A generalizable framework for spatially explicit exploration of soil organic carbon sequestration on global marginal land | Scientific Reports – Nature.com

Thank you for visiting nature.com. You are using a browser version with limited support for CSS. To obtain the best experience, we recommend you use a more up to date browser (or turn off compatibility mode in Internet Explorer). In the meantime, to ensure continued support, we are displaying the site without styles and JavaScript.
Advertisement
Scientific Reports volume 12, Article number: 11144 (2022)
Metrics details
Land-based CO2 removal demands changes in management or new suitable areas to sustainably grow additional biomass without reducing food supply or damaging natural ecosystems. The soil organic carbon (SOC) sequestration pathway is thought to transfer atmospheric CO2 into a land unit, through plants, plant residues and other organic solids stored as part of the soil organic matter. No previous study explored SOC sequestration potentials on global marginal land. Here we integrated, into a generalizable modelling framework, the mapping of a set of biophysical (climatic and edaphic) and land conservation constraints to (i) identify suitable matches (i.e. biophysically possible combinations) of target areas with plant species, and (ii) to quantify contributions of pairing to long-term SOC sequestration (2020–2100). The proposed framework represents a refinement to previous mapping exercises, which seldom consider biophysical constraints, soil erosion, plant species tolerances to pedoclimatic conditions, and world protected areas. The approach was tested on marginal lands featuring SOC-deficient stocks (≤ 50 Mg SOC ha−1 to 30 cm depth) at 30 arc-sec resolution, consolidated into world regions × global ecological zones based on geo-localised products. The framework was shown to enable better-informed decision-making on interventions at large geographical scales, revealing biophysically realistic options, while management should be determined locally.
A soil organic carbon debt of 116 Pg SOC1 was estimated at the global top 2 m of soil, which has increased in the past two centuries due to increasing agricultural and grassland uses. This debt (i.e. the difference between the original pre-agriculture and the current stocks of SOC in exploited soils) demonstrates a strong link between land degradation and SOC losses (e.g. 30–50% of SOC in agricultural mineral soils has been lost due to degradation2,3), dependent on the degree of intensity and duration of soil exploitation. It has been recognised that the areas featuring historic SOC losses can now be considered as SOC sinks4, with a potential to store two thirds of today’s SOC debt by replenishing SOC stocks1.
SOC “sequestration” is considered as a key land-based mechanism, relying on plant photosynthesis to transfer atmospheric CO2 into the soil through plants, plant residues and other organic solids stored as part of humus5,6. While SOC “storage” refers to the increase in SOC stocks, it does not necessarily rely on atmospheric CO2 removal, as external (i.e. imported) inputs such as manure may be added. The former constitutes both a mitigation measure (for climate change but also for ecosystems quality) and a way to induce additional negative emissions (mitigation that would otherwise not have been adopted) as required by the Paris Agreement to limit warming below 2 °C7. For instance, the 4 per 1000 initiative, launched at the COP21 Paris Climate Summit in 2015 aims at increasing SOC sequestration through sustainable land management8. It is based on the premise that an annual mean SOC increase of 0.4% in the global agricultural topsoil (30–40 cm) would contribute to global sequestration of 2.5 Pg SOC year−19—an estimation subject to criticism, due to intrinsic data and model uncertainties10; yet representing a clear goal towards climate stabilisation.
In 2020, global mean atmospheric CO2 emissions were estimated at 10.2 ± 0.8 Pg C year−111. The technical feasibility of SOC sequestration may range as much as between 0.8 and 1.5 Pg SOC year−13 and 1.5–3.4 Pg SOC year−112—reliant on local land use type (e.g. agricultural), management and restoration (including external inputs) and pedoclimatic conditions, among other factors. Moreover, exploited SOC-deficient stocks < 30 Mg C ha−1 are expected to be able to attain high SOC sequestration after adopting best management practices9.
The bulk of agriculture’s contribution to SOC storage is influenced by land use management (e.g. addition of organic matter via organic amendments and fertilisers, deployment of improved crop rotations and cover crops), including the cultivation of specific crop types such as perennial and deep rooting species2,13. Perennial species have received special attention, as they generally require less soil work, enlarge the C fraction in the soil micro-aggregates, and increase belowground C allocation14,15. The extent to which crops in general contribute to SOC sequestration is, however, subject to extensive research16,17.
The cultivation of dedicated biomass enabling SOC sequestration and eventually providing feedstock for various economic pathways is intrinsically connected with land demand, and thus with the availability of new areas to grow plants sustainably; i.e. with no adverse effects, for instance, on the SOC debt, food security, ecosystem services, and biodiversity18. In the past decade, research has focused on identifying land cover unsuitable for food production but potentially suitable for non-food crops (e.g. bioenergy, biomaterials), defined as marginal land19. The expected benefits of exploiting marginal land are wide, ranging from soil quality improvements (e.g. soil fertility, soil structural stability)20 to SOC sequestration, through biodiversity conservation21 and eventual socio-economic development (e.g. employment, infrastructure, rural poverty alleviation)22.
Key types of land classifiable as marginal include degraded and abandoned agricultural lands. Degraded land, which may include soils naturally characterised by low productivity (e.g. natural high salinity soils, or heathlands such as the Mediterranean garrigue), has received considerable attention, as a key constituency of marginal land23. In particular, research led by the International Soil Reference and Information Centre (ISRIC), throughout various projects such as GLASOD24, GLADA25 and LADA26, applied the use of a remotely sensed global normalised difference vegetation index (NDVI) as a proxy for land degradation due to different causes27.
Among the dominant typologies of degraded land, the following FAO classification represents a synthesis of criteria: too cold (polar/boreal), alluvial soil in deserts, too dry, steep lands (dominant slope > 30%), shallow lands, poorly drained, coarse texture, vertisols, infertile (e.g. nutrient-poor), saline/sodic, acid sulphate, and peats (organic soils).The classification is referred to as the FAO agricultural problem land approach28, associated with the FAO/UNESCO Digital Soil Map of the World29, and now integrated into and superseded by the Harmonized World Soils Database (HWSD)30 and into FAO’s Global Agro-Ecological Zones (GAEZ)31.
For abandoned agricultural land, another key type of marginal land, extensive research has proposed different definitions and mapping approaches32,33,34. Agricultural land abandonment has been considered to be mainly driven by biophysical constraints, but also by reasons pertaining to farm structure, agricultural viability, as well as to changing population, political regimes, nature conservation and other regional contexts33,35. These approaches generically consist of comparing satellite data corresponding to two different periods, and interpreting the temporal land cover differences.
Several studies attempted to quantify and map marginal land use across spatial (global, national, regional and local data) and temporal (historic to current data) resolutions36. At the global scale, it has been quantified by mapping current land cover and land suitability indices37. However, it has not always been possible to identify the relative importance of agricultural (i.e. abandoned) and non-agricultural land types on the identification of marginal land, because of a combination of factors: analyses based exclusively on (bio)economic drivers, quality of underlying datasets and scales, and lack of detail on current land covers’ spatial (i.e. granularity) and temporal resolutions18.
