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Ability for a model to predict crop production variability at the regional scale: an evaluation for sugar beet

机译:模型预测区域规模农作物产量变异性的能力:甜菜评估

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The spatial application of crop models for the prediction of plot yields on a regional scale has specific constraints. Firstly, it supposes accurate input into the model from sources concerning the spatial variability of crop performance. Furthermore, it is necessary for the model to be suitable for simulating interactions between the environment, agricultural practices and the crop which explain this variability. The aim of this article is to evaluate a sugar beet growth model, SUCROS, in terms of its ability to predict the spatial variability of yields on the scale of a beet-producing region. The model was adjusted to the agronomic context of northern France by taking into account the effects of moisture stress on leaf senescence and on the partitioning of assimilates. This modification reduced by more than a half the error of LAI and storage organ dry weight estimates. The modified model was then tested on thirty four plots of two beet production region, and we were able to demonstrate that its performance was closely linked to the accuracy of input variables concerning the climate and soil water properties of each plot.
机译:作物模型在区域规模上预测地块单产的空间应用有特定的限制。首先,它假定从有关作物生产性能空间变异性的来源中向模型中输入了准确的数据。此外,该模型必须适合于模拟环境,农业实践和农作物之间的相互作用,这种相互作用可以解释这种变异性。本文的目的是评估甜菜生长模型SUCROS,以其预测甜菜产区规模上产量的空间变异性的能力。考虑到水分胁迫对叶片衰老和同化物分配的影响,对模型进行了调整以适应法国北部的农业环境。这种修改将LAI和存储器官干重估计的误差减少了一半以上。然后在两个甜菜生产区域的三十四个样地上测试了修改后的模型,我们能够证明其性能与涉及每个样地的气候和土壤水分特性的输入变量的准确性紧密相关。

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