globalchange  > 气候变化事实与影响
DOI: doi:10.1038/nclimate2658
论文题名:
Projected strengthening of Amazonian dry season by constrained climate model simulations
作者: Juan P. Boisier
刊名: Nature Climate Change
ISSN: 1758-880X
EISSN: 1758-7000
出版年: 2015-06-01
卷: Volume:5, 页码:Pages:656;660 (2015)
语种: 英语
英文关键词: Projection and prediction ; Hydrology
英文摘要:

The vulnerability of Amazonian rainforest, and the ecological services it provides, depends on an adequate supply of dry-season water, either as precipitation or stored soil moisture. How the rain-bearing South American monsoon will evolve across the twenty-first century is thus a question of major interest. Extensive savanization, with its loss of forest carbon stock and uptake capacity, is an extreme although very uncertain scenario1, 2, 3, 4, 5, 6. We show that the contrasting rainfall projections simulated for Amazonia by 36 global climate models (GCMs) can be reproduced with empirical precipitation models, calibrated with historical GCM data as functions of the large-scale circulation. A set of these simple models was therefore calibrated with observations and used to constrain the GCM simulations. In agreement with the current hydrologic trends7, 8, the resulting projection towards the end of the twenty-first century is for a strengthening of the monsoon seasonal cycle, and a dry-season lengthening in southern Amazonia. With this approach, the increase in the area subjected to lengthy—savannah-prone—dry seasons is substantially larger than the GCM-simulated one. Our results confirm the dominant picture shown by the state-of-the-art GCMs, but suggest that the ‘model democracy’ view of these impacts can be significantly underestimated.

Reducing the large uncertainties of the regional precipitation response to anthropogenic climate forcing (ACF) is a crucial challenge in the assessment of the future climate and water resources availability9. Even though the main mechanisms driving the large-scale changes in precipitation simulated by GCMs are known10, 11, 12, 13, 14, 15, 16, a convergence of the model projections is not expected in the near term17. The ACF impacts on the South American monsoon18 (SAM) are particularly interesting given the local and global implications of changes in the functioning of Amazonian rainforest1, 2, 3, 4, 5, 6, 7, 8, 19. However, even state-of-the-art GCMs are poor at simulating the mean rainfall regime and its variability over tropical South America20, 21, and the projections remain notoriously uncertain in this region9, 21, 22, 23.

The changes in the Amazonian precipitation (PA) are addressed here using both an observational data set and an ensemble of simulations from 36 GCMs participating in phase 5 of the Coupled Model Intercomparison Project (CMIP5). The model data combine transient historical simulations from 1960 to 2005 and twenty-first century projections under a high-emission scenario (RCP8.5, see Methods and Supplementary Information).

An overview of the CMIP5 model outputs illustrates the uncertainties in the projected PA (Fig. 1a). Across the twenty-first century, the ensemble of GCMs shows a slightly negative trend in basin-wide mean annual PA embedded in a large inter-model spread, with nearly half of the models showing a trend towards wetter conditions. The CMIP5 ensemble also indicates a strengthening of the SAM annual cycle by the end of the twenty-first century (Fig. 2e), characterized by a late-dry-season rainfall decrease (−0.54 ± 0.63 mm d−1 in September–November (SON)), and a slightly wetter wet season (December–February (DJF)). Yet, this pattern of change is not systematic among the GCMs assessed, and ~20% of them simulate a decrease of the SAM amplitude in response to ACF (not shown).

Figure 1: Simulated changes in Amazonian precipitation.
Simulated changes in Amazonian precipitation.

a, Annual mean precipitation anomalies (relative to 1960–1999) simulated in Amazonia (PA, basin-wide mean) by 36 CMIP5 GCMs (time series smoothed with an 11-year running mean filter). Box–whisker plot indicates the ensemble median, lower/upper quartiles and extremes in 2070–2099. b, Qualitative outline of the sources of uncertainty in the projected PA. Given a socioeconomic scenario, a first discrepancy between GCMs relies on the global-scale climate sensitivity to the anthropogenic climate forcing. The way the large-scale perturbations affect Amazonia represents another source of uncertainty of particular interest in this study. Regional impacts driven by land-surface processes are combined into a third source of uncertainty (including, for example, feedbacks between vegetation and regional climate, physiological effects of CO2 on plant transpiration, or land-use change). c, Difference in annual PA between the ends of the twentieth (1960–1999) and twenty-first (2060–2099) centuries (ΔPA), plotted against the corresponding difference in water vapour flux convergence (Δ(−QA)). Numbers indicate the various GCMs assessed (Supplementary Table 1). d,e, The same as in c, but for the thermodynamic and the dynamic component of QA (QA(θ) and QA(ω), respectively; see Methods).

Model and observational data.

We used monthly data from transient coupled simulations carried out with 36 GCMs participating in CMIP5 (Supplementary Table 1). The whole period analysed spans from 1960 to 2099, including a single historical run (1960–2005) per model and the corresponding twenty-first century projection (2006–2099) following Representative Concentration Pathway 8.5 (RCP8.5, see Supplementary Information).

