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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Sink-mark minimization in injection molding through response surface regression modeling and genetic algorithm
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Sink-mark minimization in injection molding through response surface regression modeling and genetic algorithm

机译:通过响应面回归建模和遗传算法最小化注塑中的缩痕

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摘要

This paper deals with minimization of sink depths in injection-molded thermoplastic components by integrating finite element (FE) flow analysis with central composite design (CCD) of experiments and genetic algorithm (GA). Sink-mark depth depends on various process and design variables. Out of all, four most influential variables viz. melt temperature, mold temperature, pack pressure, and rib-to-wall ratio were used for optimization. A set of FE analyses were conducted at various combinations of variables based on the CCD array. A second-order-response surface regression model (RSRM) was developed based on the CCD. The second-order model was effectively coupled with GA for optimization of variables to minimize the sink depth. Results are encouraging and the proposed methodology could be used effectively in minimizing sink-mark depths.
机译:本文通过将有限元(FE)流动分析与实验的中心复合设计(CCD)和遗传算法(GA)相集成,来解决注塑成型热塑性部件中沉深的问题。缩痕深度取决于各种工艺和设计变量。其中,四个最具影响力的变量即。熔融温度,模具温度,填充压力和肋壁比用于优化。在基于CCD阵列的各种变量组合下进行了一系列有限元分析。基于CCD,建立了二阶响应表面回归模型(RSRM)。二阶模型有效地与遗传算法相结合,优化了变量,以最大程度减小沉深度。结果令人鼓舞,并且所提出的方法可以有效地用于最小化凹痕深度。

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