质量(理念)
系列(地层学)
过程(计算)
计算机科学
造型(装饰)
机器学习
回归
维数(图论)
人工智能
时间序列
算法
工程类
数学
统计
机械工程
生物
认识论
操作系统
哲学
古生物学
纯数学
作者
Lucas Bogedale,Stephan Doerfel,Alexander Schrodt,Hans‐Peter Heim
标识
DOI:10.1515/ipp-2023-4457
摘要
Abstract Data-based process monitoring in injection molding plays an important role in compensating disturbances in the process and the associated impairment of part quality. Selecting appropriate features for a successful online quality prediction based on machine learning methods is crucial. Time series such as the injection pressure and injection flow curve are particularly suitable for this purpose. Predicting quality as early as possible during a cycle has many advantages. In this paper it is shown how the recording length of the time series affects the prediction performance when using machine learning algorithms. For this purpose, two successful molding quality prediction algorithms ( k Nearest Neighbors and Ridge Regression) are trained with time series of different lengths on extensive data sets. Their prediction performances for part weight and a geometric dimension are evaluated. The evaluations show that recording time series until the end of a cycle is not necessary to obtain good prediction results. These findings indicate that early reliable quality prediction is possible within a cycle, which speeds up prediction, allows timely part handling at the end of the cycle and provides the basis for automated corrective interventions within the same cycle.
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