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Significant feedbacks of wetland methane release on climate change and the causes of their uncertainty

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, , Citation N Gedney et al 2019 Environ. Res. Lett. 14 084027 DOI 10.1088/1748-9326/ab2726

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Abstract

Emissions from wetlands are the single largest source of the atmospheric greenhouse gas (GHG) methane (CH4). This may increase in a warming climate, leading to a positive feedback on climate change. For the first time, we extend interactive wetland CH4 emissions schemes to include the recently quantified, significant process of CH4 transfer through tropical trees. We constrain the parameterisations using a multi-site flux study, and biogeochemical and inversion models. This provides an estimate and uncertainty range in contemporary, large-scale wetland emissions and their response to temperature. To assess the potential for future wetland CH4 emissions to feedback on climate, the schemes are forced with simulated climate change using a 'pattern-scaling' system, which links altered atmospheric radiative forcing to meteorology changes. We perform multiple simulations emulating 34 Earth System Models over different anthropogenic GHG emissions scenarios (RCPs). We provide a detailed assessment of the causes of uncertainty in predicting wetland CH4–climate feedback. Despite the constraints applied, uncertainty from wetland CH4 emission modelling is greater that from projected climate spread (under a given RCP). Limited knowledge of contemporary global wetland emissions restricts model calibration, producing the largest individual cause of wetland parameterisation uncertainty. Wetland feedback causes an additional temperature increase between 0.6% and 5.5% over the 21st century, with a feedback on climate ranging from 0.01 to 0.11 Wm−2 K−1. Wetland CH4 emissions amplify atmospheric CH4 increases by up to a further possible 25.4% in one simulation, and reduce remaining allowed anthropogenic emissions to maintain the RCP2.6 temperature threshold by 8.0% on average.

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Introduction

CH4 is the second largest contributor to the anthropogenic greenhouse gas (GHG) effect after carbon dioxide (CO2), contributing about 21% of the increased radiative forcing since pre-industrial times (Myhre et al 2013). Over a 100 year time period CH4 global warming potential is about 28 times that of CO2 (Myhre et al 2013). Surface atmospheric CH4 concentrations reached 1810 ppb in 2012 (Saunois et al 2016), which is about 2.5 times as large as pre-industrial concentrations. In the late 1990s and early 2000s there was a near decade of minimal growth in atmospheric CH4, which has recently been followed by a renewed and sustained period of increase (Nisbet et al 2014).

Natural wetland emissions currently contribute up to approximately 40% of the global CH4 emissions total (Saunois et al 2016), and are thought to cause much of the yearly atmospheric CH4 concentration variability (McNorton et al 2016). These emissions are expected to produce a positive feedback on climate change (Gedney et al 2004, Arneth et al 2010, Ciais et al 2013, Melton et al 2013, Stocker et al 2013) but are assessed to have a 'very low' scientific confidence (Arneth et al 2010).

The Saunois et al (2016) review shows that present-day wetland CH4 global emissions remain highly uncertain, though there is some consistency between estimates using top-down (atmospheric inversions which incorporate observations into dynamic and chemistry models) and bottom-up (process-based land models) approaches, with ranges of 127–202 TgCH4yr−1 and 153–227 TgCH4yr−1, respectively. The range in bottom-up estimates of Saunois et al (2016) is smaller than reported in similar earlier studies (Kirschke et al 2013, Melton et al 2013), which is mainly due to the use of a common wetland area map across models.

Amazon basin observations have recently found that tropical trees act as significant conduits for wetland CH4 emissions (Pangala et al 2017), transferring about half of the total wetland flux here. These measurements have resolved the previously large discrepancy between CH4 flux estimates from scaled-up flux measurements and top-down approaches over this large regional source (Pangala et al 2017). However, lack of detailed knowledge of present-day wetland extent remains a large contributor to current emissions uncertainty in process-based models, as it is often used for scaling up (Kirschke et al 2013, Saunois et al 2016). Uncertainties in atmospheric chemistry and transport, and non-wetland CH4 budgets contribute significantly to inversion model estimate uncertainty (Saunois et al 2016).

