The COVID-19 related lockdown measures offer a unique opportunity to understand how changes in economic activity and traffic affect ambient air quality and how much pollution reduction potential can the society offer through digitalization and mobilitylimiting policies. In this work, we estimate pollution reduction over the lockdown period by using the measurements from ground air pollution monitoring stations, training a long-term prediction model and comparing its predictions to measured values over the lockdown month.We show that our models achieve state-of-the-art performance on the data from air pollution measurement stations in Switzerland and in China: evaluate up to -15.8% / +34.4% change in NO2 / PM10 in Zurich; -35.3 % / -3.5 % and -42.4 % / -34.7 % in NO2 / PM2.5 in Beijing and Wuhan respectively. Our reduction estimates are consistent with recent publications, yet in contrast to prior works, our method takes local weather into account. What can we learn from pollution emissions during lockdown? The lockdown period was too short to train meaningful models from scratch. To tackle this problem, we use transfer learning to newly fit only traffic-dependent variables. We show that the resulting models are accurate, suitable for an analysis of the post-lockdown period and capable of estimating the future air pollution reduction potential.
翻译:COVID-19相关封闭措施为了解经济活动和交通的变化如何影响环境空气质量以及社会通过数字化和移动限制政策可以提供多大的减少污染潜力提供了一个独特的机会。在这项工作中,我们通过使用地面空气污染监测站的测量,培训长期预测模型并将其预测与封闭月份的测量值进行比较,来估计封闭期的污染减少率。我们显示,我们的模型在瑞士和中国的空气污染测量站的数据上取得了最先进的业绩:评估苏黎世NO2/PM10的15.8%/+34.4%的污染减少潜力;-35.3%/-3.5 % 和-42.4 % 北京和武汉的NO2-PM2.5 /-34.7% 。我们的减排估计数与最近的出版物一致,但与以前的工作不同,我们的方法考虑到当地气候。我们从封闭期的污染排放中学到什么? 锁定期太短,无法从零开始训练有意义的模型。为了解决这个问题,我们用能够学习的准确的减少污染期,我们只能用来预测未来的污染期,我们用一个精确的减少流量分析来预测。