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http://dx.doi.org/10.21186/IPR.2021.6.3.019

Approaches to measurement system analysis in quality management  

Baik, Jaiwook (Department of Statistics.Data Science, Korea National Open University)
Publication Information
Industry Promotion Research / v.6, no.3, 2021 , pp. 19-24 More about this Journal
Abstract
There should be no problem in the measurement system for scientific quality management. In this paper, we want to correctly identify the factors that can affect the measurement results during the measurement process and identify what causes them when the measurement results cause problems in terms of location and variation. Variations in the measurement system are largely described in terms of location and dispersion. Location-related attributes are accuracy, stability, and linearity while dispersion-related attributes are reproducibility and repeatability. Analyzing the factors associated with dispersion is an R&R analysis, in which the size of repeatability and reproducibility is represented by a range of differences between multiple measurements and a range of differences between measurements, and 99% of dispersion is determined. Experimental design can also be used for measurement system analysis. Proper analysis is performed only when the factors causing the fluctuation, the worker and the product, are correctly identified as random or fixed factors.
Keywords
Measurement system analysis; Repeatability; Reproducibility; R&R; Experimental design;
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