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Optimization of injection moulding conditions with user-definable objective functions based on a genetic algorithm

机译:使用用户可定义的目标函数基于遗传算法优化注塑条件

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This paper applies a Genetic Algorithm (GA) method to optimize injection moulding conditions, such as melt temperature, mould temperature and injection time. A GA is very suitable for moulding conditions optimization where complex patterns of local minima are possible. Existing work in the literature has limited versatility because the optimization algorithm is hard-wired with specific objective function. However, for most of the practical applications, the appropriateness of optimization objective functions depends on each specific moulding problem. The paper develops a multi-objective GA optimization strategy, where the objective functions may be defined by the designers, including using different criteria and/or weights. For parts with general quality requirements, an objective function is also recommended with some quality measuring criteria, which are either more accurately represented or cover more moulding defects than those from existing simulation-based optimization approaches. The paper also elaborates on the effective GA attributes suited to moulding conditions optimization, such as population size, crossover rate and mutation rate. A case study demonstrates the effectiveness of the proposed approach and algorithm. The optimization results are compared with those from an exhaustive search method to determine the algorithm's accuracy in finding global optimum. It is found to be favourable.
机译:本文采用遗传算法(GA)方法来优化注射成型条件,例如熔体温度,模具温度和注射时间。 GA非常适合优化成型条件,在这些条件下,可能会出现局部极小值的复杂图案。文献中的现有工作具有局限性,因为优化算法与特定的目标函数硬连接。但是,对于大多数实际应用,优化目标函数的适当性取决于每个特定的成型问题。本文开发了一种多目标GA优化策略,其中设计人员可以定义目标函数,包括使用不同的标准和/或权重。对于具有一般质量要求的零件,还建议使用具有某些质量测量标准的目标函数,与现有的基于仿真的优化方法相比,该标准可以更准确地表示或覆盖更多的成型缺陷。本文还阐述了适合成型条件优化的有效GA属性,例如种群大小,交叉率和突变率。案例研究证明了所提方法和算法的有效性。将优化结果与穷举搜索方法的优化结果进行比较,以确定算法寻找全局最优值的准确性。发现它是有利的。

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