From a limited number of studies over different climate change scenarios, global wetland CH4 emissions are projected to increase by up to 78% (with simulated climate change between present day and doubling of atmospheric CO2), and enhanced future feedback raises radiative forcing by up to 0.1 Wm−2 K−1 (Arneth et al 2010, Ciais et al 2013). To extend this we take a more rigorous approach in assessing CH4 wetland feedback under climate change. We consider separate parameterisations of the two primary wetland CH4 generation processes, include CH4 transfer through trees and a new representation of tropical soils, and adopt better constrained parameters. We then apply this in a framework of multiple emissions scenarios and 34 different Earth System Models (ESM) climate change estimates.

JULES wetland model

CH4 consumption (methanotrophy) in the non-saturated zone above the water table is far more efficient than methanogenesis occurring within the saturated zone (Roulet et al 1992). Hence we assume that CH4 produced in the soil saturated zone can only reach the atmosphere directly when the water table reaches the soil surface (incorporated via the grid-box wetland fraction; Gedney et al 2004). CH4 in the soil saturated zone may still be transferred to the atmosphere via vegetation when the water table is lower however. With emissions being so dependent on water table depth, it is necessary to simulate hydrology and wetland extent adequately.

Large-scale surface models traditionally use soil hydraulic properties based on sand, silt and clay percentages (Best et al 2011). In order to improve the hydrological depiction in the tropics, which is a major contributor to the global wetland CH4 budget, we extend our soil properties to include tropical soils (ferralsols, which are weathered soils with micro-aggregated particles), as these are poorly represented by standard particle distribution functions (Marthews et al 2014).

JULES (Clark et al 2011) simulates the wetland fraction fw by combining simulated grid-box mean water table depth and sub-grid topographic distribution to produce a sub-grid water table depth distribution $fw^{\prime} (z)$ (supplementary appendix SA is available online at stacks.iop.org/ERL/14/084027/mmedia). fw is defined as the grid-box fraction where the water table is at or just above the surface zwet, i.e. $fw=\displaystyle {\int }_{0}^{zwet}fw^{\prime} \left(z\right)dz$ (Gedney et al 2004, Gedney and Cox 2003). Thus fw can be compared against observation-based inundation products.

To incorporate CH4 transfer through vegetation, including the significant flux via tropical trees (Pangala et al 2017), we extend the standard modelled fw to include an effective wetland extent fwe. We assume this flux through vegetation can occur where roots exist below the water table. The flux originating at soil depth z is therefore proportional to the relative occurrence of water table depth at z within the grid box $fw^{\prime} \left(z\right),$ and the fractional number of roots below z, $P\left(z\right).$ Root distribution decays exponentially up to total soil depth zsoil, according to root depth zr:

Equation (1)

Integrating $P\left(z\right)fw{\rm{^{\prime} }}(z)$ gives:

as $\displaystyle {\int }_{{z}_{{soil}}}^{0}{P}_{i}\left(z\right)dz=1$ by definition. Summing over vegetation fractions fvi, we obtain an effective vegetation wetland fraction fwev which encompasses vegetation transfer:

Here i represents each vegetation type. Efficiency factor A relates to how effectively CH4 is removed from the soil via vegetation. Over vegetation when the water table is at or above the surface, we assume that any soil CH4 not lost through vegetation is emitted directly into the atmosphere. Hence the effective wetland fraction for soil is:

Due to lack of detailed, available measurements, such as how vegetation flux varies with water table depth, A can only be calculated by ensuring the total fraction of CH4 emitted via tropical Amazon trees agrees with that observed (∼0.5; Pangala et al 2017). Since Pangala et al (2017) is the only comprehensive, large-scale study on this (Covey and Megonigal 2019) we assume that the tuned 'A' value is valid over all vegetation types. Applying this 'A' value to different plant functional types is non-ideal, however its impact on total flux over other vegetation types is small partially due to shallower rooting depths. (Figure S5 shows that including vegetation transfer has little effect outside tropical South America). This finding is consistent with McNorton et al (2016), which shows that incorporating additional processes, such as CH4 transport via short vegetation, does not improve overall CH4 flux simulation.

