Alpha Error of Taguchi Method with Different OAs for NTB Type QCH by Simulation

作者:Al Refaie Abbas*; Li Ming Hsien
来源:Quality Technology and Quantitative Management, 2010, 7(4): 337-351.
DOI:10.1080/16843703.2010.11673236

摘要

Taguchi method has been widely used for parameter design in many industrial applications. Nevertheless, it has been the subject of discussion and much debate in different platforms. This research proposes an extension to ongoing research by investigating the alpha error of Taguchi method with two-, three-, and four-level orthogonal arrays (OAs) for the nominal-the-best (NTB) type quality characteristic (QCH) type via simulation. With each array, it is assumed that QCH values are normally distributed with the same mean and standard deviation. Consequently, the null hypothesis that all factors are insignificant is true. The alternative hypothesis is that at least one factor is identified as significant. Simulation is conducted for 10 cycles each of 10,000 runs. The results showed that the alpha error is very high, which indicates that insignificant factors are misidentified as significant with high probability. In practice, this may provide misleading conclusions about parameter design. In conclusion, Taguchi's quality engineering concepts are of great importance. However, his method is found inefficient for parameter design.

  • 出版日期2010-12