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Optimizing parison thickness for extrusion blow molding by hybrid method

机译:通过混合法优化挤压吹塑的型坯厚度

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摘要

A hybrid method consisting of finite element method (FEM), artificial neural network (ANN), and genetic algorithm (GA) was used to find the optimal parison thickness distribution for a blow molded part with required thickness distribution. Firstly, numerical simulations on the parison inflation were performed using FEM and the K-BKZ integral type constitutive equation. Based on the simulation results, a back propagation (BP) ANN model was then developed to build the relationship between parison thickness distribution and the objective function, which was used to evaluate the wall thickness distribution of part. The predictive ability of the ANN model was verified through FEM simulation results different from those utilized in the training stage. Finally, a GA was developed and used to search for the optimal parison thickness distribution. The results showed that the hybrid method proposed in this work can effectively obtain the optimal parison thickness distribution for a blow molded part with required wall thickness distribution. Compared with the trial and error method, the hybrid method can shorten the part development time and save a lot of material.
机译:混合方法由有限元方法(FEM),人工神经网络(ANN)和遗传算法(GA)组成,用于找到具有所需厚度分布的吹塑零件的最佳型坯厚度分布。首先,利用有限元法和K-BKZ积分型本构方程对型坯膨胀进行了数值模拟。根据仿真结果,建立了反向传播(BP)ANN模型以建立型坯厚度分布与目标函数之间的关系,该模型用于评估零件的壁厚分布。通过有限元模拟结果验证了神经网络模型的预测能力,该结果与训练阶段使用的结果不同。最后,开发了遗传算法并用于搜索最佳型坯厚度分布。结果表明,这项工作中提出的混合方法可以有效地获得具有所需壁厚分布的吹塑零件的最佳型坯厚度分布。与试错法相比,混合法可以缩短零件开发时间并节省大量材料。

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