In March 2020 the United Kingdom (UK) entered a nationwide lockdown period due to the Covid-19 pandemic. As a result, levels of nitrogen dioxide (NO2) in the atmosphere dropped. In this work, we use 550,134 NO2 data points from 237 stations in the UK to build a spatiotemporal Gaussian process capable of predicting NO2 levels across the entire UK. We integrate several covariate datasets to enhance the model's ability to capture the complex spatiotemporal dynamics of NO2. Our numerical analyses show that, within two weeks of a UK lockdown being imposed, UK NO2 levels dropped 36.8%. Further, we show that as a direct result of lockdown NO2 levels were 29-38% lower than what they would have been had no lockdown occurred. In accompaniment to these numerical results, we provide a software framework that allows practitioners to easily and efficiently fit similar models.
翻译:2020年3月,英国(英国)由于Covid-19大流行,进入了全国封闭期。结果,大气中的氮二氧化(NO2)水平下降。在这项工作中,我们使用了来自英国237个站点的550,134 NO2数据点,以建立一个能够预测整个英国的NO2水平的超时高斯进程。我们整合了几个共变数据集,以加强模型捕捉NO2复杂波时动态的能力。我们的数字分析显示,在英国实行封闭两周内,英国的NO2水平下降了36.8%。此外,我们显示,锁定NO2水平的直接结果比它们本来不会被锁定的水平低29-38%。为了配合这些数字结果,我们提供了一个软件框架,使开业者能够方便和高效地适应类似的模式。