Beyond the challenge of defining and identifying marginal lands, the design of SOC sequestration pathways involving biomass requires the correct pairing of suitable plant species with specific target areas, based on the compatibility of plant species with the target areas’ biophysical characteristics. Such endeavour is not negligible, as demonstrated by the body of research evidence, and recently reviewed at the global scale18.
A recently proposed strategy to facilitate global scale climate mitigation3, suggests that detailed maps of carbon sequestration potentials including erosion, associated with simple analytical tools, would contribute to supporting the global implementation of SOC sequestration. One of the first examples of such an approach for quantifying global SOC dynamics is that by Morais et al.38, which was applied to spatially differentiated unique homogenous territorial units characterised in three main land use classes, namely cropland, grassland and forest land. However, to our knowledge no study has been conducted on SOC sequestration on marginal land at global scale. Here we complement the work by Morais et al. (which focused on non-marginal land) and other approaches focusing partially on marginal land for energy crop production, usually at a regional scale39,40.
This study has thus a double purpose: (i) to propose a coherent generalizable framework to facilitate the mapping of marginal lands with low initial SOC stocks (here up to 50 Mg SOC ha−1 to 30 cm depth) at global scale and their matching with suitable plant species enhancing SOC sequestration, and (ii) to illustrate the feasibility of the proposed framework by means of a proof-of-concept implementation producing a quantification of SOC sequestration, resulting from suitable matches. Following the hypothesis that global soils with low initial SOC stocks are “non-saturated” and thus feature SOC sequestration potentials9, we chose to explore and map global SOC-deficient marginal lands to test this specific condition, yet under consideration of biophysical factors that limit plant growth.
The proposed framework allows quantifying global SOC sequestration potentials of biomass cultivation on target areas by accounting for both geographic- and plant species-dependent climatic and edaphic limitations. We combined and intersected georeferenced products and automatized the tasks of matching preselected “biopumps” (i.e. plant species featuring SOC sequestration enhancing capabilities and representing a potential source of feedstock for the bioeconomy) to target areas (i.e. aggregations of specific areas of global marginal land, based on ecological zoning). Such matching is established on the pedoclimatic tolerances of the former to the prevailing conditions of the latter, and was followed by a computation of both SOC stock changes due to biomass inputs and SOC losses due to erosion by water, using well-established models.
A simulation time horizon over 2020–2100 was selected in line with IPCC future climate scenarios throughout the twenty-first century for comparison purposes. A R code combined with the data treatment strategy depicted in Fig. 4, constitutes the proposed generalizable framework. The framework is able to produce estimations showing whether more SOC would be sequestered, in the long-term, than it would be lost to rain-driven erosion, if the matching plant species were systematically grown on the identified target areas. To our knowledge, no previous global study on SOC sequestration considered such careful identification of marginal land (i.e. integrating pedoclimatic constraints, plant species tolerances, and land conservation), while balancing both SOC stock changes and SOC losses to erosion.
To define the extent of marginal land, elements from various studies18,39,40 were combined to define marginal lands as land covers that are currently unused by agriculture due to an aggregation of socio-economic and biophysical constraints, or human-induced land degradation, but which could potentially be suitable for sustainable biomass production. Identified marginal lands (in total 2714 Mha) in this case-study consisted of non-agricultural land covers: i.e.: bare land (74.49%), sparsely vegetated areas (25.39%), including abandoned agricultural land (0.14%). These areas are presented in Supplementary Results, Fig. S1 for near-present conditions with SOC stocks divided into five SOC classes up to 50 Mg SOC ha−1 (to 30 cm depth) following increments of 10 Mg SOC ha−1. Additional intermediate maps are also presented in Supplementary Results, depicting marginal land (Fig. S2), examples of agricultural land abandonment (Figs. S3S6) and the criteria leading to the identification of target areas (Fig. S7S10) under the retained constraints (e.g. limiting initial SOC stock to 50 Mg ha−1, excluding protected areas, considering pedoclimatic constraints to plant growth, and consolidating target areas into global climate zones and world regions).
Figure 1 illustrates the resulting consolidated target areas, determined by geographies established as the combination of climate zones defined in FAO’s Global Ecological Zones (GEZ)41 and geo-political world regions. Overall, 27.2 Mha of land was identified as target areas based on 116 possible combinations of 21 world regions and 19 GEZ (here excluding water and polar) (Supplementary Methods, Tables S5 and S6). The identified target areas represent 1% of the initially defined SOC-deficient global marginal lands due to biophysical (e.g. pedoclimatic constraints to plant growth) and land conservation limitations.
Identified target areas on marginal lands here containing up to 50 Mg SOC ha−1 (to 30 cm depth) per global ecological zone and world region.
The majority of target areas were found in Asia (Eastern, Central, Southern, and Western), Northern Africa, and South America (Fig. 2), corresponding to GEZ in the Temperate, Tropical and Subtropical desert and mountain systems, as well as Temperate and Subtropical steppe. Europe accounted for 0.1% of all target areas, largely present in the Southern Europe Region concordant with GEZ Subtropical dry forest. All values per world region and GEZ are listed in the Supplementary Results, Table S1.
Relative geographical concentration of identified target areas.
Initially, 50 biopumps were preselected by scoring and ranking plant species on SOC sequestration enhancing capabilities, primary yield productivity, and marginal land adaptability. Preselection criteria and approach used are detailed in Supplementary Results, Table S2, including SOC sequestration potentials in Table S1 and Fig. S10. In total, 432 plant species were associated to the 50 preselected biopumps based on FAO’s ECOCROP database42. Datasets on the plant environmental requirements (i.e. climatic and edaphic conditions) were retrieved from the database to further assess the suitability of plant species on target areas. All datasets on plant species tolerance are available from a data repository43. The eventual introduction of invasive species in the receiving ecosystems was not considered beyond the exclusion of world protected areas.
The matching exercise resulted in 561 viable combinations (out of 50 112 theoretically possible matches) of target areas (116 GEZ × world regions) × biopumps (432 plant species), where 27 biopumps (associated to 56 plant species) were compatible with 12 world regions and 12 GEZ. The total area with cumulative net SOC stocks > 0 Mg ha−1 in the simulation end-year 2100 (i.e. the sequestered SOC is larger than the eroded SOC, implying either accumulation or a reduction of the initial SOC without reaching zero), comprised 0.55 Mha, representing about 2% of the initially identified target areas (27.2 Mha in total). The largest concentration in area was found in Western Africa × Tropical shrubland (0.30 Mha), Australia/New Zealand × Tropical desert (0.15 Mha), Australia/New Zealand × Tropical shrubland (0.04 Mha) and South America × Tropical dry forest (0.02 Mha).
Figure 3 provides an overview of the top 20 plant species with matching-related metadata. The top 5 biopumps with the highest SOC sequestration potentials in 2100, prior to the consideration of erosion, were neem (Melia azedarach), hemp (Cannabis sativa spp. Indica), cup plant (Silphium Perfoliatum L.), maize (Zea mays ssp. Mays), banana (Musa ssp.), with 196, 170, 70, 60, 59 Mg SOC ha−1, respectively. The biopumps with the highest number of pairings per region and/or GEZ, were acacia (Acacia ssp.), cup plant (S. perfoliatum), eucalyptus (Eucalyptus ssp.), sun hemp (Crotalaria juncea), banana (Musa ssp.), and cotton (Gossypium ssp.).
