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首页> 外文期刊>Journal of Crop Improvement >A statistical evaluation of replicated block designs and spatial variability in sorghum performance trials
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A statistical evaluation of replicated block designs and spatial variability in sorghum performance trials

机译:高粱绩效试验中复制块设计和空间变异性的统计评估

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Success of hybrid performance trials has always been susceptible to the efficiency at which the experimental design can remove any effect of spatial autocorrelation associated with environmental factors. Blocking in a randomized design is one way of accounting for this. Another method is to have a model of the environmental variability. Measures of soil variability could be useful to represent spatial structure in a trial. Soil apparent electrical conductivity (ECa) measurements can be collected rapidly and non-invasively and have been well documented to be able to map soil variability at the meter scale. We present a statistical evaluation that compares the effectiveness of the traditional replicated block designs with spatially explicit soil ECa measurements. Soil ECa, sorghum {Sorghum bicolor (L.) Moench) grain yield, and plant height were measured from six sorghum hybrid evaluation trials across Texas in 2017. Three linear models were tested to determine the presence or absence of spatial autocorrelation of model residuals within each performance trial. Moran's I tests on model residuals showed that neither method was consistently effective in accounting for spatial variability. Blocking was more effective at one site for both plant height andgrain yield, whereas ECa data were more effective at two sites for grain yield only. Based on these results, and the relatively low cost of using both methods together, we propose that plant breeders interested in addressing spatial autocorrelation in models from trial results may consider using both methods and select the best model, post hoc.
机译:混合性能试验的成功始终易于实验设计可以去除与环境因素相关的空间自相关影响的效率。在随机设计中阻止是一个考虑到这一点的一种方式。另一种方法是具有环境变异性的模型。土壤变异措施可能有助于代表试验中的空间结构。可以迅速和非侵入性地收集土壤表观电导率(ECA)测量,并被充分地记录能够以仪表刻度映射土壤变异性。我们提出了一种统计评估,可比较传统复制块设计的有效性与空间明确的土壤ECA测量。土壤ECA,高粱{高粱双子(L.)Moench)谷物产量,植物高度从德克萨斯州德克萨斯州的六次高粱杂交评估试验中测量了三种线性模型,以确定在内部存在或没有空间自相关的空间自相关每个绩效审判。 Moran的我对模型残差的测试表明,两种方法在核算空间可变性方面都不是有效。封闭在一个位点对于植物高度和植物的产量更有效,而ECA数据在两个位点仅为谷物产量更有效。基于这些结果,以及使用两种方法的成本相对较低,我们提出了有兴趣在试验结果中寻址模型中的空间自相关的植物育种者可以考虑使用这两种方法,并选择最佳模型,后HOC。

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