脱粒
发芽
生物
回归分析
人工神经网络
数学
生物系统
农学
统计
植物
机器学习
计算机科学
作者
Javad Khazaei,Feizollah Shahbazi,Jafar Massah,Mehdi Nikravesh,Mohammad Hossein Kianmehr
出处
期刊:Crop Science
[Wiley]
日期:2008-07-01
卷期号:48 (4): 1532-1544
被引量:57
标识
DOI:10.2135/cropsci2007.04.0187
摘要
Threshing wheat ( Triticum aestivum L.) at high speeds is the main reason behind abnormal seedlings and vigor reduction of the seeds. This problem is expected to be severe in head‐stripper combines with successive impact loadings of stripping and threshing units. The aim of this study was to simulate the effects of impact velocities (IV), number of impact loadings (NL), and seed moisture content (MC) on percentage of physical damage (PPD) and percentage of loss in germination (PLG) to wheat seeds. Modeling the correlation between dependent and independent variables was performed using mathematical and artificial neural networks (ANN). The result showed that all the three independent variables significantly influenced PPD and PLG ( P = 0.01). Increasing the IV from 5 to 30 m s −1 caused an increase in PPD and PLG from 0.17 to 35.8% and from 0.37 to 19.9%, respectively. It was found that the seeds with higher MC could better withstand physical and physiological damage than those with lower MC. With an increase in NL from 1 to 3 times, the mean values of PPD and PLG were increased by 2.9 and 2.6 times, respectively. An ANN model with two hidden layers, trained with a back‐propagation algorithm, successfully learned the relationship between the input and output variables. In comparison with regression models, ANN performed better when predicting PPD and PLG to wheat seeds.
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