Sensitivity of Four Indices of Meteorological Drought for Rainfed Maize Yield Prediction in the State of Sinaloa, Mexico

Título traducido de la contribución: Sensibilidad de cuatro índices de sequía meteorológica para la predicción del rendimiento del maíz de lluvia en el estado de Sinaloa, México

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Resumen

In the state of Sinaloa, rainfall presents considerable irregularities, and the climate is mainly semiarid, which highlights the importance of studying the sensitivity of various indices of meteorological drought. The goal is to evaluate the sensitivity of four indices of meteorological drought from five weather stations in Sinaloa for the prediction of rainfed maize yield. Using DrinC software and data from the period 1982–2013, the following were calculated: the standardized
precipitation index (SPI), agricultural standardized precipitation index (aSPI), reconnaissance drought index (RDI) and effective reconnaissance drought index (eRDI). The observed rainfed maize yield (RMYob) was obtained online, through free access from the database of the Agrifood and Fisheries Information Service of the government of Mexico. Sensitivities between the drought indices and
RMYob were estimated using Pearson and Spearman correlations. Predictive models of rainfed maize yield (RMYpr) were calculated using multiple linear and nonlinear regressions. In the models, aSPI and eRDI with reference periods and time steps of one month (January), two months (December–January) and three months (November–January), were the most sensitive. The correlation coefficients
between RMYob and RMYpr ranged from 0.423 to 0.706, all being significantly different from zero. This study provides new models for the early calculation of RMYpr. Through appropriate planning of the planting–harvesting cycle of dryland maize, substantial socioeconomic damage can be avoided in one of the most important agricultural regions of Mexico
Título traducido de la contribuciónSensibilidad de cuatro índices de sequía meteorológica para la predicción del rendimiento del maíz de lluvia en el estado de Sinaloa, México
Idioma originalInglés
Número de artículo525
Páginas (desde-hasta)1-14
Número de páginas14
PublicaciónAgriculture (Switzerland)
Volumen12
N.º525
DOI
EstadoPublicada - 8 abr. 2022

Palabras clave

  • multiple linear regression; multiple nonlinear regression; socioeconomic damage

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