Top biopump soil carbon sequestration potentials, prior to erosion (number in boxes in Mg SOC ha−1 in year 2100) and preliminary compatibility with corresponding number of plant species, matching world regions and global ecological zones (GEZ), as well as total number of matches per target area.
Overall, 112 possible target area × biopump combinations (i.e. 20% of all viable matches) feature cumulative net SOC stocks > 0 Mg ha−1 in 2100. About 24% (i.e. 26 possible matches) represent one biopump per target area. The selection of one biopump per target area (world region × GEZ) yielding the highest net SOC stock in 2100 are referred to as a “best-case combination”. In total, 11 biopumps (associated with 14 species) were identified to yield the highest net SOC stock in 2100, whereas the most representative in number of matches were cup plant (S. perfoliatum, 9 matches) followed by neem (Melia ssp., 3 matches), and hemp (C. sativa ssp. indica, 3 matches). Data of the 26 best-case combinations are presented in Supplementary Results, Table S2.
A comparison of SOC stocks for the baseline year 2020 (referred to as “initial SOC”) with the final state of the simulation in 2100 (referred to as “final SOC”) has shown, for these best-case combinations, that the observed SOC stock level increases compared to initial SOC are significant (p-value < 1%). Overall net SOC stock potentials (final SOC minus eroded SOC) in 2100 ranged between 2.57 and 158.04 Mg ha−1 (equivalent to about 0.03–1.98 Mg ha−1 year−1).
Top 5 best-case combination were Australia/New Zealand × Tropical dry forest × M. azedarach var australasica, Northern Africa × Tropical dry forest × M. azedarach, Eastern Africa × Tropical dry forest × C. sativa ssp. indica, Central America × Tropical dry forest × C. sativa ssp. indica, and Eastern Africa × Tropical mountain system × C. sativa spp. indica, with net SOC stocks at 158.04, 144.87, 135.57, 118.50, 74.56 Mg ha−1, representing 93%, 98%, 80%, 87%, 50% of final SOC prior to erosion, respectively (Supplementary Results, Table S2). There were exceptions of best-case combinations, namely the matches: Australia/New Zealand × Tropical desert × A. erioloba, Middle Africa × Tropical moist forest × P. plicatulum, South America × Tropical dry forest × Miscanthus ssp., Australia/New Zealand × Subtropical steppe × J. curcas. These four situations, despite reaching net SOC > 0 Mg ha−1 in 2100, corresponded to a reduction of the initial SOC stock, respectively by 16%, 42%, 43%, 54%, as compared to the final SOC stock (Supplementary Results, Table S2); demonstrating that the implementation of biopumps would generate a loss of initial SOC stocks (in addition to losses from water erosion).
Spatially dependent soil erosion affected the net SOC potentials significantly (p-value < 1%). Long-term improvements in final SOC were not achieved for most originally identified 561 viable combinations. From the resulting best-case combinations, the most affected target areas by water erosion were: Tropical moist forest in South America, Temperate oceanic forest in Australia/New Zealand, Tropical dry forest in South America, and Tropical moist forest in Western Africa, where the resulting SOC losses represented respectively 91%, 88%, 88%, 86% of the final SOC (Supplementary Results, Table S2). About one third of the best-case results showed negligible SOC losses by erosion (up to 7% of final SOC values before erosion) located in European Russia (and Boreal coniferous forest and Boreal mountain system), Western Europe (Temperate mountain system) and Northern Europe (Temperate continental forest, Temperate oceanic forest and Boreal coniferous forest), Australia/New Zealand (Tropical dry forest and Temperate oceanic forest).
The framework design is generic enough to be implemented in other settings, regarding target area definition, plant species of interest, scopes (e.g. geographic boundaries), as well as temporal and spatial resolutions. The provided R script in Ref.43 is usable in different situations as long as the required input data is organised in the prescribed way. Moreover, the framework is flexible to accommodate different SOC sequestration and erosion models (e.g. by wind), depending on the required outputs and data availability. For our example, we selected the monthly time-stepped RothC model (detailed in “Methods” section), being an appropriate SOC model due to its: (i) demonstrated performance to replicate observed SOC changes in validation experiments, as compared with other models (described in Supplementary Methods), (ii) applicability to a wide range of world climates and regions in combination with GIS products4,38; (iii) recognition, being recommended as a standard spatialized SOC model at a 30 arcsec resolution by the FAO44.
As a proof-of-concept we applied the framework on SOC-deficient global marginal lands under well-defined criteria and were able to identify suitable plant species delivering highest net SOC sequestration on marginal lands, thus showing the feasibility and interest of the proposed framework to produce immediately informative results. These results could not be compared with those of previous studies because no previous research, to our knowledge, has focused on the same definition of marginal lands (featuring SOC erosion, land conservation areas, and pedoclimatic constraints to plant growth).
The climatic and edaphic characteristics of the target areas were averaged at the world region × GEZ scale. Despite the loss of detail, we considered that the consolidated target areas were the more suitable geographical resolution to explore biopump compatibility to marginal land at a manageable scale. Modelling implications of different geographical resolutions, however, requires further assessment. Furthermore, the projected long-term SOC changes were based on near-term climate data, i.e. disregarding climate change effects on SOC stocks dependent on temperature, precipitation and evapotranspiration variables. Both the uncertainties associated to the consolidation of target areas and future climate trajectories (e.g. as defined in the 6th Climate Model Intercomparison Project, CMIP645) are addressed in an upcoming publication by our team.
We identified abandoned agricultural land, as a key component of marginal land, of about 3.76 Mha for SOC stocks ≤ 50 Mg ha−1 (to 30 cm depth) over the years 2010–2018 (about 0.47 Mha year−1) based on ESA CCI46. A global historic land use comparison over the period 1700–200047 determined permanent cropland conversions into other land covers of about 210 (about 0.7 Mha year−1) and 269 Mha (0.9 Mha year−1) based on the datasets HYDEv3.048 and SAGE49 respectively. A recent study35 quantified the world’s current extend of land use change and developed a model called HILDA+ to provide annual harmonised global land use data with national inventories at near-present. Cropland use changes were identified at 1029 Mha over the period 1960–2015 (about 0.19 Mha year−1) with HYDEv3.250 and 1035 Mha over the period 1960–2011 (about 0.20 Mha year−1) with SAGE49. A comparison of the former and the later with HILDA+ over the same periods showed higher results by 31% and 24%, respectively. The annualised values are comparable among different studies with different temporal resolutions; however, it generates uncertainty in the interannual variability as well as in scope and definition of abandoned agricultural land vs. cropland use change.
