Application of robust multivariate control chart with Winsorized Mean: a case study
Subject Areas : Mathematical OptimizationAngellys P. Ariza Guerrero 1 , Rister Barreto Pombo 2 , Roberto J. Herrera Acosta 3
1 - Universidad del Atlántico, Km 7, Puerto, Colombia
2 - Universidad del Atlántico, Km 7, Puerto, Colombia
3 - Universidad del Atlántico, Km 7, Puerto, Colombia
Keywords: fungicide, variability, Outliers, Determinant,
Abstract :
Water pH and active ingredient concentration are two of the most important variables to consider in the manufacturingprocess of fungicides. If these variables do not meet the required standards, the quality of the product may be compromisedand lead to poor fungicide performance when water is used as the application carrier, which is in most cases. Given thecorrelation between the variables, these kinds of manufacturing processes must be analyzed in multivariate settings. Thus,this paper analyzes the variables involved in the process using the multivariate control chart S introduced by J. A. Vargas.In the original chart, the arithmetic mean is used as the mean vector estimator. However, in this investigation the arithmeticmean was replaced by the Winsorized Mean for the purpose of evaluating the chart performance with a robust estimator.The results show that using the new estimator, the control chart is able to detect shifts in the variation of the mean vectorthat the traditional estimator did not. Furthermore, different subgroup sizes for the data were studied in order to examinethe performance of the chart in each case. It was found that the proposed control chart is more sensible to changes when thesubgroups consist of less observations, since it is able to better identify the outliers in the sample.
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