The influence patterns of carbon flux in different climatic zones in China —Based on the complex network approach

Research on ecosystem carbon flux can provide important methodological and strategic support for climate change mitigation. The existing studies focus on the calculation of carbon flux, ignoring the intertwined effects between regions. The quantification and analysis of the interaction patterns of c...

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Veröffentlicht in:Europhysics letters 2024-05, Vol.146 (3), p.31002
Hauptverfasser: Qing, Ting, Wang, Fan, Du, Ruijin, Dong, Gaogao, Tian, Lixin
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container_issue 3
container_start_page 31002
container_title Europhysics letters
container_volume 146
creator Qing, Ting
Wang, Fan
Du, Ruijin
Dong, Gaogao
Tian, Lixin
description Research on ecosystem carbon flux can provide important methodological and strategic support for climate change mitigation. The existing studies focus on the calculation of carbon flux, ignoring the intertwined effects between regions. The quantification and analysis of the interaction patterns of carbon flux is crucial for understanding the global carbon cycle process, forecasting and coping with climate change. In this study, carbon flux network model sequences are established based on complex network theory using carbon flux data spanning from December 1, 2005, to November 30, 2020. The time delay effect is introduced to accurately quantify the influence patterns of carbon flux within climate zones across China. The findings indicate that the probability distribution function of the link weights during the various seasons of each year exhibits a bimodal distribution with distinct positive and negative components. The delay probability distribution function reveals the significant impact of delay effects, which are especially pronounced and mostly significant long-term lag effects in nodes with negative weights. Further, the results of the interactions of carbon flux among climate zones demonstrate that changes in carbon flux in the plateau and southern temperate regions have either positive or negative impacts on other climate zones. Therefore, controlling carbon flux changes in these climatic zones can effectively optimize the distribution of carbon flux. The modeling framework and results presented in this paper provide useful insights for the regulation and distribution optimization of carbon flux in China.
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subjects Carbon
Carbon cycle
Climate change
Distribution functions
Probability distribution
Probability distribution functions
Sequences
Time lag
title The influence patterns of carbon flux in different climatic zones in China —Based on the complex network approach
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