A key hypothesis for high initial SOC losses, despite biopump implementation, was that very strong seasonal precipitation, coupled with incomplete protection of the soil by canopy (expressed as the cover management factor in the erosion model) may lead to these effects. Another hypothesis, for the global case study selection, was that only SOC-deficient land covers are interesting for biopump implementation, as they have not reached SOC saturation and are likely to attain higher sequestration potentials51. However, SOC-deficient soils with < 0.5% and < 0.75% organic carbon content (equivalent to 21 and 31.5 Mg SOC ha−1 respectively to 30 cm depth52,53)may feature severe to sub-severe soil fertility deficiency54.
We disregarded the (sub-)severe soil fertility constraints for this exercise by cross-referencing global land covers with global SOC stocks ≤ 50 Mg ha−1 (up to 1.2% organic carbon content to 30 cm depth). This soil constraint might even further reduce the identified target areas. However, we excluded it because the residual biomass, as input to the soil, contributes to soil fertility and other management practices might further improve the soil quality9. Any land use management (or change) influences the evolution of SOC, which need to be specified in the soil model. In our example, we have not considered additional management practices other than the inclusion of plant-based C-inputs. Cultivation practices in terms of resource requirements (e.g. nutrient supply, irrigation), including best management practices (e.g. organic amendments and fertilisers, cover crops), should be considered in more detailed assessments, as they have been shown to influence SOC sequestration rates9. Other specific agronomic requirements (e.g. to prioritise only low-input species on marginal land), as well as ecological impacts and invasion risks (of so-called alien or invasive species), need further assessment.
Moreover, RothC is a non-saturating SOC model55, yet deemed to yield accurate predictions in cases when C-inputs are “low”56 (e.g. in the absence of organic fertilisation). A further refinement in the framework would involve adding a C-saturating model to better account for management practices, including organic fertilisation55,57,58.
About 13% of all inventoried plant species were suitable for the identified target areas, yet representing about 54% of the preselected biopumps. The preselection criteria alone were not a qualification for SOC improvements and biomass productivity. The study has demonstrated that the net sequestration is a result of a combination of biophysical factors (e.g. soil, terrain and climate types, rain erosion, etc.), and that the performance of one crop on one target area is not the same on another. Several other elements would require consideration, such as local environmental challenges (e.g. compaction and low water retention, limited nutrients, low organic matter and potential phytotoxicity, weed and pests, etc.), trade-offs with competing land uses (e.g. forage and livestock, housing, conservation, recreation, etc.), and socio-economic market interferences (e.g. disruption of value chains or people’s livelihoods).
In conclusion, for robust estimation of SOC turnover in marginal lands, erosion and pedoclimatic limitations to plant growth should be considered. Moreover, marginal lands should be considered for SOC sequestration initiatives as an untapped resource, beyond agricultural/forestry land through management, despite potentially low productivity.
We developed a framework to explore SOC sequestration potentials by various plant species and categories, and applied it to identifying and consolidating global target areas delimited by geopolitical and environmental boundaries. The proposed framework relies on the use of georeferenced products, corresponding to the needs of macro-level global models. It was structured in four main steps (Fig. 4):
identifying target areas corresponding to land covers of interest, while considering biophysical constraints to biomass production and land conservation (in our example: global marginal land);
characterising target areas by their pedoclimatic and terrain conditions, and consolidating them into the required level of aggregation/granularity (in our example: consolidated target areas defined by geopolitical world regions and geoecological zones),
selecting plant species or groups of species (in our example: promising biopumps) and determining their environmental requirements/tolerances, and
matching target area × biopumps as determined by the compatibility of plant species to target areas’ biophysical characteristics, and modelling soil C flows of the resulting target areas-biopump pairs.
Stepwise framework and data sources for our case study. Temp. temperature, Prec. Precipitation, EVT evapotranspiration, SPEI standardised precipitation evapotranspiration index, PET potential evapotranspiration, SOC soil organic carbon.
The full list of exploited data and sources of georeferenced data is presented in the dataset43 and Supplementary Methods, Table S1.
Global marginal lands were mapped at a 30 arcsec (1 km) resolution, using a geographic information system (ArcGIS v10.6). We studied different definitions of marginal land to segregate land types into agricultural (potentially suitable for food production historically, currently or in future) and non-agricultural (unsuitable/unfavourable for food production). The selection was based on a combination of various criteria of soil constraints to biomass (plant-based) production from key marginal land studies (detailed in Supplementary Methods, Tables S2 and S3) to ensure that their associated biophysical constraints would be compatible with the environmental requirements for plant growth, and that chosen areas correspond to a land cover category that, if changed, would not contribute to further environmental degradation (including SOC losses). In our example, we followed five sub-steps to identify marginal lands:
In step 1.1, we explored the global land cover (LC) map by the European Space Agency Copernicus Climate Change Initiative (ESA-CCI) for the year 2018 at a 300 m (9.7 arcsec at the equator) resolution, which features 22 LC classes defined in the FAO Land Cover Classification System59 (see Supplementary Methods, Table S4). We retained bare and sparsely vegetated (< 15% of vegetation) areas, as all other LC classes likely feature food/feed production (e.g. irrigated or rainfed cropland, natural grasslands), densities of vegetation that would risk severe damage to natural ecosystems and SOC losses from land use change (e.g. forests and shrubland), or are vulnerable to crop growth due severe biophysical constraints (e.g. lichens and mosses).
In step 1.2, we identified recent abandoned agricultural land, understood as the share of marginal agricultural land that is unused or underutilised. The extent of abandonment was associated with land cover change from previous irrigated or rainfed cropland to other LC classes, by comparing ESA-CCI46 georeferenced products from the years 2010 and 2018. We considered, elaborating upon the definition from Van Asselen and Verburg60, a transition to mosaic cropland/natural vegetation (complemented with mosaic cropland/natural vegetation to semi-natural), grasslands, sparse vegetation, bare areas, mosaic herbaceous cover or shrubland.
In step 1.3, we refined the previous filter by analysing the global LC regarding SOC stocks [Mg ha−1] in topsoil (≤ 30 cm), based on the FAO’s Global Soil Organic (GSOC v1.5) map61 for the year 2017, and retaining SOC-deficient areas featuring up to 50 Mg ha−1.
In step 1.4, we filtered out areas corresponding to geographically defined protected areas, particularly important for biodiversity and ecosystem services, covered in the World Database on Protected Areas (WDPA v1.6) map, a georeferenced product of the UN Environment Programme World Conservation Monitoring Centre (UNEP-WCMC)62.
In step 1.5, we identified the biophysical constraints associated with the lands satisfying the previous two conditions, in order to discard areas featuring (sub-)severe soil and terrain restrictions that would exceed the tolerances of potential plant species. These constraints correspond to those associated with degraded lands in the georeferenced FAO Dominant Type of Problem Lands product for a generic perspective, complemented by the Harmonized World Soil Database (HWSD v1.21)30 on soil properties.
The identified marginal lands were further characterised with their edaphic and climatic conditions for an iterative refinement in finding possible matches with biopumps’ environmental tolerances, as well as to inform SOC models. In our example, we used the following georeferenced products:
Soil properties (e.g. texture, clay content, pH, bulk density, depth) and terrain specification (slope and elevation) were obtained, respectively, from HWSD v1.2130 and GMTED201063 at a 30 arcsec resolution.
