利用众包数据估算全球城市的碳足迹

IF 13 Q1 ENERGY & FUELS Advances in Applied Energy Pub Date : 2022-12-01 DOI:10.1016/j.adapen.2022.100111
Xinlu Sun , Zhifu Mi , Andrew Sudmant , D'Maris Coffman , Pu Yang , Richard Wood
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引用次数: 12

摘要

城市处于对抗气候变化的最前线。然而,城市间的比较和责任分配受到阻碍,因为计算全球城市碳足迹的成本和时间效益的方法尚未开发出来。本文建立了自上而下的投入产出分析与自下而上的众包数据相结合的全球城市碳足迹估算方法。利用城市购买力作为碳足迹的主要预测指标,我们估计了2020年全球465个城市的碳足迹。这些城市占全球人口的10%,但占全球碳排放量的18%,显示出碳排放的显著集中。运用基尼系数表明全球碳不平等小于收入不平等。此外,高消费生活方式带来的碳排放增加抵消了紧凑城市设计和大型城市规模可能带来的效率提高所带来的碳减排。通过在少数全球城市实现低碳转型,可以获得巨大的气候效益,强调需要全球重要城市中心发挥领导作用。
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Using crowdsourced data to estimate the carbon footprints of global cities

Cities are at the forefront of the battle against climate change. However, intercity comparisons and responsibility allocations among cities are hindered because cost- and time-effective methods to calculate the carbon footprints of global cities have yet to be developed. Here, we establish a hybrid method integrating top-down input–output analysis and bottom-up crowdsourced data to estimate the carbon footprints of global cities. Using city purchasing power as the main predictor of the carbon footprint, we estimate the carbon footprints of 465 global cities in 2020. Those cities comprise 10% of the global population but account for 18% of the global carbon emissions showing a significant concentration of carbon emissions. The Gini coefficients are applied to show that global carbon inequality is less than income inequality. In addition, the increased carbon emissions that come from high consumption lifestyles offset the carbon reduction by efficiency gains that could result from compact city design and large city scale. Large climate benefits could be obtained by achieving a low-carbon transition in a small number of global cities, emphasizing the need for leadership from globally important urban centres.

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来源期刊
Advances in Applied Energy
Advances in Applied Energy Energy-General Energy
CiteScore
23.90
自引率
0.00%
发文量
36
审稿时长
21 days
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