Predicting the effect of confinement on the COVID-19 spread using machine learning enriched with satellite air pollution observations.

  • Xiaofan Xing ,
  • Yuankang Xiong ,
  • Ruipu Yang ,
  • Rong Wang ,
  • Weibing Wang ,
  • Haidong Kan ,
  • Tun Lu ,
  • ,
  • Junji Cao ,
  • Josep Peñuelas ,
  • ,
  • Nico Bauer ,
  • Olivier Boucher ,
  • Yves Balkanski ,
  • Didier Hauglustaine ,
  • Guy Brasseur ,
  • Lidia Morawska ,
  • Ivan A Janssens ,
  • Xiangrong Wang ,
  • Jordi Sardans ,
  • Yijing Wang ,
  • Yifei Deng ,
  • Lin Wang ,
  • Jianmin Chen ,
  • Xu Tang ,
  • Renhe Zhang

Proceedings of the National Academy of Sciences of the United States of America | , Vol 118(33)

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The real-time monitoring of reductions of economic activity by containment measures and its effect on the transmission of the coronavirus (COVID-19) is a critical unanswered question. We inferred 5,642 weekly activity anomalies from the meteorology-adjusted differences in spaceborne tropospheric NO2 column concentrations after the 2020 COVID-19 outbreak relative to the baseline from 2016 to 2019. Two satellite observations reveal reincreasing economic activity associated with lifting control measures that comes together with accelerating COVID-19 cases before the winter of 2020/2021. Application of the near-real-time satellite NO2 observations produces a much better prediction of the deceleration of COVID-19 cases than applying the Oxford Government Response Tracker, the Public Health and Social Measures, or human mobility data as alternative predictors. A convergent cross-mapping suggests that economic activity reduction inferred from NO2 is a driver of case deceleration in most of the territories. This effect, however, is not linear, while further activity reductions were associated with weaker deceleration. Over the winter of 2020/2021, nearly 1 million daily COVID-19 cases could have been avoided by optimizing the timing and strength of activity reduction relative to a scenario based on the real distribution. Our study shows how satellite observations can provide surrogate data for activity reduction during the COVID-19 pandemic and monitor the effectiveness of containment to the pandemic before vaccines become widely available.