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Minimax Multivariate Control Chart Using a Polynomial Function

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DOI: 10.4236/am.2011.212219    3,759 Downloads   6,572 Views   Citations

ABSTRACT

Minimax control chart uses the joint probability distribution of the maximum and minimum standardized sample means to obtain the control limits for monitoring purpose. However, the derivation of the joint probability distribution needed to obtain the minimax control limits is complex. In this paper the multivariate normal distribution is integrated numerically using Simpson’s one third rule to obtain a non-linear polynomial (NLP) function. This NLP function is then substituted and solved numerically using Newton Raphson method to obtain the control limits for the minimax control chart. The approach helps to overcome the problem of obtaining the joint probability distribution needed for estimating the control limits of both the maximum and the minimum statistic for monitoring multivariate process.

Conflicts of Interest

The authors declare no conflicts of interest.

Cite this paper

J. Adewara, K. Adekeye, O. Asiribo and S. Adejuyigbe, "Minimax Multivariate Control Chart Using a Polynomial Function," Applied Mathematics, Vol. 2 No. 12, 2011, pp. 1539-1545. doi: 10.4236/am.2011.212219.

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