在最细的网格上,使用沉浸边界法解析建筑物几何形状。在 2017 年实地考察期间,在两个 1 小时的时间段内,将已知位置的 7 个点源和 4 个线源纳入正演模拟。来自 12 个黑碳传感器的数据被用于使用马尔可夫链蒙特卡罗方法进行源反演,从而为 11 个源强度中的每一个提供概率分布。由此,可以利用分布的峰值创建最有可能的羽流,并估算每个传感器的源分配。此外,还可以构建一个复合羽流,以显示浓度高于或低于特定值的 90% 置信度。通过这种概率分析,可以确定附近一半以上地区的黑碳浓度高于 0.4 μg/m3,其中一些地区在研究时段高于 3 μg/m3。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Atmospheric Environment: X
Atmospheric Environment: X Environmental Science-Environmental Science (all)
CiteScore
8.00
自引率
0.00%
发文量
47
审稿时长
12 weeks
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