Fundamental Research (May 2021)

Satellite remote sensing of atmospheric particulate matter mass concentration: Advances, challenges, and perspectives

  • Ying Zhang,
  • Zhengqiang Li,
  • Kaixu Bai,
  • Yuanyuan Wei,
  • Yisong Xie,
  • Yuanxun Zhang,
  • Yang Ou,
  • Jason Cohen,
  • Yuhuan Zhang,
  • Zongren Peng,
  • Xingying Zhang,
  • Cheng Chen,
  • Jin Hong,
  • Hua Xu,
  • Jie Guang,
  • Yang Lv,
  • Kaitao Li,
  • Donghui Li

Journal volume & issue
Vol. 1, no. 3
pp. 240 – 258

Abstract

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Mapping the mass concentration of near-surface atmospheric particulate matter (PM) using satellite observations has become a popular research niche, leading to the development of a variety of instruments, algorithms, and datasets over the past two decades. In this study, we conducted a holistic review of the major advances and challenges in quantifying PM, with a specific focus on instruments, algorithms, datasets, and modeling methods that have been developed over the past 20 years. The aim of this study is to provide a general guide for future satellite-based PM concentration mapping practices and to better support air quality monitoring and management of environmental health. Specifically, we review the evolution of satellite platforms, sensors, inversion algorithms, and datasets that can be used for monitoring aerosol properties. We then compare various practical methods and techniques that have been used to estimate PM mass concentrations and group them into four primary categories: (1) univariate regression, (2) chemical transport models (CTM), (3) multivariate regression, and (4) empirical physical approaches. Considering the main challenges encountered in PM mapping practices, for example, data gaps and discontinuity, a hybrid method is proposed with the aim of generating PM concentration maps that are both spatially continuous and have high precision.

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