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The relative importance of climate, stand variables and liana abundance for carbon storage in tropical forests
Author(s) -
Durán Sandra M.,
SánchezAzofeifa G. Arturo,
Rios Rodrigo S.,
Gianoli Ernesto
Publication year - 2015
Publication title -
global ecology and biogeography
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 3.164
H-Index - 152
eISSN - 1466-8238
pISSN - 1466-822X
DOI - 10.1111/geb.12304
Subject(s) - liana , basal area , abundance (ecology) , climate change , tropical climate , tropical and subtropical dry broadleaf forests , environmental science , tropics , ecology , forestry , agroforestry , geography , biology
Aim To develop an integrative framework to evaluate variation in aboveground carbon storage ( AGC ). A model that can be applied to understand and predict how global‐change drivers influence tropical carbon sinks. Location Old‐growth tropical forests world‐wide. Methods Using structural equation modelling ( SEM ), we propose an a priori model to evaluate the direct and indirect effects of climate, stand variables (basal area, tree diameter and wood density at plot level) and liana abundance on AGC . Our model indicated that stand variables increased AGC while liana abundance decreased AGC indirectly via negative effects on stand variables. We used a multigroup SEM to test the generality of our framework using a standardized dataset of 145 plots (0.1 ha) in dry, moist and wet tropical forests. Results Our model explained over 85% variation in AGC and showed a positive and consistent relationship between stand variables and AGC across forests types. The effects of climate on AGC were indirect rather than direct, with negative effects of temperature in all forests. Liana abundance reduced tree diameter and basal area in moist forests, but did not affect AGC in wet or dry forests. Main conclusions Our results suggest that climate affects AGC indirectly, via its direct influence on stand variables and liana abundance. The effects of lianas on AGC result from reductions in stand variables and are as important as climate for moist forests, which harbour the greatest tropical carbon pools. Our model was consistent across forest types. This highlights the usefulness of an integrative framework to improve predictions of the effects of drivers of global change on tropical carbon sinks.