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Unraveling carbon stock dynamics and their determinants in China's Loess Plateau over the past 40 years

中国 库存(枪支) 土地利用 林地 生态系统 土地覆盖 环境科学 草原 碳循环 自然地理学 地理 生态学 生物 考古
作者
Xin Chen,Le Yu,Shuai Hou,Tao Liu,Xiyu Li,Yaoyao Li,Zhenrong Du,Chengxiu Li,Hui Wu,Guangyao Gao,Yunqiang Wang,Dailiang Peng
出处
期刊:Ecological Indicators [Elsevier BV]
卷期号:159: 111760-111760 被引量:10
标识
DOI:10.1016/j.ecolind.2024.111760
摘要

Synergies and trade-offs among land use and land covers (LULCs) pose considerable uncertainties in achieving the dual carbon goals for China's Loess Plateau (CLP). In this context, we unraveled the carbon stock dynamics induced by land use and land cover change (LUCC) in the CLP over the past 40 years using the satellite-derived annual LULC maps and the InVEST model. Then, mixed measures were employed to quantify the global and local responses of the carbon stock dynamics to both natural and anthropogenic factors. We found that approximately a total of 5.58 × 109 Mg of carbon was stored in the CLP's ecosystems in 2019. Chronologically, the total carbon stock showed a slight decrease in the CLP from 1980 to 2019 due to the extensive LUCCs linked to socioeconomic activities. Specifically, the total carbon density loss rate accelerated in urban–rural-wild continuum (RUWC) types with higher human activity intensity, such as villages and urban, while it decelerated in woodlands, and croplands, where the human activity intensity is lower. Moreover, the total carbon density gain rate in wildlands was accelerating. Finally, we revealed that the carbon stock dynamics in the CLP over the past 40 years were primarily influenced by socioeconomic variables and have responded diversely to the drivers in space.

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