Comparison of Intelligent Approaches for Cycle Time Prediction in Injection Moulding of a Medical Device Product

Mandana Kariminejad, D. Tormey, Saif Huq, Jim Morrison, M. McAfee
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Abstract

Injection moulding is an increasingly automated industrial process, particularly when used for the production of high-value precision components such as polymeric medical devices. In such applications, achieving stringent product quality demands whilst also ensuring a highly efficient process can be challenging. Cycle time is one of the most critical factors which directly affects the throughput rate of the process and hence is a key indicator of process efficiency. In this work, we examine a production data set from a real industrial injection moulding process for manufacture of a high precision medical device. The relationship between the process input variables and the resulting cycle time is mapped with an artificial neural network (ANN) and an adaptive neuro-fuzzy system (ANFIS). The predictive performance of different training methods and neuron numbers in ANN and the impact of model type and the numbers of membership functions in ANFIS has been investigated. The strengths and limitations of the approaches are presented and the further research and development needed to ensure practical on-line use of these methods for dynamic process optimisation in the industrial process are discussed.
医疗器械产品注射成型周期预测智能方法的比较
注射成型是一种日益自动化的工业过程,特别是用于生产高价值精密部件时,如聚合物医疗设备。在此类应用中,在确保高效流程的同时实现严格的产品质量要求可能具有挑战性。周期时间是直接影响工艺生产效率的关键因素之一,是衡量工艺生产效率的重要指标。在这项工作中,我们研究了一个真实的工业注塑过程的生产数据集,用于制造高精度医疗设备。利用人工神经网络(ANN)和自适应神经模糊系统(ANFIS)映射过程输入变量与生成周期时间之间的关系。研究了不同训练方法和神经元数目对神经网络预测性能的影响,以及模型类型和隶属函数数目对神经网络预测性能的影响。提出了这些方法的优点和局限性,并讨论了进一步的研究和发展,以确保这些方法在工业过程中用于动态过程优化的实际在线使用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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