Near present climate data (monthly temperature and precipitation, and evapotranspiration) were retrieved from the Climatologies at High resolution for the Earth’s Land Surface Areas (CHELSA v1.2)64 at 30 arcsec for the years 1979–2013.
Geographic boundaries were established with a Global Shapefile from the global administrative areas (GDAM v4) database65. Layers for world regions (represented by the boundaries of 25 commonly recognised regions (Supplementary Methods, Table S5), as well as latitudes and longitude grids at 30 degrees, were retrieved as Esri ArcGIS Data and Maps products.
Climate zones were classified as in FAO’s Global Ecological Zones (GEZ)41, consisting of 19 classes based on essential biological boundaries, i.e. with relatively homogeneous vegetation physiognomy (Supplementary Methods, Table S6).
Once all individual (contiguous pixels) marginal lands were characterised, it was necessary to consolidate them into larger target areas, according with the desired scope and granularity. In our example, we consolidated all marginal lands within the same GEZ (e.g. Tropical shrubland) and geo-political world region (e.g. West Africa), coarsely following66.
A preselection of potential biopumps was performed and the plant data recorded into a database to evaluate their suitability to grow on identified and consolidated target areas based on their pedoclimatic requirements, and to inform the SOC model (e.g. plant-based organic C-inputs). Initially a list of 164 herbaceous and woody plants were considered, and data compiled from diverse data sources specific to agricultural perennial67 and lignocellulosic bioenergy68 crops, including all 68 industrial crops initially considered in the EU H2020 MAGIC project (www.magic-h2020.eu/). The preselection was performed via a semi-quantitative multi-criteria analysis by scoring and ranking SOC sequestration performance from above and below-ground C-inputs to the soil, feedstock productivity, and marginal land suitability (detailed in Supplementary Methods, Table S7).
Data on the pedoclimatic tolerances provided in Ref.43 for the matching were collected from the FAO’s ECOCROP database42, per biopump, for the following variables: temperature [°C], precipitation [mm], pH, soil texture (coarse, medium, fine), altitude [m], and global climate zones. Other essential soil properties (e.g. soil drainage, rooting deep) were previously considered as limiting factors for determining target areas suitable for biomass cultivation. The ECOCROP climate zone classification system based on Köppen69 was harmonised with the FAO’s GEZ70 used for target areas consolidation, to enable the matching (harmonisation detailed in Supplementary Methods, Table S6). Moreover, several plant species with the same common name were recorded, showing different tolerances, to ensure a broader initial pool for the matching exercise, and because species specifications were lacking for some of the previously used datasets.
The land use class of biopumps was classified into three types based on the life form described in retained datasets42,67,71: grass (e.g. bahiagrass, hemp, miscanthus, banana, bamboo, etc., including small woody or herbaceous shrubs (e.g. blueberry, etc.), crops (e.g. sugar cane, maize, loofah, etc.), and trees (e.g. short rotation coppice, orchards, tree-nuts, etc., as well as woody shrubs that are tree-like, e.g. due woody stem, lifetime, size and physiognomy of the plant). Uncertainties may have accumulated where the boundaries between grass and woody species are not clear.
Data provided in Ref.43 on plant organic C-inputs [Mg ha−1 year−1] were computed by the fractioning and C partitioning approach72, individually for above- (product, stem, and leaves) and below- (roots) ground compartments and C contents per fraction [%]73. The total C-inputs were resolved by partitioning the C per fraction to the soil, depended on the lifecycle (annual or perennial) and lifetime in years. For perennial species several estimates are required, as variations arise from annualising the aboveground C-inputs (e.g. whether the leaves are deciduous or evergreen or the stem is considered a bioeconomy feedstock). Roots, on the contrary, remain over the entire rotation length in the soil. We adopted a linear approach by dividing the total C root by the lifetime in years, here assuming an uneven-aged approach74.
Once both target areas and a list of candidate plant species were identified, it was necessary to determine matches that would be, ad minimum, biophysically possible. A clear way to achieve such pairings is to compare the pedoclimatic conditions prevailing in the target areas with those of the plants.
We developed a R (R Core Team75) engine provided in Ref.43 to firstly identify the corresponding matches between potential biopumps and target areas, and subsequently run the models for both SOC stock changes and SOC losses to erosion per matched target area-biopump pair up to the year 2100. A match took place when the tolerance ranges of biopumps were within the values associated to the target areas (e.g. temperature, pH, elevation, climatic zone compatibility, etc.). The resulting combinations contain all the information gathered from the previous modules, which is a unique set of input data required to initiate the SOC model and compute the associated SOC stock changes.
We used the monthly time-stepped and processes-based Rothamsted C (RothC) model v26.376,77 to compute SOC sequestration dynamic (described in Supplementary Methods, including a model comparison in Table S8). RothC, computes change in SOC from known organic C-inputs78. RothC subdivides the soil into five conceptual SOM pools: decomposable plant material (DPM), resistant plant material (RPM), microbial biomass (BIO), humified organic matter (HUM)) and inert organic matter (IOM). The decay process depends on soil clay content [%], average monthly temperature [°C], precipitation and evapotranspiration [mm], land cover and management, soil depth [cm] and annual C inputs [Mg C ha−1] from residues and/or exogenous organic matter (e.g. manure). C-inputs specific to each pool (except for IOM) are described by a rate constant parametrised for grassland, crop and forest land.
Model estimations of SOC turnover, be it produced by Earth system models or by soil/agroecosystem models, and especially at large (e.g. global) scales, are often in disagreement. The causes are multiple, and relate in the case of Earth system models to differences in simulated state variables79, and in the case of soil models and agroecosystem models to structural model differences (e.g. humidity and temperature effects sub-models)80. For illustration purposes, we retained the RothC model, previously used for global estimations, given its flexibility and suitability under varying pedoclimatic conditions4,81,82,83.
To run RothC for a combination of multiple sites and biopumps we used the SoilR package v1.184, which provides a library of functions and tools under the R environment. For the initialisation of the conceptual carbon pools we used pedotransfer functions (equation and constants provided in Supplementary Methods), which seemed appropriate, as other approaches (e.g. physico-chemical or model equilibrium analysis) are not measurable at the regional scale. Monthly temperature and precipitation data were retrieved from CHELSA64, and monthly evapotranspiration from CGIAR’s High-Resolution Global Soil–Water Balance85.
The SOC sequestration estimations were complemented with the method described in Lugato et al.86 to compute SOC erosion from soil erosion by water (detailed in Supplementary Methods). Input layers for soil erosion were used from the Global Soil Loss map at a 25 km (810 arcsec) resolution for the year 201287, based on a Revised Universal Soil Loss Equation (RUSLE)-based method88. Retained cover-management factors required by the SOC erosion method86 are listed in Supplementary Methods, Table S9.
The p-values were computed via a paired sample t-test.
Dataset required for the framework implementation in Ref.43 (https://doi.org/10.48531/JBRU.CALMIP/A3CIFZ).
