Assessment of the Impact of Biogenic VOC Emissions in a High Ozone Episode via Integrated Remote Sensing and the CMAQ Model

Kaiyu Cheng, Nibin Chang

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Front. Earth Sci. ›› DOI: 10.1007/s11707-009-0019-3
RESEARCH ARTICLE
RESEARCH ARTICLE

Assessment of the Impact of Biogenic VOC Emissions in a High Ozone Episode via Integrated Remote Sensing and the CMAQ Model

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Abstract

In many metropolitan regions, natural sources contribute a substantial fraction of volatile organic compound (VOC) emissions. These biogenic VOC emissions are precursors to tropospheric Ozone (O3)formation. Because forests make up 59% of the land area in Taiwan, the biogenic VOC emissions from forests and farmland could play an important role in photochemical reactions. On the other hand, anthropogenic emissions might also be one of the major inputs for ground level O3 concentrations. Hence, emission inventory data, grouped as point, area, mobile and biogenic VOC sources, are a composite of reported and estimated pollutant emission information and are used by many air quality models to simulate ground level O3 concentrations. Before using relevant air quality models, the emission inventory data generally require huge amounts of processing for spatial, temporal, and species congruence with respect to the associated air quality modeling work. The fist part of this research applied satellite remote sensing and geographic information system (GIS) analyses to characterize land use/land cover (LULC) patterns, integrating various sources of anthropogenic emissions and biogenic emissions associated with a variety of plant species. To investigate the significance of biogenic VOC emissions on ozone formation, meteorological and air quality modeling were then employed to generate hourly ozone estimates for a case study of a high ozone episode in southern Taiwan, which is the leading industrial hub on the island. To enhance the modeling accuracy, a unique software module, SMOKE, was set up for emission processing to prepare emission inputs for the U.S. EPA’s Models-3/CMAQ. An emission inventory of Taiwan, TEDS 4.2, was used as the anthropogenic emission inventory. Biogenic emission modeling was accomplished by BEIS-2 in SMOKE, with improvement of local LULC data and revised emission factors. Research findings show that the majority of biogenic VOC emissions occur in the mountainous areas and farmlands. However, the modeling outputs show that downwind of the most heavily populated and industrialized areas, these biogenic VOC emissions have less impact on air quality than do anthropogenic emissions.

Keywords

ozone / biogenic emissions / volatile organic compounds / remote sensing / air quality modeling / air pollution

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Kaiyu Cheng, Nibin Chang. Assessment of the Impact of Biogenic VOC Emissions in a High Ozone Episode via Integrated Remote Sensing and the CMAQ Model. Front Earth Sci Chin, https://doi.org/10.1007/s11707-009-0019-3

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Acknowledgements

The authors deeply acknowledge the help from Dr. W. G.. Snoog in MM5 simulation analysis and data cited and used in this analysis.

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2014 Higher Education Press and Springer-Verlag Berlin Heidelberg
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