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Background Characteristics and Influence Analysis of Greenhouse Gases at Jinsha Atmospheric Background Station in China

ATMOSPHERE(2023)

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Abstract
Central China has been acting as a major convergence zone for sources and sinks in China, such that the climate change studies of Central China have taken on critical significance. The Jinsha atmospheric background station refers to the sole background monitoring site in Central China. It is noteworthy that the greenhouse gas attributes of the Jinsha atmospheric background station represent the greenhouse gas conditions of Central China. The seasonal and daily variations in CO2, CH4, and CO in the scope of time between October 2019 to April 2021 at the station were examined in this study. The effect of meteorological conditions on greenhouse gas concentrations at the site was evaluated. Furthermore, the primary transmission origins affecting the station were identified using the backward trajectory through potential source contribution function analysis. As indicated by the results, the background concentrations at the Jinsha station in 2020 for CO2, CH4, and CO reached 424.1 +/- 0.1 ppm, 2046.2 +/- 0.6 ppb, and 324.1 +/- 1.1 ppb, respectively. CO2 varied on a daily basis with higher nighttime levels, which was affected by the boundary layer elevation, photosynthesis, and human activities. In autumn, CH4 levels peaked under the effect of agricultural activities in Central China. However, CO2 and CO concentrations reached the maximum in winter, majorly affected by the transmissions from the Beijing-Tianjin-Hebei region and Hubei. Under China's comprehensive carbon neutrality, more attention should be paid to the emissions from winter heating and industrial activities in the Beijing-Tianjin-Hebei region, and effects exerted by transport in the monitoring process should be differentiated in depth.
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Key words
greenhouse observation,seasonal variation,backward trajectory,atmospheric transport,WPSCF
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