Estimates of daily ground-level NO2 concentrations in China based on big data and machine learning approaches
Xinyu Dou, Cuijuan Liao, Hengqi Wang, Ying Huang, Ying Tu, Xiaomeng, Huang, Yiran Peng, Biqing Zhu, Jianguang Tan, Zhu Deng, Nana Wu, Taochun Sun,, Piyu Ke, Zhu Liu

TL;DR
This study presents a high-resolution, nationwide estimation of daily ground-level NO2 concentrations in China over six years using an advanced machine learning model that incorporates diverse data sources, including socio-economic factors.
Contribution
It introduces a novel RF-K model integrating multi-source data, including socio-economic parameters, for accurate, high-resolution NO2 estimation across China.
Findings
RF-K model outperforms other models in prediction accuracy
NO2 levels show a weak increasing trend overall
Pollutant control measures have been effective in key economic zones
Abstract
Nitrogen dioxide (NO2) is one of the most important atmospheric pollutants. However, current ground-level NO2 concentration data are lack of either high-resolution coverage or full coverage national wide, due to the poor quality of source data and the computing power of the models. To our knowledge, this study is the first to estimate the ground-level NO2 concentration in China with national coverage as well as relatively high spatiotemporal resolution (0.25 degree; daily intervals) over the newest past 6 years (2013-2018). We advanced a Random Forest model integrated K-means (RF-K) for the estimates with multi-source parameters. Besides meteorological parameters, satellite retrievals parameters, we also, for the first time, introduce socio-economic parameters to assess the impact by human activities. The results show that: (1) the RF-K model we developed shows better prediction…
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Taxonomy
TopicsAir Quality Monitoring and Forecasting · Air Quality and Health Impacts · Atmospheric chemistry and aerosols
