Atmospheric carbon dioxide records indicate that the land surface has acted as a strong global carbon sink over recent decades1,2, with a substantial fraction of this sink probably located in the tropics3, particularly in the Amazon4. Nevertheless, it is unclear how the terrestrial carbon sink will evolve as climate and atmospheric composition continue to change. Here we analyse the historical evolution of the biomass dynamics of the Amazon rainforest over three decades using a distributed network of 321 plots. While this analysis confirms that Amazon forests have acted as a long-term net biomass sink, we find a long-term decreasing trend of carbon accumulation. Rates of net increase in above-ground biomass declined by one-third during the past decade compared to the 1990s. This is a consequence of growth rate increases levelling off recently, while biomass mortality persistently increased throughout, leading to a shortening of carbon residence times. Potential drivers for the mortality increase include greater climate variability, and feedbacks of faster growth on mortality, resulting in shortened tree longevity5. The observed decline of the Amazon sink diverges markedly from the recent increase in terrestrial carbon uptake at the global scale1,2, and is contrary to expectations based on models6.
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The RAINFOR forest monitoring network has been supported principally by the Natural Environment Research Council (grants NE/B503384/1, NE/D01025X/1, NE/I02982X/1, NE/F005806/1, NE/D005590/1 and NE/I028122/1), the Gordon and Betty Moore Foundation, and by the EU Seventh Framework Programme (GEOCARBON-283080 and AMAZALERT-282664). R.J.W.B. is funded by NERC Research Fellowship NE/I021160/1. O.P. is supported by an ERC Advanced Grant and is a Royal Society-Wolfson Research Merit Award holder. Additional data were supported by Investissement d’Avenir grants of the French ANR (CEBA: ANR-10-LABX-0025; TULIP: ANR-10-LABX-0041), and contributed by the Tropical Ecology Assessment and Monitoring (TEAM) Network, funded by Conservation International, the Missouri Botanical Garden, the Smithsonian Institution, the Wildlife Conservation Society and the Gordon and Betty Moore Foundation. This paper is 656 in the Technical Series of the Biological Dynamics of Forest Fragments Project (BDFFP-INPA/STRI). The field data summarized here involve vital contributions from many field assistants and rural communities in Bolivia, Brazil, Colombia, Ecuador, French Guiana, Guyana, Peru and Venezuela, most of whom have been specifically acknowledged elsewhere4. We additionally thank A. Alarcon, I. Amaral, P. P. Barbosa Camargo, I. F. Brown, L. Blanc, B. Burban, N. Cardozo, J. Engel, M. A. de Freitas, A. de Oliveira, T. S. Fredericksen, L. Ferreira, N. T. Hinojosa, E. Jiménez, E. Lenza, C. Mendoza, I. Mendoza Polo, A. Peña Cruz, M. C. Peñuela, P. Pétronelli, J. Singh, P. Maquirino, J. Serano, A. Sota, C. Oliveira dos Santos, J. Ybarnegaray and J. Ricardo for contributions. CNPq (Brazil), MCT (Brazil), Ministerio del Medio Ambiente, Vivienda y Desarrollo Territorial (Colombia), Ministerio de Ambiente (Ecuador), the Forestry Commission (Guyana), INRENA (Peru), SERNANP (Peru), and Ministerio del Ambiente para el Poder Popular (Venezuela) granted research permissions. We thank our deceased colleagues and friends, A. H. Gentry, J. P. Veillon, S. Almeida and S. Patiño for invaluable contributions to this work; their pioneering efforts to understand neotropical forests continue to inspire South American ecologists.
The authors declare no competing financial interests.
Source data are available from http://dx.doi.org/10.5521/ForestPlots.net/2014_4.
Extended data figures and tables
The three-letter codes refer to plot codes (see Supplementary Table 1). Adjacent plots (<50 km apart) are shown as one for display purposes. Size of the dots corresponds to the relative sampling effort at that location which is calculated as the square root of plot size multiplied by square root of census length. The grey area shows the cover of all open and closed, evergreen and deciduous forests for tropical South America, according to Global Land Cover map 2000 (ref. 35).
Extended Data Figure 2 Scatterplot of mid-interval date against net AGB change, AGB productivity and AGB loss due to mortality for all data points and plots used in this analysis.
a, Biomass change. b, Productivity. c, Mortality. Points indicate the mid-census interval date, while horizontal error-bars connect the start and end date for each census interval. To illustrate variation in net AGB change over time within individual plots, examples of time series for three individual plots are show as lines.
