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Multi-objective optimization of MIMO plastic injection molding process conditions based on particle swarm optimization

机译:基于粒子群算法的MIMO塑料注射成型工艺条件多目标优化

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摘要

Determining optimal process parameter settings critically influences productivity, quality, and cost of production in the plastic injection molding industry. Selecting the proper process conditions for the injection molding process is treated as a multi-objective optimization problem, where different objectives, such as minimizing product weight, volumetric shrinkage, or flash present trade-off behaviors. As such, various optima may exist in the objective space. This paper presents the development of an experiment-based optimization system for the process parameter optimization of multiple-input multiple-output plastic injection molding process. The development integrates Taguchi's parameter design method, neural networks based on PSO (PSONN model), multi-objective particle swarm optimization algorithm, engineering optimization concepts, and automatically search for the Pareto-optimal solutions for different objectives. According to the illustrative applications, the research results indicate that the proposed approach can effectively help engineers identify optimal process conditions and achieve competitive advantages of product quality and costs.
机译:确定最佳工艺参数设置会严重影响塑料注塑成型行业的生产率,质量和生产成本。为注塑工艺选择合适的工艺条件被视为多目标优化问题,其中不同的目标(例如最小化产品重量,体积收缩率或飞边)存在权衡行为。这样,在目标空间中可能存在各种最优。本文介绍了一种基于实验的优化系统的开发,该系统用于多输入多输出塑料注射成型工艺的工艺参数优化。该开发集成了Taguchi的参数设计方法,基于PSO(PSONN模型)的神经网络,多目标粒子群优化算法,工程优化概念,并自动搜索了针对不同目标的Pareto最优解。根据说明性应用,研究结果表明,该方法可有效帮助工程师确定最佳工艺条件,并获得产品质量和成本的竞争优势。

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