Natural process variation

Natural process variation, sometimes just called process variation, is the statistical description of natural fluctuations in process outputs.

Equations

The following equations are used for an x-bar-control chart:

In the example, with n = 10 samples, the targeted mean, , and standard error of the mean, are:

That is, independent 10-sample means should themselves have a standard deviation of 0.0316. It is natural that the means vary this much, for by the central limit theorem the means should have a normal distribution, regardless of the distribution of the samples themselves.

The importance of knowing the natural process variation becomes clear when we apply statistical process control. In a stable process, the mean is on target; in the example, the target is the filling, set to 1 litre. The variation within the upper and lower control limits (UCL and LCL) is considered the natural variation of the process.

Usage

When a sample average (size n = 10 in this case) is located outside the control limits, then this is an indication that the process is out of (statistical) control. To be more specific:

The Western Electric rules conclude that the process is out of control if:
  1. One point plots outside the 3σ-limits (the UCL and LCL).
  2. Two out of three consecutive points plot beyond a 2σ-limit.
  3. Four out of five consecutive points plot at a distance of 1σ or beyond from the centerline.
  4. Eight consecutive points plot on one side of the center line.

Goal

The most important goal of understanding the principle of natural process variation is to consider the natural variance in the output before we make any changes to the process. Since SPC tends to minimize the process variations in time, as we better understand the process and have more experience with running it, we try to reduce the variation of it. The knowledge of the principle of natural variance helps us avoid making any unnecessary changes to the process, which might add variance to the process, instead of removing it.

gollark: You should sit on GTech™ GChairs™ instead. Using self-reshaping programmable fabric and remote brain reading™ they automatically arrange themselves into an optimally comfortable form.
gollark: I assumed it was something about continuity/smoothness. The space-filling curves' mappings and similar things aren't very smooth.
gollark: GEORGE's Highness the 0th.
gollark: Really? I think it was quite easy to imagine. You mostly just have to plot straight lines on logarithmically scaled plots.
gollark: Although I think most of the density on flash now comes from stacking and somewhat inadvisable stuff like QLC.

References

  • Douglas C. Montgomery, George C. Runger. Applied Statistics and Probability for Engineers, 4/e. Wiley, 2006. ISBN 978-0-471-74589-1.
  • An Introduction to Understanding Variation
  • Respecting Natural Variation
This article is issued from Wikipedia. The text is licensed under Creative Commons - Attribution - Sharealike. Additional terms may apply for the media files.