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首页> 外文期刊>Food and Bioprocess Technology >Genetic Algorithm–Artificial Neural Network Modeling of Moisture and Oil Content of Pretreated Fried Mushroom
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Genetic Algorithm–Artificial Neural Network Modeling of Moisture and Oil Content of Pretreated Fried Mushroom

机译:遗传算法-人工神经网络模型对油炸蘑菇的水分和油含量进行建模

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摘要

In this research, the effect of different pretreatments (osmotic dehydration and gum coating) on moisture and oil content of fried mushroom was investigated, and artificial neural network and genetic algorithm were applied for modeling of these parameters during frying. Osmotic dehydration was performed in solution of NaCl with concentrations of 5% and 10%, and methyl cellulose was used for gum coating. Either pretreated or control samples were fried at 150, 170, and 190 °C for 0.5, 1, 2, 3, and 4 min. The results showed that osmotic dehydration and gum coating significantly decreased (0–84%, depending upon the processing conditions) oil content of fried mushrooms. However, moisture content of fried samples diminished as result of osmotic pretreatment and increased by gum coating. An artificial neural network was developed to estimate moisture and oil content of fried mushroom, and genetic algorithm was used to optimize network configuration and learning parameters. The developed genetic algorithm–artificial neural network (GA–ANN) which included 17 hidden neurons could predict moisture and oil content with correlation coefficient of 0.93 and 96%, respectively. These results indicating that GA–ANN model provide an accurate prediction method for moisture and oil content of fried mushroom.
机译:在这项研究中,研究了不同的预处理(渗透脱水和口香糖涂层)对炸蘑菇的水分和油含量的影响,并使用人工神经网络和遗传算法对油炸过程中的这些参数进行建模。在浓度为5%和10%的NaCl溶液中进行渗透脱水,并将甲基纤维素用于口香糖涂层。预处理或对照样品分别在150、170和190°C下油炸0.5、1、2、3和4分钟。结果表明,油炸蘑菇的渗透性脱水和口香糖涂层显着降低(0–84%,取决于加工条件)。然而,油炸样品的水分含量由于渗透预处理而降低,并且通过胶衣涂覆而增加。开发了一个人工神经网络来估计蘑菇的水分和油含量,并使用遗传算法来优化网络配置和学习参数。发达的遗传算法-人工神经网络(GA-ANN)包括17个隐藏的神经元,可以预测水分和油含量,相关系数分别为0.93和96%。这些结果表明,GA–ANN模型为炒蘑菇的水分和油含量提供了一种准确的预测方法。

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