Assessment of atmospheric CO 2 concentration enhancement from anthropogenic emissions based on satellite observations

2017 
Anthropogenic CO 2 emissions are the dominant factor driving atmospheric CO 2 concentration enhancement. However, the magnitude of the increase of CO 2 concentration due to regional anthropogenic emissions remains unclear. Satellite-derived observations of atmospheric CO 2 concentration provide a promising and effective means by which to monitor and evaluate regional anthropogenic CO 2 emissions. This study used the column-averaged dry air mole fraction of CO 2 (XCO 2 ) derived from the observations of the greenhouse gases observation satellite (GOSAT) to assess quantitatively the effect of anthropogenic emissions on CO 2 enhancement in two study areas located within the same latitudinal zone (35°–50°N): one in northern China and the other in the eastern USA. The study collected original XCO 2 data (v02.xx) from a five-year period (2010–2014), released by the GOSAT project of the National Institute for Environmental Studies in Japan. Two high-density urban areas were selected as anthropogenic emission regions (emission-regions). These areas comprised the Beijing-Tianjin-Hebei area centered on Beijing (43 million square kilometers) in northern China and the urban agglomeration that includes New York City (55 million square kilometers) in the eastern USA, for which the magnitudes of anthropogenic CO 2 emissions were about 950 and 1312 Tg CO 2 /a, respectively, according to the CO 2 emission inventory in 2010 released by the Carbon Dioxide Information Analysis Center (CDIAC). Two regions with lower emissions, considered as background-regions for comparison with the emission-regions, were prepared according to the distribution of potential temperature and CO 2 emission data from CDIAC, where anthropogenic CO 2 emissions in 2010 were about 127 and 123 Tg CO 2 /a, respectively. The yearly averaged XCO 2 data were calculated based on the seasonally averaged XCO 2 data using the original GOSAT XCO 2 retrievals from the four regions. In comparison with the background-regions, the results showed the enhancements of CO 2 concentration in the emission-regions were, on average, 1.8 and 2.0 ppm in the Beijing-Tianjin-Hebei area and urban agglomeration in the USA, respectively. The maximum and minimum enhancements in China were 2.4 ppm in 2010 and 1.3 ppm in 2014, respectively. The maximum and minimum enhancements in the USA were 2.6 ppm in 2012 and 1.6 ppm in 2010, respectively. Moreover, the enhancements were highest in winter (2.4±0.6 and 2.8±0.8 ppm in China and the USA, respectively). Intriguingly, analysis of the monthly variations revealed that CO 2 concentration in the Beijing-Tianjin-Hebei area decreased anomalously by 3.2 ppm during the Asia-Pacific Economic Cooperation (APEC) summit in November 2014 compared with the period before the summit. This anomalous drop probably reflects the effects of the artificial control of CO 2 emissions implemented by the government during the APEC summit in order to improve air quality. The above enhancements of CO 2 concentration prefer to be slightly less than the actual enhancements of CO 2 concentration induced by anthropogenic emissions due to bio-ecological flux in the emission-regions. Based on an investigation of bio-ecological flux in the Beijing-Tianjin-Hebei area in earlier researches, the actual CO 2 enhancement induced by anthropogenic emissions should be added an increment of less than 0.6 ppm absorbed by the bio-ecological system to the above-mentioned 1.8 ppm enhancement. The study results demonstrate the efficacy of using satellite-derived observations for evaluating the impact of anthropogenic emissions on the enhancement of atmospheric CO 2 by analyzing changes in regional CO 2 concentration. This provides a promising method with which to verify regional anthropogenic emissions and to support governmental oversight, control, and decision making regarding CO 2 emission reduction.
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