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Control chart pattern recognition using neural networks and efficient features: a comparative study

机译:利用神经网络和有效特征进行控制图模式识别的比较研究

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Control chart patterns (CCPs) are important statistical process control tools for determining whether a process is run in its intended mode or in the presence of unnatural patterns. This paper investigates the design of an efficient system for recognition of the control chart patterns. This system includes two main modules: a feature extraction module and a classification module. The feature extraction module extracts a combination set of the shape features and statistical features. In the classifier module, several multilayer perceptron neural networks with different number of layers and training algorithms are investigated. The performances of the networks for speed of convergence and accuracy classification are evaluated for six classes of the CCPs. Among the different training algorithms, the resilient back-propagation (RP) algorithm represented the best convergence rate and the Levenberg–Marquardt (LM) algorithm achieved the best overall detection accuracy.
机译:控制图模式(CCP)是重要的统计过程控制工具,用于确定过程是按其预期模式运行还是存在非自然模式。本文研究了用于识别控制图模式的有效系统的设计。该系统包括两个主要模块:特征提取模块和分类模块。特征提取模块提取形状特征和统计特征的组合集合。在分类器模块中,研究了具有不同层数和训练算法的多个多层感知器神经网络。针对六类CCP评估了网络的收敛速度和准确性分类的性能。在不同的训练算法中,弹性反向传播(RP)算法代表了最佳的收敛速度,而Levenberg-Marquardt(LM)算法则获得了最佳的整体检测精度。

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