Abstract
Though construction sector development and economic openness contribute to regional economic development, they have also been debated to pose some environmental challenges. Along these lines, we explored the long- and short-term connections of intensive energy consumption, economic openness, and construction sector development with the chemical oxygen demand throughout the scales of regional development of China’s 30 provincial units over the 2004–2021 period. Theoretically, we contribute to the existing knowledge by incorporating chemical oxygen demand pollution, construction sector development, and economic openness to the Kaya identity’s baseline framework. Empirically, we apply a series of advanced methods of panel data econometrics for robust results. Our key findings are as follows: First, we revealed a long-term stable cointegrating association among our variables of interest. Second, using the common correlated effect mean group estimator, we unfolded that the intensive energy consumption showed a chemical oxygen demand pollution reduction influence in both the long and short term, demonstrating the most substantial influence in the high regional development panel while expressing the least powerful influence the least regional development setting. Third, we unveiled that economic openness and construction sector development showed a linear chemical oxygen demand pollution enhancement influence in moderately and least developed regions. Nevertheless, both established an inverted U-shaped linkage with chemical oxygen demand pollution for the whole country as well as for high regional development data samples. Eventually, we found consistent estimates across long- and short-term investigations regarding signs of relationships; however, long-term effects remained more powerful than short-term ones. These findings would serve as factual scientific knowledge to help local as well as national governments create the optimal environmental regulations for the construction sector to achieve the sustainable development goals (SDGs), especially the Climate Action Plan (i.e., SDG-13).
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This achievement is partially funded by the Zhejiang soft science research base “digital economy and open economy integration innovation research base.”
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Desire Wade Atchike: conceptualization, writing—original draft, variable construction, formal analysis. Weishang Guo: conceptualization, writing—original draft, variable construction, formal analysis. Zhi Yang: writing reviewing and editing, formal analysis. Munir Ahmad: writing—original draft, variable construction, formal analysis.
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Atchike, D.W., Guo, W., Yang, Z. et al. Empirical linkages of the construction sector, intensive energy consumption, and economic openness with chemical oxygen demand pollution. Environ Sci Pollut Res 30, 105149–105165 (2023). https://doi.org/10.1007/s11356-023-29487-5
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DOI: https://doi.org/10.1007/s11356-023-29487-5