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首页> 外文期刊>Journal of food engineering >Prediction of foods freezing and thawing times: Artificial neural networks and genetic algorithm approach
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Prediction of foods freezing and thawing times: Artificial neural networks and genetic algorithm approach

机译:食品冷冻和解冻时间的预测:人工神经网络和遗传算法

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摘要

In this work a feedforward neural network, trained and validated using experimental values of freezing and thawing times of foods and test substances of different geometries, is developed. A total of 796 experimental times of both processes were collected from reported works. The database used covered a wide range of operative conditions as well as size, shape and type of material. The input layer had seven elements: shape factor, characteristic dimension, Biot number, thermal diffusivity, initial, ambient and final temperatures. The output layer had one element: the process time. The total number of hidden layers and the number of neurons in each hidden layer were chosen by trial and error. For each topology, a simple based genetic algorithm search technique was applied to obtain the initial training parameters of the neural network that improve its generalization capacity. Three particular networks were evaluated: one for freezing times, another one for thawing times, and a third one for both freezing and thawing times. The final topologies has one or two hidden layers with 4 nodes in each one. Our results show that the neural network had an average absolute relative error of less than 10%, suggesting that ANN provide a simple and accurate prediction method for freezing and thawing times, valid for wide ranges of food types, sizes, shapes and working conditions.
机译:在这项工作中,开发了一种前馈神经网络,该神经网络使用不同几何形状的食物和测试物质的冷冻和解冻时间的实验值进行了训练和验证。从已报道的工作中,共收集了两个过程的796个实验时间。使用的数据库涵盖了广泛的操作条件以及材料的尺寸,形状和类型。输入层具有七个元素:形状因子,特征尺寸,比奥数,热扩散率,初始温度,环境温度和最终温度。输出层有一个要素:处理时间。通过反复试验选择隐藏层的总数和每个隐藏层的神经元数量。对于每种拓扑,都应用了基于简单遗传算法的搜索技术来获取神经网络的初始训练参数,从而提高了泛化能力。评估了三个特定的网络:一个网络用于冻结时间,另一个网络用于解冻时间,第三个网络同时用于冻结和解冻时间。最终的拓扑具有一个或两个隐藏的层,每个层中有4个节点。我们的结果表明,神经网络的平均绝对相对误差小于10%,这表明ANN提供了一种简单而准确的预测冻融时间的方法,适用于各种食品类型,大小,形状和工作条件。

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