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Feed-forward and generalised regression neural networks in modelling feeding behaviour of pigs in the grow-finish phase

机译:饲料前进和广义回归神经网络在生长阶段猪饲养行为中的饲养行为

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Feeding patterns of pigs have been investigated for use in management decisions and identifying sick animals. Development of models to predict feeding behaviour has been limited due to the large number of potential environmental factors involved and complex relationships between them. Artificial neural networks have been proven to be an effective tool for mapping complicated, nonlinear relationships between inputs and outputs. However, they have not been applied to feeding behaviour prediction. In this study, we compared the use of feed-forward (FFNN) and generalised regression neural networks (GRNN) in forecasting feeding behaviour of pigs in the grow-finish phase, using time of day and temperature humidity index as inputs. Models were calibrated on data from 1923 grow-finish pigs collected from 2008 to 2014, and their predictive ability was tested using data from four additional grow-finish groups collected from 2014 to 2016. Results indicated that FFNN trained with the Levenberg-Marquardt (LM) and scaled conjugate gradient (SCG) algorithms were the most accurate forecasting models. In three of the four validation groups, models trained with LM and SCG algorithms exhibited strong performance, with correlations between predicted and observed feeding behaviours ranging from 0.623 to 0.754. Large deviations between predicted and observed behaviours in the fourth validation group were probably the result of an outbreak of pneumonia, which demonstrates the potential for the model to be used in automated detection of disease outbreak and other stress events. This work is the first step in developing a fully automated system for detecting changes in feeding behaviour. Published by Elsevier Ltd on behalf of IAgrE.
机译:已经研究过猪的饲养模式以用于管理决策和识别病人。由于涉及大量潜在的环境因素和它们之间的复杂关系,因此在预测饲养行为的模型的发展受到限制。已被证明是人工神经网络是一种有效的输入和输出之间复杂的非线性关系的有效工具。但是,它们尚未应用于喂养行为预测。在这项研究中,我们将前馈(FFNN)和广义回归神经网络(GRNN)的使用进行了比较了预测生长结束阶段的猪的饲养行为,使用一天的时间和温度湿度指数作为输入。从2008年到2014年收集的1923年生长猪的数据校准了模型,并使用从2014年至2016年收集的四个额外的生长群体进行预测能力。结果表明FFNN用Levenberg-Marquardt培训(LM )和缩放的共轭梯度(SCG)算法是最准确的预测模型。在四个验证组中的三个中,用LM和SCG算法培训的模型表现出强烈的性能,预测和观察到的饲养行为之间的相关性从0.623到0.754。在第四验证组中预测和观察行为之间的巨大偏差可能是肺炎爆发的结果,这证明了模型用于自动检测疾病爆发和其他压力事件。这项工作是开发全自动系统的第一步,用于检测喂养行为的变化。 elsevier有限公司代表IAGRE出版。

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