Using remote sensing information to enhance the understanding of the coupling of terrestrial ecosystem evapotranspiration and photosynthesis on a global scale
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Vincenzo Magliulo | Shanshan Yang | Jiahua Zhang | Sha Zhang | Yun Bai | Jingwen Wang | Luca Vitale | Yanchuang Zhao | Sha Zhang | Yun Bai | Jiahua Zhang | V. Magliulo | L. Vitale | Yanchuang Zhao | Shanshan Yang | Jingwen Wang
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