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Optimization of an artificial neural network for thermal/pressure food processing: Evaluation of training algorithms

机译:用于热/压食品加工的人工神经网络的优化:训练算法的评估

摘要

The aim of the current paper is to obtain, through a proper selection of the training algorithm, an optimized artificial neural network (ANN) able to predict two parameters of interest for high-pressure (HP) food processing: the maximum or minimum temperature reached in the sample after pressurization and the time needed for thermal re-equilibration in the high-pressure process. To do that, 13 training algorithms belonging to 4 broad classes (gradient descent, conjugate gradient, quasi-Newton algorithms and Bayesian regularization) have been evaluated by training different ANNs. The network trained with the Levenberg-Marquardt algorithm showed the best overall predictive ability. The performance of this network was subsequently optimized by varying the number of nodes in the hidden layer, the learning coefficient and the decrease factor of this coefficient, and selecting the configuration with the highest predictive ability. The optimized ANN was able to make accurate predictions for the variables studied (temperature and time). These predictions were significantly better than those obtained by a previous ANN developed without selection of the training algorithm, that is, assuming the default option of the ANN computational package (gradient descent with a user-defined learning rate). We have shown that a correct selection of the training algorithm allows maximizing the predictive ability of the artificial neural network. © 2007 Elsevier B.V. All rights reserved.
机译:本文的目的是通过适当选择训练算法来获得优化的人工神经网络(ANN),该网络能够预测高压(HP)食品加工的两个重要参数:达到的最高或最低温度加压后样品中的碳原子数,以及高压过程中热重新平衡所需的时间。为此,已经通过训练不同的人工神经网络对属于4个大类的13种训练算法(梯度下降,共轭梯度,拟牛顿算法和贝叶斯正则化)进行了评估。用Levenberg-Marquardt算法训练的网络显示出最佳的整体预测能力。随后,通过更改隐藏层中的节点数,学习系数和该系数的减少因子,并选择具有最高预测能力的配置,来优化该网络的性能。优化的人工神经网络能够对所研究的变量(温度和时间)做出准确的预测。这些预测比以前的ANN在没有选择训练算法的情况下获得的预测要好得多,也就是说,假设ANN计算包的默认选项(具有用户定义的学习率的梯度下降)。我们已经表明,正确选择训练算法可以使人工神经网络的预测能力最大化。 ©2007 Elsevier B.V.保留所有权利。

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