Title of article :
An orthogonal arrays approach to robust parameter designs methodology
Author/Authors :
P. Angelopoulos، نويسنده , , K. Drosou&C. Koukouvinos، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2013
Abstract :
Robust parameter design methodologywas originally introduced byTaguchi [14] as an engineering methodology
for quality improvement of products and processes.A robust design of a system is one in which two
different types of factors are varied; control factors and noise factors. Control factors are variables with
levels that are adjustable, whereas noise factors are variables with levels that are hard or impossible to
control during normal conditions, such as environmental conditions and raw-material properties. Robust
parameter design aims at the reduction of process variation by properly selecting the levels of control factors
so that the process becomes insensitive to changes in noise factors. Taguchi [14,15] proposed the use
of crossed arrays (inner–outer arrays) for robust parameter design. A crossed array is the cross-product of
an orthogonal array (OA) involving control factors (inner array) and an OA involving noise factors (outer
array). Objecting to the run size and the flexibility of crossed arrays, several authors combined control
and noise factors in a single design matrix, which is called a combined array, instead of crossed arrays. In
this framework, we present the use of OAs in Taguchi’s methodology as a useful tool for designing robust
parameter designs with economical run size.
Keywords :
Robust parameter design , Combined array , Control and noise factors , Orthogonal arrays , validation , identifiable models
Journal title :
JOURNAL OF APPLIED STATISTICS
Journal title :
JOURNAL OF APPLIED STATISTICS