Robust prediction of hourly PM from meteorological data using LightGBM.

Natl Sci Rev

State Key Laboratory of Severe Weather and Key Laboratory of Atmospheric Chemistry of China Meteorological Administration, Chinese Academy of Meteorological Sciences, Beijing 100081, China.

Published: October 2021

AI Article Synopsis

  • Retrieving fine particulate matter (PM) data is essential for understanding its long-term effects on health, the environment, and climate.
  • A new LightGBM model was developed to predict PM with high accuracy using spatial effects from meteorological data, achieving impressive results across different timescales (hourly, daily, monthly, and annually).
  • The model's ability to create detailed, real-time PM networks could be improved with more meteorological data, helping in historical reconstruction and enhancing climate models.

Article Abstract

Retrieving historical fine particulate matter (PM) data is key for evaluating the long-term impacts of PM on the environment, human health and climate change. Satellite-based aerosol optical depth has been used to estimate PM, but estimations have largely been undermined by massive missing values, low sampling frequency and weak predictive capability. Here, using a novel feature engineering approach to incorporate spatial effects from meteorological data, we developed a robust LightGBM model that predicts PM at an unprecedented predictive capacity on hourly (R= 0.75), daily (R= 0.84), monthly (R= 0.88) and annual (R= 0.87) timescales. By taking advantage of spatial features, our model can also construct hourly gridded networks of PM. This capability would be further enhanced if meteorological observations from regional stations were incorporated. Our results show that this model has great potential in reconstructing historical PM datasets and real-time gridded networks at high spatial-temporal resolutions. The resulting datasets can be assimilated into models to produce long-term re-analysis that incorporates interactions between aerosols and physical processes.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC8566180PMC
http://dx.doi.org/10.1093/nsr/nwaa307DOI Listing

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