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Pattern Recognition for Control Charts Using AR Spectrum and Fuzzy ARTMAP Neural Network

机译:使用AR频谱和模糊艺术图神经网络的控制图的模式识别

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The control charts pattern recognition can detect the unnatural fluctuation of the machining process and enhance the automation level of quality management, so it is important for manufacturing enterprise to implement the automatic pattern recognition of control charts. In this paper the quality data generated by Mote-Carlo simulation are preprocessed through AR spectrum analysis and the characteristic quantity are picked up in frequency domain. This approach decreases the complexity of characteristic quantity compared with traditional encoded mode. Then Fuzzy ARTMAP neural network which has incremental learning ability compared with traditional BP neural network is presented to recognize the control chart patterns. The recognition result indicates that the introduced method in this paper has advantage of traditional methods.
机译:控制图图案识别可以检测加工过程的不自然波动,增强质量管理的自动化水平,因此制造企业实现控制图的自动模式识别是重要的。在本文中,Mote-Carlo模拟产生的质量数据通过AR频谱分析预处理,并且在频域中拾取了特征量。与传统的编码模式相比,这种方法降低了特征量的复杂性。然后,提出了与传统的BP神经网络相比具有增量学习能力的模糊艺术造影神经网络,以识别控制图表模式。识别结果表明,本文介绍的方法具有传统方法的优点。

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