2021
DOI: 10.7160/aol.2021.130301
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Forecasting Grain Production and Static Capacity of Warehouses Using the Natural Neighbor and Multiquadric Equations

Abstract: The strategic logistics of agricultural production and storage aggregates information related to production and storage. In this sense, time, location, and distance from producer and consumer markets are considered, emphasizing the importance of grain storage and production logistics. The Natural Neighbor and multiquadric equation are spatial interpolation methods used to predict these variables value at non-sampled locations, for asymmetric and categorical data, respectively. … Show more

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Cited by 6 publications
(3 citation statements)
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“…A well-known powerful mathematical toolkit for substantiating or refuting a significant relationship between factor features (factors, predictors, extrapolators, prognostic parameters (Cima et al, 2021;Musetescu et al, 2022)) and dependent features (outcome indicators) are the methods of multivariate statistical analysis and multidimensional scaling (Fadilah et al, 2021), namely: methods of descriptive statistics, correlation-regression analysis (Valdes et al, 2022) using both clear metric features (Kolkova et al, 2022), and fuzzy non-metric (Abada et al, 2021;Jencova et al, 2021), cluster analysis (He et al, 2021;Lewicki et al, 2021;Vinska et al, 2021), canonical analysis (Lyoenov et al, 2021 (c)), discriminant analysis, variance analysis, factor analysis (Nastisin et al, 2021), principal component analysis, structural modeling (Nikonenko et al, 2021). Such a mechanism allows developing statistically significant accurate and adequate models, which can be used for further application and the adoption of well-founded objective management decisions (Szostek 2021;Ahmed 2021).…”
Section: Methodological Approachmentioning
confidence: 99%
“…A well-known powerful mathematical toolkit for substantiating or refuting a significant relationship between factor features (factors, predictors, extrapolators, prognostic parameters (Cima et al, 2021;Musetescu et al, 2022)) and dependent features (outcome indicators) are the methods of multivariate statistical analysis and multidimensional scaling (Fadilah et al, 2021), namely: methods of descriptive statistics, correlation-regression analysis (Valdes et al, 2022) using both clear metric features (Kolkova et al, 2022), and fuzzy non-metric (Abada et al, 2021;Jencova et al, 2021), cluster analysis (He et al, 2021;Lewicki et al, 2021;Vinska et al, 2021), canonical analysis (Lyoenov et al, 2021 (c)), discriminant analysis, variance analysis, factor analysis (Nastisin et al, 2021), principal component analysis, structural modeling (Nikonenko et al, 2021). Such a mechanism allows developing statistically significant accurate and adequate models, which can be used for further application and the adoption of well-founded objective management decisions (Szostek 2021;Ahmed 2021).…”
Section: Methodological Approachmentioning
confidence: 99%
“…Destaca-se, também, que os indicadores de análise econômica permitem aos profissionais a possibilidade de verificarem tendências de comportamentos das variáveis que estão sendo tratadas (LANDIM et al, 2020). Dessa forma, por meio de indicadores de associação espacial, é possível sugerir possíveis perfis e tendências de fenômenos que ocorrem em determinadas regiões e verificar se esses mesmos efeitos sucedem em regiões vizinhas (CIMA et al, 2021a).…”
Section: Considerações Finaisunclassified
“…Agricultural activity is an important economic component for the generation of employment and income at regional, national and world level and contributes to the development of the State of the Countries (Esteves et al, 2016;Amaral et al, 2020;Cima et al, 2021). The mixed models used in this work allowed to measure the contribution of agricultural variables in the VBP of the state of Paraná, being possible to guide actions to increase these variables in order to strengthen the VBP, as well as contribute to public and private initiatives that make up the economic system.…”
mentioning
confidence: 99%