JULES CH4 parameterisation

CH4 production in wetlands occurs via two main pathways: acetoclastic and hydrogenotrophic methanogenesis. Acetic acid from root exudates (related to net primary productivity NPP; Bridgham et al 2013) is the substrate for the former, whereas CO2, from the soil carbon store is a source for the latter. There is considerable uncertainty about the relative importance of the two substrates in CH4 generation at the large-scale however, causing speculation that this is a large contributory factor in future wetland CH4 flux uncertainty (Bridgham et al 2013). To place bounds on this uncertainty, JULES is run with two CH4 parameterisations, where the source for wetland CH4 flux into the atmosphere (FCH4) is based on either soil carbon Cs (kgm−2) or NPP (kgm−2 s−1). Due to the inclusion of vegetation-mediated flux, total CH4 fluxes become dependent on an effective wetland fraction, fwe (where $\left.fwe=fw{e}_{s}+fw{e}_{v}\right):$

Equation (2)

Equation (3)

where T (K) is the mean top 1 m soil temperature and To a reference temperature (273.16 K). FCH4(NPP) is restricted from going below zero, as would otherwise occur if NPP becomes negative. (Soil uptake is included within the atmospheric methane lifetime). The choice of two substrates is important, as they are likely to have different climate sensitivities: FCH4(Cs) is proportional to a large pool, which we assume is time invariant; FCH4(NPP) is sensitive to a change in flux, with initial soil CH4 emissions occurring less than twelve hours after photosynthetic assimilation (Megonigal et al 1999). Both schemes are sensitive to climate through their Q10 temperature relationships and effective wetland fraction (fwe), with FCH4(NPP) having an additional substrate sensitivity to climate and atmospheric CO2. These two schemes are chosen to see if uncertainties in the temporal production of available substrate is important in the climate-CH4 feedback response.

KCS and KNPP are tuned to produce the appropriate global total wetland flux to cover the total range for all models in Saunois et al (2016), 127–227 TgCH4yr−1. (KCS varies from 3.2–5.0 × 10–12 s−1 and KNPP 4.1–8.0 × 10−3 (unitless) from UPP to LOW). Q10(T) factors in equations (2) and (3) describe the amounts by which reaction rates increase with a 10 K temperature increase. These factors are themselves a function of temperature, so as to directly follow the Arrhenius equation which describes the temperature dependence of a biological process. Thus using a temperature dependent Q10 allows us to fit the Arrhenius equation beyond a specific climatic region. Hence $Q10\left(T\right)=Q{{10}_{To}}^{To/T},$ where Q10To is the Q10 temperature sensitivity at To. Q10CS,To and Q10NPP,To are specific to the methanogenesis pathways considered.

The above scheme does not include some more detailed processes, such as CH4 suppression due to sulphate deposition, some transport mechanisms, and multiple CH4 pools. McNorton et al (2016) demonstrate that their inclusion does not improve overall model performance, and there are insufficient observations to adequately constrain many such processes (e.g. redox and pH, Riley et al 2011). Instead we focus on constraining temperature sensitivity using a large number of observations over an extensive number of field sites (Turetsky et al 2014), as uncertainty in temperature response has the largest impact on net CH4 emissions (Riley et al 2011).

JULES wetland and CH4 calibration and validation

In order to calibrate the JULES wetland CH4 relations (JULES-CS, JULES-NPP) off-line runs are carried out using observation-based meteorology (Weedon et al 2014) at 0.5° resolution for all land points.

The wetland fraction simulated by JULES compares well spatially (figure 1) and temporally (figure S2) with the SWAMPS-GLWD (Poulter et al 2017) observation-based product, and is within observational spread for global total wetland area (figure 1(e), Davidson et al 2018). A detailed assessment of simulated wetland uncertainty and its impact on the magnitude of wetland CH4 feedback on climate change is provided in the supplementary material SI sections S1 and S7.

Figure 1.

