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Analyzing Temporal and Spatial Characteristics and Determinant Factors of Energy-Related CO2 Emissions of Shanghai in China Using High-Resolution Gridded Data

机译:利用高分辨率网格数据分析中国上海能源相关二氧化碳排放的时间和空间特征及决定因素

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摘要

In this study, we create a high-resolution (1 km x 1 km) carbon emission spatially gridded dataset in Shanghai for 2010 to 2015 to help researchers understand the spatial pattern of urban CO2 emissions and facilitate exploration of their driving forces. First, we conclude that high spatial agglomeration, CO2 emissions centralized along the river and coastline, and a structure with three circular layers are the three notable temporal−spatial characteristics of Shanghai fossil fuel CO2 emissions. Second, we find that large point sources are the leading factors that shaped the temporal−spatial characteristics of Shanghai CO2 emission distributions. The changes of CO2 emissions in each grid during 2010−2015 indicate that the energy-controlling policies of large point emission sources have had positive effects on CO2 reduction since 2012. The changes suggest that targeted policies can have a disproportionate impact on urban emissions. Third, area sources bring more uncertainties to the forecasting of carbon emissions. We use the Geographical Detector method to identify these leading factors that influence CO2 emissions emitted from area sources. We find that Shanghai’s circular layer structure, population density, and population activity intensity are the leading factors. This result implied that urban planning has a large impact on the distribution of urban CO2 emissions. At last, we find that unbalanced development within the city will lead to different leading impact factors for each circular layer. Factors such as urban development intensity, traffic land, and industrial land have stronger power to determine CO2 emissions in the areas outside the Outer Ring, while factors such as population density and population activity intensity have stronger impacts in the other two inner areas. This research demonstrates the potential utility of high-resolution carbon emission data to advance the integration of urban planning for the reduction of urban CO2 emissions and provide information for policymakers to make targeted policies across different areas within the city.
机译:在这项研究中,我们在上海创建了一份高分辨率(1 km x 1 km)碳排放空间网数据集2010年至2015年,帮助研究人员了解城市二氧化碳排放的空间模式,促进其驱动力的探索。首先,我们得出结论,高空间集聚,二氧化碳排放沿河和海岸线集中,具有三个圆形层的结构是上海化石燃料二氧化碳排放的三个显着的时间空间特征。其次,我们发现大点来源是形成上海二氧化碳排放分布的时间空间特征的主要因素。 2010-2015期间每个网格中的二氧化碳排放的变化表明,自2012年以来,大点排放源的能量控制政策对二氧化碳减少产生了积极影响。该变化表明,目标政策可能对城市排放产生不成比例的影响。第三,地区的来源为碳排放的预测带来了更多的不确定性。我们使用地理探测器方法来确定影响从区域来源排放的二氧化碳排放的这些主要因素。我们发现上海的圆形层结构,人口密度和人口活动强度是主要因素。这一结果暗示城市规划对城市二氧化碳排放的分配有很大影响。最后,我们发现城市内的不平衡发展将导致每个圆形层的不同领先的影响因素。城市发展强度,交通土地和工业用地等因素具有更强的力量来确定外圈以外的区域的二氧化碳排放,而人口密度和人口活性强度等因素在其他两个内部区域的影响力具有更大的影响。该研究表明了高分辨率碳排放数据的潜在效用,以推进城市规划对城市二氧化碳排放减少的整合,并为政策制定者提供信息,以在城市内不同地区进行有针对性的政策。

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