论文标题

基于最佳加权移动平均T^2控制图的间歇性故障检测带有固定观测

Detection of Intermittent Faults Based on an Optimally Weighted Moving Average T^2 Control Chart with Stationary Observations

论文作者

Zhao, Yinghong, He, Xiao, Zhang, Junfeng, Ji, Hongquan, Zhou, Donghua, Pecht, Michael G.

论文摘要

自1990年代以来,在多元统计过程监测(MSPM)框架中,移动平均值(MA)类型方案(也称为平滑方法)已得到很好的建立。但是,其理论基础仍然仅限于平滑独立数据,并且其平等或指数加权方案的最佳性仍然未经证实。本文旨在削弱现有MA方法中的独立性假设,然后将其扩展到更广泛的处理自相关弱固定过程的更广泛领域。随着在数据具有自相关时用于故障检测的平等和指数加权方案的非罕见性,它们没有有效地利用样品的相关信息的本质,从而揭示了最佳加权加权的移动平均值(OWMA)理论。 OWMA方法与Hotelling的$ T^2 $统计量相结合,以形成OWMA $ T^2 $控制图(OWMA-TCC),以检测出更具挑战性的故障类型,即间歇性故障(如果)。与在时间窗口内对样本相同的重量的MA方案不同,OWMA-TCC使用相关性(自相关和互相关)信息来查找最佳权重向量(OWV),以进行IF检测(IFD)。为了达到最佳的IFD性能,定义了IF可检测性的概念并提供了相应的可检测性条件,这进一步用作OWV的选择标准。然后,OWV的形式是针对非线性方程的,其存在的存在借助Brouwer定点理论证明了其存在。此外,揭示了OWV的对称结构,并且在数据表现出没有自相关的任何指示时,MA方案的最优性证明。

The moving average (MA)-type scheme, also known as the smoothing method, has been well established within the multivariate statistical process monitoring (MSPM) framework since the 1990s. However, its theoretical basis is still limited to smoothing independent data, and the optimality of its equally or exponentially weighted scheme remains unproven. This paper aims to weaken the independence assumption in the existing MA method, and then extend it to a broader area of dealing with autocorrelated weakly stationary processes. With the discovery of the non-optimality of the equally and exponentially weighted schemes used for fault detection when data have autocorrelation, the essence that they do not effectively utilize the correlation information of samples is revealed, giving birth to an optimally weighted moving average (OWMA) theory. The OWMA method is combined with the Hotelling's $T^2$ statistic to form an OWMA $T^2$ control chart (OWMA-TCC), in order to detect a more challenging type of fault, i.e., intermittent fault (IF). Different from the MA scheme that puts an equal weight on samples within a time window, OWMA-TCC uses correlation (autocorrelation and cross-correlation) information to find an optimal weight vector (OWV) for the purpose of IF detection (IFD). In order to achieve a best IFD performance, the concept of IF detectability is defined and corresponding detectability conditions are provided, which further serve as selection criteria of the OWV. Then, the OWV is given in the form of a solution to nonlinear equations, whose existence is proven with the aid of the Brouwer fixed-point theory. Moreover, symmetrical structure of the OWV is revealed, and the optimality of the MA scheme for any IF directions when data exhibit no autocorrelation is proven.

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