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An adaptive step-down procedure for fault variable identification

机译:故障变量识别的自适应降压过程

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摘要

In a process with a large number of process variables (high-dimensional process), identifying which variables cause an out-of-control signal is a challenging issue for quality engineers. In this paper, we propose an adaptive step-down procedure using conditional T-2 statistic for fault variable identification. While existing procedures focus on selecting variables that have strong evidence of a change, the proposed step-down procedure selects a variable having the weakest evidence of a change at each step based on the variables that are selected in previous steps. The information of selected unchanged variables is effectively utilised in obtaining a powerful conditional T-2 test statistic for identifying the changed elements of the mean vector. The proposed procedure is designed to utilise the correlation information between fault and non-fault variables for the efficient fault variables identification. Further, the simulation results show that the proposed procedure has the better diagnostic performance compared with existing methods in terms of fault variable identification and computational complexity, especially when the number of the variables is high and the number of fault variables is small.
机译:在具有大量过程变量的过程中(高维过程),对于质量工程师而言,确定哪些变量会导致失控信号是一个具有挑战性的问题。在本文中,我们提出了使用条件T-2统计量进行故障变量识别的自适应降压程序。尽管现有过程着重于选择具有明显变化证据的变量,但是建议的降级过程会根据先前步骤中选择的变量,在每一步中选择证据最弱的变量。所选不变变量的信息可有效地用于获得强大的条件T-2测试统计量,以识别平均向量的变化元素。设计所提出的程序是为了利用故障和非故障变量之间的相关信息来进行有效的故障变量识别。此外,仿真结果表明,与现有方法相比,该方法在故障变量识别和计算复杂度方面具有更好的诊断性能,特别是当变量数量多而故障变量数量少时。

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