Artificial neural networks classify cotton genotypes for fiber length

Abstract Fiber length is the main trait that needs to be improved in cotton. However, the presence of genotypes x environments interaction for this trait can hinder the recommendation of genotypes with greater length fibers. The aim of this study was to evaluate the adaptability and stability of the fibers length of cotton genotypes for recommendation to the Midwest and Northeast, using artificial neural networks (ANNs) and Eberhart and Russell method. Seven trials were carried out in the states of Ceará, Rio Grande do Norte, Goiás and Mato Grosso do Sul. Experimental design was a randomized block with four replications. Data were submitted to analysis of adaptability and stability through the Eberhart & Russell and ANNs methodologies. Based on these methods, the genotypes BRS Aroeira, CNPA CNPA 2009 42 and CNPA 2009 27 has better performance in unfavorable, general and favorable environment, respectively, for having fiber length above the overall mean of environments and high phenotypic stability.

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Main Authors: Carvalho,Luiz Paulo de, Teodoro,Paulo Eduardo, Barroso,Lais Mayara Azevedo, Farias,Francisco José Correia, Morello,Camilo de Lellis, Nascimento,Moysés
Format: Digital revista
Language:English
Published: Crop Breeding and Applied Biotechnology 2018
Online Access:http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1984-70332018000200200
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spelling oai:scielo:S1984-703320180002002002018-04-23Artificial neural networks classify cotton genotypes for fiber lengthCarvalho,Luiz Paulo deTeodoro,Paulo EduardoBarroso,Lais Mayara AzevedoFarias,Francisco José CorreiaMorello,Camilo de LellisNascimento,Moysés Genotype x environment interaction artificial intelligence Gossypium hirsutum Abstract Fiber length is the main trait that needs to be improved in cotton. However, the presence of genotypes x environments interaction for this trait can hinder the recommendation of genotypes with greater length fibers. The aim of this study was to evaluate the adaptability and stability of the fibers length of cotton genotypes for recommendation to the Midwest and Northeast, using artificial neural networks (ANNs) and Eberhart and Russell method. Seven trials were carried out in the states of Ceará, Rio Grande do Norte, Goiás and Mato Grosso do Sul. Experimental design was a randomized block with four replications. Data were submitted to analysis of adaptability and stability through the Eberhart & Russell and ANNs methodologies. Based on these methods, the genotypes BRS Aroeira, CNPA CNPA 2009 42 and CNPA 2009 27 has better performance in unfavorable, general and favorable environment, respectively, for having fiber length above the overall mean of environments and high phenotypic stability.info:eu-repo/semantics/openAccessCrop Breeding and Applied BiotechnologyCrop Breeding and Applied Biotechnology v.18 n.2 20182018-04-01info:eu-repo/semantics/reporttext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S1984-70332018000200200en10.1590/1984-70332018v18n2n28
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country Brasil
countrycode BR
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region America del Sur
libraryname SciELO
language English
format Digital
author Carvalho,Luiz Paulo de
Teodoro,Paulo Eduardo
Barroso,Lais Mayara Azevedo
Farias,Francisco José Correia
Morello,Camilo de Lellis
Nascimento,Moysés
spellingShingle Carvalho,Luiz Paulo de
Teodoro,Paulo Eduardo
Barroso,Lais Mayara Azevedo
Farias,Francisco José Correia
Morello,Camilo de Lellis
Nascimento,Moysés
Artificial neural networks classify cotton genotypes for fiber length
author_facet Carvalho,Luiz Paulo de
Teodoro,Paulo Eduardo
Barroso,Lais Mayara Azevedo
Farias,Francisco José Correia
Morello,Camilo de Lellis
Nascimento,Moysés
author_sort Carvalho,Luiz Paulo de
title Artificial neural networks classify cotton genotypes for fiber length
title_short Artificial neural networks classify cotton genotypes for fiber length
title_full Artificial neural networks classify cotton genotypes for fiber length
title_fullStr Artificial neural networks classify cotton genotypes for fiber length
title_full_unstemmed Artificial neural networks classify cotton genotypes for fiber length
title_sort artificial neural networks classify cotton genotypes for fiber length
description Abstract Fiber length is the main trait that needs to be improved in cotton. However, the presence of genotypes x environments interaction for this trait can hinder the recommendation of genotypes with greater length fibers. The aim of this study was to evaluate the adaptability and stability of the fibers length of cotton genotypes for recommendation to the Midwest and Northeast, using artificial neural networks (ANNs) and Eberhart and Russell method. Seven trials were carried out in the states of Ceará, Rio Grande do Norte, Goiás and Mato Grosso do Sul. Experimental design was a randomized block with four replications. Data were submitted to analysis of adaptability and stability through the Eberhart & Russell and ANNs methodologies. Based on these methods, the genotypes BRS Aroeira, CNPA CNPA 2009 42 and CNPA 2009 27 has better performance in unfavorable, general and favorable environment, respectively, for having fiber length above the overall mean of environments and high phenotypic stability.
publisher Crop Breeding and Applied Biotechnology
publishDate 2018
url http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1984-70332018000200200
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