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Keywords: Support vector machine
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Journal Articles
Use of artificial intelligence to classify failure data from a military aircraft fleet
Available to Purchase
International Journal of Quality & Reliability Management (2026) 43 (2): 453–474.
Published: 04 November 2025
... (PCA-base ANN) and support vector machines (SVM) performances to classify the clogging condition of a strainer in an oil/gas company (determining whether the strainer was healthy/clean or faulty/dirty). McKenzie et al. (2010) authored the earliest study found that involves a military...
Includes: Supplementary data
Journal Articles
An unsupervised one-class-classifier support vector machine to simultaneously monitor location and scale of multivariate quality characteristics
Available to Purchase
International Journal of Quality & Reliability Management (2023) 40 (2): 419–454.
Published: 14 December 2021
...Arijit Maji; Indrajit Mukherjee Purpose The purpose of this study is to propose an effective unsupervised one-class-classifier (OCC) support vector machine (SVM)-based single multivariate control chart (OCC-SVM) to simultaneously monitor “location” and “scale” shifts of a manufacturing process...
