Abstract

This research mainly studies the factors influencing the efficiency of energy utilization. Firstly, by calculating Moran’sI and local indicators of spatial association (LISA) of energy efficiency of regions in mainland China, we found that energy efficiency shows obvious spatial autocorrelation and spatial clustering phenomena. Secondly, we established the spatial quantile autoregression (SQAR) model, in which the energy efficiency is the response variable with seven influence factors. The seven factors include industrial structure, resource endowment, level of economic development etc. Based on the provincial panel data (1998–2016) of mainland China (data source: China Statistical Yearbook, Statistical Yearbook of provinces), the findings indicate that level of economic development and industrial structure have a significant role in promoting energy efficient. Resource endowment, government intervention and energy efficiency show a negative correlation. However, the negative effect of government intervention is weakened with the increase of energy efficiency. Lastly, we compare the results of SQAR with that of ordinary spatial autoregression (SAR). The empirical result shows that the SQAR model is superior to SAR model in influencing factors analysis of energy efficiency.

Highlights

  • The seven factors include industrial structure, resource endowment, level of economic development etc

  • We introduce the measurement of energy efficiency, Moran’s I and local indicators of spatial association (LISA) which are employed to test the spatial autocorrelation of energy efficiency

  • The level of economic development and industrial structure have a significant role in promoting energy efficiency

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Summary

Introduction

The seven factors include industrial structure, resource endowment, level of economic development etc. Statistical Yearbook of provinces), the findings indicate that level of economic development and industrial structure have a significant role in promoting energy efficient. Government intervention and energy efficiency show a negative correlation. The negative effect of government intervention is weakened with the increase of energy efficiency. The empirical result shows that the SQAR model is superior to SAR model in influencing factors analysis of energy efficiency. The reasonable calculation method of energy utilization efficiency and quantitative analysis of influence factors are necessary and important for policymakers. Shen and Liu [7] used the data envelopment analysis (DEA) model to measure the energy efficiency values of 30 provinces in China from 1992 to. Publisher’s Note: MDPI stays neutral with regard to jurisdictional claims in published maps and institutional affiliations

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