Knowledge Agora



Similar Articles

Title Analysis of the Spatiotemporal Convergence Effect and Influencing Factors of Industrial Green Technology Innovation Efficiency in the Yangtze River Economic Belt in China
ID_Doc 30789
Authors Yao, MC; Zhang, RJ; Dong, HZ
Title Analysis of the Spatiotemporal Convergence Effect and Influencing Factors of Industrial Green Technology Innovation Efficiency in the Yangtze River Economic Belt in China
Year 2024
Published
Abstract This study aims to explore the spatiotemporal convergence effects of industrial green technological innovation efficiency and its influencing factors to facilitate the transformation of the Yangtze River Economic Belt from a traditional high-pollution, high-emission, and high-energy-consumption industrial model to a green, efficient, and sustainable economic development model. By applying the Super-SBM model, the absolute beta convergence model, the conditional beta convergence model, and the spatial dynamic Durbin model, this study reveals the dynamic changes in industrial green technological innovation efficiency and its influencing factors in the Yangtze River Economic Belt. The research findings are as follows: (1) Regions with lower industrial green technological innovation efficiency can rapidly improve by learning from more efficient regions, demonstrating a significant "catch-up" effect. The upstream and downstream areas exhibit specific spatial dependencies, while the midstream area does not pass the significance level test. (2) The conditional convergence rate is significantly higher than the absolute convergence rate, indicating the presence of spatial conditional convergence in industrial green technological innovation efficiency among different regions. (3) This study further analyzes the impact mechanisms of six factors-enterprise size, industry-university-research cooperation, enterprise R&D level, environmental regulation, energy consumption structure, and foreign direct investment-on industrial green technological innovation efficiency. The results show that these factors have significant differences in their effects. Finally, this study proposes strategies to optimize green technological innovation efficiency, aiming to provide a reference for the Yangtze River Economic Belt and other regions worldwide to achieve high-quality development with green and low-carbon growth.
PDF

Similar Articles

ID Score Article
30546 Yao, MC; Duan, JJ; Wang, QS Spatial and Temporal Evolution Analysis of Industrial Green Technology Innovation Efficiency in the Yangtze River Economic Belt(2022)International Journal Of Environmental Research And Public Health, 19, 11
30669 Yao, MC; Li, ZQ; Wang, YF Features of Industrial Green Technology Innovation in the Yangtze River Economic Belt of China Based on Spatial Correlation Network(2023)Sustainability, 15, 7
35723 Long, RY; Guo, HY; Zheng, DT; Chang, RH; Na, SY RETRACTED: Research on the Measurement, Evolution, and Driving Factors of Green Innovation Efficiency in Yangtze River Economic Belt: A Super-SBM and Spatial Durbin Model (Retracted Article)(2020)
35817 Cai, SK; Hu, BX; Guo, M Research on spatial-temporal heterogeneity of driving factors of green innovation efficiency in Yangtze River Delta urban agglomeration-empirical test based on the Geographically Weighted Regression model(2024)
35741 Zheng, H; Wu, SF; Zhang, Y; He, Y Environmental regulation effect on green total factor productivity in the Yangtze River Economic Belt(2023)
35578 Wu, F; Fu, XP; Zhang, T; Wu, D; Sindakis, S Examining Whether Government Environmental Regulation Promotes Green Innovation Efficiency-Evidence from China's Yangtze River Economic Belt(2022)Sustainability, 14, 3
31984 Guo, HX; Zeng, G An Empirical Study on the Spatial Effect of Cultural Industry Innovation Efficiency(2024)Polish Journal Of Environmental Studies, 33, 3
30235 He, YZ; Wang, Y; Quan, CG Coupled Coordination and Drivers of Green Technology Innovation and Carbon Emission Efficiency(2024)Sustainability, 16, 7
35455 Liu, PZ; Zhang, LY; Tarbert, H; Yan, ZY Analysis on Spatio-Temporal Characteristics and Influencing Factors of Industrial Green Innovation Efficiency-From the Perspective of Innovation Value Chain(2022)Sustainability, 14, 1
30720 Zhang, LY; Ma, X; Ock, YS; Qing, L Research on Regional Differences and Influencing Factors of Chinese Industrial Green Technology Innovation Efficiency Based on Dagum Gini Coefficient Decomposition(2022)Land, 11, 1
Scroll