Abstract

Abstract. Satellite aerosol retrievals have been a popular alternative to monitoring the surface-based PM2.5 concentration due to their extensive spatial and temporal coverage. Satellite-derived PM2.5 estimations strongly rely on an accurate representation of the relationship between ground-level PM2.5 and satellite aerosol optical depth (AOD). Due to the limitations of satellite AOD data, most studies have examined the relationship at a coarse resolution (i.e., ≥ 10 km); thus, more effort is still needed to better understand the relationship between “in situ” PM2.5 and AOD at finer spatial scales. While PM2.5 and AOD could have obvious temporal variations, few studies have examined the diurnal variation in their relationship. Therefore, considerable uncertainty still exists in satellite-derived PM2.5 estimations due to these research gaps. Taking advantage of the newly released fine-spatial-resolution satellite AOD data derived from the Multi-Angle Implementation of Atmospheric Correction (MAIAC) algorithm and real-time ground aerosol and PM2.5 measurements, this study explicitly explored the relationship between PM2.5 and AOD as well as its plausible impact factors, including meteorological parameters and topography, in mainland China during 2019, at various spatial and temporal scales. The coefficient of variation, the Pearson correlation coefficient and the slope of the linear regression model were used. Spatially, stronger correlations mainly occurred in northern and eastern China, and the linear slope was larger on average in northern inland regions than in other areas. Temporally, the PM2.5–AOD correlation peaked at noon and in the afternoon, and reached a maximum in winter. Simultaneously, considering relative humidity (RH) and the planetary boundary layer height (PBLH) in the relationship can improve the correlation, but the effect of RH and the PBLH on the correlation varied spatially and temporally with respect to both strength and direction. In addition, the largest correlation occurred at 400–600 m primarily in basin terrain such as the Sichuan Basin, the Shanxi–Shaanxi basins and the Junggar Basin. MAIAC 1 km AOD can better represent the ground-level fine particulate matter in most domains with exceptions, such as in very high terrain (i.e., Tibetan Plateau) and northern central China (i.e., Qinghai and Gansu). The findings of this study have useful implications for satellite-based PM2.5 monitoring and will further inform the understanding of the aerosol variation and PM2.5 pollution status of mainland China.

Highlights

  • Aerosols play an important role in regional and global climate change via both their direct and indirect effects (King et al, 1992; Li et al, 2007; Z. Liu et al, 2019, 2020; Liu et al, 2018)

  • Our results show a mismatch between satellite aerosol optical depth (AOD) values and ground-level PM2.5 concentrations, especially in southwestern China

  • The aerosol type is another contributor accounting for the uncertainties involved; as our results show, the pattern based on the 1 km Multi-Angle Implementation of Atmospheric Correction (MAIAC) AOD is a little different from previous studies using coarseresolution aerosol products, such as the Moderate Resolution Imaging Spectroradiometer (MODIS) 10 km Dark Target (DT) or Deep Blue (DB) AOD datasets

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Summary

Introduction

Aerosols play an important role in regional and global climate change via both their direct and indirect effects (King et al, 1992; Li et al, 2007; Z. Liu et al, 2019, 2020; Liu et al, 2018). Aerosols play an important role in regional and global climate change via both their direct and indirect effects With an extended spatial and temporal coverage, retrieval of the near-surface PM2.5 concentration from satellite aerosol optical depth (AOD) has become a popular approach to bridging the gap left by the ground-level monitoring network. The use of satellite AOD retrievals facilitates the detection of the large-scale and long-term aerosol loading as well as transboundary transport and assists in the determination of the population exposure level for epidemiological and health studies (Liu et al, 2017; Zou et al, 2019). The theoretical basis of this technique rests on the strong link between satellite AOD retrievals and ground-level PM2.5 concentration (Wang and Christopher, 2003). It is of great importance to examine the PM2.5–AOD relationship, with respect to the relationship itself and regarding the underlying physical understanding involved

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