Control charting methods for monitoring high dimensional data streams: A conceptual classification scheme

•An overview on control charts for monitoring high dimensional data streams process.•A comprehensive classification of articles in this area.•An analytical overview on the researches in this area.•Introducing research gaps to motivate future studies. There are always challenges in various industrial...

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Veröffentlicht in:Computers & industrial engineering 2024-05, Vol.191, p.110141, Article 110141
Hauptverfasser: Jalilibal, Zahra, Karavigh, Mohammad Hassan Ahmadi, Maleki, Mohammad Reza, Amiri, Amirhossein
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Sprache:eng
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Zusammenfassung:•An overview on control charts for monitoring high dimensional data streams process.•A comprehensive classification of articles in this area.•An analytical overview on the researches in this area.•Introducing research gaps to motivate future studies. There are always challenges in various industrial or non-industrial processes in which the product quality/service is described by a large number of quality characteristics. Thus, statistical process monitoring (SPM) techniques for capturing the quality of high-dimensional processes are becoming increasingly important, and various control charts have been developed to monitor different types of quality characteristics in this area. In general, the construction of conventional control charts to monitor multivariate processes in a high-dimensional setting has some statistical limitations and leads to misleading interactions. As a result, novel control charting techniques have recently been suggested to ameliorate the efficiency of monitoring schemes under high-dimensional data streams. This paper undertakes a conceptual classification structure using content analysis to classify the existing literature in this context for the period 2004–2024. Furthermore, on the basis of 72 selected papers, the research gaps are identified and some directions to stimulate potential for future research are suggested.
ISSN:0360-8352
1879-0550
DOI:10.1016/j.cie.2024.110141