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Injection mold design of reverse engineering using injection molding analysis and machine learning

机译:注塑成型分析和机器学习的逆向工程注射模具设计

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Plastic composites are used in vehicle components to improve fuel efficiency. Thus, the warpage of injection-molded plastic parts has become a quality issue. Factors, such as product shape and thickness, resin, and other injection molding conditions, can be modified to improve the warpage problem. However, if these factors are set with no possible adjustments, reverse engineering may be required. Reverse engineering is a difficult process that requires many trials and errors; thus, it is only used as a last resort. With respect to the warpage issue, reverse engineering considers the following: (1) Predicting and (2) modeling the warpage in opposite directions. Autodesk Moldflow Insight accommodates these key considerations, but many researchers are reluctant to use it. Although existing injectionmolding analysis programs are mainly used to predict qualitative results, computer-aided engineering (CAE) for reverse engineering requires quantitative analysis. Hence, the considerations are different from the existing analyses. An error in warpage prediction may lead to a costly mold modification because of the molds' complex structures. Quantitative warpage prediction for reverse engineering depends on process variables; thus, understanding how warpages are affected by uncertain process variables is important to improve the reliability of reverse engineering. Moreover, even if appropriate process variables are set, they cannot be applied due to tolerance in lengths. For this reason, mold shrinkage must be identified before designing a mold. This study conducted injection molding analysis for a radiator tank that uses glass fiber-reinforced plastic using Autodesk Moldflow Insight 2018.2. Data for warpage prediction were generated in accordance with five process variables to identify the relationship between the level of warpage and process variables. CAE also showed the level of mold shrinkage that can reduce warpage. In addition, a predictive model was created using the multilayer perceptron (MLP)- supervised learning technique, which is a deep learning method for artificial neural networks. The predictive model was compared with typical regression models, such as polynomial regression (also known as response surface model), EDT and RBF, to determine the optimal approximation model. The real modeling time for a radiator tank product is 1 h, but the MLP approximation model required only 1 min and 8 s to perform 8530 iterations with a similar reliability.
机译:塑料复合材料用于车辆部件以提高燃油效率。因此,注塑塑料部件的翘曲已成为质量问题。可以修改产品形状和厚度,树脂等产品形状和厚度,树脂等因素,以改善翘曲问题。但是,如果没有可能的调整设置这些因素,则可能需要逆向工程。逆向工程是一个需要许多试验和错误的难度过程;因此,它只用作最后的手段。关于翘曲问题,逆向工程考虑以下内容:(1)预测和(2)在相反方向上建模翘曲。 Autodesk Moldflow Insight可容纳这些关键注意事项,但许多研究人员不愿意使用它。尽管现有的注射模拟分析程序主要用于预测定性结果,但逆向工程的计算机辅助工程(CAE)需要定量分析。因此,考虑因素与现有分析不同。由于模具的复杂结构,翘曲预测中的误差可能导致昂贵的模具修改。对逆向工程的定量翘曲预测取决于过程变量;因此,了解Warpages如何受到不确定的过程变量的影响对于提高逆向工程的可靠性是很重要的。此外,即使设置了适当的过程变量,也不能由于长度的容差而施加它们。因此,在设计模具之前必须识别模具收缩。该研究对散热器罐进行了注射成型分析,该散热器使用Autodesk Moldflow Insight 2018.2使用玻璃纤维增​​强塑料。根据五个过程变量生成翘曲预测数据,以识别翘曲和过程变量级别之间的关系。 CAE还显示了可以减少翘曲的模具收缩水平。此外,使用多层的Perceptron(MLP) - 监督学习技术创建预测模型,这是一种用于人工神经网络的深度学习方法。将预测模型与典型的回归模型进行比较,例如多项式回归(也称为响应面模型),EDT和RBF,以确定最佳逼近模型。散热器罐产品的真实建模时间为1小时,但MLP近似模型只需要1分钟,8秒以类似的可靠性执行8530次迭代。

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