Chinese Journal of Applied Ecology ›› 2020, Vol. 31 ›› Issue (6): 2098-2108.doi: 10.13287/j.1001-9332.202006.012
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FAN Hua-ye, LI Ying, ZHANG Ting-long*, GAO Huan-lin, HU Shuai
Received:
2020-01-08
Online:
2020-06-15
Published:
2020-06-15
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* E-mail: dargon810614@126.com
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FAN Hua-ye, LI Ying, ZHANG Ting-long, GAO Huan-lin, HU Shuai. Research advances in model simulation and data assimilation of water and carbon fluxes in land surface vegetation[J]. Chinese Journal of Applied Ecology, 2020, 31(6): 2098-2108.
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