基于多变量数据的农业区区划及其与大豆生产力的关系

Q3 Agricultural and Biological Sciences
Rodrigo Lorbieski, Luciana Pagliosa Carvalho Guedes, Miguel Angel Uribe- Opazo, Franciele Buss Frescki Kestring
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引用次数: 0

摘要

将农业区域划分为不同的集群是精准农业领域的一项重要策略。多变量和空间数据在这些划分的设计中很常见。本文以某农业区2013/2014 - 2016/2017年4个大豆收获年为研究区,通过土壤理化变量和营养指标组成的不同变量子集,表征研究区差异。为此,由这些变量组成三个子集,这些子集具有空间依赖性,并根据其特征进行分组。通过决策树的方法,确定了哪些变量对区域的细分影响最大。采用多元非参数空间聚类技术生成聚类。最后,利用图和箱线图分析了这些变量与大豆产量之间的空间关系。在不同的收获年份,与决定不同集群最佳设计的变量子集相关的变量存在差异。研究中使用的不同变量决定的区域差异与大豆产量没有关系,在评估的收获年数据中呈现空间同质性。该方法适用于影响生产力的因子空间变异性较大的情况,建议同时利用土壤理化变量和营养指标来解释大豆生产力空间变异性的原因
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Regionalization of an agricultural area by means of multivariate data and their relationship with soybean productivity
Regionalization of an agricultural area by dividing it into different clusters is an important strategy in the precision agriculture scope. Multivariate and spatial data are common in the design of these divisions. This paper sought to characterize regional differences in the area under study through different subsets of variables formed by soil physical-chemical variables and vegetative indices, in an agricultural area for four soybean harvest years in the period from 2013/2014 to 2016/2017. To such end, three subsets were generated comprised by these variables, which presented spatial dependence and were grouped according to their characteristics. By means of decision trees, it was identified which of these variables exerted the most influence on subdivision of the area. The multivariate and non-parametric spatial clustering technique was used to generate the clusters. Finally, by means of maps and boxplots, the spatial relationships between these variables and soybean productivity were evaluated. There was variation across the harvest years in relation to the subset of variables that determined the best design of the different clusters. The regional differences determined by the different variables used in the study showed no relationship with soybean productivity, which presented spatial homogeneity in its data for the harvest years evaluated. This approach is recommended when there is high spatial variability of factors that exert impacts on productivity, advising on using both soil physical-chemical variables and the vegetative indices to explain the causes of soybean productivity spatial variability
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来源期刊
Australian Journal of Crop Science
Australian Journal of Crop Science 农林科学-农艺学
CiteScore
1.20
自引率
0.00%
发文量
75
审稿时长
3.5 months
期刊介绍: Information not localized
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