中国塑料 ›› 2018, Vol. 32 ›› Issue (07): 137-145.DOI: 10.19491/j.issn.1001-9278.2018.07.022

• 机械与模具 • 上一篇    

基于LM-BP神经网络的汽车AB柱内饰板注塑CAE优化分析

黄鹏   

  1. 湖南交通职业技术学院
  • 收稿日期:2018-04-24 修回日期:2018-05-25 出版日期:2018-07-26 发布日期:2018-08-24
  • 基金资助:
    湖南省中高职人才培养衔接试点项目;2016年度湖南省职业院校教育教学改革研究项目;2016年度湖南省教育厅科学研究项目

CAE Optimization Design of Injection Molding of Automobile AB Column Interior Trim Panel Based on LM-BP Neural Network

  • Received:2018-04-24 Revised:2018-05-25 Online:2018-07-26 Published:2018-08-24

摘要: 以某汽车内饰A、B柱上内饰板产品同模注塑为例,对产品的注塑工艺进行了优化设计,包括不同浇注系统的优化选用、已选定浇注系统的成型质量优化、成型工艺参数优化3个过程。在成型工艺优化中,对传统的BP神经网络进行了基于LM算法的结构改进,采用正交试验粗选优化工艺路径,改进后的LM-BP神经网络对细化优化工艺路径有着较好的预测功能。通过LM-BP神经网络辅助优选,得到了很好的产品注塑工艺组合参数,将之应用于实际注塑时,获得了质量良好的注塑产品,具有较强的设计实践指导意义。

Abstract: Taking the injection molding of an automotive interior A and B column trim panel as an example, the injection molding process was optimized, which included the optimization of different gating systems, molding quality and molding process parameters for three processes. For the optimization of molding technology, the traditional BP neural network was modified on the basis of the LM algorithm. The improved LMBP neural network was used to optimize the process pathway through an orthogonal test, and a better prediction for thinning and optimizing process path was achieved. The optimized injection molding process parameters are obtained through auxiliary selection with the LMBP neural network. These process parameters could be used for the practical injection molding to obtain ideal injectionmolded parts. This work provides a good guidance for the injection molding of automotive plastic parts.