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Effective recognition of control chart patterns in autocorrelated data using a support vector machine based approach

机译:使用基于支持向量机的方法有效识别自相关数据中的控制图模式

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The effective recognition of unnatural control chart patterns (CCPs) is a critical issue in statistical process control, as unnatural CCPs can be associated with specific assignable causes adversely affecting the process. Machine learning techniques, such as artificial neural networks (ANNs), have been widely used in the research field of CCP recognition. However, ANN approaches can easily overfit the training data, producing models that can suffer from the difficulty of generalization. This causes a pattern misclassification problem when the training examples contain a high level of background noise (common cause variation). Support vector machines (SVMs) embody the structural risk minimization, which has been shown to be superior to the traditional empirical risk minimization principle employed by ANNs. This research presents a SVM-based CCP recognition model for the on-line real-time recognition of seven typical types of unnatural CCP, assuming that the process observations are AR(1) correlated over time. Empirical comparisons indicate that the proposed SVM-based model achieves better performance in both recognition accuracy and recognition speed than the model based on a learning vector quantization network. Furthermore, the proposed model is more robust toward background noise in the process data than the model based on a back propagation network. These results show the great potential of SVM methods for on-line CCP recognition.
机译:有效识别非自然控制图模式(CCP)是统计过程控制中的关键问题,因为非自然CCP可能与特定的可分配原因相关联,从而对过程产生不利影响。机器学习技术,例如人工神经网络(ANN),已广泛用于CCP识别的研究领域。但是,人工神经网络方法很容易使训练数据过拟合,从而产生模型的泛化困难。当训练示例包含高水平的背景噪声(常见原因差异)时,这会导致模式分类错误。支持向量机(SVM)体现了结构风险最小化,已被证明优于人工神经网络所采用的传统经验最小化风险原理。这项研究提出了一种基于SVM的CCP识别模型,用于对七个典型类型的非自然CCP进行在线实时识别,假定过程观察值随时间变化与AR(1)相关。经验比较表明,与基于学习向量量化网络的模型相比,所提出的基于SVM的模型在识别精度和识别速度上均具有更好的性能。此外,所提出的模型比基于反向传播网络的模型对过程数据中的背景噪声更鲁棒。这些结果显示了SVM方法在在线CCP识别方面的巨大潜力。

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