Figure 1. Contemporary wetland fraction and simulated future changes. Contemporary wetland fractions: (a) and (c), August; (b) and (d), Annual mean: observation-based product SWAMPS-GLWD (a) and (b); JULES with tropical soils included (and a 0 °C upper soil temperature mask is applied for compatibility with SWAMP-GLWD as this includes snow and ice masks) (c) and (d). Global wetland area (calculated using maximum monthly mean in each grid box for direct comparison) against observation-based products (Davidson et al 2018) after rice paddy estimates removed if necessary (section S1) (e). Difference between annual mean JULES and SWAMPS-GLWD (f). Change in effective wetland fraction fwe between 2000 and 2100 for RCP4.5 (control simulation, MID JULES-CS parameterisation): lower (g); upper (h) 95 % confidence limits.

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To calibrate the soil carbon-based emission relation JULES-CS, temperature sensitivity Q10To,CS is determined by fitting against Q10's in the multiple wetland site data analysis (Turetsky et al 2014, Q10Tur, section S2). To directly map Q10To,CS onto Q10Tur, JULES-CS must use fixed (observed) soil carbon (Nachtergaele and Batjes 2012), which is equivalent to assuming a highly recalcitrant and/or large soil carbon pool that changes negligibly over time. Using this fitting procedure we produce lower (LOW), mid (MID) and upper (UPP) estimates of Q10CS,To of 3.0, 3.7 and 4.7 (equivalent to poor and rich fens, and bogs in Turetsky et al 2014), respectively (SI table S1).

The intermediate Q10CS,To value of 3.7 obtained from the above bottom-up approach here is very close to that found in Gedney and Cox (2003) (3.4–3.7), where the CH4 parameterisation was calibrated against global inter-annual variations in atmospheric CH4 (a top-down approach). Although Turetsky et al (2014) focuses on bogs and fens, Yvon-Durocher et al (2014) demonstrate that for multiple eco-systems spanning the globe, CH4 emissions have a consistent mean temperature dependence (0.96 eV with a 95% confidence of 0.86–1.07 eV). This is numerically equivalent to Q10To = 4.5 and range of 3.8–5.3 (as 1 eV ∼1.6 × 10−19 J), and consistent with our estimates of 3.0–4.7. The resulting regional distribution of JULES CH4 fluxes compare well against other estimates (Saunois et al 2016, section S4). The Amazon basin emissions and uncertainty ranges produced by JULES also compare well with estimates extrapolated from a large-scale measurement campaign (JULES: 24.6–53.9, Pangala et al 2017: 24.4–53.5 TgCH4yr−1; table S2). (As we have tuned the tree-mediated fluxes to be 50% of the total, and our flux totals agree with observations, it follows that there is also good agreement between the tree-mediated fluxes: JULES 12.3–27.0, Pangala et al 2017 11.5–26.2 TgCH4yr−1). The aforementioned comparisons demonstrate consistency across very different calibration approaches and different spatial and temporal scales, indicating that Q10CS,To is appropriately calibrated for a global-scale study.

We are able to use the regionally-calibrated Q10CS,To globally because CH4 fluxes are observed to have very similar temperature dependencies for a wide range of eco-systems and regions (Yvon-Durocher et al 2014). The above mapping approach cannot be directly applied to the NPP substrate-based CH4 emissions relation (JULES-NPP) however, because NPP is itself dependent on soil moisture and temperature. Instead, we calibrate JULES-NPP by comparing against regional fluxes across the optimised JULES-CS (section S2). The resulting values of Q10NPP,To for poor and rich fens, and bogs are 1.3, 1.6 and 2.3, respectively (SI figure S3(c), table S1).

From these comparisons with multiple measurements and models over different spatial and temporal scales, we demonstrate that both the JULES wetland extent and CH4 emission parameterisations respond appropriately to temperature and precipitation and are therefore suitable for the analysis of large-scale CH4 emissions in future climate scenarios.

