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首页> 外文期刊>Journal of Scientific & Industrial Research >Optimizing Plastic Injection Process Using Whale Optimization Algorithm in Automotive Lighting Parts Manufacturing
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Optimizing Plastic Injection Process Using Whale Optimization Algorithm in Automotive Lighting Parts Manufacturing

机译:在汽车照明零件制造中使用鲸鱼优化算法优化塑料喷射工艺

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In this study, using the whale optimization algorithm (WOA), one of the recent optimization algorithms inspired by nature, the plastic injection process parameters of an automotive sub-industry company were tried to be optimized. For this purpose, we tried to provide the maximum weight criterion for the “356 MCA Plastic Housing” (which is an automotive lighting part) produced by plastic injection method. The decrease in the weight of the product indicates that the material injected into the mold is missing and naturally indicates that there will be quality problems. In order to achieve this aim, the best factor levels were tried to be determined for the mold temperature (°C), injection speed (m/s), injection pressure (bar), holding time (s), and injection time (s), which are the controllable parameters of injection process. Factors and factor levels addressed using WOA have not been studied for this type of problem before and this is the novelty aspect of this research. Experiments performed to confirm the findings for optimum process parameters proved that the WOA method can be successfully applied to improve plastic injection process parameters. This study contains information for practicing researchers in terms of showing how the nature-inspired algorithm WOA can be applied in practical field studies.
机译:在本研究中,使用鲸联优化算法(WOA),最近灵感的最新优化算法之一,汽车子行业公司的塑料注射工艺参数试图进行优化。为此目的,我们尝试为“356MCA塑料外壳”(356MCA塑料外壳“(这是一种汽车照明部件)提供最大重量标准。产品重量的减少表明注入模具中的材料缺失,并且自然表明将存在质量问题。为了实现这一目标,尝试确定模具温度(°C),注射速度(M / S),注射压力(BAR),保持时间和喷射时间来确定最佳因子水平。 ),这是注射过程的可控参数。使用WOA寻址的因素和因子水平尚未对此类问题进行此类问题,这是本研究的新颖性方面。进行的实验以确认最佳过程参数的发现证明,可以成功地应用WOA方法以改善塑料注入工艺参数。本研究载有练习研究人员的信息,以说明如何应用于实际领域研究的自然启发算法WOA。

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