A Comparison Between the MEWMA and Mahalanobis Distance Control Chart

https://doi.org/10.24017/science.2021.2.9

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Authors

  • Kawa Rashid

Abstract

Statistical Process Control (SPC) is approaching that uses statistical techniques to monitor the process. The methods of quality control are widely used in controlling any strategy—the widely used control charts. A traditional variable control chart includes three lines: the Centre Line (CL), the Upper Control Limit (UCL), and the Lower Control Limit (LCL), all of which are represented by numeric values—represented by numeric values. A control chart illustrates the centerline of the average value of the quality feature under investigation.

Depending on numeric observation values, a process is either "in control" or "out of control."

 Considering the current, there are no questions regarding the observations and their values during the production process. However, when these observations include human judgments, assessments, and choices, a continuous random variable (xi) of a manufacturing process should be made up of the variable.

The MEWMA and Mahalanobis distance control chart techniques are used when more than one variable is involved.

This paper aims to compare the MEWMA and Mahalanobis distance chart for three compounds for water drinking production in the ALA -Factory in the Sulaimani-Iraq region.

So, linguistic terms can be used instead of the exact value of the continuous random variable. Today, quality control has become one of the most essential techniques for studying all variables to control production or consumption decision factors. Quality control's primary aim is to guarantee that the goods, services, or processes delivered satisfy particular standards and are reliable and satisfactory. The factor's direct approach is based on the product's quality.

Keywords:

Statistical Process Control (Exponentially Weighted Moving Average-EWMA and Multi Exponentially Weighted Moving Average (MEWMA) chart and Mahalanobis distance

References

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How to Cite

[1]
K. Rashid, “A Comparison Between the MEWMA and Mahalanobis Distance Control Chart”, KJAR, vol. 6, no. 2, pp. 94–104, Dec. 2021, doi: 10.24017/science.2021.2.9.

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Published

15-12-2021

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Pure and Applied Science