Classification of soybean cultivars by means of artificial neural networks

João Victor Costa Carneiro Paixão, É. Matsuo, Ithalo Coelho de Sousa, M. Nascimento, Igor Silva Oliveira, A. F. Macedo, Gustavo Martins Santana
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引用次数: 1

Abstract

The cultivation of soy has an economic importance for the Brazilian agricultural scenario. The aim of this study was to establish a network architecture for the classification of soybean genotypes, by means of morphological characters measured in the juvenile phase of the plant, and finally to compare the results obtained through Artificial Neural Network (ANN) and Anderson Discriminant Analysis. The study analyzed plants of 10 conventional cultivars in the initial stages of development (V1, V2 and V3 stages). The experiment was carried out in a randomized block design with 5 replications, and the experimental unit was represented by 9 plants. The data were submitted to the Anderson Discriminant Analysis and multilayer Perceptron ANN, with 1 or 2 hidden layers. To analyze the homogeneity of the variance and covariance matrix, the Box’s M-Test was adopted in the Program R, at 5% significance level. An input layer, one or two hidden layers, and an output layer formed the ANN architecture. The 5-fold cross validation was used to verify the efficiency of the discriminant functions and also in the ANN analysis. Subsequently, the apparent error rate (AER) was obtained. Box’s M-Test indicated inhomogeneity in the variance and covariance matrices, which indicated the need to perform Anderson's Quadratic Discriminant Analysis. The ANNs presented lower apparent error rate when compared to the Anderson's Quadratic Discriminant Analysis and the artificial neural network with 1 hidden layer was sufficient to perform the classification of soybean cultivars.
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基于人工神经网络的大豆品种分类
大豆的种植对巴西农业具有重要的经济意义。本研究的目的是通过测定大豆幼嫩期的形态特征,建立大豆基因型分类的网络结构,并对人工神经网络(ANN)和安德森判别分析(Anderson Discriminant Analysis)的结果进行比较。本研究对10个常规品种发育初期(V1、V2和V3期)的植株进行了分析。试验采用随机区组设计,5个重复,每个试验单元以9株植物为代表。数据被提交给安德森判别分析和多层感知器ANN,有1或2个隐藏层。为了分析方差和协方差矩阵的齐性,程序R采用Box’s m检验,在5%显著性水平下。一个输入层、一个或两个隐藏层和一个输出层构成了人工神经网络的体系结构。5重交叉验证用于验证判别函数的效率,也用于人工神经网络分析。进而得到表观错误率(AER)。Box 's m检验表明方差和协方差矩阵不均匀,这表明需要进行安德森二次判别分析。与Anderson二次判别分析相比,人工神经网络的表观错误率较低,1隐层的人工神经网络足以对大豆品种进行分类。
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