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运用机器学习手段理解新冠疫情封锁对空气污染的真实影响。

Understanding the true effects of the COVID-19 lockdown on air pollution by means of machine learning.

机构信息

Know-Center, Inffeldgasse 13/6, AT-8010, Graz, Austria.

Know-Center, Inffeldgasse 13/6, AT-8010, Graz, Austria.

出版信息

Environ Pollut. 2021 Apr 1;274:115900. doi: 10.1016/j.envpol.2020.115900. Epub 2020 Nov 6.

Abstract

During March 2020, most European countries implemented lockdowns to restrict the transmission of SARS-CoV-2, the virus which causes COVID-19 through their populations. These restrictions had positive impacts for air quality due to a dramatic reduction of economic activity and atmospheric emissions. In this work, a machine learning approach was designed and implemented to analyze local air quality improvements during the COVID-19 lockdown in Graz, Austria. The machine learning approach was used as a robust alternative to simple, historical measurement comparisons for various individual pollutants. Concentrations of NO (nitrogen dioxide), PM (particulate matter), O (ozone) and O (total oxidant) were selected from five measurement sites in Graz and were set as target variables for random forest regression models to predict their expected values during the city's lockdown period. The true vs. expected difference is presented here as an indicator of true pollution during the lockdown. The machine learning models showed a high level of generalization for predicting the concentrations. Therefore, the approach was suitable for analyzing reductions in pollution concentrations. The analysis indicated that the city's average concentration reductions for the lockdown period were: -36.9 to -41.6%, and -6.6 to -14.2% for NO and PM respectively. However, an increase of 11.6-33.8% for O was estimated. The reduction in pollutant concentration, especially NO can be explained by significant drops in traffic-flows during the lockdown period (-51.6 to -43.9%). The results presented give a real-world example of what pollutant concentration reductions can be achieved by reducing traffic-flows and other economic activities.

摘要

2020 年 3 月期间,大多数欧洲国家实施封锁措施,以限制 SARS-CoV-2 病毒在人群中的传播,该病毒导致了 COVID-19 的发生。由于经济活动和大气排放的急剧减少,这些限制措施对空气质量产生了积极影响。在这项工作中,设计并实施了一种机器学习方法,以分析奥地利格拉茨市 COVID-19 封锁期间的当地空气质量改善情况。该机器学习方法被用作替代简单、历史测量比较的稳健方法,用于分析各种单个污染物。从格拉茨的五个测量点选择了 NO(二氧化氮)、PM(颗粒物)、O(臭氧)和 O(总氧化剂)的浓度作为随机森林回归模型的目标变量,以预测它们在城市封锁期间的预期值。这里将真实值与预测值的差异表示为封锁期间真实污染的指标。机器学习模型在预测浓度方面表现出高水平的泛化能力。因此,该方法适用于分析污染浓度的降低。分析表明,该市在封锁期间的平均浓度降低幅度为:NO 和 PM 分别为-36.9%至-41.6%和-6.6%至-14.2%。然而,O 的浓度预计会增加 11.6%至 33.8%。污染物浓度的降低,特别是 NO 的降低,可以用封锁期间交通流量的显著下降(-51.6%至-43.9%)来解释。所呈现的结果提供了一个实际示例,说明了通过减少交通流量和其他经济活动可以实现污染物浓度的降低。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/108e/7644435/966e61c76cad/fx1_lrg.jpg

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