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首页> 外文期刊>Italian journal of animal science >An Attempt to Predict Conformation and Fatness in Bulls by Means of Artificial Neural Networks Using Weight, Age and Breed Composition Information
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An Attempt to Predict Conformation and Fatness in Bulls by Means of Artificial Neural Networks Using Weight, Age and Breed Composition Information

机译:利用体重,年龄和品种组成信息通过人工神经网络预测公牛构形和肥胖的尝试

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The present study aimed to predict conformation and fatness grades in bulls based on data available at slaughter (carcass weight, age and breed proportions) by means of counter-propagation artificial neural networks (ANN). For chemometric analysis, 5893 bull carcasses (n=2948 and n=2945 for calibration and testing of models, respectively) were randomly selected from the initial data set (n≈27000; one abattoir, one classifier, three years period). Different ANN models were developed for conformation and fatness by varying the net size and the number of epochs. Tested net parameters did not have a notable effect on models’ quality. Respecting the tolerance of ±1 subclass between the actual and predicted value (as allowed by European Union legislation for on-spot checks), the matching between the classifier and ANN grading was 73.6 and 64.9% for conformation and fatness, respectively. Success rate of prediction was positively related to the frequency of carcasses in the class.
机译:本研究旨在通过反向传播人工神经网络(ANN),基于在屠宰时可获得的数据(car体重量,年龄和品种比例)来预测公牛的构象和脂肪等级。为了进行化学计量分析,从初始数据集(n≈27000;一个屠宰场,一个分类器,三年)中随机选择了5893头牛bull体(分别用于模型校准和测试的n = 2948和n = 2945)。通过改变净大小和历时数,开发了不同的人工神经网络模型来进行构象和肥胖处理。测试的净参数对模型的质量没有显着影响。考虑到实际值和预测值之间的公差为±1(根据欧盟法律的规定,可以进行现场检查),分类器和ANN等级之间的匹配度分别为构象度和脂肪度为73.6%和64.9%。预测的成功率与班级中cas体的发生频率呈正相关。

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