Abstract

ABSTRACT In field experiments, it is often assumed that errors are statistically independent, but not always this condition is met, compromising the results. An inappropriate choice of the analytical model can compromise the efficiency of breeding programs in preventing unpromising genotypes from being selected and maintained in the next selection cycles resulting in waste of time and resources. The objective of this study was to evaluate the spatial dependence of errors in experiments evaluating grain yield of bean progenies using analyses in lattice and randomized blocks. And also evaluate the efficiency of geostatistical models to describe the structure of spatial variability of errors. The data used in this study derived from experiments arranged in the lattice design and analyzed as lattice or as randomized blocks. The Durbin-Watson test was used to verify the existence of spatial autocorrelation. The theoretical semivariogram was fitted using geostatistical models (exponential, spherical and Gaussian) to describe the spatial variability of errors. The likelihood ratio test was applied to assess the significance of the geostatistical model parameters. Of the eight experiments evaluated, five had moderate spatial dependence for the randomized blocks analysis and one for both analyses, in lattice and randomized blocks. The area of the experiments was not a determinant factor of the spatial dependence. The spherical, exponential and Gaussian geostatistical models with nugget effect were suitable to represent the spatial structure in the randomized block analysis. The analysis in lattice was efficient to ensure the independence of errors.

Highlights

  • Common bean (Phaseolus vulgaris L.) is a traditional staple food for Brazilians, and is cultivated by small and large farmers

  • The development, evaluation and recommendation of bean cultivars for the different regions of the state of Minas Gerais are under the charge of three research institutions: Empresa Agropecuária de Minas Gerais (EPAMIG), Universidade Federal de Lavras (UFLA) and Universidade Federal de Viçosa (UFV) (Silva, 2005)

  • In experiments with spatial dependence, the selection of bean progenies will be more efficient with methods that take into account the spatial variability of errors

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Summary

Introduction

Common bean (Phaseolus vulgaris L.) is a traditional staple food for Brazilians, and is cultivated by small and large farmers. Common bean is one of the most cultivated crops in the country, playing a significant role in labor demand. This legume is grown in all regions of Minas Gerais with the most varied levels of technology and production systems (Barbosa and Gonzaga, 2012; Richetti & Melo, 2014). The initial phase of selection involves the evaluation of a large number of progeny. The evaluation of these progenies in experiments with repetitions is difficult as they require large experimental areas. Experiments with few repetitions and requiring large areas depend on more sophisticated forms of planning and analysis to ensure good experimental precision (Conagin et al, 1997)

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