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Comparison of multivariate analysis techniques in plastic injection moulding process

机译:注塑成型过程中多元分析技术的比较

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摘要

In this paper, we present a comparison between several statistical discriminant analysis techniques applied to a plastic injection moulding process for monitoring quality of injected moulded parts. Comparison among different ways of training the system can provide useful conclusions about the behaviour of the different models in poor conditions. The goal of this paper is to establish a baseline for comparing the performance between different algorithms. A wide variety of research objectives throughout the literature makes it difficult to provide a feasible comparison between results. The evaluation is intended to provide detailed, empirical information on the effectiveness and impact of different model parameters on the performance of the different approaches. The pros and cons of the approaches used are discussed. In order to predict the quality of a plastic part, we extract a set of salient features that characterise an injection cycle and then match these features against a database of stored examples of predefined classes by using supervised classification. The database was created from 199 real plastic injections without any overlap between training and testing datasets.
机译:在本文中,我们对几种统计判别分析技术之间的比较进行了比较,这些统计判别分析技术应用于塑料注射成型过程中,以监控注射成型零件的质量。训练系统的不同方式之间的比较可以提供有关不良条件下不同模型的行为的有用结论。本文的目的是建立一个基线,用于比较不同算法之间的性能。整个文献中各种各样的研究目标使得很难对结果进行可行的比较。该评估旨在提供有关不同模型参数对不同方法性能的有效性和影响的详细的经验信息。讨论了所使用方法的优缺点。为了预测塑料零件的质量,我们提取了一组表征注射周期的显着特征,然后通过使用监督分类将这些特征与预定义类别的已存储示例数据库进行匹配。该数据库是从199次真正的塑料注射创建的,培训和测试数据集之间没有任何重叠。

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