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Identifying indicators of the spatial variations of agricultural practices by a tree partitioning methods: the case of weed control practices in vine growing catchment

机译:通过树划分方法确定农业实践空间变化的指标:以葡萄种植流域的杂草控制实践为例

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摘要

Environmental impact assessments of agricultural practices on a regional scale may be computed by running spatially distributed biophysical models using mapped input data on agricultural practices. In cases of hydrological impact assessments, such as herbicide pollution through run-off, methods for generating these data over the entire water resource catchment and at the plot resolution are needed. In this study, we aimed to identify indicators for simulating the spatial distribution of weed control practices (WCP) in a French vine growing catchment. On the basis of interviews of 63 winegrowers, a spatially explicit database was developed that included 1007 vine plots and information regarding practices and potential explanatory variables. Four practices were differentiated according to the methods used (chemical weed control, shallow tillage, grass cover or a combination) that determine the intensity of herbicide use and potential surface run-off. Three groups of explanatory variables corresponding to three assumed levels of spatial organisation of WCP (the plot, the farm and the local government area (LGA)) were tested and compared. In the first step, selection of explanatory variables within each group was performed using a tree-partitioning method that combined the advantages of the CART algorithm (building an interpretable and controlled model) and the Random Forest algorithm (limiting overfitting) algorithm. In the second step, the performance of the selected variables for reproducing the observed repartition of practices was evaluated by a stochastic use of the tree, leading to a set of equiprobable spatial distributions of practices at the plot resolution. The results indicate that plot characteristics related to alley width play an important role in the weed control choices; however, to take into account the total diversity of the WCP, it appears to be necessary to focus on the farm holding variables and, in particular, on the variable LGA. However, the interpretation of these results is still difficult. Specifically, the great relevance of the variable LGA to discriminate the practices may be related to various factors, one of which is the distribution of soil properties within the Peyne catchment that still requires more precise characterization. The results also indicate that the combination of the three groups of variables leads to the highest-performing simulations of the spatial distribution of WCP. Nevertheless, the farm holding variables provided little additional spatial information, which supports the idea that they may be omitted without significantly impacting the final results.
机译:可以通过使用关于农业实践的映射输入数据运行空间分布的生物物理模型来计算区域范围内农业实践的环境影响评估。在水文影响评估的情况下,例如径流引起的除草剂污染,需要用于在整个水资源流域和地块分辨率上生成这些数据的方法。在这项研究中,我们旨在确定指标,以模拟法国葡萄种植集水区的杂草控制措施(WCP)的空间分布。在对63位葡萄种植者的访谈的基础上,开发了一个空间明确的数据库,其中包括1007处葡萄藤田地以及有关实践和潜在解释变量的信息。根据所使用的方法(化学除草,浅耕,草皮或两者结合)来区分四种做法,这些方法确定除草剂的使用强度和潜在的地表径流。测试和比较了与WCP的三个假定空间组织水平(地块,农场和地方政府区域(LGA))相对应的三组解释变量。第一步,使用树划分方法选择每个组中的解释变量,该方法结合了CART算法(建立可解释和受控的模型)和随机森林算法(限制过度拟合)算法的优点。在第二步中,通过随机使用树来评估所选变量用于重现观察到的实践分区的性能,从而在绘图分辨率下得出一组等效的实践空间分布。结果表明,与胡同宽度有关的样地特征在杂草控制选择中起着重要作用。但是,考虑到WCP的总体多样性,似乎有必要将重点放在农场控股变量上,尤其是变量LGA上。但是,这些结果的解释仍然很困难。具体而言,变量LGA与判别做法的巨大相关性可能与各种因素有关,其中之一是Peyne流域内土壤性质的分布,仍然需要更精确的表征。结果还表明,三组变量的组合导致WCP空间分布的最高性能模拟。但是,拥有农场的变量几乎没有提供其他空间信息,这支持在不显着影响最终结果的情况下可以省略变量的想法。

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