三江源植被净初级生产力估算研究进展(英文)

The Three-River Headwater Region(TRHR), known as the 'Water Tower of China', is an important ecological shelter for national security interests and regional sustainable development activities for many downstream regions in China and a number of Southeast Asian countries. The TRHR i...

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Published in地理学报:英文版 no. 2; pp. 161 - 182
Main Author 孙庆龄 李宝林 周成虎 李飞 张志军 丁玲玲 张涛 许丽丽
Format Journal Article
LanguageEnglish
Published 2017
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Summary:The Three-River Headwater Region(TRHR), known as the 'Water Tower of China', is an important ecological shelter for national security interests and regional sustainable development activities for many downstream regions in China and a number of Southeast Asian countries. The TRHR is a high-elevation, cold environment with a unique, but typical alpine vegetation system. Net primary productivity(NPP) is a key vegetation parameter and ecological indicator that can reflect both natural environmental changes and carbon budget levels. Given the unique geographical environment and strategic location of the TRHR, many scholars have estimated NPP of the TRHR by using different methods; however, these estimates vary greatly for a number of reasons. To date, there is no paper that has reviewed and assessed NPP estimation studies conducted in the TRHR. Therefore, in this paper, we(1) summarized the related methods and results of NPP estimation in the TRHR in a systematic review of previous research;(2) discussed the suitability of existing methods for estimating NPP in the TRHR and highlighted the most significant challenges; and(3) assessed the estimated NPP results. Finally, developmental directions of NPP estimation in the TRHR were prospected.
Bibliography:SUN Qingling;LI Baolin;ZHOU Chenghu;LI Fei;ZHANG Zhijun;DING Lingling;ZHANG Tao;XU Lili;State Key Laboratory of Resources and Environmental Information System, Institute of Geographic Sciences and Natural Resources Research, CAS;University of Chinese Academy of Sciences;Jiangsu Center for Collaborative Innovation in Geographical Information Resource Development and Application;Remote Sensing Monitoring Center of Qinghai Ecology and Environment
11-4546/P
ISSN:1009-637X
1861-9568