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Underestimated ecosystem carbon turnover time and sequestration under the steady state assumption: A perspective from long-term data assimilation 期刊论文
GLOBAL CHANGE BIOLOGY, 2019, 25 (3) : 938-953
作者:  Ge, Rong;  He, Honglin;  Ren, Xiaoli;  Zhang, Li;  Yu, Guirui;  Smallman, T. Luke;  Zhou, Tao;  Yu, Shi-Yong;  Luo, Yiqi;  Xie, Zongqiang;  Wang, Silong;  Wang, Huimin;  Zhou, Guoyi;  Zhang, Qibin;  Wang, Anzhi;  Fan, Zexin;  Zhang, Yiping;  Shen, Weijun;  Yin, Huajun;  Lin, Luxiang
收藏  |  浏览/下载:13/0  |  提交时间:2019/04/09
carbon sequestration  climate sensitivity  non-steady state  steady state  turnover time  
Legacies of La Nina: North American monsoon can rescue trees from winter drought 期刊论文
GLOBAL CHANGE BIOLOGY, 2019, 25 (1) : 121-133
作者:  Peltier, Drew M. P.;  Ogle, Kiona
收藏  |  浏览/下载:51/0  |  提交时间:2019/04/09
antecedent climate  climatic memory  drought legacies  NAM  NSC  recovery  resilience  SAM  
Disentangling seasonal and interannual legacies from inferred patterns of forest water and carbon cycling using tree-ring stable isotopes 期刊论文
GLOBAL CHANGE BIOLOGY, 2018, 24 (11) : 5332-5347
作者:  Szejner, Paul;  Wright, William E.;  Belmecheri, Soumaya;  Meko, David;  Leavitt, Steven W.;  Ehleringer, James R.;  Monson, Russell K.
收藏  |  浏览/下载:12/0  |  提交时间:2019/04/09
cross-correlation  drought  high-resolution  North American Monsoon  paleoclimatology  precipitation  stable isotopes  vapor pressure deficit  
Spatiotemporal pattern of gross primary productivity and its covariation with climate in China over the last thirty years 期刊论文
GLOBAL CHANGE BIOLOGY, 2018, 24 (1) : 184-196
作者:  Yao, Yitong;  Wang, Xuhui;  Li, Yue;  Wang, Tao;  Shen, Miaogen;  Du, Mingyuan;  He, Honglin;  Li, Yingnian;  Luo, Weijun;  Ma, Mingguo;  Ma, Yaoming;  Tang, Yanhong;  Wang, Huimin;  Zhang, Xianzhou;  Zhang, Yiping;  Zhao, Liang;  Zhou, Guangsheng;  Piao, Shilong
收藏  |  浏览/下载:6/0  |  提交时间:2019/04/09
China  climate change  eddy covariance  gross primary productivity  interannual variability  model tree ensemble