Gauge and process capability metrics.
Mahovic, Sanjin ; Runje, Biserka ; Barsic, Gorana 等
1. INTRODUCTION
Estimation of process capability together with statistical control
and design of experiments are statistical methods that have been used
for years in an attempt to reduce variability of production process and
their final products (Dietrich & Schulze, 1999). Process is capable
if requirement range T is greater or equal to process range 6 J which
represents 99,73% of surface below the normal distribution curve used to
approximate the process. Process capability is estimated by calculating,
process capability indices. In order to estimate quality of the
measurement system it is necessary to identify and quantify sources of
variability, define stability and determine measurement system
capability. In case whan measurement system variation is significant in
comparison to established variation of the item that is measured in a
production process, system may not provide valid information on process
control. For this reason, prior to establishing process stability and
capability, it is necessary to analyze measuring system and determine
whether measuring system will be able to consistently, accurately, and
precisely differentiate between parts of the process.
2. ESTIMATION OF PROCESS CAPABILITY
The most common indices used are those for calculating potential
process capability C and demonstrated excellence index [C.sub.PK] .
[C.sub.p] index describes tolerance field range in reference to actual
data dispersion, while [C.sub.PK] index defines the process position in
reference to requirement limits. Process capability indices are provided
in the expressions (1) i (2).
[C.sub.p] = (USL - LSL)/6[sigma] = T/6[sigma] (1) [C.sub.pK] =
min((USL - [bar.x])/ 3[sigma];([bar.x] - LSL) / 3[sigma]) (2)
USL--upper specification limit LSL--lower specification limit
T--tolerance area [bar.x]--arithmetic mean (central line of the control
chart) 6[sigma]-- observed process range
In the expressions (1) and (2) standard deviation has been
estimated on the basis of data from control chart. Various control
charts are used for detection of variations in the process and
determining amount of process standard deviation (Juran, & Gryna,
1993).
3. ANALYSIS OF MEASUREMENT SYSTEM IN PRODUCTION ENVIRONMENT
Requirement for estimating quality of measurement systems stems
from a very simple fact that measurements are in no way perfect.
Variations in the measurement system result from random and systematic
effects. (Breyfolge, 1999). Main sources of measurement system
variability are the item that is measured, equipment, operator and
environment. Significance of elements in the measurement system is
expressed by the amount of dispersion of measuring results obtained in
defined measurement conditions. Influences of individual elements of
measurement system can be classified in three main categories:
Repeatability EV is defined as the influence of measuring equipment in
the measurement system variation. Repeatability represents dispersion of
measurement results obtained by one appraiser during multiple
measurements of identical characteristics on the same parts (samples),
while using the same instrument.
Reproducibility AV is defined as the influence of appraisers
conducting in the measurement system variation. Reproducibility
represents dispersion of measurement results obtained by several
appraisers during multiple measurements of identical characteristics on
the same parts (samples), while using the same or different instrument.
Part variation PV is defined as the influence of parts (items) in
the total variation of measurement system TV.
Measurement system variation R&R depends on the total
dispersion of measurement results due to mutual effect of repeatability
and reproducibility R&R. Calculation of the measurement system
variation R&R is given with the expression 3.
R & R = [square root of [EV.sup.2] + [AV.sup.2]] (3)
Total variation TV (expression 4) depends on the variation of
measurement system R & R and parts variation PV.
TV = [square root of [(R&R).sup.2] + [PV.sup.2]] (4)
Measurement system capability represents share of measurement
system variability R&R expressed as percentage of total variation TV
or tolerance field T, i.e. share of measurement system variance in the
total variance. Expressions for calculating measurement system
capability are as follows:
Measurement system capability = R & R / TV x 100%
Measurement system capability = R & R / T x 100% (5)
Contribution = [[sigma].sup.2.sub.R&R]/ [[sigma]sup.2.sub.TV] x
100%
Criteria for assessing quality of measurement system R&R in the
tolerance field T or total variation TV are provided in Table 1, and
criteria for assessing quality of measurement system R&R for
contribution percentage are provided in the Table 2.
