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An enhanced global optimization method based on Gaussian process and its application of warpage control in injection molding

机译:基于高斯过程的增强型全局优化方法及其翘曲控制在注塑中的应用

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In this paper, an adaptive optimization method based on Gaussian process (GP) surrogate model is proposed to minimize the warpage of injection molding parts. GP surrogate model combining design of experiment (DOE) methods is used to build an approximate function relationship between warpage and process parameters, replacing the expensive simulation analysis in the optimization iterations. First, establish an approximation function of the relationship between warpage and process parameters by a small size of design of experiment with GP surrogate model. And then, an enhanced probability improvement criterion is used to determine how additional training samples could be added to optimize the surrogate model. Comparing with expected improvement criterion, proposed enhanced probability improvement criterion can switch to global optima more swiftly. Finally, a front grille molding processing is taken as an example to illustrate the criterion. The results show that the proposed optimization method can effectively decrease the warpage of injection molding parts.
机译:本文提出了一种基于高斯过程替代模型的自适应优化方法,以最大程度地减少注塑件的翘曲。 GP替代模型结合实验设计(DOE)方法来建立翘曲和过程参数之间的近似函数关系,从而替代了优化迭代中昂贵的仿真分析。首先,通过使用GP替代模型进行小规模的实验设计,建立翘曲与工艺参数之间关系的近似函数。然后,使用增强的概率改进标准来确定如何添加其他训练样本以优化代理模型。与预期改进准则相比,提出的增强概率改进准则可以更快地切换到全局最优。最后,以前格栅成型工艺为例来说明该标准。结果表明,所提出的优化方法可以有效降低注塑件的翘曲。

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