挥发性有机化合物源分配:监测特征如何影响正矩阵因式分解 (PMF) 解决方案

IF 3.8 Q2 ENVIRONMENTAL SCIENCES
Caroline Frischmon, Michael Hannigan
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引用次数: 0

摘要

正矩阵分解法(PMF)可用于确定一个地区污染物的主要来源,从而制定更有针对性的空气质量缓解战略。然而,这项技术依赖于PMF解决准确代表该地区所有污染物来源的因素的能力。我们研究了PMF解决方案的准确性如何受到监测数据特征(如时间分辨率、监测位置和物种组成)的影响,以便更好地为PMF在VOC缓解策略中的使用提供信息。我们将PMF应用于科罗拉多州四年内收集的五个挥发性有机化合物监测项目,发现了基本一致的因素,我们将其确定为石油开采、加工和蒸发;天然气;汽车尾气;液态汽油/寿命较短的石油和天然气。影响数据集是否解决这些来源的主要决定因素是数据集是否具有涵盖每个来源关键物种的VOC物种的综合列表。在任何解决方案中,污染峰值都没有得到很好的模拟。期望在工业化城市地点解决的超局部和挥发性化学产品因素也未得到解决,突出了PMF分析的三个局限性。风向依赖和日趋势有助于源识别,这表明高时间分辨率数据对于开发可操作的PMF结果非常重要。基于这些发现,我们建议对pmf相关的VOC缓解工作进行空气监测,包括高时间分辨率和全面的VOC种类。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
VOC source apportionment: How monitoring characteristics influence positive matrix factorization (PMF) solutions

Positive matrix factorization (PMF) can be used to develop more targeted air quality mitigation strategies by identifying major sources of a pollutant in an area. This technique is dependent, however, on the ability of PMF to resolve factors that accurately represent all sources of that pollutant in an area. We investigated how the accuracy of PMF solutions might be influenced by monitoring data characteristics, such as temporal resolution, monitoring location, and species composition, to better inform the use of PMF in VOC mitigation strategies. We applied PMF to five VOC monitoring programs collected within a four-year period in Colorado and found generally consistent factors, which we identified as oil extraction, processing, and evaporation; natural gas; vehicle exhaust; and liquid gasoline/short-lived oil and gas. The main determinant influencing whether or not a dataset resolved each of these sources was whether the dataset had a comprehensive list of VOC species covering key species of each source. Pollution spikes were not well-modeled in any of the solutions. Hyperlocal and volatile chemical product factors expected to be resolved in the industrialized, urban location were also missing, highlighting three limitations of PMF analysis. Wind direction dependence and diurnal trends aided in source identification, suggesting that high-time resolution data is important for developing actionable PMF results. Based on these findings, we recommend that air monitoring for PMF-informed VOC mitigation efforts include high temporal resolution and a comprehensive array of VOC species.

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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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