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Interaction determinants and projections of China's energy consumption: 1997-2030

机译:中国能源消耗的互动决定因素:1997-2030

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This study aims to provide a framework quantifying the interactions between drivers in determining energy consumption (EC) under different decomposition approaches and reduce the uncertainty of EC projection. Based on a new generalized complete decomposition framework, we propose a bootstrap two-step decomposition approach by combining logarithmic mean Divisia index with production-theoretical decomposition analysis and bootstrap technique rectifying the efficiency bias, further decomposing the drivers of EC, energy intensity (EI) and economic scale (SC), into twelve interaction determinants. We compare the projection results of EC to 2030 using the time-series models and scenario analysis with Monte Carlo simulation and fully considering the impacts of the COVID-19 pandemic on the economy. We examine the determinants of changes in EC for 30 Chinese provinces over 1997-2017. We show that the impact of potential economic development (PEDE) on SC and the impact of potential energy intensity (PEIE) on EI are main drivers contributing to the increase in energy consumption, while the impact of PEDE on EI, the impact of PEIE on SC and the impact of economic development technological change on SC are the major negative factors for most provinces over the period. We also confirm that scenario model may be more suitable for EC projection than that of time-series models especially in the case of social emergency such as the pandemic. We suggest the stockholders could establish an improved energy efficiency accounting system for monitoring and tracking energy performance based on the linked drivers.
机译:本研究旨在提供一种框架,该框架量化了在不同分解方法下确定能量消耗(EC)的驱动器之间的相互作用,并降低EC投影的不确定性。基于新的广义完全分解框架,我们通过将对数平均分解指数与生产 - 理论分解分析和纠正效率偏置的启动技术相结合,进一步分解EC,能源强度(EI)的驱动器,提出了对数均值的分解方法的启动两步分解方法和经济规模(SC),进入12个相互作用的决定因素。使用时间序列模型和情景分析与Monte Carlo模拟的时间序列模型和情景分析进行了比较EC至2030的投影结果,并充分考虑了Covid-19流行对经济的影响。我们研究了1997 - 2017年中国30个中国省欧共体变化的决定因素。我们表明潜在经济发展(PECE)对SC的影响以及潜在能源强度(PEIE)对EI的影响是有助于能耗增加的主要司机,而PEIE对ei的影响,佩迪的影响SC和经济发展技术变化对SC的影响是大多数省份的主要负面因素。我们还确认方案模型可能更适合于EC投影,而不是时间序列模型,特别是在诸如大流行的社会紧急情况下。我们建议股东可以建立一个改进的能效会计系统,以根据联系的司机监测和跟踪能源绩效。

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