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A neural network-based approach for dynamic quality prediction in a plastic injection molding process

机译:基于神经网络的塑料注射成型过程动态质量预测方法

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摘要

This paper presents an innovative neural network-based quality prediction system for a plastic injection molding process. A self-organizing map plus a back-propagation neural network (SOM-BPNN) model is proposed for creating a dynamic quality predictor. Three SOM-based dynamic extraction parameters with six manufacturing process parameters and one level of product quality were dedicated to training and testing the proposed system. In addition, Taguchi's parameter design method was also applied to enhance the neural network performance. For comparison, an additional back-propagation neural network (BPNN) model was constructed for which six process parameters were used for training and testing. The training and testing data for the two models respectively consisted of 120 and 40 samples. Experimental results showed that such a SOM-BPNN-based model can accurately predict the product quality (weight) and can likely be used for various practical applications.
机译:本文提出了一种创新的基于神经网络的塑料注塑工艺质量预测系统。提出了一种自组织图加反向传播神经网络(SOM-BPNN)模型来创建动态质量预测器。基于三个基于SOM的动态提取参数(具有六个制造过程参数和一个产品质量级别)专用于培训和测试该系统。另外,田口的参数设计方法也被用来增强神经网络的性能。为了进行比较,构建了另外的反向传播神经网络(BPNN)模型,其中使用了六个过程参数进行训练和测试。这两个模型的训练和测试数据分别由120和40个样本组成。实验结果表明,这种基于SOM-BPNN的模型可以准确地预测产品质量(重量),并且可能会用于各种实际应用。

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