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SIMULTANEOUS OPTIMIZATION OF MOLD DESIGN AND PROCESSING CONDITIONS IN INJECTION MOLDING

机译:注射成型中模具设计和加工条件的同时优化

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Injection molding (IM) is considered the foremost process for mass-producing plastic products. One of the biggest challenges facing injection molders today is to determine the proper settings for the IM process variables. Selecting the proper settings for an IM process is crucial because the behavior of the polymeric material during shaping is highly influenced by the process variables. Consequently, the process variables govern the quality of the part produced. The difficulty of optimizing an IM process is that the performance measures (PMs), such as surface quality or cycle time, that characterize the adequacy of part, process, or machine to intended purposes, usually show conflicting behavior. Therefore, a compromise must be found between all of the PMs of interest. In the past, we have shown a method comprised of Computer Aided Engineering, Artificial Neural Networks, and Data Envelopment Analysis (DEA) that can be used to find the best compromises between several performance measures. The analyses presented in this paper are geared to make informed decisions on the compromises of several performance measures. These analyses also allow for the identification of robust variable settings that might help to define a starting point for negotiation between multiple decision makers. Future work will include adding information about the variability of PMs on the DEA analysis and the determination of process windows with efficiency considerations. This paper discusses the application of this method to IM and how to exploit the results to determine robust process and design settings.
机译:注塑(IM)被认为是批量生产塑料产品的最重要过程。当今注塑成型商面临的最大挑战之一是确定IM过程变量的正确设置。为IM工艺选择合适的设置至关重要,因为在成型过程中聚合物材料的行为会受到工艺变量的极大影响。因此,过程变量控制着所生产零件的质量。优化IM流程的困难在于,表征零件,流程或机器是否足以达到预期目的的性能度量(PM)(例如表面质量或周期时间)通常显示出冲突的行为。因此,必须在所有感兴趣的PM之间找到折衷方案。过去,我们展示了一种由计算机辅助工程,人工神经网络和数据包络分析(DEA)组成的方法,该方法可用于在几种性能指标之间找到最佳折衷方案。本文介绍的分析旨在针对几种绩效指标的折衷做出明智的决策。这些分析还可以确定可靠的变量设置,这可能有助于定义多个决策者之间进行谈判的起点。未来的工作将包括在DEA分析中添加有关PM变异性的信息,并出于效率考虑确定过程窗口。本文讨论了该方法在IM中的应用以及如何利用结果来确定可靠的过程和设计设置。

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