Skewness Reduction Approach in Multi-Attribute Process Monitoring |
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Authors: | Seyed Taghi Akhavan Niaki Babak Abbasi |
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Affiliation: | 1. Department of Industrial Engineering , Sharif University of Technology , Tehran, Iran niaki@sharif.edu;3. Department of Industrial Engineering , Sharif University of Technology , Tehran, Iran |
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Abstract: | Since the product quality of many industrial processes depends upon more than one dependent variable or attribute, they are either multivariate or multi-attribute in nature. Although multivariate statistical process control is receiving increased attention in the literature, little work has been done to deal with multi-attribute processes. In this article, we develop a new methodology to monitor multi-attribute processes. To do this, first we transform multi-attribute data in a way that their marginal probability distributions have almost zero skewness. Then, we estimate the transformed covariance matrix and apply the well-known T 2 control chart. In order to illustrate the proposed method and evaluate its performance, we use two simulation experiments and compare the results with the ones from both MNP chart and the χ2 control chart. |
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Keywords: | Multi-attribute control chart Multi-binomial distribution Process monitoring Skewness reduction |
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