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Recognition of control chart patterns using improved selection of features

机译:使用改进的功能选择来识别控制图模式

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摘要

Recognition of various control chart patterns (CCPs) can significantly reduce the diagnostic search process. Feature-based approaches can facilitate efficient pattern recognition. The full potentiality of feature-based approaches can be achieved by using the optimal set of features. In this paper, a set of seven most useful features is selected using a classification and regression tree (CART)-based systematic approach for feature selection. Based on these features, eight most commonly observed CCPs are recognized using heuristic and artificial neural network (ANN) techniques. Extensive performance evaluation of the two types of recognizers reveals that both these recognizers result in higher recognition accuracy than the earlier reported feature-based recognizers. In this work, various features are extracted from the control chart plot of actual process data in such a way that their values become independent of the process mean and standard deviation. Thus, the developed feature-based CCP recognizers can be applicable to any general process.
机译:识别各种控制图模式(CCP)可以大大减少诊断搜索过程。基于特征的方法可以促进有效的模式识别。通过使用最佳功能集,可以充分发挥基于功能的方法的潜力。在本文中,使用基于分类和回归树(CART)的系统方法选择了七个最有用的特征集。基于这些功能,使用启发式和人工神经网络(ANN)技术识别了八个最常见的CCP。对两种类型的识别器进行广泛的性能评估后发现,这两种识别器都比早期报道的基于特征的识别器具有更高的识别精度。在这项工作中,从实际过程数据的控制图图中提取了各种特征,以使它们的值与过程平均值和标准偏差无关。因此,开发的基于特征的CCP识别器可适用于任何常规过程。

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