Climate change simulations

To analyse the potential for wetland CH4 emissions to feedback on climate change, multiple simulations are performed using JULES coupled to a climate change impacts model (IMOGEN, section S5). IMOGEN (Huntingford et al 2010) is calibrated against 34 CMIP5 ESM climate simulations (table S6). We perform simulations for 3 RCP GHG scenarios: 2.6, 4.5 and 8.5 (Collins et al 2013), which range from a high mitigation strategy to 'business-as-usual'. All GHG concentrations, except for CH4, are prescribed to RCP values, so that interactive wetland CH4 emissions can modify atmospheric CH4 concentration and radiative forcing (section S5, Etminan et al 2016). To assess the strength of this wetland CH4-climate feedback, separate simulation sets are carried out with wetland emissions either fixed in time (REF), or able to respond to changes in meteorology.

The atmospheric lifetime of CH4 includes losses from tropospheric OH, stratospheric loss and soil sink, and is also dependent on CH4 concentration as increasing CH4 reduces tropospheric OH (CH4–OH factor s, section S5). Myhre et al (2013) (3.SM.2) quote contemporary lifetime ${\tau }_{o}$ = 9.25+/0.6 years and s = 0.25+/−0.03. For our control experiment (CTL) we set ${\tau }_{o}$ = 9.25, s = 0.25. To cover uncertainty we add two sensitivity experiments with ${\tau }_{o}$ = 8.65, s = 0.22 and ${\tau }_{o}$ = 9.85, s = 0.28 (section S5).

Both CH4 substrate relations, their Q10To's, and present-day global wetland emissions estimates and their uncertainties, are all considered in the control experiment ensemble (table S1, CTL). (For the purposes of climate simulations here, the lower, median and upper 2000–2009 average wetland flux from current best estimates (Saunois et al 2016), are used as the year 2000 LOW, MID and UPP global wetland flux totals, respectively). To investigate uncertainty in modelled physical processes further, additional model ensembles are run without the JULES vegetation-mediated CH4 transfer or tropical soils. We also investigate the impact of: modelled wetland extent errors using an observation-based mask; reduced substrate availability with soil depth; soil carbon uncertainties and; limiting the vegetation flux to Amazonia (sections S3, S4, S7). (Amazonia is the only region where the vegetation flux is studied comprehensively, and measurements from other regions suggest this flux may be smaller elsewhere, Covey and Megonigal 2019).

Analysing the main feedback drivers and sources of uncertainties

To rigorously assess the relative importance of the drivers of CH4 emission changes, JULES-CS and JULES-NPP, equations (2) and (3) are differentiated as functions of temperature and wetland (and NPP for JULES-NPP) giving:

Equation (4)

(As we assume a time invariant soil carbon is the main substrate source, Cs is approximated as changing little over the time period considered). For JULES-NPP, equation (3), NPP is not invariant in time, so this differentiates to:

Equation (5)

Changes in wetland fraction and precipitation are strongly related (Papa et al 2010) so equations (4) and (5) are approximated to:

Equation (6)

Equation (7)

Results

For the highest GHG scenario RCP8.5, global wetland CH4 emissions are projected to increase from 173 TgCH4yr−1 at 2000 to 254–337 TgCH4yr−1 and 244–321 TgCH4yr−1 by 2100 for MID JULES-CS and JULES-NPP, respectively. A maximum flux of 495 TgCH4yr−1 is predicted at 2100 for the 'UPP' estimate (or 494 TgCH4yr−1 if only considering the best estimate atmospheric lifetime, table S4, figures 2, 3(a)). Fractional increases in the tropics and extra-tropics are similar (figure S8). Hence future global growth in wetland CH4 flux is dominated by the tropics as this is the main source of present-day emissions.

Figure 2.

