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首页> 外文期刊>Polish Journal of Environmental Studies >Factor lecomposition Analysis of China's Energy-Related CO2 Emissions Using Extended STIRPAT Model
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Factor lecomposition Analysis of China's Energy-Related CO2 Emissions Using Extended STIRPAT Model

机译:基于扩展STIRPAT模型的中国能源相关CO2排放量的因子分解分析

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For the purpose of diminishing the growing impact of energy use on the environment and providing policy focus in China, this study decomposes impact factors of energy-related CO2 emissions into nine parts using various economic methods, typically using the extended stochastic impacts by regression on population, affluence, and technology (STIRPAT) model to incorporate necessary factors and ridge regression to eliminate multicollinearity. Results indicate the positive and conversely inhibitory impact factors, which we sort by influencing degrees as: total population, industrialization level, service level, energy consumption structure, urbanization level, GDP per capita, capital asserts investment, foreign trade degree, and technology level. Factors excluding technology level and energy consumption structure are main positive determinants of accelerated CO2 emissions. Above all, total population has the greatest interpretative ability. Given these regression results, policy proposals concerning key impact factor regulations are provided to maintain carbon emission abatement and sustainability.
机译:为了减少能源使用对环境的日益增长的影响并在中国提供政策重点,本研究使用各种经济方法将与能源有关的CO2排放的影响因素分解为九个部分,通常使用对人口回归的扩展随机影响,富裕度和技术(STIRPAT)模型来结合必要的因素和岭回归以消除多重共线性。结果表明了正面的和相反的抑制因素,我们按影响程度将其分类为:总人口,工业化水平,服务水平,能源消耗结构,城市化水平,人均GDP,资本投资,对外贸易程度和技术水平。排除技术水平和能耗结构的因素是加速二氧化碳排放的主要积极决定因素。首先,总人口具有最大的解释能力。鉴于这些回归结果,提供了有关关键影响因素法规的政策建议,以维持减少碳排放量和可持续性。

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