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Combining XCO2 Measurements Derived from SCIAMACHY and GOSAT for Potentially Generating Global CO2 Maps with High Spatiotemporal Resolution

机译:结合源自SCIAMACHY和GOSAT的XCO2测量可能以高时空分辨率生成全球CO2图

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摘要

Global warming induced by atmospheric CO2 has attracted increasing attention of researchers all over the world. Although space-based technology provides the ability to map atmospheric CO2 globally, the number of valid CO2 measurements is generally limited for certain instruments owing to the presence of clouds, which in turn constrain the studies of global CO2 sources and sinks. Thus, it is a potentially promising work to combine the currently available CO2 measurements. In this study, a strategy for fusing SCIAMACHY and GOSAT CO2 measurements is proposed by fully considering the CO2 global bias, averaging kernel, and spatiotemporal variations as well as the CO2 retrieval errors. Based on this method, a global CO2 map with certain UTC time can also be generated by employing the pattern of the CO2 daily cycle reflected by Carbon Tracker (CT) data. The results reveal that relative to GOSAT, the global spatial coverage of the combined CO2 map increased by 41.3% and 47.7% on a daily and monthly scale, respectively, and even higher when compared with that relative to SCIAMACHY. The findings in this paper prove the effectiveness of the combination method in supporting the generation of global full-coverage XCO2 maps with higher temporal and spatial sampling by jointly using these two space-based XCO2 datasets.
机译:大气二氧化碳引起的全球变暖已经引起了全世界研究人员的越来越多的关注。尽管天基技术提供了在全球范围内绘制大气CO2的功能,但是由于云的存在,某些仪器的有效CO2测量数量通常受到限制,从而限制了对全球CO2来源和汇的研究。因此,将当前可用的二氧化碳测量值结合起来是一项潜在的有前途的工作。在这项研究中,通过充分考虑CO2总体偏差,平均内核和时空变化以及CO2检索误差,提出了一种融合SCIAMACHY和GOSAT CO2测量的策略。基于此方法,还可以通过采用由碳追踪器(CT)数据反映的CO2日循环模式来生成具有特定UTC时间的全球CO2图。结果表明,相对于GOSAT,组合的CO2图的全球空间覆盖率每天和每月分别增加41.3%和47.7%,甚至比相对于SCIAMACHY还要高。本文的研究结果证明了结合使用这两个基于空间的XCO2数据集,该组合方法在支持更高时间和空间采样的情况下支持生成全球全覆盖XCO2地图的有效性。

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