2012
DOI: 10.1016/j.compag.2012.07.005
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Modeling Avena fatua seedling emergence dynamics: An artificial neural network approach

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Cited by 24 publications
(39 citation statements)
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“…However, these issues are not usually considered explicitly in the weed science literature, where fitting the model is the goal regardless of whether the statistical analysis is appropriate or not (Onofri et al ., , ; Cao et al ., ; Mesgaran et al ., ). In order to cope with such limitations, different modelling approaches have been proposed, including techniques that account for censoring (Onofri et al ., , ), genetic algorithms (Haj Seyed‐Hadi & Gonzalez‐Andujar, ; Blanco et al ., ) and artificial neural networks (Chantre et al ., ).…”
Section: Introductionmentioning
confidence: 97%
“…However, these issues are not usually considered explicitly in the weed science literature, where fitting the model is the goal regardless of whether the statistical analysis is appropriate or not (Onofri et al ., , ; Cao et al ., ; Mesgaran et al ., ). In order to cope with such limitations, different modelling approaches have been proposed, including techniques that account for censoring (Onofri et al ., , ), genetic algorithms (Haj Seyed‐Hadi & Gonzalez‐Andujar, ; Blanco et al ., ) and artificial neural networks (Chantre et al ., ).…”
Section: Introductionmentioning
confidence: 97%
“…Our results partially agree with Yousefi et al (2013) in a comparison of three models (Gompertz, Logistic and Weibull models) on D. sophia, who found that the Weibull model gave the best fit for Iran climate. Chantre et al (2012) reported that the Weibull model was deemed to provide a better fit than the other models for A. fatua seedling emergence in Argentina. However, Gonzalez-Diaz et al (2007) reported that the Logistic model was deemed to provide a better fit than the other models for A. fatua seedling emergence in Spain.…”
Section: Discussionmentioning
confidence: 99%
“…However, Gonzalez-Diaz et al (2007) reported that the Logistic model was deemed to provide a better fit than the other models for A. fatua seedling emergence in Spain. The differences between A. fatua and D. sophia emergence patterns in semiarid conditions might be attributed mainly to a highly unpredictable precipitation regime, fuctuating thermal environment and seed dormancy level variations (Chantre et al, 2012). In addition to weather conditions, different soil management (such as cultivation operation and working depth) may affect the accuracy of the model by varying the vertical movement of the seeds within the soil profile (Grundy, 2003).…”
Section: Discussionmentioning
confidence: 99%
“…Parametric regression models for emergence are usually employed in this framework. However, due to the limitations of this approach, different modeling approaches have been proposed, including techniques that account for censoring (Onofri, Gresta, & Tei, 2010;Onofri, Mesgaran, Tei, & Cousens, 2011;Onofri, Piepho, & Kozak, 2019), genetic algorithms (Blanco et al, 2014;Haj Seyed-Hadi & Gonzalez-Andujar, 2009), and artificial neural networks (Chantre et al, 2012). However, due to the limitations of this approach, different modeling approaches have been proposed, including techniques that account for censoring (Onofri, Gresta, & Tei, 2010;Onofri, Mesgaran, Tei, & Cousens, 2011;Onofri, Piepho, & Kozak, 2019), genetic algorithms (Blanco et al, 2014;Haj Seyed-Hadi & Gonzalez-Andujar, 2009), and artificial neural networks (Chantre et al, 2012).…”
mentioning
confidence: 99%