Gim Jinsu, Rhee Byungohk
Department of Chemical Engineering, Hanyang University, 55 Hanyangdeahak-ro, Ansan 15588, Korea.
Department of Mechanical Engineering, Ajou University, 206, Worldcup-ro, Suwon 16499, Korea.
Polymers (Basel). 2021 Sep 27;13(19):3297. doi: 10.3390/polym13193297.
The cavity pressure profile representing the effective molding condition in a cavity is closely related to part quality. Analysis of the effect of the cavity pressure profile on quality requires prior knowledge and understanding of the injection-molding process and polymer materials. In this work, an analysis methodology to examine the effect of the cavity pressure profile on part quality is proposed. The methodology uses the interpretation of a neural network as a metamodel representing the relationship between the cavity pressure profile and the part weight as a quality index. The process state points (PSPs) extracted from the cavity pressure profile were used as the input features of the model. The overall impact of the features on the part weight and the contribution of them on a specific sample clarify the influence of the cavity pressure profile on the part weight. The effect of the process parameters on the part weight and the PSPs supported the validity of the methodology. The influential features and impacts analyzed using this methodology can be employed to set the target points and bounds of the monitoring window, and the contribution of each feature can be used to optimize the injection-molding process.
代表型腔中有效成型条件的型腔压力曲线与制品质量密切相关。分析型腔压力曲线对质量的影响需要对注塑工艺和聚合物材料有先验知识和理解。在这项工作中,提出了一种分析方法来研究型腔压力曲线对制品质量的影响。该方法使用神经网络的解释作为元模型,该元模型表示型腔压力曲线与作为质量指标的制品重量之间的关系。从型腔压力曲线中提取的过程状态点(PSP)用作模型的输入特征。这些特征对制品重量的总体影响以及它们对特定样本的贡献阐明了型腔压力曲线对制品重量的影响。工艺参数对制品重量和PSP的影响支持了该方法的有效性。使用该方法分析的影响特征和影响可用于设置监测窗口的目标点和界限,每个特征的贡献可用于优化注塑工艺。