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首页> 外文期刊>International journal of remote sensing >Remote sensing of atmospheric biogenic volatile organic compounds (BVOCs) via satellite-based formaldehyde vertical column assessments
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Remote sensing of atmospheric biogenic volatile organic compounds (BVOCs) via satellite-based formaldehyde vertical column assessments

机译:通过卫星甲醛垂直柱评估遥感大气中的生物挥发性有机化合物(BVOC)

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摘要

Global vegetation is intrinsically linked to atmospheric chemistry and climate, and better understanding vegetation-atmosphere interactions can allow scientists to not only predict future change patterns, but also to suggest future policies and adaptations to mediate vegetation feedbacks with atmospheric chemistry and climate. Improving global and regional estimates of biogenic volatile organic compound (BVOCs) emissions is of great interest for their biological and environmental effects and possible positive and negative feedbacks related to climate change and other vectors of global change. Multiple studies indicate that BVOCs are on the rise, and with near 20 years of global remote sensing of formaldehyde (HCHO), the immediate and dominant BVOC atmospheric oxidation product, the accurate and quantitative linkage of BVOCs with plant ecology, atmospheric chemistry, and climate change is of increasing relevance. The remote sensing of BVOCs, via HCHO in a three step process, suffers from an additive modelling error, but improvements in each of the steps have reduced this error by over a multiplication factor improvement compared to estimates without remote sensing. Differential optical absorption spectroscopy (DOAS) measurement of the HCHO slant columns from spectral absorption properties has been adapted to include the correction of numerous spectral artefacts and intricately refined for each of a series of sensors of increasing spectral and spatial resolution. Conversion of HCHO slant to HCHO vertical columns using air mass factors (AMFs) has been improved with the launch of new sensors and the incorporation of radiative transfer and chemical transport models (CTM). The critical process of linking HCHO to BVOC emissions and filtering non-biogenic emissions to explicitly quantify biogenic emissions has also greatly improved. This critical last step in down-scaling from global satellite coverage to local biogenic emissions now benefits from the increasing precision and near-explicitness of available CTMs as well as the increasing availability of global remote-sensing data sets needed to proportionally assign the HCHO column to different related biogenic (global plant functional type and land cover classifications), atmospheric (dust, aerosols, clouds, other trace gases), climate (temperature, wind, precipitation), and anthropogenic (fire, biomass burning) factors.
机译:全球植被与大气化学和气候有着内在的联系,更好地了解植被与大气之间的相互作用不仅可以使科学家预测未来的变化模式,而且可以提出未来的政策和适应措施,以通过大气化学和气候来介导植被反馈。对于生物和挥发性有机化合物(BVOC)排放的全球和区域估计,由于其生物和环境影响以及与气候变化和其他全球变化媒介有关的可能的正反馈和负反馈,因此引起了极大的兴趣。多项研究表明BVOC呈上升趋势,近20年来全球对甲醛(HCHO)的遥感,BVOC的直接和主要大气氧化产物,BVOC与植物生态学,大气化学和气候之间的精确定量联系变化变得越来越重要。在三步过程中,通过HCHO进行BVOC的遥感具有附加的建模误差,但是与没有遥感的估计相比,每一步的改进通过乘数因子的改进减少了该误差。从光谱吸收特性对HCHO斜柱进行的差分光学吸收光谱(DOAS)测量已被调整为包括对许多光谱伪像的校正,并针对一系列增加光谱和空间分辨率的传感器进行了精细的改进。随着新传感器的推出以及辐射传递和化学传输模型(CTM)的引入,使用空气质量因子(AMF)将HCHO斜面转换为HCHO垂直柱的方法得到了改进。将HCHO与BVOC排放联系起来并过滤非生物排放以明确量化生物排放的关键过程也得到了极大改善。从全球卫星覆盖范围缩小到本地生物源排放的这一至关重要的最后一步,现在得益于可用CTM的精度和接近度的提高,以及按比例分配HCHO列所需的全球遥感数据集的可用性不同的相关生物基因(全球植物功能类型和土地覆被分类),大气(粉尘,气溶胶,云,其他微量气体),气候(温度,风,降水)和人为因素(火,生物质燃烧)。

著录项

  • 来源
    《International journal of remote sensing》 |2014年第22期|7519-7542|共24页
  • 作者单位

    Univ Autonoma Barcelona, CSIC, Global Ecol Unit, CREAF CSIC UAB, E-08193 Barcelona, Catalonia, Spain|CREAF, Barcelona 08193, Catalonia, Spain;

    Univ Autonoma Barcelona, CSIC, Global Ecol Unit, CREAF CSIC UAB, E-08193 Barcelona, Catalonia, Spain|CREAF, Barcelona 08193, Catalonia, Spain;

    Univ Autonoma Barcelona, CSIC, Global Ecol Unit, CREAF CSIC UAB, E-08193 Barcelona, Catalonia, Spain|CREAF, Barcelona 08193, Catalonia, Spain;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
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