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    • Rangeland Ecology & Management, Volume 71 (2018)
    • Rangeland Ecology & Management, Volume 71, Number 6 (November 2018)
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    Estimating Grazing Potentials in Sudan Using Daily Carbon Allocation in Dynamic Vegetation Model

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    Author
    Boke-Olén, N.
    Lehsten, V.
    Abdi, A.M.
    Ardö, J.
    Khatir, A.A.
    Issue Date
    2018-11
    Keywords
    carbon
    climate change
    grazing
    Kordofan
    livestock
    LPJ-GUESS
    
    Metadata
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    Citation
    Boke-Olén, N., Lehsten, V., Abdi, A. M., Ardö, J., & Khatir, A. A. (2018). Estimating grazing potentials in Sudan using daily carbon allocation in dynamic vegetation model. Rangeland Ecology & Management, 71(6), 792-797.
    Publisher
    Society for Range Management
    Journal
    Rangeland Ecology & Management
    URI
    http://hdl.handle.net/10150/671034
    DOI
    10.1016/j.rama.2018.06.006
    Additional Links
    https://rangelands.org/
    Abstract
    Livestock production is important for local food security and as a source of income in sub-Saharan Africa. The human population of the region is expected to double by 2050, and at the same time climate change is predicted to negatively affect grazing resources vital to livestock. Therefore, it is essential to model the potential grazing output of sub-Saharan Africa in both present and future climatic conditions. Standard tools to simulate plant productivity are dynamic vegetation models (DVMs). However, as they typically allocate carbon to plant growth at an annual time step, they have a limited capability to simulate grazing. Here, we present a novel implementation of daily carbon allocation for grasses into the DVM Lund-Potsdam-Jena General Ecosystem Simulator (LPJ-GUESS) and apply this to study the grazing potential for the Kordofan region in Sudan. The results show a latitudinal split in grazing resources, where the northern parts of Kordofan are unexploited and southern parts are overused. Overall, we found that the modeled grazing potential of Kordofan is 16% higher than the livestock usage reported in the Food and Agricultural Organization of the United Nations, indicating a mitigation potential in the form of a spatial relocation of the herds.
    Type
    Article
    text
    Language
    en
    ISSN
    1550-7424
    EISSN
    1551-5028
    ae974a485f413a2113503eed53cd6c53
    10.1016/j.rama.2018.06.006
    Scopus Count
    Collections
    Rangeland Ecology & Management, Volume 71, Number 6 (November 2018)

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