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Optimization of extrusion blow molding processes using soft computing and Taguchi’s method

机译:使用软计算和田口方法优化挤出吹塑工艺

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摘要

[[abstract]]The objective of this study is to present a new numerical strategy using soft-computing techniques to determine the optimal die gap programming of extrusion blow molding processes. In this study, the design objective is to target a uniform part thickness after parison inflation by manipulating the parison die gap openings over time. To model the whole process, that is, the parison extrusion, the mould clamping and the parison inflation, commercial finite element software (BlowSim) from the National Research Council (NRC) of Canada is used. However, the use of such software is time-consuming and one important issue in a design environment is to minimize the number of simulations to get the optimal operating conditions. To do so, we proposed a new strategy called fuzzy neural–Taguchi network with genetic algorithm (FUNTGA) that establishes a back propagation network using a Taguchi’s experimental array to predict the relationship between design variables and responses. Genetic algorithm (GA) is then applied to search for the optimum design of die gap parison programming. As the number of training samples is greatly reduced due to the use of orthogonal arrays, the prediction accuracy of the neural network model is closely related to the distance between sampling points and the evolved designs. The extrapolation distance concept is proposed and introduced to GA using fuzzy rules to modify the fitness function and thus improving search efficiency. The comparison of the results with commercial optimization software from NRC demonstrates the effectiveness of the proposed approach.
机译:[[摘要]]本研究的目的是提出一种新的数值策略,该方法采用软计算技术来确定挤出吹塑工艺的最佳模头间隙编程。在这项研究中,设计目标是通过控制型坯模具的间隙开口随时间推移来达到型坯膨胀后的均匀零件厚度。为了模拟整个过程,即型坯挤压,合模和型坯充气,使用了加拿大国家研究委员会(NRC)的商业有限元软件(BlowSim)。但是,这种软件的使用非常耗时,设计环境中的一个重要问题是最小化仿真次数以获得最佳操作条件。为此,我们提出了一种称为遗传算法的模糊神经-Taguchi网络(FUNTGA)的新策略,该策略使用Taguchi的实验阵列建立反向传播网络,以预测设计变量与响应之间的关系。然后将遗传算法(GA)应用于寻找模头间隙型坯编程的最佳设计。由于使用正交阵列极大地减少了训练样本的数量,因此神经网络模型的预测精度与采样点与演化设计之间的距离密切相关。提出了外推距离概念,并使用模糊规则将其引入遗传算法,以修改适应度函数,从而提高搜索效率。将结果与NRC的商业优化软件进行比较,证明了该方法的有效性。

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  • 作者

    Yu, Jyh-Cheng; 余志成;

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  • 年度 2014
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  • 原文格式 PDF
  • 正文语种 en
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