Research on the Influencing Factors of Carbon Emissions in Low-carbon Communities based on Complex Network Theory

Authors

  • Yang Li
  • Weifeng Xu
  • Weiwei Zhang
  • Xiangyu Zhang

DOI:

https://doi.org/10.54097/a0y5ye83

Keywords:

Low-carbon Community; Carbon Emissions; Influencing Factors; Complex Network Theory.

Abstract

Achieving carbon peak before 2030 and carbon neutrality before 2060 is a solemn commitment made by China to address global climate change, and is also one of the main goals for economic and social development in the 14th Five Year Plan and the 2035 vision period. The changes in carbon emissions are directly related to the progress of China's "carbon peak" and "carbon neutrality" goals. Therefore, in-depth research on the influencing factors of carbon emissions has become a key link in promoting the achievement of this goal. In the existing research on carbon emission influencing factors, countries mainly focus on macro scale low-carbon urban carbon emission influencing factors and micro scale low-carbon building full life cycle carbon emission influencing factors. However, there is relatively little research on the influencing factors of carbon emissions in low-carbon communities of urban micro units, and there is still considerable research space. This study conducted an in-depth analysis of the influencing factors of carbon emissions in low-carbon communities using complex network methods. By constructing a complex network model of factors affecting carbon emissions, we identified key nodes and pathways, and explored their interrelationships. The results indicate that factors such as energy structure, resident behavior, building design, and policy implementation play an important role in carbon emissions in low-carbon communities.

Downloads

Download data is not yet available.

References

[1] Rui Qi. Factors affecting carbon emissions and scenario projections in China[J]. Science and Technology Economic Market, 2023(12):46-49.

[2] FU Jingyuan, WANG Cangping, JIN Yaya, et al. Analysis of factors affecting carbon emissions in Gansu Province[J]. China Resources Comprehensive Utilization,2023,41(12):235-238.

[3] ZHANG Yan, LUO Maohui. Analysis of factors affecting energy consumption and carbon emission of traditional residential heating in Ganzi[J]. Energy and Energy Conservation, 2023, (12): 5-9+52.

[4] Yang Haiyun. Analysis of carbon emission status and influencing factors of energy consumption in Beijing[J]. Shanxi Chemical Industry,2023,43(08):248-250.

[5] WANG Mingyue, LIU Yu, LI Mengming, LIU Yawen, SHI Wenqiang. Construction and application of synergy evaluation model for regional carbon emission reduction capacity[J]. System Engineering Theory and Practice,2020,40(02):470-483.

[6] YUAN Wei, HUANG Shan, YONG Xiuzhen. Research on Risk Analysis and Control of Estimate Management Based on Complex Network Theory[J]. Journal of Engineering Management, 2023,37(06):98-102.

[7] ZHOU Mingyue, QIN Xuyang, ZHANG Jianrong, ZHANG Wei. Research on the causes of construction safety accidents based on complex network model[J]. Journal of Engineering Management, 1-5.

[8] CHEN Liang, HE Tao, LI Qiaoru, TIAN Xiaoyong, WEI Wei. Measurement of regional transportation carbon emission related indicators and analysis of influencing factors[J]. Journal of Beijing Institute of Technology,2017,43(04):631-637.

[9] Sun Qizhen. Research on community household carbon emissions in low-carbon community planning[D]. Tianjin University, 2019.

[10] SUN Baodi, ZHONG Chenghao, YU Dehu, HAN Qing. Progress of research on green and low-carbon transformation of old communities, transformation challenges and path thinking[J]. Urban Development Research,2023,30(06):12-17.

[11] Cao Jiebo. Study on the construction of low carbon indicators for renewal and transformation of old neighborhoods in Xi'an central city [D]. Xi'an University of Architecture and Technology, 2023.

Downloads

Published

14-09-2024

Issue

Section

Articles

How to Cite

Li, Y., Xu, W., Zhang, W., & Zhang, X. (2024). Research on the Influencing Factors of Carbon Emissions in Low-carbon Communities based on Complex Network Theory. Academic Journal of Science and Technology, 12(2), 209-213. https://doi.org/10.54097/a0y5ye83