Figure 2. Impact of climate change on modelled changes in global wetland CH4 flux. Flux change from each control IMOGEN-JULES simulation and their individual drivers is represented by a circle (JULES LOW), plus (JULES MID) or diamond (JULES UPP). JULES-CS (upper panels) and JULES-NPP (lower panels) for RCP2.6 (a) and (d), RCP4.5 (b) and (e), RCP8.5 (c) and (f). Y-axes: change in IMOGEN simulated global wetland fluxes (FCH4) between 2000 and 2100. X-axes: predicted changes due to individual and combined drivers (equations (6) and (7)): precipitation (dark blue); temperature (light blue); NPP (yellow) and total (red). 5%–95% confidence intervals shown for: IMOGEN simulated modelled flux (vertical lines), and flux due to each/combined drivers (horizontal lines), with climate only (solid), and climate+JULES CH4 scheme (dotted–dashed). One-to-one and zero x-axis are shown as black dotted and dashed, respectively.

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Figure 3.

Figure 3. Changes due to interactive CH4 wetland emissions between 2000 and 2100. Increase (X(2100)-X(2000)) in: global wetland flux (a) and temperature (K) (f), radiative forcing (RF) per degree temperature rise (Wm-2K-1) (h). (b), ratio of wetland to anthropogenic CH4 flux at 2100 (fixed wetland flux; black lines). % increase in change ([X(2100)-X(2000)]/[XREF(2100)-XREF(2000)]*100) in: atmospheric CH4 concentration (c), CH4 radiative forcing (d), total radiating forcing (e), global temperature (g). Control simulations for JULES-CS (hashed) and JULES-NPP (open) bars. For each RCP: LOW (left), MID (central), UPP (right) bar pairs. % causes of spread for MID, RCP4.5 due to uncertainty in: climate (black), CH4 atmospheric lifetime (purple), CH4 parameterisation: temperature sensitivity Q10To (light blue); present-day total flux (orange), substrate (yellow). Individual dotted lines below LOW and above UPP bars: minimum and maximum values for ${\tau }_{o}$ = 8.65, s = 0.22 and ${\tau }_{o}$ = 9.85, s = 0.28, respectively.

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To understand the causes of these flux changes and their uncertainties, we present the impact of temperature, precipitation and NPP (light and dark blue and yellow symbols, respectively; figure 2) on global CH4 flux changes (equations (6) and (7)). Wetland extent responses are dominated by differences in precipitation projections (as demonstrated by comparing figures 2 and S7) which are themselves highly uncertain. Consequently the simulations do not predict a consistent expansion or contraction over most wetland regions (figures 1(g) and (h)). There is even a lack of consensus as to whether the global total wetland area is likely to increase or decrease in the future. (For example, for RCP8.5 simulations it varies from a 2% decrease to a 19% increase between 2000 and 2100). Hence projected changes in precipitation result in simulated CH4 flux changes of uncertain sign. The resulting flux changes are of relatively small magnitude however. Projected temperature change is a more important driver than precipitation, and results in both a larger CH4 flux response and a greater uncertainty (figure 2). For JULES-NPP, some of the temperature response is within the NPP term. As well as being dependent on temperature, NPP is also strongly driven by atmospheric CO2 (through increased CO2 fertilisation), which is in itself highly correlated with temperature.

In both substrate parameterisations the spread in projected wetland CH4 flux by year 2100 is dominated by uncertainty in the wetland emissions parameterisation (figure 3). The uncertainty due to simulated climate change (within a specific RCP) plays a smaller, but still significant role (63%–65% versus 35%–37% over the three RCP scenarios—only RCP4.5 shown in figure 3(a)). Within the wetland scheme, uncertainty due to present-day global wetland flux estimate is larger than that from temperature sensitivity (Q10To, figure 3(a)). Moreover the projected spread due to global present-day wetland emissions uncertainty alone is comparable to that from simulated climate change. Critically, in terms of CH4 generation process uncertainty, the impact of substrate source used (i.e. Cs versus NPP), is relatively small (between 5% and 13% for the different scenarios). We also find that the wetland physics sensitivity experiments have little impact on the projected future wetland flux (section S7).