Sanderman, J., Hengl, T. & Fiske, G. J. Erratum: Soil carbon debt of 12,000 years of human land use. Proc. Natl. Acad. Sci. U. S. A. 115, E1700 (2018).
Google Scholar 
Paustian, K., Larson, E., Kent, J., Marx, E. & Swan, A. Soil C sequestration as a biological negative emission strategy. Front. Clim. 1, 1–11 (2019).
Article  Google Scholar 
Amelung, W. et al. Towards a global-scale soil climate mitigation strategy. Nat. Commun. 11, 1–10 (2020).
Article  CAS  Google Scholar 
Gottschalk, P. et al. How will organic carbon stocks in mineral soils evolve under future climate? Global projections using RothC for a range of climate change scenarios. Biogeosciences 9, 3151–3171 (2012).
ADS  CAS  Article  Google Scholar 
Olson, K. R., Al-Kaisi, M. M., Lal, R. & Lowery, B. Experimental consideration, treatments, and methods in determining soil organic carbon sequestration rates. Soil Sci. Soc. Am. J. 78, 348–360 (2014).
ADS  Article  CAS  Google Scholar 
Chenu, C. et al. Increasing organic stocks in agricultural soils: Knowledge gaps and potential innovations. Soil Tillage Res. 188, 41–52 (2019).
Article  Google Scholar 
Brander, M., Ascui, F., Scott, V. & Tett, S. Carbon accounting for negative emissions technologies. Clim. Policy 21, 1–19 (2021).
Article  Google Scholar 
Rumpel, C. et al. The 4p1000 initiative: Opportunities, limitations and challenges for implementing soil organic carbon sequestration as a sustainable development strategy. Ambio 49, 350–360 (2020).
PubMed  Article  Google Scholar 
Minasny, B. et al. Soil carbon 4 per mille. Geoderma 292, 59–86 (2017).
ADS  Article  Google Scholar 
White, R. E., Davidson, B., Lam, S. K. & Chen, D. A critique of the paper ‘Soil carbon 4 per mille’’ by Minasny et al. (2017)’. Geoderma 309, 115–117 (2018).
ADS  Article  Google Scholar 
Friedlingstein, P. et al. Global carbon budget 2021. Earth Syst. Sci. Data Discuss. (2021).
Lal, R. Digging deeper: A holistic perspective of factors affecting soil organic carbon sequestration in agroecosystems. Glob. Change Biol. 24, 3285–3301 (2018).
ADS  Article  Google Scholar 
Albers, A., Avadí, A., Benoist, A., Collet, P. & Hélias, A. Modelling dynamic soil organic carbon flows of annual and perennial energy crops to inform energy-transport policy scenarios in France. Sci. Total Environ. 718, 1–19 (2020).
Article  CAS  Google Scholar 
Chimento, C., Almagro, M. & Amaducci, S. Carbon sequestration potential in perennial bioenergy crops: The importance of organic matter inputs and its physical protection. GCB Bioenergy 8, 111–121 (2016).
CAS  Article  Google Scholar 
Peixoto, L. et al. Deep-rooted perennial crops differ in capacity to stabilize C inputs in deep soil layers. Sci. Rep. 12, 1–10 (2022).
ADS  Article  CAS  Google Scholar 
Stockmann, U. et al. The knowns, known unknowns and unknowns of sequestration of soil organic carbon. Agric. Ecosyst. Environ. 164, 80–99 (2013).
CAS  Article  Google Scholar 
Mathew, I., Shimelis, H., Mutema, M., Minasny, B. & Chaplot, V. Crops for increasing soil organic carbon stocks—A global meta analysis. Geoderma 367, 114230 (2020).
ADS  CAS  Article  Google Scholar 
Mellor, P., Lord, R. A., Joao, E., Thomas, R. & Hursthouse, A. Identifying non-agricultural marginal lands as a route to sustainable bioenergy provision—A review and holistic definition. Renew. Sustain. Energy Rev. 135, 110220 (2020).
Article  Google Scholar 
Kang, S. et al. Marginal lands: Concept, assessment and management. J. Agric. Sci. 5, 129–139 (2013).
Google Scholar 
Blanco-Canqui, H. Growing dedicated energy crops on marginal lands and ecosystem services. Soil Sci. Soc. Am. J. 80, 845–858 (2016).
ADS  CAS  Article  Google Scholar 
Dauber, J. & Miyake, S. To integrate or to segregate food crop and energy crop cultivation at the landscape scale? Perspectives on biodiversity conservation in agriculture in Europe. Energy. Sustain. Soc. 6, 1–11 (2016).
Google Scholar 
Von Cossel, M. et al. Prospects of bioenergy cropping systems for a more social-ecologically sound bioeconomy. Agronomy 9, 605 (2019).
Article  CAS  Google Scholar 
Gibbs, H. K. & Salmon, J. M. Mapping the world’s degraded lands. Appl. Geogr. 57, 12–21 (2015).
Article  Google Scholar 
Oldeman, L. R., Hakkeling, R. T. A. & Sombroek, W. G. World map of the status of human-induced soil degradation: An explanatory note. Glob. Assess. Soil Degrad. GLASOD https://doi.org/10.1016/0016-7061(92)90047-b (1991).
Article  Google Scholar 
Bai, Z. G., Dent, D. L., Olsson, L. & Schaepman, M. E. An update of GLADA – Global assessment of land degradation and improvement. Zurich Open Repository and Archive report 2008/01 (2011).
FAO. Land Degradation Assessment in Drylands (LADA): Methodology and results. LADA Project (2013).
Yengoh, G. T., Dent, D., Olsson, L., Tengberg, A. E. & Tucker III, C. J. Use of the Normalized Difference Vegetation Index (NDVI) to Assess Land Degradation at Multiple Scales. (Springer, 2014) https://doi.org/10.1007/978-3-319-24112-8.
Eliasson, Å. Review of Land Evaluation Methods for Quantifying Natural Constraints to Agriculture. JRC Scientific and Technical Reports (2007).
Sanchez, P. A. et al. Digital soil map of the world. Science (80-). 325, 680–681 (2009).
CAS  Article  Google Scholar 
FAO/IIASA. Harmonized World Soil Database (version 1.2). FAO, Rome, Italy and IIASA, Laxenburg, Austria (2009).
IIASA/FAO. Global Agro-ecological Zones (GAEZ v3.0). (2012).
Goga, T. et al. A review of the application of remote sensing data for abandoned agricultural land identification with focus on Central and Eastern Europe. Remote Sens. 11, 2759 (2019).
ADS  Article  Google Scholar 
Perpiña Castillo, C. et al. Agricultural Land Abandonment in the EU Within 2015–2030. JRC Policy Insights (2018).
Yin, H. et al. Mapping agricultural land abandonment from spatial and temporal segmentation of Landsat time series. Remote Sens. Environ. 210, 12–24 (2018).
ADS  Article  Google Scholar 
Winkler, K., Fuchs, R., Rounsevell, M. & Herold, M. Global land use changes are four times greater than previously estimated. Nat. Commun. 12, 1–10 (2021).
