Data‐driven quality prediction in injection molding: An autoencoder and machine learning approach

IF 3.2 4区 工程技术 Q2 ENGINEERING, CHEMICAL
Kun‐Cheng Ke, Jui‐Chih Wang, Shih‐Chih Nian
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引用次数: 0

Abstract

In the injection molding process, the pressure within the mold cavity is crucial to the quality of the final product. Due to the inability to directly observe the process, sensor technology is required to acquire data. Traditionally, experts interpret and encode pressure curves, but this method has limitations. This study proposes an innovative pressure curve encoding technique to overcome these limitations and achieve automation to obtain more comprehensive pressure information. The study employs mold flow analysis software and autoencoders to capture and encode pressure data, classifying pressure curves into global pressure and local pressure values. Subsequently, a multilayer perceptron (MLP) neural network is used for machine learning to predict multiple qualities. Results indicate that local pressure features perform better in predicting multiple‐quality targets than global pressure features, exhibiting smaller prediction ranges and higher prediction stability. Although domain knowledge‐based indicator features slightly outperform in terms of predictive capability, the low error results of the local pressure feature method validate the effectiveness of the autoencoder approach, demonstrating its potential for digital information extraction and practical quality prediction in the injection molding process.Highlights Develops a product quality prediction system for efficient injection molding. Autoencoders extract key features from pressure data without domain knowledge. ML models predict quality indicators, optimizing injection molding processes. Compares pressure features, showing data‐driven methods' prediction accuracy.
数据驱动的注塑成型质量预测:自动编码器和机器学习方法
在注塑成型过程中,模腔内的压力对最终产品的质量至关重要。由于无法直接观察过程,因此需要传感器技术来获取数据。传统上,专家会对压力曲线进行解释和编码,但这种方法存在局限性。本研究提出了一种创新的压力曲线编码技术,以克服这些局限性并实现自动化,从而获得更全面的压力信息。该研究采用模流分析软件和自动编码器来采集和编码压力数据,将压力曲线分为整体压力值和局部压力值。随后,使用多层感知器(MLP)神经网络进行机器学习,预测多种质量。结果表明,与全局压力特征相比,局部压力特征在预测多种质量目标时表现更好,预测范围更小,预测稳定性更高。虽然基于领域知识的指标特征在预测能力方面略胜一筹,但局部压力特征方法的低误差结果验证了自动编码器方法的有效性,证明了其在注塑成型过程中进行数字信息提取和实际质量预测的潜力。自动编码器无需领域知识即可从压力数据中提取关键特征。ML 模型预测质量指标,优化注塑成型工艺。比较压力特征,显示数据驱动方法的预测准确性。
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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来源期刊
Polymer Engineering and Science
Polymer Engineering and Science 工程技术-高分子科学
CiteScore
5.40
自引率
18.80%
发文量
329
审稿时长
3.7 months
期刊介绍: For more than 30 years, Polymer Engineering & Science has been one of the most highly regarded journals in the field, serving as a forum for authors of treatises on the cutting edge of polymer science and technology. The importance of PE&S is underscored by the frequent rate at which its articles are cited, especially by other publications - literally thousand of times a year. Engineers, researchers, technicians, and academicians worldwide are looking to PE&S for the valuable information they need. There are special issues compiled by distinguished guest editors. These contain proceedings of symposia on such diverse topics as polyblends, mechanics of plastics and polymer welding.
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