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A nonparametric control chart based on the Mann-Whitney statistic

Subhabrata Chakraborti, Mark A. van de Wiel

Abstract

Nonparametric or distribution-free charts can be useful in statistical process control problems when there is limited or lack of knowledge about the underlying process distribution. In this paper, a phase II Shewhart-type chart is considered for location, based on reference data from phase I analysis and the well-known Mann-Whitney statistic. Control limits are computed using Lugannani-Rice-saddlepoint, Edgeworth, and other approximations along with Monte Carlo estimation. The derivations take account of estimation and the dependence from the use of a reference sample. An illustrative numerical example is presented. The in-control performance of the proposed chart is shown to be much superior to the classical Shewhart chart. Further comparisons on the basis of some percentiles of the out-of-control conditional run length distribution and the unconditional out-of-control ARL show that the proposed chart is almost as good as the Shewhart chart for the normal distribution, but is more powerful for a heavy-tailed distribution such as the Laplace, or for a skewed distribution such as the Gamma. Interactive software, enabling a complete implementation of the chart, is made available on a website.

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Primary Subjects: 62G30, 62-07, 62P30
Keywords: ARL and run length percentiles; conditioning method; distribution-free; Monte Carlo estimation; parameter estimation; phase I and phase II; saddlepoint and edgeworth approximations; Shewhart X̄ chart; statistical process control
Full-text: Open access
Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.imsc/1207058271
Digital Object Identifier: doi:10.1214/193940307000000112

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Institute of Mathematical Statistics Collections

Institute of Mathematical Statistics Collections