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Using the Google Earth Engine to estimate a 10 m resolution monthly inventory of soil fugitive dust emissions in Beijing, China

机译:使用谷歌地球发动机来估算北京北京土壤逃亡排放量10米的分辨率清单

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摘要

Soil fugitive dust (SFD) is an important contributor to ambient particulate matter (PM), but most current SFD emission inventories are updated slowly or have low resolution. In areas where vegetation coverage and climatic conditions undergo significant seasonal changes, the classic wind erosion equation (WEQ) tends to underestimate SFD emissions, increasing the need for higher spatiotemporal data resolution. Continuous acquisition of precise bare soil maps is the key barrier to compiling monthly high-resolution SFD emission inventories. In this study, we proposed taking advantage of the massive Landsat and Sentinel-2 imagery data sets stored in the Google Earth Engine (GEE) cloud platform to enable the rapid production of bare soil maps with spatial resolutions of up to 10 m. The resulting improved spatiotemporal resolution of wind erosion parameters allowed us to estimate SFD emissions in Beijing as being -5-7 times the level calculated by the WEQ. Spring and winter accounted for >85% of SFD emissions, while April was the dustiest month with SFD emissions of PM_(10) exceeding 11,000 t. Our results highlighted the role of SFD in air pollution during winter and spring in northern China, and suggested that GEE should be further used for image acquisition, data processing, and compilation of gridded SFD inventories. These inventories can help identify the location and intensity of SFD sources while providing supporting information for local authorities working to develop targeted mitigation measures.
机译:土壤逃亡粉尘(SFD)是对环境颗粒物质(PM)的重要因素,但大多数电流SFD排放清单缓慢或具有低分辨率。在植被覆盖和气候条件经历显着的季节变化的地区,经典的风侵蚀方程(WEQ)倾向于低估SFD排放,增加了对较高时空数据分辨率的需求。连续收购精确的裸土图是编制每月高分辨率SFD排放库存的关键障碍。在这项研究中,我们提出利用存储在Google地球发动机(GEE)云平台中的大型Landsat和Sentinel-2图像数据集,以使得能够快速生产裸露的土壤图,其空间分辨率可达高达10米的空间分辨率。由此产生的风蚀参数的改善的时空分辨率使我们能够估计北京的SFD排放为WEQ计算的水平为-5-7倍。春季和冬季占SFD排放量的85%,而4月份是最古老的最尘呼,PM_(10)的SFD排放超过11,000吨。我们的结果强调了SFD在中国北部冬季和春季期间的空气污染的作用,并建议GEE应该进一步用于网格的SFD库存的图像获取,数据处理和汇编。这些库存可以帮助确定SFD来源的位置和强度,同时为地方当局努力制定有针对性的缓解措施的支持信息。

著录项

  • 来源
    《The Science of the Total Environment》 |2020年第15期|139174.1-139174.8|共8页
  • 作者

    Aobo Liu; Qizhong Wu; Xiao Cheng;

  • 作者单位

    College of Global Change and Earth System Science Beijing Normal University 100875 Beijing China;

    College of Global Change and Earth System Science Beijing Normal University 100875 Beijing China;

    School of Geospatial Engineering and Science Sun Yat-Sen University 519082 Zhuhai China Southern Marine Science and Engineering Guangdong Laboratory (Zhuhai) 519082 Zhuhai China joint Center for Global Change Studies 100875 Beijing China;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Soil fugitive dust; Emission inventory; Wind erosion; Particulate matter; GEE;

    机译:土壤逃逸粉尘;排放库存;风蚀;颗粒物质;g;

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