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Registros recuperados : 3 | |
1. | | MALIKOUSKI, R. G.; PEIXOTO, M. A.; FERREIRA, F. M.; MORAIS, A. L. de; ALVES, R. S.; ZUCOLOTO, M.; BARBOSA, D. H. S. G.; BHERING, L. L. Genotypic diversity and genetic parameters of 'Tahiti' acid lime using different rootstocks. Pesquisa Agropecuária Brasileira, v. 58, e02768, 2023. Título em português: Diversidade genotípica e parâmetros genéticos de lima ácida 'Tahiti' com uso de diferentes porta-enxertos. Biblioteca(s): Embrapa Mandioca e Fruticultura; Embrapa Unidades Centrais. |
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2. | | FERREIRA, F. M.; LEITE, R. V.; MALIKOUSKI, R. G.; PEIXOTO, M. A.; BERNARDELI, A.; ALVES, R. S.; MAGALHAES JUNIOR, W. C. P. de; ANDRADE, R. G.; BHERING, L. L.; MACHADO, J. C. Bioenergy elephant grass genotype selection leveraged by spatial modeling of conventional and high-throughput phenotyping data. Journal of Cleaner Production, v. 363, 132286, 2022. Biblioteca(s): Embrapa Gado de Leite. |
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3. | | FERREIRA, F. M.; EVANGELISTA, J. S. P. C.; CHAVES, S. F. da S.; ALVES, R. S.; SILVA, D. B.; MALIKOUSKI, R. G.; RESENDE, M. D. V. de; BHERING, L. L.; SANTOS, G. A. Multivariate bayesian analysis for genetic evaluation and selection of eucalyptus in multiple environment trials. Bragantia, v. 81, e2922, 2022. 11 p. Biblioteca(s): Embrapa Café. |
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Registros recuperados : 3 | |
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| Acesso ao texto completo restrito à biblioteca da Embrapa Gado de Leite. Para informações adicionais entre em contato com cnpgl.biblioteca@embrapa.br. |
Registro Completo
Biblioteca(s): |
Embrapa Gado de Leite. |
Data corrente: |
02/06/2022 |
Data da última atualização: |
01/12/2022 |
Tipo da produção científica: |
Artigo em Periódico Indexado |
Circulação/Nível: |
A - 1 |
Autoria: |
FERREIRA, F. M.; LEITE, R. V.; MALIKOUSKI, R. G.; PEIXOTO, M. A.; BERNARDELI, A.; ALVES, R. S.; MAGALHAES JUNIOR, W. C. P. de; ANDRADE, R. G.; BHERING, L. L.; MACHADO, J. C. |
Afiliação: |
FILIPE MANOEL FERREIRA, Universidade Federal de Viçosa; RODRIGO VIEIRA LEITE, Universidade Federal de Viçosa; RENAN GARCIA MALIKOUSKI, Universidade Federal de Viçosa; MARCO ANTONIO PEIXOTO, Universidade Federal de Viçosa; ARTHUR BERNARDELI, Universidade Federal de Viçosa; RODRIGO SILVA ALVES, Universidade Federal de Lavras; WALTER COELHO P DE MAGALHAES JUNIOR, CNPGL; RICARDO GUIMARAES ANDRADE, CNPGL; LEONARDO LOPES BHERING, Universidade Federal de Viçosa; JUAREZ CAMPOLINA MACHADO, CNPGL. |
Título: |
Bioenergy elephant grass genotype selection leveraged by spatial modeling of conventional and high-throughput phenotyping data. |
Ano de publicação: |
2022 |
Fonte/Imprenta: |
Journal of Cleaner Production, v. 363, 132286, 2022. |
DOI: |
https://doi.org/10.1016/j.jclepro.2022.132286 |
Idioma: |
Inglês |
Conteúdo: |
The burning of fossil fuels contributes to global warming. Using renewable energy sources such as elephant grass biomass mitigates anthropogenic impact on nature. The genetic selection of high-yield elephant grass genotypes is important to increase the use of this forage for energy generation. Unmanned aerial vehicles have been used for data collection and optimization of the selection of genotypes. However, statistical tests should be conducted to study the suitability of vegetation indices for predicting morphological traits. In addition, spatial sources of variation, such as soil structure heterogeneity, can disturb the selection process. This study compared the correlation between morphological traits and vegetation indices of elephant grass clones using basic linear mixed and spatial linear mixed models. In addition, we evaluated the magnitude and contribution of each index to explain the variations in traits and identify the best index for this forage. There was significant genetic variability in some morphological traits that enabled selection. Spatial models (autoregressive correlation among rows and columns) were more suitable for modeling some of the evaluated traits. There were changes in the magnitude of the correlation between traits when we considered the best-fit model instead of the non-spatial model. The increase in efficiency using the best-fitted model instead of the non-spatial model was 15.39% for heritability and 9.54% for accuracy. The total dry biomass was the only morphological trait significantly correlated with some vegetation indices, allowing for indirect selection. The coincidence index, heritability, and gains from indirect selection indicated that the normalized difference red-edge index was the best for selecting superior elephant grass high-yielding