4. EFFECT OF GAUGE R&R VARIATION ON PROCESS CAPABILITY INDEX
[C.sub.p]
When analyzing process capability the most significant is [C.sub.p]
index based on process dispersion (Mudronja, 2006). In order to be able
to provide notion on actual process capability, gauge R&R must be
able to detect any deviation in monitored process or product. Further
analysis shows the relationship of the observed process capability index
[C.sub.pTV] that results from total variability TV and actual index
[C.sub.p], based on variation of parts in PV process.
[C.sub.pTV] = [C.sub.p] x [square root of 1 - [(R & R).sup.2]]
Relationship between process capability indices [C.sub.pTV] and
[C.sub.p] that depends on quality of gauge R&R and on contribution
to R&R is illustrated on Figures 1 and 2, and in Tables 3 and 4.
[FIGURE 1 OMITTED]
[FIGURE 2 OMITTED]
From the presented results it may be concluded that quality of
measurement system significantly affects process capability index
[C.sub.p]. If the observed process capability index [C.sub.pTV] = 1,73,
and gauge R&R uses 50% of total variati on or tole ranc e field,
actual process capability index will be Cp = 2,0. However, if gauge
R&R uses 10% of total variation or tolerance field, the observed
process capability index will be [C.sub.pTV] = 1,99, meaning that
process capability estimation is significantly better. Also, it needs to
be emphasized that in case whan gauge R&R variation is significant
in comparison to the established variation of the parts PV, measurement
system will not be able to give an accurate estimation of process
capability (Bass & Lawton, 2009).
5. CONCLUSION
Based on conducted analysis it may be concluded that high quality
measurement system is essential for detection and monitoring of process
variations. Higher percentage of R&R means geater error in
estimating the process capability index [C.sub.p]. Furthermore, it was
determined that the error in estimation increase as the index C
increases. Only high quality measurement system will be able to provide
accurate and precise estimation of process capability.
6. REFERENCES
Bass, I. & Lawton, B. (2009). Lean Six Sigma, eBook,
McGraw-Hill Inc., ISBN 978-0-07-162621-7, New York
Breyfolge, F.W. III. (1999). Implementing Six Sigma, Awiley
Interscience Publication, ISBN 0471265721, New York
Dietrich, E. & Schulze, A. (1999). Statistical Procedures for
Machine and Process Qualification, ASQ Quality Press, ISBN
0-87389-447-2, Milwaukee
Juran, J.M. & Gryna, F.M. (1993). Quality planning and
analysis, McGraw-Hill, Inc., ISBN 978-0070331839, New York
Mudronja, V. (2008). Lectures in Quality Management, FSB, Zagreb
Tab. 1. Criteria for assessing quality of gage R&R in the
tolerance field T or total variation TV
%T, %TV Gauge R&R is
1 <10 Acceptable
10-30 Borderline
> 30 Unacceptable
Tab. 2. Criteria for assessing quality of gauge R&R in the
tolerance field T or total variation TV
Contribution % Gauge R&R is
<1 Acceptable
1-9 Borderline
>9 Unacceptable
Tab. 3. Relationship between process capability indices [C.sub.pTV]
and [C.sub.p] depending on quality if gauge R&R
Gauge R&R, %
[C.sub.p] 90% 70% 50% 30% 10%
0,5 0,22 0,36 0,43 0,48 0,50
1 0,44 0,71 0,87 0,95 0,99
1,5 0,65 1,07 1,30 1,43 1,49
2 0,87 1,43 1,73 1,91 1,99
2,5 0,09 1,79 2,17 2,38 2,49
3 1,31 2,14 2,60 2,86 2,98
Tab. 4. Relationship between process capability indices [C.sub.pTV]
and [C.sub.p] depending on contribution to R&R.
Contribution R&R, %
[C.sub.p] 90% 70% 50% 30% 10%
0,5 0,16 0,27 0,35 0,42 0,47
1 0,32 0,55 0,71 0,84 0,95
1,56 0,47 0,82 1,06 1,25 1,42
2 0,63 1,10 1,41 1,67 1,90
2,5 0,79 1,37 1,77 2,09 2,37
3 0,95 1,64 2,12 2,51 2,85