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Statistical process control for monitoring non-linear profiles using wavelet filtering and B-Spline approximation

机译:统计过程控制,用于使用小波滤波和B样条逼近来监视非线性轮廓

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摘要

A statistical process control framework is proposed to monitor non-linear profiles. The proposed methodology aims at identifying mean shifts or 'shape changes' in a profile. Discrete wavelet transformation (DWT) is applied to separate variation or noise from profile contours. B-splines are adopted to generate critical points to define the shape of a profile. The proposed method is innovative in that users can divide a profile into multiple segments to be monitored simultaneously. The high dimensionality problem that hinders the implementation of multivariate control charts can be solved by this framework. The distance difference statistic for each segment provides diagnostic information when the process of interest is out of control. These proposed statistics form a vector to be fed into any multivariate control chart such as the Hotelling T~2 control chart. A decomposition method can also be applied on the T~2 statistics when an out-of-control profile is detected. A simulation study applied to a forging process is conducted to demonstrate the property of the proposed method. The proposed method is capable of detecting profile shifts and identifying the exact location of problematic segments.
机译:提出了统计过程控制框架来监视非线性轮廓。所提出的方法旨在识别轮廓中的均值漂移或“形状变化”。离散小波变换(DWT)用于将变化或噪声与轮廓轮廓分开。使用B样条生成临界点以定义轮廓的形状。所提出的方法是创新的,因为用户可以将配置文件分为多个部分以同时进行监视。该框架可以解决阻碍多维控制图实现的高维问题。当感兴趣的过程失控时,每个段的距离差异统计信息将提供诊断信息。这些建议的统计量构成了一个向量,可将其馈入任何多元控制图,例如,Hotelling T〜2控制图。当检测到失控配置文件时,也可以将分解方法应用于T〜2统计量。仿真研究应用于锻造过程,以证明所提出的方法的性质。所提出的方法能够检测轮廓偏移并识别有问题的段的确切位置。

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