Modeling carbon dioxide emissions reduction

IF 4.7 3区 工程技术 Q2 ENERGY & FUELS
Andriy Matviychuk , Olena Zhytkevych , Natalia Osadcha
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引用次数: 0

Abstract

The paper proposes a new scientific approach to modeling carbon dioxide (CO2) emissions in individual countries, based on the tools of Kohonen self-organizing maps and the provisions of economic theory. This work is based on conducted a comprehensive analysis of wide set of indicators influencing carbon dioxide emissions and decarbonization processes in 40 selected countries for 10 years time span from 2013 till 2022. During clustering these nations using self-organizing maps, 14 key indicators were chosen that cover economic and demographic growth, energy consumption, CO2 emission data, and includes trade of energy recourses for wider analysis and identification of countries with similar decarbonization potential, economic development and trade energy recourses possibilities. This approach exposed distinct clusters of nations with varying decarbonization capabilities and tracked the progress of analyzed countries in terms of CO2 emission changes in dynamic.

The analysis of clustering was focused on identification leaders and followers in decarbonization activities. The leaders cluster includes Sweden, Norway, New Zealand and other countries exhibited leadership in developing a climate-resilient economy among 40 countries. Hence, all countries positioned closer to the leader cluster on the map demonstrated higher efficiency in their decarbonization pathways. Consequently, these properties of Kohonen maps provide a foundation for formulating general recommendations to achieve an efficient and effective low-carbon economy for followers including Ukraine, Kazakhstan and other energy intensive countries.

Distinct countries decarbonization profiles resulting from clustering were used to develop practical recommendations towards estimating and establishing targeted CO2 emission levels for analyzed countries, conducting continued promoting renewable energy utilization, enhancing cross-border energy trade, diversifying energy portfolios, etc. Also, the proposed methodology can be utilized to project future emissions trends for each country based on cluster-specific models and facilitate policy decisions making process related to mitigating carbon emissions.

二氧化碳减排模型
本文基于 Kohonen 自组织图工具和经济理论的规定,提出了一种新的科学方法来模拟各个国家的二氧化碳(CO2)排放量。这项工作的基础是对 40 个选定国家从 2013 年到 2022 年的 10 年间影响二氧化碳排放和去碳化进程的一系列指标进行综合分析。在使用自组织地图对这些国家进行聚类时,选择了 14 个关键指标,涵盖经济和人口增长、能源消耗、二氧化碳排放数据,还包括能源资源贸易,以便进行更广泛的分析,并识别具有类似脱碳潜力、经济发展和能源资源贸易可能性的国家。这种方法揭示了具有不同去碳化能力的国家集群,并从二氧化碳排放变化的角度动态跟踪分析国家的进展情况。领导者集群包括瑞典、挪威、新西兰和其他在 40 个国家中发展气候适应性经济方面表现领先的国家。因此,在地图上靠近领导者集群的所有国家在其去碳化道路上都表现出更高的效率。因此,科霍宁地图的这些特性为制定一般性建议奠定了基础,以便为包括乌克兰、哈萨克斯坦和其他能源密集型国家在内的追随者实现高效和有效的低碳经济。通过聚类得出的不同国家去碳化概况被用于制定实用建议,以估算和确定分析国家的目标二氧化碳排放水平,继续促进可再生能源利用,加强跨境能源贸易,实现能源组合多样化等。此外,还可利用所提出的方法,根据特定集群模型预测每个国家的未来排放趋势,并促进与减少碳排放有关的政策决策过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Energy Reports
Energy Reports Energy-General Energy
CiteScore
8.20
自引率
13.50%
发文量
2608
审稿时长
38 days
期刊介绍: Energy Reports is a new online multidisciplinary open access journal which focuses on publishing new research in the area of Energy with a rapid review and publication time. Energy Reports will be open to direct submissions and also to submissions from other Elsevier Energy journals, whose Editors have determined that Energy Reports would be a better fit.
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