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Employing dependent virtual samples to obtain more manufacturing information in pilot runs

机译:利用相关的虚拟样本在试运行中获取更多制造信息

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摘要

In most highly competitive manufacturing industries, the sample sizes of new products are usually very small in pilot runs because the production schedules are very tight. To obtain the expected quality in mass production runs using limited data is, therefore, always a challenging issue for engineers. Although machine learning algorithms are widely applied to this task, the training sample size is a key weakness when determining the manufacturing parameters. In order to extract more robust information for engineers from the small datasets, this research, based on regression analysis and fuzzy techniques, develops an effective procedure for new production pattern constructions. In addition, a case study of TFT-LCD manufacturing in 2009 is taken as an example to illustrate the presented approach. The experimental results show that it is possible to develop a robust forecasting model which can provide more precise manufacturing predictions with the limited data acquired from pilot runs.
机译:在竞争最为激烈的制造业中,由于生产计划非常紧张,因此在试运行中新产品的样本量通常很小。因此,使用有限的数据在批量生产中获得预期的质量始终是工程师面临的挑战。尽管机器学习算法已广泛应用于此任务,但训练样本大小是确定制造参数时的主要弱点。为了从小型数据集中为工程师提取更多可靠的信息,本研究基于回归分析和模糊技术,为新的生产模式构建开发了有效的程序。此外,以2009年TFT-LCD生产为例,说明了该方法。实验结果表明,有可能开发出鲁棒的预测模型,该模型可以提供有限的从试运行中获得的数据来进行更精确的制造预测。

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