J. Furtado, E. Almeida, Leonardo Bernardes Taverny de Oliveira, Antônio Clementino dos Santos, Tiago Vieira da Costa, Marcelo Feitosa da Silva, J. Souza, Washington da Silva Sousa, I. S. Ponte, J. R. Freitas
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引用次数: 0
Abstract
Soybean is one of the main crops in Brazil, with a significant share of national agribusiness exports. Nonetheless, several factors such as weed competition and soil fertility directly affect soybean yield and productivity. This study aimed to analyse the spatial distribution of weeds as a function of soil fertility and soybean yield in farming fields. We carried out the experiment on a farm located in Brejo, Maranhão state, Brazil, through a geostatistical analysis of 60 sampling points on a regular grid of 10.0 m x 50.0 m. At these points, we collected phytosociological information on the weed community, soil fertility, and soybean yield. We performed principal component analysis (PCA) to determine the most responsive variables and to group them. We determined spatial dependence through geostatistical procedures, with the interpretation and adjustment of variogram components. We identified seven weed species, distributed across seven genera and six botanical families, of which 76.78% were eudicotyledons. In the cluster analysis, we grouped monocotyledonous species separately from eudicotyledons as explained by the morphophysiological contrasts between these botanical classes. Soybean yield did not correlate with soil fertility or weeds. These two factors can be considered only as a share of soybean productivity because their individual variations do not directly influence production factors. The efficient management of weeds and soil fertility should result in a more uniform and potencially more soybean yield when other conditioning factors are also effective
大豆是巴西的主要作物之一,在全国农业出口中占有很大份额。然而,杂草竞争和土壤肥力等因素直接影响大豆的产量和生产力。本研究旨在分析农田杂草的空间分布与土壤肥力和大豆产量的关系。我们在巴西maranh州Brejo的一个农场进行了实验,通过对10.0 m x 50.0 m的规则网格上的60个采样点进行地质统计学分析。在这些点上,我们收集了有关杂草群落、土壤肥力和大豆产量的植物社会学信息。我们进行了主成分分析(PCA)来确定最敏感的变量并对它们进行分组。我们通过地统计学程序,通过变异函数分量的解释和调整来确定空间依赖性。共鉴定出7种杂草,分布于6科7属,其中苦子叶类占76.78%。在聚类分析中,我们将单子叶属植物与真子叶属植物分开分类,以解释这些植物类别之间的形态生理差异。大豆产量与土壤肥力和杂草无关。这两个因素只能作为大豆生产力的一部分来考虑,因为它们的个体变化并不直接影响生产因素。在其他调节因素也有效的情况下,对杂草和土壤肥力的有效管理应该会导致更均匀和可能更高的大豆产量