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肉鸡生长的冈珀茨模型与神经网络模型的比较

Comparison of Gompertz and neural network models of broiler growth.

作者信息

Roush W B, Dozier W A, Branton S L

机构信息

USDA/ARS, Poultry Research Unit, Mississippi State, Mississippi 39762, USA.

出版信息

Poult Sci. 2006 Apr;85(4):794-7. doi: 10.1093/ps/85.4.794.

Abstract

Neural networks offer an alternative to regression analysis for biological growth modeling. Very little research has been conducted to model animal growth using artificial neural networks. Twenty-five male chicks (Ross x Ross 308) were raised in an environmental chamber. Body weights were determined daily and feed and water were provided ad libitum. The birds were fed a starter diet (23% CP and 3,200 kcal of ME/kg) from 0 to 21 d, and a grower diet (20% CP and 3,200 kcal of ME/ kg) from 22 to 70 d. Dead and female birds were not included in the study. Average BW of 18 birds were used as the data points for the growth curve to be modeled. Training data consisted of alternate-day weights starting with the first day. Validation data consisted of BW at all other age periods. Comparison was made between the modeling by the Gompertz nonlinear regression equation and neural network modeling. Neural network models were developed with the Neuroshell Predictor. Accuracy of the models was determined by mean square error (MSE), mean absolute deviation (MAD), mean absolute percentage error (MAPE), and bias. The Gompertz equation was fit for the data. Forecasting error measurements were based on the difference between the model and the observed values. For the training data, the lowest MSE, MAD, MAPE, and bias were noted for the neural-developed neural network. For the validation data, the lowest MSE and MAD were noted with the genetic algorithm-developed neural network. Lowest bias was for the neural-developed network. As measured by bias, the Gompertz equation underestimated the values whereas the neural- and genetic-developed neural networks produced little or no overestimation of the observed BW responses. Past studies have attempted to interpret the biological significance of the estimates of the parameters of an equation. However, it may be more practical to ignore the relevance of parameter estimates and focus on the ability to predict responses.

摘要

神经网络为生物生长建模提供了一种替代回归分析的方法。利用人工神经网络对动物生长进行建模的研究非常少。25只雄性雏鸡(罗斯×罗斯308)饲养在环境舱中。每天测定体重,随意提供饲料和水。这些鸡在0至21日龄时饲喂开食料(粗蛋白含量23%,代谢能3200千卡/千克),在22至70日龄时饲喂生长料(粗蛋白含量20%,代谢能3200千卡/千克)。死亡的鸡和母鸡不包括在本研究中。18只鸡的平均体重用作建模生长曲线的数据点。训练数据由从第一天开始的隔日体重组成。验证数据由所有其他年龄段的体重组成。对Gompertz非线性回归方程建模和神经网络建模进行了比较。使用Neuroshell Predictor开发神经网络模型。通过均方误差(MSE)、平均绝对偏差(MAD)、平均绝对百分比误差(MAPE)和偏差来确定模型的准确性。Gompertz方程适用于这些数据。预测误差测量基于模型与观测值之间的差异。对于训练数据,神经网络开发的神经网络的MSE、MAD、MAPE和偏差最低。对于验证数据,遗传算法开发的神经网络的MSE和MAD最低。偏差最低的是神经网络开发的网络。以偏差衡量,Gompertz方程低估了数值,而神经网络和遗传算法开发的神经网络对观测体重反应的高估很少或没有。过去的研究试图解释方程参数估计的生物学意义。然而,忽略参数估计的相关性而专注于预测反应的能力可能更实际。

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