PREDICTION MODELS OF GRAIN YIELD AND CHARACTERIZATION

Narciso Ysac Avila Serrano, Bernardo Murillo-Amador, José Luis Espinoza Villavicencio, Alejandro Palacios Espinosa, Ariel Guillen Trujillo, Rafael De Luna de la Peña, José Luis García Hernández

Abstract


With the objective to characterize the grain yield of five cowpea cultivars and to find linear regression models to predict it, a study was developed in La Paz, Baja California Sur, Mexico. A complete randomized blocks design was used. Simple and multivariate analyses of variance were carried out using the canonical variables to characterize the cultivars. The variables cluster per plant, pods per plant, pods per cluster, seeds weight per plant, seeds hectoliter weight, 100-seed weight, seeds length, seeds wide, seeds thickness, pods length, pods wide, pods weight, seeds per pods, and seeds weight per pods, showed significant differences (P≤ 0.05) among cultivars. Paceño and IT90K-277-2 cultivars showed the higher seeds weight per plant. The linear regression models showed correlation coefficients ≥0.92. In these models, the seeds weight per plant, pods per cluster, pods per plant, cluster per plant and pods length showed significant correlations (P≤ 0.05). In conclusion, the results showed that grain yield differ among cultivars and for its estimation, the prediction models showed determination coefficients highly dependable.

Keywords


Vigna unguiculata; predictive models; arid zones



URN: http://www.revista.ccba.uady.mx/urn:ISSN:1870-0462-tsaes.v12i1.252



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