Stability of the hypocotyl length of soybean cultivars using neural networks and traditional methods

The length of the hypocotyl has been highlighted as a potential descriptor of the soybean crop. However, there is no information available in the published literature about its behavior over several planting times. The present study aimed to identify soybean cultivars with stability and predictabili...

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Veröffentlicht in:Ciência rural 2019-01, Vol.49 (3)
Hauptverfasser: Alves, Guilherme Ferreira, Nogueira, João Pedro Garcia, Machado Junior, Ronaldo, Ferreira, Silvana da Costa, Nascimento, Moysés, Matsuo, Eder
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Sprache:eng
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Zusammenfassung:The length of the hypocotyl has been highlighted as a potential descriptor of the soybean crop. However, there is no information available in the published literature about its behavior over several planting times. The present study aimed to identify soybean cultivars with stability and predictability of hypocotyl length behavior through neural networks and traditional adaptability and stability methodologies. We analyzed 16 soybean cultivars in 6 planting seasons under greenhouse conditions. In each season, a randomized block design with 4 replications was adopted. The experimental unit was composed of 3 plants. The plot mean was used in the analysis. Hypocotyl length data were analyzed by analysis of variance and Tukey’s test. Then analyses were carried out using the Traditional Method, Plaisted and Peterson, Wricke, Eberhart and Russell, and Artificial Neural Networks. A significant effect (p
ISSN:0103-8478
1678-4596
1678-4596
DOI:10.1590/0103-8478cr20180300