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Large-scale mapping of surface coarse particulate matter (PM) concentration remains a key focus for air quality monitoring. Satellite aerosol optical depth (AOD)-based data fusion approaches decouple the non-linear AOD-PM relationship, enabling high-resolution PM data acquisition, but are limited by spatial incompleteness and the absence of nighttime data. Here, a gridded visibility-based real-time surface PM retrieval (RT-SPMR) framework for China is introduced, addressing the gap in seamless hourly PM data within the 24-hour cycle. This framework utilizes multisource data inputs and dynamically updated machine-learning models to produce 6.25-km gridded 24-hour PM data. Cross-validation showed that the RT-SPMR model's daily retrieval accuracy surpassed prior studies. Additionally, through rolling iterative validation experiments, the model exhibited strong generalization capability and stability, demonstrating its suitability for operational deployment. Taking a record-breaking dust storm as an example, the model proved effective in tracking the fine-scale evolution of the dust intrusion process, especially in under-observed areas. Consequently, the operational RT-SPMR framework provides comprehensive real-time capability for monitoring PM pollution in China, and has the potential to improve the accuracy of dust storm forecasting models by enhancing the PM initial field.
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http://www.ncbi.nlm.nih.gov/pmc/articles/PMC11925011 | PMC |
http://dx.doi.org/10.1093/nsr/nwae446 | DOI Listing |
Natl Sci Rev
February 2025
State Key Laboratory of Severe Weather and Key Laboratory of Atmospheric Chemistry of China Meteorological Administration, Chinese Academy of Meteorological Sciences, Beijing 100081, China.
Large-scale mapping of surface coarse particulate matter (PM) concentration remains a key focus for air quality monitoring. Satellite aerosol optical depth (AOD)-based data fusion approaches decouple the non-linear AOD-PM relationship, enabling high-resolution PM data acquisition, but are limited by spatial incompleteness and the absence of nighttime data. Here, a gridded visibility-based real-time surface PM retrieval (RT-SPMR) framework for China is introduced, addressing the gap in seamless hourly PM data within the 24-hour cycle.
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