Estimation of high-resolution terrestrial evapotranspiration from Landsat data using a simple Taylor skill fusion method
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Jonas Ardö | Xiaotong Zhang | Shunlin Liang | Joshua B. Fisher | Beniamino Gioli | Andrej Varlagin | Kun Jia | Yunjun Yao | Georg Wohlfahrt | Bert Gielen | Jia Xu | Julia Boike | Vincenzo Magliulo | Lilin Zhang | Changliang Shao | Rainer Steinbrecher | Craig Macfarlane | Nina Buchmann | Jason Beringer | Ana López-Ballesteros | Torsten Sachs | Sebastian Wolf | Leonardo Montagnani | Tomomichi Kato | Eddy Moors | Shirley A. Papuga | Yuhu Zhang | Eugénie Paul-Limoges | Lukas Hörtnagl | S. Liang | J. Ardö | J. Fisher | N. Buchmann | Leonardo Montagnani | E. Moors | A. Varlagin | Jiquan Chen | J. Beringer | Tomomichi Kato | V. Magliulo | C. Gruening | Xiaotong Zhang | J. Boike | K. Jia | R. Steinbrecher | B. Gioli | C. Macfarlane | S. Wolf | G. Wohlfahrt | Yunjun Yao | B. Gielen | L. Hörtnagl | S. Papuga | Xianglan Li | E. Paul-Limoges | G. Posse | T. Sachs | D. Billesbach | Yuhu Zhang | C. Emmel | C. Shao | Jiquan Chen | Xianglan Li | Gabriela Posse | Yingnian Li | Xuanyu Wang | Dave Billesbach | Carmen Emmel | Carsten Gruening | Jia Xu | A. López-Ballesteros | Lilin Zhang | Ying-nian Li | Xuanyu Wang | Carmen Emmel
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