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Dynamic model to predict the association between air quality, COVID-19 cases, and level of lockdown

机译:动态模型预测空气质量,Covid-19案例与锁定水平之间的关联

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Studies have reported significant reductions in air pollutant levels due to the COVID-19 outbreak worldwide global lockdowns. Nevertheless, all of the reports are limited compared to data from the same period over the past few years, providing mainly an overview of past events, with no future predictions. Lockdown level can be directly related to the number of new COVID-19 cases, air pollution, and economic restriction. As lockdown status varies considerably across the globe, there is a window for mega-cities to determine the optimum lockdown flexibility. To that end, firstly, we employed four different Artificial Neural Networks (ANN) to examine the compatibility to the original levels of CO, O-3, NO2, NO, PM2.5, and PM10, for Sao Paulo City, the current Pandemic epicenter in South America. After checking compatibility, we simulated four hypothetical scenarios: 10%, 30%, 70%, and 90% lockdown to predict air pollution levels. To our knowledge, ANN have not been applied to air pollution prediction by lockdown level. Using a limited database, the Multilayer Perceptron neural network has proven to be robust (with Mean Absolute Percentage Error similar to 30%), with acceptable predictive power to estimate air pollution changes. We illustrate that air pollutant levels can effectively be controlled and predicted when flexible lockdown measures are implemented. The models will be a useful tool for governments to manage the delicate balance among lockdown, number of COVID-19 cases, and air pollution. (C) 2020 Elsevier Ltd. All rights reserved.
机译:由于Covid-19全球全球锁模,研究报告了由于Covid-19爆发而导致的空气污染水平显着减少。然而,与过去几年同期的数据相比,所有报告都有限性,主要是概述过去事件,没有未来的预测。锁定水平可以与新的Covid-19案例,空气污染和经济限制直接相关。由于锁定状态在全球范围内变化很大,因此Mega-Cities有一个窗口,以确定最佳的锁定灵活性。为此,首先,我们雇用了四个不同的人工神经网络(ANN),以研究对Sao Paulo City,目前大流行的原始CO,O-3,No2,No,PM2.5和PM10的兼容性南美洲的震中。在兼容性后,我们模拟了四种假设情景:10%,30%,70%和90%的锁定,以预测空气污染水平。据我们所知,ANN尚未应用于锁定水平的空气污染预测。使用有限的数据库,多层的Perceptron神经网络已被证明是坚固的(具有与30%相似的平均绝对百分比),具有可接受的预测能力来估算空气污染变化。我们说明了当实施灵活的锁定措施时,可以有效地控制和预测空气污染水平。该模型将成为政府管理锁定,Covid-19案例数和空气污染之间微妙平衡的有用工具。 (c)2020 elestvier有限公司保留所有权利。

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