Enhanced wetland CH4 emissions cause substantial 21st century increases in atmospheric CH4 concentration of up to 25.4% above that with fixed wetland emissions (and 23.6% without including the CH4 atmospheric lifetime sensitivity experiments) (figures 3(c) and 4). Depending on the scenario, the corresponding 21st century increases in total and CH4 radiative forcings are further enhanced by between 0.7%–10.0% and 3.5%–40.0%, respectively. The percentage changes in CH4 radiative forcing are higher for lower RCP scenarios (figures 3(c) and (d)) because CH4 radiative forcing is nonlinearly dependent on concentration (Etminan et al 2016). This radiative forcing enhancement leads to an additional increase in global air temperature of up to 0.21 K at 2100 (and land air temperature of up to 0.27 K -not shown).

Figure 4.

Figure 4. Spread of change in wetland CH4 flux and atmospheric CH4 concentration due to wetland CH4-climate feedback. (a), wetland CH4 flux changes relative to year 2000 and (b), corresponding atmospheric CH4 concentration. RCP2.6, 4.5 and 8.5: blue, green and red lines, respectively. For the control simulations, thick solid lines represent mean values for each RCP and hashed region represents the spread over climate patterns and wetland relations. Dashed lines represent atmospheric CH4 concentration prescribed in each RCP scenario with fixed wetland CH4 emissions (REF). Dotted lines show the minimums and maximums when CH4 atmospheric lifetime uncertainty is included.

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The relative causes of uncertainty in the enhanced total radiative forcing and percentage temperature changes are similar to those in wetland emissions (figure 3). In addition, atmospheric CH4 lifetime uncertainty contributes around 7% of the total spread in radiative forcing and temperature changes.

Due to wetland emissions feedback, significant reductions in allowed anthropogenic emissions are required to maintain projected temperature changes between 2020 and 2100 (appendix SB, table 1). For RCP2.6 these reductions are 21.4 GtC, with a likely value (greater than 68% probability) of between 12.4–30.4 GtC (4.6%–11.3%). This is consistent with the Comyn-Platt et al (2018) estimate of 19.6 GtC for the comparable 1.5 °C stabilisation threshold. (This is despite Comyn-Platt et al 2018 using a different substrate generation scheme, thereby further demonstrating that the impact of substrate used is relatively small). Near-term implications are significant with the RCP2.6 mid 21st century global temperature peak reached nine years earlier (4–16 years) (not shown).

Table 1.  Reduction in allowed anthropogenic (fossil fuel and land use related) emissions between 2020 and 2100 due to wetland CH4-climate feedback. Average, and range of 68% probability (mean and +/−1 standard deviation) shown in brackets. The values are based on the control and CH4 atmospheric lifetime sensitivity experiments.

  RCP2.6 RCP4.5 RCP8.5
Remaining anthr emissions (without wetland–CH4 feedback) 268.2 661.4 1809.3
Reduction (GtC) 21.4 (12.4–30.4) 36.7 (21.6–51.9) 79.1 (45.0–113.2)
Reduction as % of remaining 8.0 (4.6–11.3) 5.6 (3.3–7.8) 4.4 (2.5–6.3)

CH4 emissions from wetlands increase significantly from present day to 2100 in all simulated climate change patterns and RCP scenarios. In the higher sensitivity wetland emission relation, they may more than double between 2000 and 2100, with an associated change in atmospheric CH4 concentration of up to 952 ppbv (figure 4). The subsequent feedback on radiative forcing ranges from 0.01 to 0.11 Wm−2 K−1. Despite the improved physical representation in JULES, this has little impact on the feedback magnitude of the wetland emissions on climate at the global scale (section S7).

Discussion and conclusions

There is also considerable uncertainty in other inland water CH4 source emissions (Saunois et al 2016) and these are also likely to respond to climate change (Ciais et al 2013). Present-day rice agriculture emissions are estimated to be around 36 TgCH4yr−1 which is between 16% and 30% of natural wetland emission estimates (Saunois et al 2016). Moreover, even without rice agriculture expanding, their associated CH4 emissions are likely to increase in response to temperature (Khalil et al 1998), adding an additional radiative feedback.

