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Describing the spatial pattern of crop plants with special reference to crop-weed competition studies

机译:描述作物植物的空间格局,特别要参考作物杂草竞争研究

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摘要

The spatial distribution of individual crop plants in the field is important for crop growth, yield production, and crop-weed interactions, but the role of spatial pattern has not been appreciated in agricultural research. A quantitative measure of degree of spatial uniformity/aggregation of individual plants would be very useful in this context. We digitized photographs of field plots of weed-infested spring wheat sown in uniform, random and normal row patterns at three densities (204, 449 and 721 seeds m-2), and described the locations of individual wheat seedling as x- and y-coordinates. We analyzed the spatial pattern of these plant locations in two ways. One approach is based on Voronoi or Thiessen polygons (also called tessellations or tiles),which delimit the area closer to each individual than to any other individual. The relative variation (coefficient of variation) in polygon area and the mean shape ratio (ratio between the circumference of the polygon and that of a circle of the same area) of the polygons are measures of spatial aggregation. The other approach was Morisita's index of dispersion, which is based on the mean and variance in number of individuals in sampling units (quadrats). The CV of polygon area, the mean shape ratio ofthese polygons and Morisita's index of dispersion, all performed well as descriptions of the degree of spatial aggregation of crop plants. Models using one of these measures of uniformity and sowing density as explanatory variables accounted for 74-80%of the variation in crop biomass production. Despite its simplicity, models with Morisita's index performed slightly better than models using polygon parameters, accounting for 80-86% of the variation in weed biomass. Simple spatial analyses of individuals have much to offer agricultural research.
机译:田间单个农作物的空间分布对于作物生长,单产和作物-杂草相互作用至关重要,但是空间模式的作用在农业研究中并未得到重视。在这种情况下,对单个植物的空间均匀度/聚集度进行定量测量将非常有用。我们将以三种密度(204、449和721种子m-2)以均匀,随机和正常行模式播种的杂草侵染春小麦田间田间照片数字化,并将单个小麦幼苗的位置描述为x-和y-坐标。我们以两种方式分析了这些植物位置的空间格局。一种方法是基于Voronoi或Thiessen多边形(也称为棋盘格或图块),它们将区域限定为比每个其他人更靠近每个人。多边形面积的相对变化(变化系数)和多边形的平均形状比(多边形的周长与相同区域的圆的周长之比)是空间聚集的度量。另一种方法是Morisita的分散指数,该指数基于抽样单位(四边形)中个体数量的平均值和方差。多边形面积的CV,这些多边形的平均形状比和Morisita的分散指数,都很好地描述了农作物的空间聚集程度。使用这些均匀度和播种密度度量之一作为解释变量的模型占作物生物量产量变化的74-80%。尽管具有简单性,但具有Morisita指数的模型的性能略好于使用多边形参数的模型,占杂草生物量变化的80-86%。对个体进行简单的空间分析可以为农业研究提供很多帮助。

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