4.8 Article

Tracking Air Pollution in China: Near Real-Time PM2.5 Retrievals from Multisource Data Fusion

Journal

ENVIRONMENTAL SCIENCE & TECHNOLOGY
Volume 55, Issue 17, Pages 12106-12115

Publisher

AMER CHEMICAL SOC
DOI: 10.1021/acs.est.1c01863

Keywords

PM2.5; random forest; air pollution; exposure assessment; satellite remote sensing

Funding

  1. National Natural Science Foundation of China [42005135, 42007189, 41921005, 41625020]

Ask authors/readers for more resources

The study introduces a near real-time air pollutant database named Tracking Air Pollution in China (TAP), which combines ground observations, satellite AOD, and other data sources to provide daily 10 km resolution PM2.5 data. The database utilizes a two-stage machine learning model to estimate PM2.5 concentrations, improving performance at high pollution levels and filling gaps in AOD data. The availability of daily PM2.5 data for tracking changes over time and long-term records since 2000 will support policy assessments and health impact studies.
Air pollution has altered the Earth's radiation balance, disturbed the ecosystem, and increased human morbidity and mortality. Accordingly, a full-coverage high-resolution air pollutant data set with timely updates and historical long-term records is essential to support both research and environmental management. Here, for the first time, we develop a near real-time air pollutant database known as Tracking Air Pollution in China (TAP, http://tapdata.org.cn/) that combines information from multiple data sources, including ground observations, satellite aerosol optical depth (AOD), operational chemical transport model simulations, and other ancillary data such as meteorological fields, land use data, population, and elevation. Daily full-coverage PM2.5 data at a spatial resolution of 10 km is our first near real-time product. The TAP PM2.5 is estimated based on a two-stage machine learning model coupled with the synthetic minority oversampling technique and a tree-based gap-filling method. Our model has an averaged out-of-bag cross-validation R-2 of 0.83 for different years, which is comparable to those of other studies, but improves its performance at high pollution levels and fills the gaps in missing AOD on daily scale. The full coverage and near real-time updates of the daily PM2.5 data allow us to track the day-to-day variations in PM2.5 concentrations over China in a timely manner. The long-term records of PM2.5 data since 2000 will also support policy assessments and health impact studies. The TAP PM2.5 data are publicly available through our website for sharing with the research and policy communities.

Authors

I am an author on this paper
Click your name to claim this paper and add it to your profile.

Reviews

Primary Rating

4.8
Not enough ratings

Secondary Ratings

Novelty
-
Significance
-
Scientific rigor
-
Rate this paper

Recommended

No Data Available
No Data Available