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首页> 外文期刊>Poultry Science >Estimation and modeling true metabolizable energy of sorghum grain for poultry
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Estimation and modeling true metabolizable energy of sorghum grain for poultry

机译:家禽高粱谷物真实代谢能的估算和建模

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摘要

Sorghum grain is an important ingredient in poultry diets. The TMEn content of sorghum grain is a measure of its quality. As for the other feed ingredients, the biological procedure used to determine the TMEn value of sorghum grain is costly and time consuming. Therefore, it is necessary to find an alternative method to accurately estimate the TMEn content. In this study, 2 methods of regression and artificial neural network (ANN) were developed to describe the TMEn value of sorghum grain based on chemical composition of ash, crude fiber, CP, ether extract, and total phenols. A total of 144 sorghum samples were used to determine chemical composition and TMEn content using chemical analyses and bioassay technique, respectively. The values were consequently subjected to regression and ANN analysis. The fitness of the models was tested using R-2 values, MS error, and bias. The developed regression and ANN models could accurately predict the TMEn of sorghum samples from their chemical composition. The goodness of fit in terms of R-2 values corresponding to testing and training of the ANN model showed a higher accuracy of prediction than the equation established by regression method. In terms of MS error, the ANN model showed lower residuals distribution than the regression model. The results suggest that the ANN model may be used to accurately estimate the TMEn value of sorghum grain from its corresponding chemical composition.
机译:高粱谷物是家禽饮食中的重要成分。高粱谷物的TMEn含量是对其质量的度量。至于其他饲料成分,用于确定高粱谷物TMEn值的生物学程序既昂贵又费时。因此,有必要找到另一种方法来准确估计TMEn含量。在这项研究中,根据灰分,粗纤维,CP,醚提取物和总酚的化学成分,开发了两种回归方法和人工神经网络(ANN)来描述高粱粒的TMEn值。分别使用化学分析和生物测定技术,共使用144个高粱样品测定化学成分和TMEn含量。因此,对这些值进行了回归和ANN分析。使用R-2值,MS误差和偏差测试了模型的适用性。建立的回归模型和人工神经网络模型可以根据其化学成分准确预测高粱样品的TMEn。根据R-2值进行的拟合优度(对应于ANN模型的测试和训练)显示出比通过回归方法建立的方程式更高的预测准确性。在MS误差方面,ANN模型的残差分布比回归模型低。结果表明,人工神经网络模型可用于根据其相应的化学成分准确估算高粱的TMEn值。

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