Extended Data Figure 3 Time trends of subsets of net above-ground biomass change, above-ground woody productivity and mortality rates for plots that were continuously monitored throughout, for the periods 1990–2011, 1995–2011 and 2000–2011.
Locations for the set of plots included in the analysis for the different periods are show in the maps in lower panels. The red lines indicate the best model fit for the long-term trends using General Additive Mixed Models (GAMM) accounting explicitly for differences in dynamics between plots (red lines denote overall mean, broken lines denote s.e.m.). Estimated long-term (linear) mean slopes (sl), P values and sample sizes (n) are indicated (see Methods).
The mean number of plots (red lines), mean interval census length (black lines) and mean plot area (blue lines) are shown. Note that the increased sampling in 2002 to 2004 is largely due to the short-term addition of 72 plots from one site (Ducke, north of Manaus), but this has no discernible effect on averaged biomass dynamics (Fig. 1).
a, Mean net biomass change on a per live stem basis (that is, net biomass change per stem). b, Mean growth gains per live tree (that is, mean biomass accumulation of individual trees). c, Mortality losses per stem. Analyses are based on 234 plots, excluding published studies without available stem-by-stem data. The red lines indicate the best model fit for the long-term trends using General Additive Mixed Models (GAMM) accounting explicitly for differences in dynamics between plots (red lines denote overall mean, broken lines denote s.e.m.). Estimated long-term (linear) mean slopes and significance levels are indicated (see Methods).
Extended Data Figure 6 Rates of change in number of stems plus annualized fluxes of stems bigger than 10 cm in diameter.
a–c, Mean net change in number of stems (a), number of recruits (b), and and number of dying trees (c). Analyses are based on 234 plots, excluding published studies without available stem-by-stem data. The red lines indicate the best model fit for the long-term trends using General Additive Mixed Models (GAMM) accounting explicitly for differences in dynamics between plots (red lines denote overall mean, broken lines denote s.e.m.). Estimated long-term (linear) mean slopes and significance levels are indicated (see Methods).
a, Mean net basal area change. b, Mean basal area productivity. c, Mean basal area mortality. Analyses are based on 234 plots, excluding published studies without available basal-area data. The red lines indicate the best model fit for the long-term trends using General Additive Mixed Models (GAMM) accounting explicitly for differences in dynamics between plots (red lines denote overall mean, broken lines denote s.e.m.). Estimated long-term (linear) mean slopes and significance levels are indicated (see Methods).
Extended Data Figure 8 Relationship among plots between mean and slopes of AGB mortality and AGB productivity.
a, Scatterplot of the slope of AGB mortality of individual plots against the slope of AGB productivity of plots. b, Scatterplot of the slope of AGB loss due to mortality of individual plots against the mean AGB productivity of plots. c, Scatterplot of the slope of AGB productivity of individual plots against the mean AGB loss due to mortality of plots. The set of plots used in this analysis (117 plots, 87 units) includes only those that had at least 10 years of data and at least three census intervals (that is, same criteria as plots shown in Fig. 2).
Extended Data Figure 9 Net AGB change or loss due to mortality versus the total monitoring length of plots, and the slope of net AGB change or mortality versus the total monitoring length of plots.
a–d, Scatterplots of net AGB change (a) or net AGB loss due to mortalityof individual plots (c) against the total monitoring length of plots, and the slope of net AGB change (b) or slope of AGB mortality of individual plots (d) against the total monitoring length of plots. None of the relationships are significant (P > 0.05). Note that the plots (117 plots, 87 units) used in b and d are only those that had at least 10 years of data and at least three census intervals (that is, same criteria as plots shown in Fig. 2). See Supplementary Information for discussion of these results.
Extended Data Figure 10 Modelled estimates of the effects of linearly increasing mortality on necromass stocks and soil organic-matter stocks.
a, Necromass stocks. b, Soil organic matter stocks. c, The estimated fluxes of carbon from the forest to the atmosphere in three scenarios: (1) assuming constant mortality rate and a lag in decomposition of dead-tree biomass (green), (2) assuming an increasing mortality rate similar to the observed trend (Fig. 1c) and a lag in decomposition as modelled (black), and (3) with increasing mortality but with all dead-tree biomass instantly respired (red). See Supplementary Information for discussion of these results.
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Brienen, R., Phillips, O., Feldpausch, T. et al. Long-term decline of the Amazon carbon sink. Nature 519, 344–348 (2015). https://doi.org/10.1038/nature14283
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