R. Cong, M. Saito, R. Hirata, A. Ito, Shamil Maksyutov
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引用次数: 3
摘要
随着人们对气候变化关注的增加,准确量化人为源温室气体排放越来越受到重视。本文对多个全球人为源温室气体清单进行不确定性分析,探讨其来源和规模。本文首先用4个指标总结了17个全球温室气体清单的主要特征。为了评估这些清单的不确定性来源和程度,在全球和国家尺度上对能源统计数据和人为来源的二氧化碳排放估算结果进行了量化。最后,我们通过两个指标确定了不确定性程度(程度和比例)较大的国家,这将有助于制定减缓温室气体排放的政策。作为分析结果,我们发现2013年石油消费数据的不确定性在主要燃料中最大,高达44.6埃焦(EJ),二氧化碳排放数据的不确定性在全球范围内显著,高达4.0千焦(Pg) CO2年-1。从国家层面来看,2013年中国作为最大的排放国,其主要燃料中最大的煤炭消费数据的不确定性高达15.5 EJ, 2013年中国二氧化碳排放的不确定性幅度高达1.5 Pg CO2 year -1。
Uncertainty Analysis on Global Greenhouse Gas Inventories from Anthropogenic Sources
As the concerns on climate change increased, accurately quantifying the greenhouse gas (GHG) emissions from anthropogenic sources has been emphasized more and more. In this paper, uncertainty analysis is conducted for multiple global GHG inventories from anthropogenic sources to explore the sources and the magnitude of them. We first summarize the principal characteristic for 17 global GHG inventories by four indexes. And then to assess the sources and magnitude of uncertainty for these inventories, the discrepancies are quantified on energy statistics data and estimation results of carbon dioxide (CO2) emission on anthropogenic sources at the global total and national scale. Finally, we determine the nations with larger magnitude (extent and proportion) of uncertainty by two indicators which will be helpful for the policy-making on GHG emissions mitigation. As the analysis result, we find that uncertainty of oil consumption data is the largest among major fuels in 2013 as much as 44.6 exajoules (EJ) and the magnitude of uncertainty in CO2 emissions data is significant at global perspective as much as 4.0 petagrams (Pg) CO2 yr-1. At national perspective, as the largest emitter nation in 2013 China, uncertainty from the coal consumption data of which is the largest in major fuels as much as 15.5 EJ and the magnitude of uncertainty for CO2 emissions of China in 2013 is as much as 1.5 Pg CO2 yr-1.