2016
DOI: 10.7744/kjoas.20160019
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A novel approach in analyzing agriculture and food systems: Review of modeling and its applications

Abstract: For the past decades, advances in computational devices have propelled mathematical modeling to become an effective tool for solving the black box of complex biological systems because of its prominent analytical power and comprehensive insight. Nevertheless, modeling is still limitedly used in the fields of agriculture and food which generally concentrate on producing experimental data rather than processing them. This study, hence, intends to introduce modeling in terms of its procedure types of structure, f… Show more

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Cited by 5 publications
(6 citation statements)
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References 100 publications
(93 reference statements)
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“…In addition, Kappel et al (2017) estimated the time to maturity as a function of temperature by using an empirical model, and spatially mapped US territories at risk by A. glabripennis damage. Despite the recent application of species distribution modelling, such models still include predictive uncertainties like other biological models (Kim et al, 2016). Therefore, ensemble modelling, which simultaneously uses more than one model, has been used as a conservative approach for predicting species distributions (Shabani et al, 2016), showing its suitability for applications in Cydia pomonella (Lepidoptera: Tortricidae) (Kumar et al, 2015); Rhagoletis pomonella (Diptera: Tephritidae) (Kumar et al, 2016); Ricania shantungensis Chou & Lu (Hemiptera: Ricaniidae), which is a severe forest pest in South Korea (Baek et al, 2019); and Austropuccinia psidii, an invasive rust fungus (Narouei-Khandan et al, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…In addition, Kappel et al (2017) estimated the time to maturity as a function of temperature by using an empirical model, and spatially mapped US territories at risk by A. glabripennis damage. Despite the recent application of species distribution modelling, such models still include predictive uncertainties like other biological models (Kim et al, 2016). Therefore, ensemble modelling, which simultaneously uses more than one model, has been used as a conservative approach for predicting species distributions (Shabani et al, 2016), showing its suitability for applications in Cydia pomonella (Lepidoptera: Tortricidae) (Kumar et al, 2015); Rhagoletis pomonella (Diptera: Tephritidae) (Kumar et al, 2016); Ricania shantungensis Chou & Lu (Hemiptera: Ricaniidae), which is a severe forest pest in South Korea (Baek et al, 2019); and Austropuccinia psidii, an invasive rust fungus (Narouei-Khandan et al, 2020).…”
Section: Introductionmentioning
confidence: 99%
“…Statistical modeling is an effective tool for quantifying the relationship between dependent and independent variables by the statistical significance of their correlations (Kim et al, 2016). Kim et al (2018) developed a statistical model for glucosinolate content in Chinese cabbage using a secondorder multi-polynomial equation with growth duration and temperature as independent variables.…”
Section: Predicting Models Of Phenolic Content In Three-dimensional P...mentioning
confidence: 99%
“…This model approach could be extended to various plants and structures. Further steps in the modeling procedure for agriculture and food systems were model simulation and model-based analysis (Kim et al, 2016). These steps allow us to investigate numerous scenarios and predict the system responses with cost and input in an effective way (Kreutz and Timmer, 2009).…”
Section: Application To Phenolic Production In the Food Systemmentioning
confidence: 99%
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“…Statistical modeling is an effective tool for analyzing empirical data and explains a dependent variable as a function of explanatory variables determined by the statistical significance of their correlation. The model identifies relationships between variables and provides quantitative predictions of the target with a simple model structure compared to other types of models, i.e., mechanistic model . Statistical modeling has been widely applied in various fields ranging from humanities and social science to agricultural/food science and engineering.…”
Section: Introductionmentioning
confidence: 99%