Mapping PM2.5 concentration at sub-km level resolution: a dual-scale retrieval method
Qianqian Yang, Qiangqiang Yuan, Linwei Yue, Huanfeng Shen, Liangpei, Zhang

TL;DR
This paper introduces a dual-scale satellite-based PM2.5 retrieval method that leverages multi-resolution variables to improve mapping accuracy at sub-kilometer resolution.
Contribution
It proposes a novel dual-scale retrieval approach that utilizes variables at different resolutions without resampling, enhancing PM2.5 mapping accuracy and resolution.
Findings
Dual-scale method outperforms traditional single-scale retrieval.
Higher accuracy and finer resolution achieved in PM2.5 mapping.
Applicable to various remote sensing quantitative products.
Abstract
Satellite-based retrieval has become a popular PM2.5 monitoring method currently. To improve the retrieval performance, multiple variables are usually introduced as auxiliary variable in addition to aerosol optical depth (AOD). Different kinds of variables are usually at different resolutions varying from sub-kilometers to dozens of kilometers. Generally, when doing the retrieval, variables at different resolutions are resampled to the same resolution as the AOD product to keep the scale consistency. A deficiency of doing this is that the information contained in the scale difference is discarded. To fully utilize the information contained at different scales, a dual-scale retrieval method is proposed in this study. At the first stage, variables which influence PM2.5 concentration at large scale were used for PM2.5 retrieval at coarse resolution. Then at the second stage, variables…
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Taxonomy
TopicsAtmospheric aerosols and clouds · Air Quality Monitoring and Forecasting · Atmospheric chemistry and aerosols
