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Optimal Experimental Design of Field Trials using Differential Evolution - An application in Quantitative Genetics and Plant Breeding

机译:差分演化的现场试验的最佳实验设计 - 定量遗传学和植物育种的应用

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When setting up field experiments, to test and compare a range of genotypes (e.g. maize hybrids), it is important to account for any possible field effect that may otherwise bias performance estimates of genotypes. To do so, we propose a model-based method aimed at optimizing the allocation of the tested genotypes and checks between fields and placement within field, according to their kinship. This task can be formulated as a combinatorial permutation-based problem. We used Differential Evolution concept to solve this problem. We then present results of optimal strategies for between-field and within-field placements of genotypes and compare them to existing optimization strategies, both in terms of convergence time and result quality. The new algorithm gives promising results in terms of convergence and search space exploration.
机译:在设置现场实验时,要测试和比较一系列基因型(例如玉米杂交种),重要的是考虑可能均可偏压基因型的性能估计的任何可能的场效应。为此,我们提出了一种基于模型的方法,旨在优化测试基因型的分配,并根据其亲属关系进行领域的田地和放置之间的检查。此任务可以标制为基于组合置换的问题。我们使用差分演变概念来解决这个问题。然后,我们对场之间的最佳策略和基因型内的现场展示率的结果提出了最佳策略,并将它们与现有的优化策略进行比较,无论是在收敛时间和结果质量方面。新算法在收敛和搜索空间探索方面具有有前途的结果。

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