We have included new physical processes: the CH4 transfer through tropical trees and the inclusion of tropical-specific soils, to improve wetland representation in this important region. This allows us to make more accurate assessments of the feedback magnitude between wetland CH4 release and climate change. We have determined this feedback uncertainty by constraining wetland parameterisations, using data from multiple sources over local to regional scales. Despite this, there remains a sizeable feedback uncertainty, which is dominated by relatively poorly known wetland extent and CH4 parameters, rather than that due to climate change. Our more rigorous and constrained approach helps explain the IPCC's assessment of 'low confidence' in the magnitude of the wetland CH4-climate feedback (Ciais et al 2013). Furthermore, we identify the main causes of the uncertainty range, which can be further constrained through future measurement campaigns focusing on detailed wetland processes, including those determining the vegetation transport of CH4 (Covey and Megonigal 2019). Given that the remaining lack of knowledge in contemporary global wetland CH4 flux is the single largest cause of wetland scheme uncertainty, improved estimates of present-day global wetland emissions remain a research priority.

The CH4 feedback on climate may be enhanced or reduced through interactions with other parts of the earth system through the intricate coupling of biogeochemical cycling and reactive atmospheric chemistry. For instance, we do not consider the interaction with the carbon cycle in which changing atmospheric CO2 and climate may alter the size and distribution of vegetation and soil carbon, and in turn the available substrate for methanogenesis. Understanding these interactions, and their potential nonlinearities, will become possible as the processes analysed in this study are routinely incorporated in to the next generation of ESM, and we suggest this should be a priority.

Under a range of future socio-economic assumptions, from high GHG emission mitigation to 'business-as-usual' scenarios, we find that wetland CH4 feedbacks in a warming climate will significantly augment atmospheric CH4 concentrations by up to 25.4% over the 21st century. This raises CH4 radiative forcing significantly beyond that caused by direct human activity, producing a positive feedback that further enhances climate change. Over the scenarios considered, the wetland feedback amplifies the 21st century CH4 radiative forcing on average by 14.4%, with uncertainty estimates indicating values as high 40.0% for the RCP4.5 scenario. This generates an average additional warming of 2.4%. Under the RCP2.6 emissions scenario (which gives an approximately 1.5 °C increase in temperature from pre-industrial to 2100), the 21st century temperature rise is amplified by up to 5.5%, and furthermore rises more quickly in the near term. This corresponds to a likely reduction in remaining allowed anthropogenic emissions of between 4.6%–11.3% in order to maintain the same temperature profiles. The more rapid warming and carbon budget reduction, imply that a combination of enhanced short-term emission cuts and longer-term increased use of negative emission technology, are required to be consistent with the Paris climate targets.

Acknowledgements

NG and AW acknowledge support by the Joint DECC/Defra Met Office Hadley Centre Climate Programme (GA01101). This work and its contributors (by NG and AW) were supported by the Newton Fund through the Met Office Climate Science for Service Partnership Brazil (CSSP Brazil). CH is grateful for support under the NERC CEH National Capability Fund. EP is grateful for support under the NERC CLIFFTOP project NE/P015050/1. We thank the Global Carbon Budget–Methane and their contributors for providing the regional data: Charles Koven and Xiyan Xu and William Riley (CLM4.5); Joe Melton and Vivek Arora (CTEM); Hanqin Tian and Bowen Zhang (DLEM); Thomas Kleinen and David Brovkin (LPJ-MPI); Ben Poulter and Zhen Zhang (LPJ-wsl); Renato Spahni and Fortunat Joos (LPX-Bern); Sushi Peng (ORCHIDEE); David Beerling and David Wilton (SDGVM); Changhui Peng and Qiuan Zhu (TRIPLEX-GHG); Akihiko Ito and Makoto Saito (VISIT); Peter Bergamaschi (TM5-EC-JRC/SURF); Peter Bergamaschi and Mihai Alexe (TM5-EC-JRC/GOSAT); Philippe Bousquet (LMDz-MIOP); Robin Locatelli (LMDz-PYVAR); Lori Bruhwiler (CT-CH4/SURF); Sander Houweling (TM5-SRON/SCIA and SURF); Misa Ishizawa (GELCA/SURF); Heon-Sook Kim (NIESTM/SURF and NIESTM/GOSAT); Prabir Patra (ACTM/SURF).

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