Article  CAS  Google Scholar 
Lewis, S. M. & Kelly, M. Mapping the potential for biofuel production on marginal lands: Differences in definitions, data and models across scales. ISPRS Int. J. Geo-Inf. 3, 430–459 (2014).
Article  Google Scholar 
Cai, A. et al. Long-term straw decomposition in agro-ecosystems described by a unified three-exponentiation equation with thermal time. Sci. Total Environ. 636, 699–708 (2018).
ADS  CAS  PubMed  Article  Google Scholar 
Morais, T. G., Teixeira, R. F. M. & Domingos, T. Detailed global modelling of soil organic carbon in cropland, grassland and forest soils. PLoS ONE 14, 1–27 (2019).
Article  CAS  Google Scholar 
Milbrandt, A. & Overend, R. P. Assessment of Biomass Resources from Marginal Lands in APEC Economies. 52 (2009) https://doi.org/10.2172/968464.
Elbersen, B. et al. Deliverable 2.6 Methodological approaches to identify and map marginal land suitable for industrial crops in Europe. EU Horizon 2020; MAGIC; GA-No.: 727698 (2020).
FAO. Global ecological zones for FAO forest reporting: 2010 Update. Forest resources Assessment Working Paper 179 (2012).
FAO. FAO ECOCROP: The Crop Environmental Requirements Database. http://ecocrop.fao.org/ecocrop/srv/en/home; available on: https://github.com/supersistence/EcoCrop-ScrapeR (2018).
Albers, A., Avadí, A. & Hamelin, L. Data to assess spatially and species-explicit plant-based soil carbon sequestration on global marginal land. (2021) https://doi.org/10.48531/JBRU.CALMIP/A3CIFZ.
FAO. Technical specifications and country guidelines for Global Soil Organic Carbon Sequestration Potential Map (GSOCseq). Pillar 4 Working Group & INSII, vol. 42 (2020).
Eyring, V. et al. Overview of the Coupled Model Intercomparison Project Phase 6 (CMIP6) experimental design and organization. Geosci. Model Dev. 9, 1937–1958 (2016).
ADS  Article  Google Scholar 
ESA. Land Cover CCI Product User Guide Version 2. Tech. Rep. maps.elie.ucl.ac.be/CCI/viewer/download/ESACCI-LC-Ph2-PUGv2_2.0.pdf (2017).
Campbell, J. E., Lobell, D. B., Genova, R. C. & Field, C. B. The global potential of bioenergy on abandoned agriculture lands. Environ. Sci. Technol. 42, 5791–5794 (2008).
ADS  CAS  PubMed  Article  Google Scholar 
Goldewijk, K. K. Estimating global land use change over the past 300 years: The HYDE database. Glob. Biogeochem. Cycles 15, 417–433 (2001).
ADS  Article  Google Scholar 
Ramankutty, N. & Foley, J. A. Estimating historical changes in global land cover: Croplands from 1700 to 1992. Glob. Biogeochem. Cycles 13, 997–1027 (1999).
ADS  CAS  Article  Google Scholar 
Goldewijk, K. K., Beusen, A., Doelman, J. & Stehfest, E. Anthropogenic land use estimates for the Holocene; HYDE 3.2. Earth Syst. Sci. Data Discuss. 9, 927–953 (2017).
ADS  Article  Google Scholar 
Bünemann, E. K. et al. Soil quality—A critical review. Soil Biol. Biochem. 120, 105–125 (2018).
Article  CAS  Google Scholar 
Gaucher, C., Domingues-Hamdi, É., Prin-Mathieu, C., Menu, P. & Baudin-Creuza, V. Interaction of recombinant octameric hemoglobin with endothelial cells. Comptes Rendus Biol. 338, 92–102 (2003).
Google Scholar 
FAO. Measuring and modelling soil carbon stocks and stock changes in livestock production systems: Guidelines for assessment (Version 1). Livestock Environmental Assessment and Performance (LEAP) Partnership. (2019).
Jones, R. et al. Updated common bio-physical criteria to define natural constraints for agriculture in Europe: Definition and scientific justification for the common biophysical criteria: Technical factsheets. (2012). https://doi.org/10.2788/91182.
White, C. M., Kemanian, A. R. & Kaye, J. P. Implications of carbon saturation model structures for simulated nitrogen mineralization dynamics. Biogeosciences 11, 6725–6738 (2014).
ADS  Article  Google Scholar 
Heitkamp, F., Wendland, M., Offenberger, K. & Gerold, G. Implications of input estimation, residue quality and carbon saturation on the predictive power of the Rothamsted Carbon Model. Geoderma 170, 168–175 (2012).
ADS  CAS  Article  Google Scholar 
Kirschbaum, M. U. F., Moinet, G. Y. K., Hedley, C. B., Beare, M. H. & McNally, S. R. A conceptual model of carbon stabilisation based on patterns observed in different soils. Soil Biol. Biochem. 141, 107683 (2020).
CAS  Article  Google Scholar 
Stewart, C. E., Plante, A. F., Paustian, K., Conant, R. T. & Six, J. Soil carbon saturation: Linking concept and measurable carbon pools. Soil Sci. Soc. Am. J. 72, 379–392 (2008).
ADS  CAS  Article  Google Scholar 
Di Gregorio, A. Land Cover Classification System. Classification concepts. Software version 3. October (2016).
Van Asselen, S. & Verburg, P. H. Land cover change or land-use intensification: Simulating land system change with a global-scale land change model. Glob. Change Biol. 19, 3648–3667 (2013).
ADS  Article  Google Scholar 
FAO and ITPS. Global Soil Organic Map V1.5: Technical Report. (2020) https://doi.org/10.4060/ca7597en.
UNEP-WCMC. User Manual for the World Database on Protected Areas and world database on other effective area- based conservation measures: 1.6. https://wdpa.s3-eu-west-1.amazonaws.com/WDPA_Manual/English/WDPA_WDOECM_Manual_1_6.pdf (2019).
Danielson, J. J. & Gesch, D. B. Global multi-resolution terrain elevation data 2010 (GMTED2010), vol. 2010 (2011).
Karger, D. N. et al. Data from: Climatologies at high resolution for the earth’s land surface areas. Dryad Digit. Repos. https://doi.org/10.5061/dryad.kd1d4 (2018).
GADM. Global Administrative (GADM )maps and data. https://gadm.org/download_world.html (2018).
Galland, V., Avadí, A., Bockstaller, C. & Paillat, J.-M. Data to inform the modelling of direct nitrogen field emissions from global agriculture. Portail Data INRAE, V1 (2020).
Ledo, A. et al. A global, empirical, harmonised dataset of soil organic carbon changes under perennial crops. Sci. Data 6, 1–7 (2019).
Article  Google Scholar 
Li, W., Ciais, P., Makowski, D. & Peng, S. Data descriptor: A global yield dataset for major lignocellulosic bioenergy crops based on field measurements. Sci. Data 5, 1–10 (2018).
Article  CAS  Google Scholar 
Köppen, W. Grundrisse der Klimakunde. (Walter de Gruyter Co., 1931).
