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Utilizing Symbolic Representation in Synergistic Neural Networks Classifier of Control Chart Patterns

机译:在控制图模式的协同神经网络分类器中使用符号表示

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Control Chart Patterns (CCPs) can be considered as time series. Industry widely used them in their process control. Therefore, accurate classification of these CCPs is vital as abnormalities can then be detected at the earliest stage. This work proposes a framework for neural networks based classifier of CCPs. It adopts a symbolic representation technique known as Symbolic Aggregate Approximation (SAX) in preprocessing. It was discovered that difficulty in classifying CCPs with high signal to noise ratio lies in differentiating among three very similar categories within their six categories. Synergism of neural networks is used as the classifier. Classification comprises two levels, the super class and individual category levels. The recurrent neural network known as Time-lag network is selected as classifiers. The proposed method yields superior performance than any previous neural network based classifiers which used the Generalized Autoregressive Conditional Heteroskedasticity (GARH) Model to generate CCPs.
机译:控制图模式(CCP)可以视为时间序列。工业界在他们的过程控制中广泛使用它们。因此,对这些CCP进行准确分类非常重要,因为可以尽早发现异常。这项工作提出了一个基于神经网络的CCP分类器的框架。它在预处理中采用了称为符号聚合近似(SAX)的符号表示技术。已经发现,对具有高信噪比的CCP进行分类的困难在于区分六个类别中的三个非常相似的类别。神经网络的协同作用被用作分类器。分类包括两个级别,超类和单个类别级别。选择称为时滞网络的递归神经网络作为分类器。与使用广义自回归条件异方差(GARH)模型生成CCP的任何基于神经网络的分类器相比,该方法产生的性能更高。

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