Lagged effects regulate the inter-annual variability of the tropical carbon balance
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Gregory R. Quetin | A. Bloom | K. Bowman | J. Worden | H. Worden | S. Saatchi | D. Schimel | D. Schimel | M. Williams | Junjie Liu | J. Reager | Zhe Jiang | Yi Yin | A. Konings | J. Reager | V. Meyer | N. Parazoo | J. Exbrayat | K. Bowman | T. Smallman | G. Quetin
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