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Quantifying the emission changes and associated air quality impacts during the COVID-19 pandemic on the North China Plain: a response modeling study

机译:在华北平原的Covid-19流行病中量化排放变化和相关空气质量的影响:响应建模研究

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Quantification of emission changes is a prerequisite for the assessment of control effectiveness in improving air quality. However, the traditional bottom-up method for characterizing emissions requires detailed investigation of emissions data (e.g., activity and other emission parameters) that usually takes months to perform and limits timely assessments. Here we propose a novel method to address this issue by using a response model that provides real-time estimation of emission changes based on air quality observations in combination with emission-concentration response functions derived from chemical transport modeling. We applied the new method to quantify the emission changes on the North China Plain (NCP) due to the COVID-19 pandemic shutdown, which overlapped the Spring Festival (also known as Chinese New Year) holiday. Results suggest that the anthropogenic emissions of NO2, SO2, volatile organic compound (VOC) and primary PM2.5 on the NCP were reduced by 51%, 28%, 67% and 63%, respectively, due to the COVID-19 shutdown, indicating longer and stronger shutdown effects in 2020 compared to the previous Spring Festival holiday. The reductions of VOC and primary PM2.5 emissions are generally effective in reducing O3 and PM2.5 concentrations. However, such air quality improvements are largely offset by reductions in NOx emissions. NOx emission reductions lead to increases in O3 and PM2.5 concentrations on the NCP due to the strongly VOC-limited conditions in winter. A strong NH3-rich condition is also suggested from the air quality response to the substantial NOx emission reduction. Well-designed control strategies are recommended based on the air quality response associated with the unexpected emission changes during the COVID-19 period. In addition, our results demonstrate that the new response-based inversion model can well capture emission changes based on variations in ambient concentrations and thereby illustrate the great potential for improving the accuracy and efficiency of bottom-up emission inventory methods.
机译:排放变化的量化是评估控制效能提高空气质量的先决条件。然而,用于表征排放的传统自下而上方法需要详细调查通常需要数月的排放数据(例如,活动和其他排放参数),以便执行和限制及时评估。在这里,我们提出了一种通过使用响应模型来解决这个问题的新方法,该响应模型提供基于空气质量观察的排放变化的实时估计,与源自化学传输建模的发射浓度响应函数。我们应用了新方法,以量化北中国平原(NCP)的排放变化,因为Covid-19大流行关机,它重叠春节(又称春节)假期。结果表明,由于Covid-19关闭,NCP上NO2,SO2,挥发性有机化合物(VOC)和初级PM2.5的人为释放分别降低了51%,28%,67%和63%,与前一个春节假期相比,在2020年表明较长且更强大的停机效果。 VOC和初级PM2.5排放的减少通常有效减少O3和PM2.5浓度。然而,这种空气质量改善在很大程度上被降低在NOx排放中抵消。由于冬季强大的VOC有限的条件,NOx排放减排导致NCP和PM2.5浓度增加。还提出了强大的NH3的条件,从空气质量响应到大量NOx减排。根据Covid-19期间与意外排放变化相关的空气质量响应,建议设计精心设计的控制策略。此外,我们的结果表明,基于新的响应的反转模型可以很好地捕获基于环境浓度的变化的捕获发射变化,从而说明了提高自下而上排放库存方法的准确性和效率的巨大潜力。

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