首页> 外文期刊>Geoderma: An International Journal of Soil Science >Key variables for the identification of soil management classes in the aeolian landscapes of north-west Europe.
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Key variables for the identification of soil management classes in the aeolian landscapes of north-west Europe.

机译:识别西北北欧风沙景观土壤管理类别的关键变量。

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At present, spatially very detailed data sets can be obtained about soil, landscape and crop variability. However, there is a need to select independent key properties to identify management classes needed for precise land management. In a previous study performed in the European loess belt, topsoil pH, apparent electrical conductivity (ECa) and elevation were identified as key properties. In this study we enlarged the number of soil properties by including gamma ray measurements and employed a similar methodology to a field in the sand belt of northern Europe. Based on a principal component analysis we identified the same three variables as key properties. This was surprising given the big differences in landscape topology and pedogenesis between the loess and sand areas. These three key variables were used to delineate management classes using a fuzzy k-means with extragrade classification procedure. This classification was evaluated by mapping the wheat grain yield in the year 2006. A multiple regression model could be constructed that predicted yield from ECa and elevation well (Radj2=0.88). To analyse the influence of ECa on crop yield in depth a boundary line analysis was conducted. The boundary line could be modelled with an excellent Radj2 of 0.98. It was concluded that ECa, elevation and pH are generic key variables for the delineation of management classes of the aeolian landscapes of north-west Europe. Given its integral nature and strong relationship with crop performances, the authors plea to upgrade ECa from a "secondary" (proxy) source of information to a "primary" variable which can be used directly as a basis for detailed soil mapping of the bulk soil.Digital Object Identifier http://dx.doi.org/10.1016/j.geoderma.2012.07.017
机译:目前,可以获得有关土壤,景观和农作物变异性的空间非常详细的数据集。但是,需要选择独立的关键属性来识别精确土地管理所需的管理类别。在以前在欧洲黄土带进行的一项研究中,表土的pH值,表观电导率(ECa)和海拔高度被确定为关键特性。在这项研究中,我们通过包括伽马射线测量来扩大了土壤性质的数量,并采用了与北欧沙带中的田地相似的方法。基于主成分分析,我们确定了相同的三个变量作为关键属性。考虑到黄土和沙土地区景观拓扑和成岩作用的巨大差异,这令人惊讶。这三个关键变量用于通过带有分类分类程序的模糊k均值来描述管理类别。通过对2006年小麦籽粒产量进行制图,对这种分类进行了评估。可以构建多元回归模型,从ECa和高程井预测产量(R adj 2 = 0.88 )。为了深入分析ECa对作物产量的影响,进行了边界线分析。边界线可以使用0.98的极佳R adj 2 进行建模。得出的结论是,ECa,海拔和pH值是描绘西北欧洲风沙景观管理类别的通用关键变量。考虑到ECa的整体性和与农作物性能的紧密关系,作者恳求将ECa从“次要”(代理)信息源升级为“主要”变量,该变量可直接用作详细绘制散土土壤的基础。数字对象标识符http://dx.doi.org/10.1016/j.geoderma.2012.07.017

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