Agronomic performance of soybean and its relation with the production environment
Abstract
The objective of the work is to identify the agronomic performance of soybeans and correlate meteorological attributes with yield components. The study was carried out at the Escola Fazenda of the Regional University of the Northwest of the State of Rio Grande do Sul - UNIJUÍ, located in Augusto Pestana – RS. The experimental design used was randomized blocks, consisting of 10 genotypes and five replications. Descriptive analysis was performed using mean plus standard deviation for variables that presented a coefficient of variation greater than 35%; normality and homogeneity tests were also performed, as well as analysis of variance, Tukey mean comparison tests and linear correlations supported by the t-test. Soybean grain yield is closely linked to meteorological elements, which play a crucial role in the fluctuations and frustrations of soybean agricultural harvests in the municipalities of Rio Grande do Sul. The significant correlations between yield indicate that the water factor is what more affects production. The TMG7362IPRO cultivar had a higher yield with 73 bags per ha-1. -Iin this context, the soybean GMR also influenced yield in relation to climatic relations and had a better positioning.
Downloads
References
Alvim, AM., & Fochezatto, A. (2020). The impacts of soy-based biodiesel on the main soy producers in the international market. Journal of Agricultural Studies. https://doi.org/10.5296/jas.v8i2.16204
Callou, K. R. A. (2015). Nutritional Aspects of Soy. Estácio Recife Electronic Journal, 1 (1), 1-10. https://reer.emnuvens.com.br/reer/article/view/15
Coêlho, J. D. (2024). Agriculture: Soy. Fortaleza, CE: Banco do Nordeste do Brasil. https://www.bnb.gov.br/s482-dspace/handle/123456789/1941.
Dubreuil, V., Fante, K. P., Planchon, O., & Neto, J. L. S. A. (2018). The types of annual climates in Brazil: an application of the Köppen classification from 1961 to 2015. Confins, Revue franco-brésilienne de géographie/ Franco-Brazilian geography Journal, (37). https://doi.org/10.4000/confins.15738.
MAPA – Ministério da Agricultura de Pecuária. (2024). Cultivar Web. Brasília, DF: MAPA. Available in: https://sistemas.agricultura.gov.br/snpc/cultivarweb/cultivares_registradas.php
Neumaier, N., Farias, J. R. B., Nepomuceno, A. L., Mertz-Henning, L. M., Foloni, J. S. S., Moraes, L. A. C., & Goncalves, S. L. (2020). Soybean ecophysiology. Sistemas de Produção, 17.https://www.alice.cnptia.embrapa.br/alice/bitstream/doc/1128387/1/p.-33-54-de-SP-17-2020
Norman,A. G. (1978) Soybean physiology, agronomy, and utilization. Washington, DC: Academic Press.
Paranhos, R., Figueiredo Filho, D. B., Rocha, E. C., Silva Júnior, J. A., Neves, J. A. B., & Santos, M. L. W. D. (2014). Unraveling the Mysteries of the Pearson Correlation Coefficient: The Payoff. Leviathan, (8), 66-95. https://doi.org/10.11606/issn.2237-4485.lev.2014.132346
Pimentel-Gomes, F. (2023). Experimental statistics course. Digitize Content. (15th ed.). Piracicaba, SP: FEALQ.
R Core Team. (2023). R: A language and environment for statistical computing. Vienna, Austria: R Foundation for Statistical Computing.
Silva, E. H. F. M., Antolin, L. A. S., Zanon, A. J., Andrade Junior, A. S., Souza, H. A., Carvalho, K. S., Vieira Junior, N. A., & Marin, F. R. (2021). Impact assessment of soybean yield and water productivity in Brazil due to climate change. European Journal of Agronomy, 129, 126329. https://doi.org/10.1016/j.eja.2021.126329
SISDAGRO - Sistema de Suporte à Decisão na Agropecuária (2022). Instituto Nacional de Meteorologia. – INMET. Brasília, DF: SISDAGRO. http://sisdagro.inmet.gov.br/sisdagro/app/index
Tejo, D. P., Fernandes, C. S., & Buratto, J. S. (2019). Soybean: phenology, morphology and factors that affect productivity. Faef electronic scientific journal of Agronomy, 35 (1), 1-9. http://faef.revista.inf.br/imagens_arquivos/arquivos_destaque/hw9EU5Lusw7rZZH_ 201 9-6-19-14-11-1
Vian, A., Bredemeier, C., Pires, J., Corassa, G., & Vanin, J. (2022). Aplicações da agricultura de precisão na cultura da soja. In: Martin, T. N., Pires, J. L. F., & Vey, R. T. (Eds.). Tecnologias aplicadas para o manejo rentável e eficiente da cultura da soja. (pp. 275-296). https://www.alice.cnptia.embrapa.br/alice/bitstream/doc/1146827/1/Cap-Aplicacoes
Copyright (c) 2024 Agronomy Science and Biotechnology
This work is licensed under a Creative Commons Attribution 4.0 International License.