| Literature DB >> 26438276 |
C D Koven1, E A G Schuur2, C Schädel2, T J Bohn3, E J Burke4, G Chen5, X Chen6, P Ciais7, G Grosse8, J W Harden9, D J Hayes5, G Hugelius10, E E Jafarov11, G Krinner12, P Kuhry10, D M Lawrence13, A H MacDougall14, S S Marchenko15, A D McGuire16, S M Natali17, D J Nicolsky15, D Olefeldt18, S Peng19, V E Romanovsky15, K M Schaefer11, J Strauss8, C C Treat9, M Turetsky20.
Abstract
We present an approach to estimate the feedback from large-scale thawing of permafrost soils using a simplified, data-constrained model that combines three elements: soil carbon (C) maps and profiles to identify the distribution and type of C in permafrost soils; incubation experiments to quantify the rates of C lost after thaw; and models of soil thermal dynamics in response to climate warming. We call the approach the PermafrostEntities:
Keywords: carbon–climate feedbacks; climate change; methane; permafrost
Mesh:
Substances:
Year: 2015 PMID: 26438276 PMCID: PMC4608038 DOI: 10.1098/rsta.2014.0423
Source DB: PubMed Journal: Philos Trans A Math Phys Eng Sci ISSN: 1364-503X Impact factor: 4.226
Overview of key processes in PInc-PanTher and how they differ from representation in full ecosystem models.
| ecosystem property | PInc-PanTher | ecosystem model |
|---|---|---|
| initial soil C content geographical distributions | set directly from upscaled soil classification maps | calculated to satisfy initial condition that C losses balance inputs |
| initial soil C content vertical distributions | set directly from a combination of upscaled soil classification maps and soil C vertical profile synthesis | either ignored or calculated assuming a vertical distribution to C inputs and vertical transport |
| soil C inputs | calculated to satisfy initial condition that soil C losses balance inputs, and held fixed in time | calculated based on routing vegetation productivity to soil pools; vary because of changes in plant productivity |
| soil C pool distribution | set to correspond to simple three-pool fitted to permafrost incubation data, and specific to soil horizon types | fraction of C from a given plant organ to a given litter or SOM pool in decomposition pathway fixed globally or vary by plant functional type |
| temperature control of decomposition | diverse temperature functions, typically | |
| other environmental controls on decomposition | anoxia prescribed for all peat (Histel) soils | may include limitations by anoxia, soil moisture, depth, nutrients |
| soil temperatures | imposed based on thermal modules of ecosystem models used to drive PInc-PanTher | calculated dynamically based on atmospheric climate that is either imposed (offline ecosystem model) or calculated in climate model (ESM) |
| CH4 dynamics | emissions held as a constant fraction of heterotrophic respiration from anoxic soils, which are assumed to correspond to peat (Histel) soils | typically treat CH4 production, transport and oxidation for separate flooded and unflooded gridcell fractions |
Figure 1.Maps of soil C by horizon type and suborder for 0–100 cm intervals, as well as deeper Yedoma and thermokarst deposits.
List of models used for soil thermal calculations, as well as key aspects of the models and what atmospheric conditions were specified as their current-climate upper boundary conditions.
| model name | key reference | no. soil layers | maximum soil depth (m) | organic soils included? | reanalysis forcing |
|---|---|---|---|---|---|
| CLM4.5 | [ | 30 | 45.1 | yes | CRU-NCEP |
| GIPL2 | [ | 300 | 200 | yes | CRU-NCEP |
| JULES v3.4.1 | [ | 16 | 20.8 | no | WATCH |
| ORCHIDEE-MICTV3 | [ | 32 | 47.4 | yes | WFDEI (1978–2009) |
| SiBCASA | [ | 25 | 15.0 | yes | CRU-NCEP |
| TEM6 | [ | 8 | 36 m, but reports | yes | CRU-NCEP |
| only to 3 m here | |||||
| UVic | [ | 14 | 250 | no | CRU-NCEP |
| UW-VIC | [ | 25 | 26.7 | no | [ |
Figure 2.Cumulative distributions of permafrost active layer thicknesses for each of the models used in driving the soil temperature fields in PInc-PanTher, for current and end-of-century climates under moderate (RCP4.5) and high (RCP8.5) warming scenarios as driven by CCSM4 climate anomalies. Horizontal lines show the edges of model vertical levels for most models; exceptions are for GIPL2 and TEM6, which have many more levels than shown for internal calculations but output soil temperature at only the centres of the levels shown. In most models, permafrost areas decrease at all depths with warming.
Figure 3.(a–h) Maps of fractional C losses over the period 2010–2100 calculated by the PInc-PanTher scaling approach at four depths (surface=1 cm, 0.5 m, 1.0 m and 1.5 m) and two warming scenarios (RCP4.5 and RCP8.5) using CLM4.5 soil temperatures as an example driving soil climate dataset. Losses are fairly uniform at the surface because of widespread lengthening of the unfrozen decomposing season and summertime soil warming; at depth C losses are zero in the area that remains permafrost and greatest at the margins of the permafrost zone where thaw leads to permanently unfrozen ground that allows continuous decomposition.
Figure 4.(a) Total integrated C losses using the PInc-PanTher scaling approach for interval 2010–2100 for two warming scenarios, two different assumptions of initial C pool partitioning and multiple soil temperature models. (b) Permafrost carbon–climate feedback parameter γP. Sign convention for γP is that negative values indicate a loss of C to the atmosphere. Open circles are outliers.
Figure 5.Changes relative to present of anoxic respiration rates for inferring changes to CH4 fluxes from permafrost C. Thick lines show ensemble mean values and hatched areas show the range across the ensemble of calculations across each of the soil temperature models. Each model trajectory is normalized to have an initial value of 1 averaged over the first decade of the simulation (2010–2020).
Some key processes and uncertainties not considered in this framework and their potential effect on the C feedback. (−) indicates potential for reduced net C emissions, (+) indicates potential for increased net C emissions, (±) indicates could influence net C emissions either way.
| process | potential effect on the permafrost carbon–climate feedback |
|---|---|
| changing plant productivity because of warming and/or CO2 fertilization | increased inputs to soil: (−); potential priming effects from vegetation change on soil C turnover: (+) |
| biophysical effects of vegetation changes (included in some of the models used to drive soil | decreased albedo and increased snow insulation: (+); increased shading: (−) |
| fire | increased fire frequency and intensity on C stocks: (+); feedbacks of fire on permafrost thaw: (+) |
| nutrient interactions | stimulated plant productivity with N mineralization: (−); potential priming effects from N mineralization: (+) |
| soil C turnover | potential biases from use of incubations, e.g. lack of fresh organic matter inputs and priming: (+) |
| temperature sensitivities | higher anoxic than oxic temperature sensitivities: (+); acclimation or changing carbon use efficiency: (±) |
| anoxia | baseline anoxia if larger than our estimate: (−); changing anoxia with warming: (±) depending on sign of change |
| segregated and wedge ice | slowed active layer deepening and thawing process: (−); increased vulnerability to thermokarst: (+) |
| CH4 emissions | increased productivity: (+); changed anoxia with permafrost loss: (±) |
| fine-scale disturbance | thermokarst and thermal erosion: (+); increased transport to watersheds and marine environment: (±) |
| dissolved organic C losses | if respiration increases locally: (+); if transported to deep ocean: (−) |
| limitation of deep C decomposition | if deep soils are microbially inhibited beyond the horizon-type changes imposed here: (−) |
| domain considered | inclusion of non-Gelisol soils in permafrost area: (+) |
| Arctic amplification of warming | if higher than our estimate: (+) |