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首页> 外文期刊>Journal of Intelligent Manufacturing >Autoregressive coefficient-invariant control chart pattern recognition in autocorrelated manufacturing processes using neural network ensemble
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Autoregressive coefficient-invariant control chart pattern recognition in autocorrelated manufacturing processes using neural network ensemble

机译:神经网络集成在自相关制造过程中的自回归系数不变控制图模式识别

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摘要

Pattern recognition is an important issue in statistical process control because unnatural control chart patterns (CCPs) exhibited on control charts can be associated with specific causes that adversely affect the manufacturing process. In recent years, many machine learning techniques [e.g., artificial neural networks (ANNs) and support vector machine (SVM)] have been successfully used to the CCP recognition (CCPR) in autocorrelated manufacturing processes. However, these existing researches can only detect and classify unnatural CCPs but do not provide more detailed process information, for example the autocorrelation level, which would be very useful for quality practitioners to search the assignable causes that give rise to the out-of-control situation. This study proposes a neural network ensemble-enabled autoregressive coefficient-invariant CCPR model for on-line recognition of seven typical types of unnatural CCP, assuming that the process observations are AR(1) correlated over time with unknown constant autoregressive coefficient. In this model, each individual back propagation network (BPN) is trained to recognize only CCPs with the specific autoregressive coefficient of the underlying process, while the outputs of all these individual BPNs are combined via a learning vector quantization network (LVQN). The experimental results indicate that the proposed CCPR model can not only accurately recognize the specific CCP types but also efficiently identify the autoregressive coefficient of the underlying autocorrelated manufacturing process. Empirical comparisons also show that the proposed CCPR model outperform other existing CCPR approaches in literature. In addition, a demonstrative application is provided to illustrate the utilization of the proposed CCPR model to the CCPR in autocorrelated manufacturing processes.
机译:模式识别是统计过程控制中的重要问题,因为控制图上显示的非自然控制图模式(CCP)可能与对制造过程产生不利影响的特定原因相关联。近年来,许多机器学习技术[例如,人工神经网络(ANN)和支持向量机(SVM)]已成功用于自相关制造过程中的CCP识别(CCPR)。但是,这些现有研究只能检测和分类不自然的CCP,而不能提供更详细的过程信息,例如自相关级别,这对于质量从业人员搜索导致失控的可分配原因非常有用。情况。这项研究提出了一种神经网络集成使能的自回归系数不变CCPR模型,用于在线识别7种典型类型的非自然CCP,假定过程观测值随时间变化与AR(1)相关,且未知的恒定自回归系数。在此模型中,训练每个单独的反向传播网络(BPN)以仅识别具有基础过程的特定自回归系数的CCP,而所有这些单独的BPN的输出都通过学习矢量量化网络(LVQN)进行组合。实验结果表明,提出的CCPR模型不仅可以准确地识别特定的CCP类型,而且可以有效地识别潜在的自相关制造过程的自回归系数。经验比较还表明,建议的CCPR模型优于文献中其他现有的CCPR方法。另外,提供了一个演示应用程序来说明在自动相关的制造过程中将建议的CCPR模型应用于CCPR的情况。

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