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Optimal Monitoring of Multivariate Data for Fault Patterns

机译:故障模式的多元数据的最佳监控

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A process-oriented basis representation can be used to express multivariate quality vectors as linear combinations of fault patterns, plus a residual. Monitoring the estimated coefficients of the linear relationship is especially useful when the quality vector contains measurements of the same unit at different locations on a part or other types of profile data. To use process-oriented methods for monitoring changes in the mean of the quality vector, one needs to identify whether the effects occur only as special causes or also as common causes of variation. The calculation of process-oriented model coefficients is shown for each case. In general, the coefficients must be computed by weighted least squares, but we show that, in some circumstances, the ordinary least squares estimates are equivalent. In such cases, charting the proposed U2 statistic is equivalent to charting a T~2 statistic computed from the process-oriented coefficients, making the process-oriented statistical process control (SPC) statistic optimal in the sense of being most powerful for detecting mean shifts in the process-oriented space. When there are fewer cause-related patterns than the number of elements in the quality vector, the process-oriented basis is incomplete. In this case, the SPC methods are applied in a subspace of the original quality vector space. For some practical examples, it is shown that the process-oriented basis representation approach yields substantially better average run-length performance compared with the usual T~2 chart applied to the original quality vectors.
机译:面向过程的基础表示可用于将多元质量矢量表示为故障模式的线性组合,再加上残差。当质量矢量包含零件或其他类型的轮廓数据上不同位置的同一单位的测量值时,监视线性关系的估计系数特别有用。为了使用面向过程的方法来监控质量矢量平均值的变化,需要确定影响是仅作为特殊原因还是作为变异的常见原因发生。显示了每种情况下面向过程的模型系数的计算。通常,必须通过加权最小二乘法来计算系数,但是我们证明在某些情况下,普通最小二乘估计是等效的。在这种情况下,绘制建议的U2统计量等效于绘制从面向过程的系数计算出的T〜2统计量,从而使面向过程的统计过程控制(SPC)统计量在检测均值漂移最强大的意义上是最佳的在面向过程的空间中。当与原因相关的模式少于质量矢量中元素的数量时,面向过程的基础就不完整。在这种情况下,将SPC方法应用于原始质量矢量空间的子空间中。对于一些实际示例,表明与面向原始质量矢量的常规T〜2图相比,面向过程的基本表示方法产生了更好的平均游程长度性能。

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