Fischer, G. et al. Global Agro-ecological Zones (GAEZ v3.0): Model Documentation. (2012).
Monfreda, C., Ramankutty, N. & Foley, J. A. Farming the planet: 2. Geographic distribution of crop areas, yields, physiological types, and net primary production in the year 2000. Glob. Biogeochem. Cycles 22, 1–19 (2008).
Article  CAS  Google Scholar 
Bolinder, M. A., Janzen, H. H., Gregorich, E. G., Angers, D. A. & VandenBygaart, A. J. An approach for estimating net primary productivity and annual carbon inputs to soil for common agricultural crops in Canada. Agric. Ecosyst. Environ. 118, 29–42 (2007).
Article  Google Scholar 
Ma, S. et al. Variations and determinants of carbon content in plants: A global synthesis. Biogeosciences 15, 693–702 (2018).
ADS  CAS  Article  Google Scholar 
Albers, A. Prise en compte de la dimension temporelle dans l’évaluation environnementale des produits de la biomasse : Modélisation dynamique du carbone. PhD thesis (École doctorale GAIA – Biodiversité, Agriculture, Alimentation, Environnement, Terre, Eau Portée par l’Université de Montpellier, 2019).
R Core Team. R: A Language and Environment for Statistical Computing. (R Foundation for Statistical Computing, 2020).
Coleman, K. et al. Simulating trends in soil organic carbon in long-term experiments using RothC-26.3. Geoderma 81, 29–44 (1997).
ADS  Article  Google Scholar 
Jenkinson, D. S. & Coleman, K. Calculating the annual input of organic matter to soil from measurements of total organic carbon and radiocarbon. Eur. J. Soil Sci. 45, 167–174 (1994).
Article  Google Scholar 
Coleman, K. & Jenkinson, D. S. RothC—A model for the turnover of carbon in soil. Model description and users guide (updated June 2014). Rothamsted Research https://www.rothamsted.ac.uk/sites/default/files/RothC_guide_WIN.pdf (2014).
Todd-Brown, K. E. O. et al. Changes in soil organic carbon storage predicted by Earth system models during the 21st century. Biogeosciences 11, 2341–2356 (2014).
ADS  CAS  Article  Google Scholar 
Sierra, C. A., Trumbore, S. E., Davidson, E. A., Vicca, S. & Janssens, I. Sensitivity of decomposition rates of soil organic matter with respect to simultaneous changes in temperature and moisture. J. Adv. Model. Earth Syst. 7, 335–356 (2015).
ADS  Article  Google Scholar 
Jebari, A., Álvaro-Fuentes, J., Pardo, G., Almagro, M. & del Prado, A. Estimating soil organic carbon changes in managed temperate moist grasslands with RothC. PLoS One 16, e0256219 (2021).
CAS  PubMed  PubMed Central  Article  Google Scholar 
Dechow, R., Franko, U., Kätterer, T. & Kolbe, H. Evaluation of the RothC model as a prognostic tool for the prediction of SOC trends in response to management practices on arable land. Geoderma 337, 463–478 (2019).
ADS  CAS  Article  Google Scholar 
Mondini, C. et al. Modification of the RothC model to simulate soil C mineralization of exogenous organic matter. Biogeosciences 14, 3253–3274 (2017).
ADS  CAS  Article  Google Scholar 
Sierra, C. A., Müller, M. & Trumbore, S. E. Models of soil organic matter decomposition: The SoilR package, version 1.0. Geosci. Model Dev. 5, 1045–1060 (2012).
ADS  Article  CAS  Google Scholar 
Trabucco, A. & Zomer, R. J. Global High-Resolution Soil-Water Balance. figshare. Dataset. vol. 2010 (2010).
Lugato, E., Paustian, K., Panagos, P., Jones, A. & Borrelli, P. Quantifying the erosion effect on current carbon budget of European agricultural soils at high spatial resolution. Glob. Change Biol. 22, 1976–1984 (2016).
ADS  Article  Google Scholar 
Borrelli, P. et al. An assessment of the global impact of 21st century land use change on soil erosion. Nat. Commun. 8, 1–13 (2013).
Google Scholar 
Foster, R. G. Revised Universal Soil Loss Equation—Version 2 (RUSLE2). (2005).
Download references
This project has received funding from the European Union’s Horizon 2020 Research and Innovation Programme under the Grant Agreement ID: 869192 in the frame of the NEGEM project (https://www.negemproject.eu). L.H. contributions were partially funded by the French National Research Agency, Programme Investissement d’Avenir (ANR-17-MGPA-0006) and Region Occitanie under the Cambioscop project ID 18015981. The authors thank Shivesh Karan for cross-referencing initial data on land cover and soil organic carbon classes.
TBI, Université de Toulouse, CNRS, INRAE, INSA, Toulouse, France
Ariane Albers & Lorie Hamelin
CIRAD, UPR Recyclage et risque, 34398, Montpellier, France
Angel Avadí
Univ Montpellier, CIRAD, Montpellier, France
Angel Avadí
You can also search for this author in PubMed Google Scholar
You can also search for this author in PubMed Google Scholar
You can also search for this author in PubMed Google Scholar
A.Al. and L.H. conceived the study with inputs from A.Av.; A.Al. and A.Av. retrieved and treated all data, analysed the results, and wrote the main manuscript text. All authors reviewed the manuscript.
Correspondence to Ariane Albers.
The authors declare no competing interests.
Springer Nature remains neutral with regard to jurisdictional claims in published maps and institutional affiliations.
Open Access This article is licensed under a Creative Commons Attribution 4.0 International License, which permits use, sharing, adaptation, distribution and reproduction in any medium or format, as long as you give appropriate credit to the original author(s) and the source, provide a link to the Creative Commons licence, and indicate if changes were made. The images or other third party material in this article are included in the article’s Creative Commons licence, unless indicated otherwise in a credit line to the material. If material is not included in the article’s Creative Commons licence and your intended use is not permitted by statutory regulation or exceeds the permitted use, you will need to obtain permission directly from the copyright holder. To view a copy of this licence, visit http://creativecommons.org/licenses/by/4.0/.
Reprints and Permissions
Albers, A., Avadí, A. & Hamelin, L. A generalizable framework for spatially explicit exploration of soil organic carbon sequestration on global marginal land. Sci Rep 12, 11144 (2022). https://doi.org/10.1038/s41598-022-14759-w
Download citation
Received: 09 July 2021
Accepted: 13 June 2022
Published: 01 July 2022
DOI: https://doi.org/10.1038/s41598-022-14759-w
Anyone you share the following link with will be able to read this content:
Sorry, a shareable link is not currently available for this article.

Provided by the Springer Nature SharedIt content-sharing initiative
By submitting a comment you agree to abide by our Terms and Community Guidelines. If you find something abusive or that does not comply with our terms or guidelines please flag it as inappropriate.
Advertisement
Advanced search
Scientific Reports (Sci Rep) ISSN 2045-2322 (online)
© 2022 Springer Nature Limited
Sign up for the Nature Briefing newsletter — what matters in science, free to your inbox daily.

source