Bayesian multimodel estimation of global terrestrial latent heat flux from eddy covariance, meteorological, and satellite observations
Yunjun Yao(Beijing Normal University), Fei Feng(Beijing Normal University), Jie Cheng(Beijing Normal University), Xianglan Li(Beijing Normal University), Bo Jiang(Beijing Normal University), Liang Sun(Institute of Agricultural Resources and Regional Planning), Shaohua Zhao(Ministry of Ecology and Environment), Qiaozhen Mu(University of Montana), Shunlin Liang(Wuhan University), Jiquan Chen(Michigan State University), Kun Jia(South China Agricultural University), Joshua B. Fisher(Jet Propulsion Laboratory), Kaicun Wang(Beijing Normal University), Xiaotong Zhang(Beijing Normal University), Nannan Zhang(Hohai University), Yang Hong(Tsinghua University), Chen Yang(Peking University)
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