Adaptability and yield stability of soybean genotypes by mean Eberhart and Russell methods, artificial neural networks and centroid

M. Oda, T. Sediyama, C. Cruz, M. Nascimento, É. Matsuo
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引用次数: 3

Abstract

The soybean crop is prominent in national and international scenarios. A large part of the world production of soybean is cultivated in Brazil and this has been possible due to the performance of different technological areas, among them genetics and plant breeding. Soybean breeding has acted in the development and launch of new cultivars and for this it is required the studies of interaction genotypes x environments and those of adaptability and stability. Thus, the objective was to evaluate the adaptability and phenotypic stability of the grain yield of late-cycle soybean genotypes. Five experiments were conducted in the state of Minas Gerais, each of which was considered as an environment. In each, 17 soybean genotypes were evaluated in a randomized block design with three repetitions, for grain yield, in kg ha-1. The data were analyzed by means of individual (each environment) and joint analysis of variance. Subsequently, analyses of adaptability and phenotypic stability were performed using the methods of Eberhart and Russell (1966), Artificial Neural Networks (Nascimento et al., 2013) and Centroid (Rocha, Muro‑Abad, Araujo, & Cruz, 2005). The results indicated the classification of the analyzed genotypes for unfavorable, general or favorable adaptability, with high or low stability. DM-339 is indicated for favorable environments and UFV-18 (Patos de Minas), UFV91-651226, UFV99-8552093, UFV01-871375B, UFV01-66322813 and UFV99-8552099 are indicated as general adaptability, considering the three methods of adaptability and stability analysis.
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利用平均Eberhart和Russell方法、人工神经网络和质心分析大豆基因型的适应性和产量稳定性
大豆作物在国内和国际上都很突出。世界大豆产量的很大一部分是在巴西种植的,这是由于不同技术领域的表现,其中包括遗传和植物育种。大豆育种在培育和推出新品种方面发挥了重要作用,因此需要进行基因型与环境的相互作用以及适应性和稳定性的研究。因此,目的是评价晚周期大豆基因型籽粒产量的适应性和表型稳定性。在米纳斯吉拉斯州进行了五个实验,每个实验都被认为是一个环境。采用随机区组设计,3次重复对17个大豆基因型进行籽粒产量(kg hm -1)评价。采用个体(各环境)方差分析和联合方差分析对数据进行分析。随后,使用Eberhart和Russell(1966)、人工神经网络(Nascimento等,2013)和Centroid (Rocha, Muro - Abad, Araujo, & Cruz, 2005)的方法进行适应性和表型稳定性分析。结果表明,所分析的基因型分为适应性差、一般和有利,稳定性高或低。DM-339为有利环境适应型,UFV-18 (Patos de Minas)、UFV91-651226、UFV99-8552093、UFV01-871375B、UFV01-66322813和UFV99-8552099为一般适应型,综合考虑三种适应性和稳定性分析方法。
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