欧盟气候变化:聚类与回归分析

IF 0.8 Q4 MANAGEMENT
Krstić Miloš
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引用次数: 0

摘要

气候变化通常被视为当今世界发展中面临的最全球性和最复杂的问题。有害气体的排放、气温上升、降水量变化、极端天气条件的发生影响到所有国家,无论其地理位置和发展水平如何。本文的主题和目标是研究经济、技术和人口因素对2011年至2020年期间18个欧盟国家二氧化碳排放的影响。在研究中使用了k-均值聚类和面板回归分析。采用k-means聚类方法,将18个欧盟国家按人均温室气体(CO2、CH4、HFC、PFC、SF6)排放水平划分为2类。在“绿色集群”中,有以下国家:捷克共和国、德国、奥地利、波兰、比利时、爱尔兰和荷兰。“红色集群”包括其他被分析的欧盟国家。“绿色集群”面板回归模型的结果显示,CO2排放量受到能源效率和固体化石燃料发电的显著正影响。另一方面,“红色集群”的分析结果表明,研发成本是二氧化碳排放最重要的预测因子。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Climate change in the EU: Analysis by clustering and regression
Climate change is often seen as the most global and complex problem the world has been facing during its current development. The emissions of harmful gases, rising temperatures, variable amounts of precipitation, the occurrence of extreme weather conditions affect all countries regardless of their geographical position and level of development. The subject and goal of this paper is to examine the impact of economic, technological and demographic determinants on CO2 emissions in 18 EU countries in the period from 2011 to 2020. In the research are used k-means clustering and panel regression analysis. By the application of k-means clustering, 18 EU countries were grouped into 2 clusters according to the level of emissions of selected greenhouse gases (CO2 , CH4 , HFC, PFC, SF6 ) per capita. In the "green cluster", there are the following countries: Czech Republic, Germany, Austria, Poland, Belgium, Ireland, and Netherlands. The "red cluster" includes the other analyzed EU countries. The results of the panel regression model in the "green cluster" showed that CO2 emissions are statistically significantly and positively influenced by Energy efficiency and Production of electricity by solid fossil fuels. On the other hand, the results of the analysis in the "red cluster" suggested that Research and developments costs turn out to be the most important predictor of CO2 emissions.
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来源期刊
CiteScore
1.40
自引率
14.30%
发文量
18
审稿时长
12 weeks
期刊介绍: Technical Faculty in Bor, University of Belgrade has started publishing the journal called Serbian Journal of Management during the year 2006. This journal is an international medium for the publication of work on the theory and practice of management science.
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