Abstract
To resolve conflicts between development and the preservation of the natural environment, enable economic transformation, and achieve the global sustainable development goals (SDGs), green development (GD) is gradually becoming a major strategy in the construction of an ecological civilization and the ideal of building a "beautiful China", alongside the transformation and reconstruction of the global economy. Based on a combination of the concept and implications of GD, we first used the Slacks Based Model with undesirable outputs (SBM-Undesirable), the Theil index, and the spatial Markov chain to measure the spatial patterns, regional differences, and spatio-temporal evolution of urban green development efficiency (UGDE) in China from 2005 to 2015. Second, by coupling natural and human factors, the mechanism influencing UGDE was quantitatively investigated under the framework of the human-environment interaction. The results showed that: (1) from 2005 to 2015, the UGDE increased from 0.475 to 0.523, i.e., an overall increase of 10%. In terms of temporal variation, there was a staged increase, with its evolution having the characteristics of a "W-shaped" pattern. (2) The regional differences in UGDE followed a pattern of eastern > central > western. For different types of urban agglomeration, the UGDE had inverted pyramid cluster growth characteristics that followed a pattern of "national level > regional level > local level", forming a stable hierarchical scale structure of "super cities > mega cities > big cities > medium cities > small cities". (3) UGDE in China has developed with significant spatial agglomeration characteristics. High-efficiency type cities have positive spillover effects, while low-efficiency cities have negative effects. Different types of urban evolution processes have a path dependence, and a spatial club convergence phenomenon exists, in which areas with high UGDE are concentrated and drive low UGDE elsewhere. (4) Under the framework of regional human-environment interaction, the degree of human and social influence on UGDE is greater than that of the natural background. The economic strength, industrial structure, openness, and climate conditions of China have positively promoted UGDE.
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Foundation: National Natural Science Foundation of China, No.41701173, No.41961027; Foundation for the Excellent Youth Scholars of Ministry of Education of China, No. 17YJCZH268
Author: Zhou Liang, PhD and Associate Professor, specialized in urban sustainable development.
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Zhou, L., Zhou, C., Che, L. et al. Spatio-temporal evolution and influencing factors of urban green development efficiency in China. J. Geogr. Sci. 30, 724–742 (2020). https://doi.org/10.1007/s11442-020-1752-5
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DOI: https://doi.org/10.1007/s11442-020-1752-5