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http://dx.doi.org/10.11627/jkise.2016.39.3.010

Design of Robust Expected Loss Control Chart  

Lee, Hyeung-Jun (Department of Industrial and Management Engineering, Incheon National University)
Chung, Young-Bae (Department of Industrial and Management Engineering, Incheon National University)
Publication Information
Journal of Korean Society of Industrial and Systems Engineering / v.39, no.3, 2016 , pp. 10-17 More about this Journal
Abstract
Control Chart is a graph which dots the characteristic values of a process. It is the tool of statistical technique to keep a process in controlled condition. It is also used for investigating the state of a process. Therefore many companies have used Control Chart as the tool of statistical process control (SPC). Products from a production process represent accidental dispersion values around a certain reference value. Fluctuations cause of quality dispersion is classified as a chance cause and a assignable cause. Chance cause refers unmanageable practical cause such as operator proficiency differences, differences in work environment, etc. Assignable cause refers manageable cause which is possible to take actions to remove such as operator inattention, error of production equipment, etc. Traditionally ${\bar{x}}-R$ control chart or ${\bar{x}}-s$ control chart is used to find and remove the error cause. Traditional control chart is to determine whether the measured data are in control or not, and lets us to take action. On the other hand, RNELCC (Reflected Normal Expected Loss Control Chart) is a control chart which, even in controlled state, indicates the information of economic loss if a product is in inconsistent state with process target value. However, contaminated process can cause control line sensitive and cause problems with the detection capabilities of chart. Many studies on robust estimation using trimmed parameters have been conducted. We suggest robust RNELCC which used the idea of trimmed parameters with RNEL control chart. And we demonstrate effectiveness of new control chart by comparing with ARL value among traditional control chart, RNELCC and robust RNELCC.
Keywords
Inverted Normal Loss Function; Robust Control Chart; Average Run Length; Expected Loss;
Citations & Related Records
Times Cited By KSCI : 3  (Citation Analysis)
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