4.7 Article

Decomposition of intensity of energy-related CO2 emission in Chinese provinces using the LMDI method

Journal

ENERGY POLICY
Volume 92, Issue -, Pages 369-381

Publisher

ELSEVIER SCI LTD
DOI: 10.1016/j.enpol.2016.02.026

Keywords

Intensity of energy-related CO2 emission; Energy consumption intensity; Carbon density; Chinese provinces

Funding

  1. National Natural Science Foundation Project of China (The Natural Science Fund) [71363011]
  2. National Social Science Foundation Project of China (The Social Science Fund) [13AZD014]

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Uncovering the driving factors of CO2 emission intensity declining is important for China. This paper improves the logarithmic mean Divisia index technique, which includes energy density and energy consumption intensity, to explore the driving factors of carbon emission intensity (CI) in 29 Chinese provinces from 1995-2012. The main results are: (1) energy consumption intensity plays a more important role than carbon emission density (CD) for a rapid decrease in CI during the research period, so a much room is left for a significant CD reduction through carbon emission reduction technology, energy structural reduction, and energy consumption proportional reduction. (2) The decrease in energy consumption technology and energy structure in secondary industries contributes the most reduction in energy consumption intensity. (3)The energy consumption proportions of secondary and tertiary industries are the two most important drivers to decrease CD. (4) During the research period, the energy consumption proportions of secondary industries result in the most decrease in CD, whereas the energy consumption proportions of tertiary industries cause the most increase in CD. (C) 2016 Elsevier Ltd. All rights reserved.

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