Detection and attribution of vegetation greening trend in China over the last 30 years

绿化 中国 植被(病理学) 归属 环境科学 自然地理学 地理 生态学 心理学 医学 社会心理学 生物 病理 考古
作者
Shilong Piao,Guodong Yin,Jianguang Tan,Lei Cheng,Mengtian Huang,Yue Li,Ronggao Liu,Jiafu Mao,Ranga B. Myneni,Shushi Peng,Benjamin Poulter,Xiaoying Shi,Zhiqiang Xiao,Ning Zeng,Zhenzhong Zeng,Ying‐Ping Wang
出处
期刊:Global Change Biology [Wiley]
卷期号:21 (4): 1601-1609 被引量:834
标识
DOI:10.1111/gcb.12795
摘要

The reliable detection and attribution of changes in vegetation growth is a prerequisite for the development of strategies for the sustainable management of ecosystems. This is an extraordinary challenge. To our knowledge, this study is the first to comprehensively detect and attribute a greening trend in China over the last three decades. We use three different satellite-derived Leaf Area Index (LAI) datasets for detection as well as five different process-based ecosystem models for attribution. Rising atmospheric CO2 concentration and nitrogen deposition are identified as the most likely causes of the greening trend in China, explaining 85% and 41% of the average growing-season LAI trend (LAIGS) estimated by satellite datasets (average trend of 0.0070 yr(-1), ranging from 0.0035 yr(-1) to 0.0127 yr(-1)), respectively. The contribution of nitrogen deposition is more clearly seen in southern China than in the north of the country. Models disagree about the contribution of climate change alone to the trend in LAIGS at the country scale (one model shows a significant increasing trend, whereas two others show significant decreasing trends). However, the models generally agree on the negative impacts of climate change in north China and Inner Mongolia and the positive impact in the Qinghai-Xizang plateau. Provincial forest area change tends to be significantly correlated with the trend of LAIGS (P < 0.05), and marginally significantly (P = 0.07) correlated with the residual of LAIGS trend, calculated as the trend observed by satellite minus that estimated by models through considering the effects of climate change, rising CO2 concentration and nitrogen deposition, across different provinces. This result highlights the important role of China's afforestation program in explaining the spatial patterns of trend in vegetation growth.
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