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    Plot-Scale Agroforestry Modeling Explores Tree Pruning and Fertilizer Interactions for Maize Production in a Faidherbia Parkland

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    Authors
    Dilla, A.M.
    Smethurst, P.J.
    Huth, N.I.
    Barry, K.M.
    Date Issued
    2020-11
    Date Online
    2020-11
    Language
    en
    Type
    Journal Article
    Review status
    Peer Review
    ISI journal
    Accessibility
    Open Access
    Usage rights
    CC-BY-4.0
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    Citation
    Dilla, A.M., Smethurst, P.J., Huth, N.I. and Barry, K.M., 2020. Plot-Scale Agroforestry Modeling Explores Tree Pruning and Fertilizer Interactions for Maize Production in a Faidherbia Parkland. Forests, 11(11), p.1175. https://doi.org/10.3390/f11111175
    Permanent link to cite or share this item: https://hdl.handle.net/10568/113464
    External link to download this item: https://www.mdpi.com/1999-4907/11/11/1175/pdf
    DOI: https://doi.org/10.3390/f11111175
    Abstract/Description
    Poor agricultural productivity has led to food shortages for smallholder farmers in Ethiopia. Agroforestry may improve food security by increasing soil fertility, crop production, and livelihoods. Agroforestry simulation models can be useful for predicting the effects of tree management on crop growth when designing modifications to these systems. The Agricultural Production Systems sIMulator (APSIM) agroforestry tree-proxy model was used to simulate the response of maize yield to N fertilizer applications and tree pruning practices in the parkland agroforestry system in the Central Rift Valley, Ethiopia. The model was parameterized and tested using data collected from an experiment conducted under trees and in crop-only plots during the 2015 and 2016 growing seasons. The treatments contained three levels of tree pruning (100% pruned, 50% pruned, and unpruned) as the main plots, and N fertilizers were applied to maize at two rates (9 or 78 kg N ha−1) as sub-plots. Maize yield predictions across two years in response to tree pruning and N applications under tree canopies were satisfactorily simulated (NSE = 0.72, RSR = 0.51, R2 = 0.8). Virtual experiments for different rates of N, pruning levels, sowing dates, and cultivars suggest that maize yield could be improved by applying fertilizers (particularly on crop-only plots) and by at least 50% pruning of trees. Optimal maize yield can be obtained at a higher rate of fertilization under trees than away from them due to better water relations, and there is scope for improving the sowing date and cultivar. Across a 34-year range of recent climate, small increases in yields due to optimum N-fertilizing and pruning were probably limited by nutrient limitations other than N, but the highest yields were consistently in the 2–4 m zone under trees. These virtual experiments helped to form hypotheses regarding fertilizers, pruning, and the effects of trees on soil that warrant further field evaluation.
    Other CGIAR Affiliations
    Forests, Trees and Agroforestry
    AGROVOC Keywords
    agroforestry; crop production; maize
    Countries
    Ethiopia
    Regions
    Eastern Africa
    Organizations Affiliated to the Authors
    World Agroforestry Centre; Addis Ababa University; University of Tasmania; Commonwealth Scientific and Industrial Research Organisation, Australia
    Collections
    • FTA outputs [1739]

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