Distribution‐free multivariate process monitoring: A rank‐energy statistic‐based approach

IF 2.2 3区 工程技术 Q3 ENGINEERING, INDUSTRIAL Quality and Reliability Engineering International Pub Date : 2024-07-08 DOI:10.1002/qre.3619
Niladri Chakraborty, Maxim Finkelstein
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Abstract

In this paper, a multivariate process monitoring scheme based on the rank‐energy statistics is proposed which is suitable for high‐dimensional applications such as sensorless drive diagnosis. The rank‐energy statistic is based on multivariate ranks that is grounded on the measure transportation theory. Univariate ranks could be interpreted as a solution to an optimisation problem involving a given set of observations of size and the set {}. Recently, attaining greater robustness than spatial sign or depth‐based ranks, multivariate ranks are proposed as solutions to such optimisation problem in multivariate settings (measure transportation problem). The proposed multivariate process monitoring scheme based on the rank‐energy statistic, subsequently, attains greater robustness than existing nonparametric multivariate process monitoring methods based on spatial sign or depth‐based ranks. The proposed method is also applicable to high‐dimensional data unlike some of the existing nonparametric multivariate process monitoring methods. A rigorous simulation study demonstrates its effective shift detection ability and other important features. A practical application of the proposed method is demonstrated with the sensorless drive diagnosis case study.
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无分布多变量过程监控:基于秩能统计的方法
本文提出了一种基于秩能统计的多变量过程监控方案,适用于无传感器驱动诊断等高维应用。秩能统计基于多变量秩,而多变量秩是以度量运输理论为基础的。单变量秩可以解释为一个优化问题的解决方案,该问题涉及一组给定大小的观测数据和集合 {}。与基于空间符号或深度的秩相比,多变量秩具有更强的鲁棒性,因此最近提出了多变量秩,作为多变量环境下此类优化问题(度量运输问题)的解决方案。与现有的基于空间符号或深度等级的非参数多元过程监测方法相比,基于秩能统计量的多元过程监测方案具有更强的鲁棒性。与现有的一些非参数多元过程监测方法不同,所提出的方法还适用于高维数据。严格的模拟研究证明了该方法有效的偏移检测能力和其他重要特征。通过无传感器驱动诊断案例研究,展示了所提方法的实际应用。
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来源期刊
CiteScore
4.90
自引率
21.70%
发文量
181
审稿时长
6 months
期刊介绍: Quality and Reliability Engineering International is a journal devoted to practical engineering aspects of quality and reliability. A refereed technical journal published eight times per year, it covers the development and practical application of existing theoretical methods, research and industrial practices. Articles in the journal will be concerned with case studies, tutorial-type reviews and also with applications of new or well-known theory to the solution of actual quality and reliability problems in engineering. Papers describing the use of mathematical and statistical tools to solve real life industrial problems are encouraged, provided that the emphasis is placed on practical applications and demonstrated case studies. The scope of the journal is intended to include components, physics of failure, equipment and systems from the fields of electronic, electrical, mechanical and systems engineering. The areas of communications, aerospace, automotive, railways, shipboard equipment, control engineering and consumer products are all covered by the journal. Quality and reliability of hardware as well as software are covered. Papers on software engineering and its impact on product quality and reliability are encouraged. The journal will also cover the management of quality and reliability in the engineering industry. Special issues on a variety of key topics are published every year and contribute to the enhancement of Quality and Reliability Engineering International as a major reference in its field.
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