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首页> 外文期刊>The International Journal of Advanced Manufacturing Technology >Multiobjective optimization of injection molding parameters based on soft computing and variable complexity method
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Multiobjective optimization of injection molding parameters based on soft computing and variable complexity method

机译:基于软计算和变复杂度方法的注塑参数多目标优化

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摘要

The objective of this study is to propose an intelligent methodology for efficiently optimizing the injection molding parameters when multiple constraints and multiple objectives are involved. Multiple objective functions reflecting the product quality, manufacturing cost and molding efficiency were constructed for the optimization model of injection molding parameters while multiple constraint functions reflecting the requirements of clients and the restrictions in the capacity of injection molding machines were established as well. A novel methodology integrating variable complexity methods (VCMs), constrained non-dominated sorted genetic algorithm (CNSGA), back propagation neural networks (BPNNs) and Moldflow analyses was put forward to locate the Pareto optimal solutions to the constrained multiobjective optimization problem. The VCMs enabled both the knowledge-based simplification of the optimization model and the variable-precision flow analyses of different injection molding parameter schemes. The Moldflow analyses were applied to collect the precise sample data for developing BPNNs and to fine-tune the Pareto-optimal solutions after the CNSGA-based optimization while the approximate BPNNs were utilized to efficiently compute the fitness of every individual during the evolution of CNSGA. The case study of optimizing the mold and process parameters for manufacturing mice with a compound-cavity mold demonstrated the feasibility and intelligence of proposed methodology.
机译:这项研究的目的是提出一种智能方法,以在涉及多个约束和多个目标时有效地优化注塑参数。针对注塑参数的优化模型,建立了反映产品质量,制造成本和成型效率的多个目标函数,同时建立了反映客户需求和注塑机能力限制的多个约束函数。提出了一种将变量复杂度方法(VCM),约束非支配排序遗传算法(CNSGA),反向传播神经网络(BPNN)和Moldflow分析相结合的新颖方法,以找到约束多目标优化问题的帕累托最优解。 VCM支持优化模型的基于知识的简化以及不同注塑参数方案的可变精度流分析。在基于CNSGA的优化之后,使用Moldflow分析收集精确的样本数据以开发BPNN,并微调Pareto最优解,而近似的BPNN用于有效地计算CNSGA进化过程中每个人的适应度。通过优化复合型腔模具制造小鼠的模具和工艺参数的案例研究证明了所提出方法的可行性和智能性。

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