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Response surface optimization of an artificial neural network for predicting the size of re-assembled casein micelles

机译:人工神经网络的响应面优化,用于预测重组酪蛋白胶束的大小

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摘要

An artificial neural network (ANN) was designed to predict the size of re-assembled micelles in casein solutions as influenced by pH of solution and ultrasonic treatment. A generalized feed-forward network consisted of five neurons in the input layer, one hidden layer and an output layer with one neuron optimized using response surface methodology (RSM). Number of hidden neurons, momentum coefficient and step size in the hidden layer, number of epochs and training runs were the variables optimized. A quadratic equation was applied to mean absolute error (MAE) of 52 artificial neural networks as the response. It was found that the first-order effect of epoch number is the most significant term in determination of MAE, followed by the interactive effect of epoch number and step size. Minimum response (MAE) was obtained by employing the following optimum conditions for the artificial neural network: hidden neurons number=10, momentum coefficient=0.6, step size=0.34, epoch number=6230 and training run=1.
机译:设计了人工神经网络(ANN)来预测酪蛋白溶液中重组胶束的大小,该大小受溶液pH值和超声处理的影响。广义前馈网络由输入层中的五个神经元,一个隐藏层和一个输出层组成,其中一个神经元已使用响应面方法(RSM)优化。优化的变量是隐藏神经元的数量,动量系数和隐藏层的步长,历元数和训练次数。将二次方程式应用于52个人工神经网络的平均绝对误差(MAE)作为响应。研究发现,历元的一阶效应是MAE确定中最重要的术语,其次是历元与步长的交互作用。通过为人工神经网络采用以下最佳条件来获得最小响应(MAE):隐藏神经元数= 10,动量系数= 0.6,步长= 0.34,历元数= 6230和训练次数= 1。

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