利用神经网络模型和Taguchi方法选择气体辅助注射成型的最佳参数

Chih-Chou Chiu, C. Su, Gong‐Shung Yang, Jeng-Sheng Huang, S. Chen, N. Cheng
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引用次数: 25

摘要

描述了如何设计统计田口方法和反向传播神经网络模型来评估气体辅助注射成型过程中各种参数的影响并确定最佳参数设置值。在应用田口方法时,采用L18正交阵列来收集观测数据,并使用相同的收集数据集,并使用两个额外的输入来构建神经网络模型,以确定使用这种神经网络是否会提供优于统计方法的泛化能力。广泛研究了学习率和隐藏节点数对神经网络学习算法效率的影响,以确定什么提供了最佳的性能指标预测。此外,为了验证神经模型的泛化能力,构建了8个未包括在全因子设计中的不同参数设置进行网络测试。结果是……
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Selection of optimal parameters in gas‐assisted injection moulding using a neural network model and the Taguchi method
Describes how a statistical Taguchi approach and a backpropagation neural network model were devised to evaluate the effect of various parameters and identify the optimal parameter setup values in a gas‐assisted injection moulding process. In applying the Taguchi approach, an L18 orthogonal array was employed to collect the observations, and the same collected data sets, with two additional inputs, were utilized to construct a neural network model to ascertain whether utilizing such a neural network would provide an improved generalization capability over a statistical method. The effect of the learning rate and the number of hidden nodes on the efficiency of the neural network learning algorithm was extensively studied to identify what provides the best forecasting of performance measure. In addition, to verify the generalization capability of the neural model, eight different parameter setups, which had not been included in the full factorial design, were constructed for network testing. The results rev...
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