In addition to precipitation and sea-level pressure (pSL), we used three-dimensional wind (u = {u, v}) and specific humidity (q) data for the computation of a vertically integrated water vapour flux (Q), which is derived as:

where g0 and pS are the gravitational acceleration and pressure at the surface, respectively. The top pressure level pT is set to 100 hPa. A dynamic (Q(ω)) and a thermodynamic (Q(θ)) component of Q are derived as in equation (1), but prescribing the climatological mean (1960–1999) profiles of q ( ) and u ( ), respectively:

We use a trapezoidal rule to estimate the vertical integrals in the equations (1)–(3) from the pressure levels available in the GCMs’ atmospheric fields. The water vapour flux divergence terms ( ⋅ Q, ⋅ Q(ω) and ⋅ Q(θ)) further used for the analysis depicted in Fig. 1 were computed using central finite-difference approximations in spherical coordinates.

The observational data set includes four gridded products of land precipitation from the Global Precipitation Climatology Centre (GPCC), the National Centers for Environmental Prediction (PREC/L), the Climatic Research Unit (CRU) and from the University of Delaware (UDEL). The monthly data from the Hadley Centre Sea Level Pressure data set30 (HadSLP2) were adopted for pSL. Further details, references, and an evaluation of these products are provided as Supplementary Information.

The Amazon Basin-wide average of a given variable is calculated as the spatial area-weighted mean over a region of ~7 million km2 (Fig. 3). To have a consistent domain within the multiple GCM and observational data sets, all fields were previously interpolated and analysed in a common rectangular grid of 2.0° latitude–longitude.

The PA responses to ACF are derived as differences between climatologies computed at the end of the twentieth (1960–1999) and twenty-first (2060–2099) centuries. We note that part of these differences could be affected by multi-decadal internal variability simulated in GCMs. The noise induced by these stochastic variations is offset when averages are applied to ensembles (see, for example, Fig. 2), but the standard deviation values should partially reflect uncertainties due to variability.

The dry-season length (DSL) is defined as the number of months per year with precipitation rates below 2 mm d−1. A minimum DSL of three months is used to define a rainfall regime (DSL3+) where savannahs/treeless biomes prevail and, therefore, where rainforest is less resilient to permanent changes in precipitation. Vulnerable areas within the Amazonian domain are computed yearly with the pixels satisfying DSL3+. The present-day vegetation partitioning is based on the MODIS land-cover product MCD12C1 (ref. 29) averaged from 2001 to 2010. We note the manifest problem of using monthly precipitation data to properly define dry seasons. However, for the purpose of this study, this disadvantage has a lesser impact because we compute time averages and regional statistics to derive, respectively, DSL climatologies (from which fractional values are obtained, Fig. 4a) and yearly DSL3+ areas (Fig. 4b).

Empirical models of Amazonian precipitation.

A multivariate regression analysis was performed to derive the link between patterns of precipitation in Amazonia and pSL of different regions of the globe. The choice of pSL as an indicator of the large-scale motion relies in part on the availability of historical reconstructions of good quality30. The analysis accounts for the rainfall distribution across the basin. For this purpose, the leading modes of variability were extracted using a standard empirical orthogonal function decomposition. This approach allows us to describe the spatiotemporal variability of PA with only a few time series (we used the first 10 principal components), hence avoiding multiple analyses at the pixel level. This approach also ensures a spatial coherency on the reconstructed PA fields.

Several regression models were derived with the historical data (1960–2012) both from the observational products (used to compute the constrained rainfall projections) and from the GCM simulations (used for the method evaluation; see Supplementary Fig. 4). The analysis was done separately for each month of the year. However, information from the months preceding and following the one assessed was also included in the calibrating data, allowing us to increase by a factor of 3 the record length used in the analyses, thereby providing robustness in regression-parameter computation. Hence, both the interannual variability and a small part of the seasonal cycle are accounted for in the models’ calibration.

The explanatory variables correspond to normalized monthly pSL anomalies averaged onto a rectangular grid of 20° latitude–longitude. Although coarse, this grid defines worldwide a large set of potential predictors (see Supplementary Fig. 3) compared with the record length used in the regression computation (53 × 3 months). We therefore combined a predictor selection and an ensemble technique to manage multi-collinearity/overfitting issues and, hence, to enhance the predictive performance of the models (see Supplementary Information).

  1. Cox, P. M. et al. Amazonian forest dieback under climate-carbon cycle projections for the 21st century. Theor. Appl. Climatol. 78, 137156 (2004).
  2. Hirota, M., Holmgren, M., Nes, E. H. V. & Scheffer, M. Global resilience of tropical forest and savanna to critical transitions. Science 334, 232235 (2011).
  3. Zeng, Z. et al. Committed changes in tropical tree cover under the projected 21st century climate change. Sci. Rep. 3, 1951 (2013).
  4. Malhi, Y. et al. Exploring the likelihood and mechanism of a climate-change-induced dieback of the Amazon rainforest. Proc. Natl Acad. Sci. USA 106, 2061020615 (2009).
  5. Good, P., Jones, C., Lowe, J., Betts, R. & Gedney, N. Comparing tropical forest projections from two generations of Hadley Centre Earth System Models, HadGEM2-ES and HadCM3LC. J. Clim. 26, 495511 (2013).
  6. Huntingford, C. et al. Simulated resilience of tropical rainforests to CO2-induced climate change. Nature Geosci. 6, 268273 (2013). URL:
http://www.nature.com/nclimate/journal/v5/n7/full/nclimate2658.html
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资源类型: 期刊论文
标识符: http://119.78.100.158/handle/2HF3EXSE/4708
Appears in Collections:气候变化事实与影响
科学计划与规划
气候变化与战略

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Juan P. Boisier. Projected strengthening of Amazonian dry season by constrained climate model simulations[J]. Nature Climate Change,2015-06-01,Volume:5:Pages:656;660 (2015).
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