genotypes. The spatial modeling leveraged the genetic selection of high yield elephant grass genotypes for bioenergetic purposes. MenosThe burning of fossil fuels contributes to global warming. Using renewable energy sources such as elephant grass biomass mitigates anthropogenic impact on nature. The genetic selection of high-yield elephant grass genotypes is important to increase the use of this forage for energy generation. Unmanned aerial vehicles have been used for data collection and optimization of the selection of genotypes. However, statistical tests should be conducted to study the suitability of vegetation indices for predicting morphological traits. In addition, spatial sources of variation, such as soil structure heterogeneity, can disturb the selection process. This study compared the correlation between morphological traits and vegetation indices of elephant grass clones using basic linear mixed and spatial linear mixed models. In addition, we evaluated the magnitude and contribution of each index to explain the variations in traits and identify the best index for this forage. There was significant genetic variability in some morphological traits that enabled selection. Spatial models (autoregressive correlation among rows and columns) were more suitable for modeling some of the evaluated traits. There were changes in the magnitude of the correlation between traits when we considered the best-fit model instead of the non-spatial model. The increase in efficiency using the best-fitted model instead of the non-spatial model was 15.39% for heritability and 9.54% for accuracy. The total dry biomas... Mostrar Tudo |
Palavras-Chave: |
Forage breeding; Genetic selection; Seleção gênica. |
Thesagro: |
Bioenergia; Capim Elefante; Seleção Fenótipa; Seleção Genética; Sensoriamento Remoto. |
Thesaurus NAL: |
Phenomics; Remote sensing. |
Categoria do assunto: |
F Plantas e Produtos de Origem Vegetal |
Marc: |
LEADER 03055naa a2200361 a 4500 001 2143669 005 2022-12-01 008 2022 bl uuuu u00u1 u #d 024 7 $ahttps://doi.org/10.1016/j.jclepro.2022.132286$2DOI 100 1 $aFERREIRA, F. M. 245 $aBioenergy elephant grass genotype selection leveraged by spatial modeling of conventional and high-throughput phenotyping data.$h[electronic resource] 260 $c2022 520 $aThe burning of fossil fuels contributes to global warming. Using renewable energy sources such as elephant grass biomass mitigates anthropogenic impact on nature. The genetic selection of high-yield elephant grass genotypes is important to increase the use of this forage for energy generation. Unmanned aerial vehicles have been used for data collection and optimization of the selection of genotypes. However, statistical tests should be conducted to study the suitability of vegetation indices for predicting morphological traits. In addition, spatial sources of variation, such as soil structure heterogeneity, can disturb the selection process. This study compared the correlation between morphological traits and vegetation indices of elephant grass clones using basic linear mixed and spatial linear mixed models. In addition, we evaluated the magnitude and contribution of each index to explain the variations in traits and identify the best index for this forage. There was significant genetic variability in some morphological traits that enabled selection. Spatial models (autoregressive correlation among rows and columns) were more suitable for modeling some of the evaluated traits. There were changes in the magnitude of the correlation between traits when we considered the best-fit model instead of the non-spatial model. The increase in efficiency using the best-fitted model instead of the non-spatial model was 15.39% for heritability and 9.54% for accuracy. The total dry biomass was the only morphological trait significantly correlated with some vegetation indices, allowing for indirect selection. The coincidence index, heritability, and gains from indirect selection indicated that the normalized difference red-edge index was the best for selecting superior elephant grass high-yielding genotypes. The spatial modeling leveraged the genetic selection of high yield elephant grass genotypes for bioenergetic purposes. 650 $aPhenomics 650 $aRemote sensing 650 $aBioenergia 650 $aCapim Elefante 650 $aSeleção Fenótipa 650 $aSeleção Genética 650 $aSensoriamento Remoto 653 $aForage breeding 653 $aGenetic selection 653 $aSeleção gênica 700 1 $aLEITE, R. V. 700 1 $aMALIKOUSKI, R. G. 700 1 $aPEIXOTO, M. A. 700 1 $aBERNARDELI, A. 700 1 $aALVES, R. S. 700 1 $aMAGALHAES JUNIOR, W. C. P. de 700 1 $aANDRADE, R. G. 700 1 $aBHERING, L. L. 700 1 $aMACHADO, J. C. 773 $tJournal of Cleaner Production$gv. 363, 132286, 2022.
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