Analysis of Factors Affecting Carbon Emissions based on Gray Correlation Analysis
DOI:
https://doi.org/10.54691/41rt3m41Keywords:
Carbon Emissions; K-Means Clustering; Gray Correlation Analysis.Abstract
In order to explore the influencing factors of carbon dioxide emissions, this paper collects data on carbon emissions and several influencing factors that may be related to its changes from 2004 to 2021, considering that too many indicators may make the data redundant and lack of representativeness, using the K-Means clustering algorithm to classify the indicators and defining the names of the corresponding first-level indicators, and analyzing the elbow diagrams for the determination of the model K-value. For the determination of the K value of the model, the optimal number of clusters was analyzed using the elbow diagram, so that the center of each cluster as the first-level indicator data was spliced with the normalized emission data to form a new dataset, and the correlation coefficients between the first-level indicators and the carbon emissions were finally calculated using the grey correlation analysis method. The results show that the ability to mitigate carbon dioxide content has the greatest impact on carbon content, and the correlation coefficient between the two reaches 0.756, which indicates that increasing the green area is very effective in achieving the goal of energy saving and emission reduction.
Downloads
References
ZHANG Chaohui, ZHANG Jingya, YU Shiqi. Carbon peak prediction for provinces along the Silk Road Economic Belt from a multi-scenario perspective[J/OL]. Ecological Economy:1-16.
LU Haiyue, QI Jiaojiao, YE Yanlei et al. Characteristics of spatial and temporal changes in carbon balance at different administrative scales in China[J/OL]. Environmental Science:1-29.
Jiao Liudan, Liu Ying, Wu Ya et al. Carbon emission prediction in transportation industry based on convolutional neural network[J/OL]. Railway Transportation and Economy:1-9Shan et al. (2018) "China CO2 emission accounts 1997-2015. Scientific Data", https://www.nature. com/articles/ sdata2017201.
Shan et al. (2020) "China CO2 emission accounts 2016-2017. Scientific Data", https://www.nature. com/articles/s41597-020-0393-y.
Guan et al. (2021) “Assessment to China's recent emission pattern shifts. Earth's Future”, https://agupubs.onlinelibrary.wiley.com/doi/full/10.1029/2021EF00224.
Xu et al. (2024) "China carbon emission accounts 2020-2021. Applied Energy", https:// www. sciencedirect. com/science/article/pii/S0306261924002204#ac0005.
Wang W. Research on smoke detection algorithm combining Kmeans clustering and multispectral thresholding[J]. Industrial Heating,2022,51(04):45-47+57.
LI Shangge,FENG Xueliang. Research on cost risk management of TBM construction based on entropy right and gray correlation[J/OL]. Water Resources Development Research:1-10[2024-02-25].
Downloads
Published
Issue
Section
License

This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.