CMM Measuring Cycle and Human Factor.
Melichar, Martin ; Kubatova, Dana ; Kutlwaser, Jan 等
CMM Measuring Cycle and Human Factor.
1. Introduction
After being overlooked for a long time, metrology is gaining
importance in today's world of technology, all the more so because
of current standards in purchasing. In general, customer requirements do
not end with products meeting their specifications, and with final
inspection reports being presented as evidence of this conformity any
more. An ever more frequent requirement concerns evaluation of
supplier's measurement system to demonstrate its readiness,
repeatability, reproducibility and suitability for the application in
question. Final control of product is often implemented on a CMM. Here
the question arises--how it affects the human factor in automatic mode
CMM
2. Theory of MSA
There is a well-proven and customer-recognized methodology for
demonstrating the qualification of a measurement system for a particular
application: the MSA (Measurement System Analysis) quality tool. It uses
simple experiments to find whether a particular approach chosen by the
inspection personnel for a particular issue is suitable or at least
adequate. one typical example involves verification of the required
repeatability and reproducibility of results on pliable products, such
as plastics, obtained by inspection personnel with a manual gauge that
exhibits first-order error.
The outcome of the MSA analysis is the GR&R parameter. [3] In
practice, it is the percentage of the initial tolerance specified by the
customer which the supplier "uses up" owing to ambiguous
measurement. If GR&R exceeds 30%, the measurement system becomes
unjustifiably expensive for the supplier (as it drives up the costs of
manufacture which therefore must operate within a much narrower
tolerance band), and unacceptable for the customer. [7]
Manual measurement operations--to which MSA is traditionally
applied--are subject to a number of factors linked to the human operator
who possesses unique features including:
* Physical abilities
* Experience
* Attention
* Care
* Others. [6]
Since today's metrology laboratories are forced to rely on CMM
systems, the effect of the operator can be expected to be minimized,
provided that unified methodology and measurement programme are used. It
order to test this hypothesis, the metrology laboratories of the
Regional Technological Institute have conducted an experiment. [1]
3. Experimental
The measurement system analysis presented here involved CMM
measurement of components from a single lot in large-series production.
In the framework of MSA, the most widely used method was selected:
assessment of average values and spread in a group of ten randomly
chosen products from a single lot. The purpose of this experiment was to
find whether MSA should be applied to the automatic mode of CMM
operation as well or whether CMM can be relied on as a means of
eliminating the operator influence. [4]
Input parameters of the experiment:
* On purpose, critical parts for automotive industry were selected
whose tolerance was on the order of 0.01 mm (Fig. 3)
* A suitable parameter--diameter of a hole--was chosen
* The measurement was performed on the Carl Zeiss Prismo 7
Navigator CMM (Fig. 2) which itself guarantees high repeatability
(approx. 1.5 micrometre using the index able head)
* For this measurement, a special program was developed for the
part type
* All data collection took place under consistent controlled
conditions t= 20 [+ or -] 1[degrees]C, 50% humidity
* Three operators each of whom possessed a different level of
experience with CMM and who did not know each other were selected in
order to avoid undesirable interference
* Using a measurement cycle, each operator measured 10 parts three
times (in a random order)
The only theoretical potential complications affecting
repeatability and repeatability are as follows:
* Machine's repeatability error
* Machine vibration--e.g. due to the speed of traversing mechanisms
or due to the environment
* System points inadequately recorded by the operator
* Part inadequately clamped by the operator
* Incorrectly chosen stylus tip--e.g. its diameter
* Program error [5]
4. Conclusion
Using the experimental method was verified human factor influence
on automatic CMM measurements. Applied methodology followed three
independent operators, who controlled 10 parts. The experiment suggests
that although the GR&R value was found to be deep below the limit of
10 percent. For standard MSA analysis it is the inadmissible system and
our measurement seems to be okay, but the results must be analysed
extensively.
For instance, if it became necessary to measure components with
much better accuracy than in our experimental arrangement, our analysis
of our system could soon encounter unacceptable boundary values. Once
the required component accuracy drops to approximately 0.005 mm, the
entire measurement process would have to be automated to such extent
that at least the component clamping process and the initial
identification of system points would have to be independent of human
intervention.
There is one more important fact that must be taken into
account--material component. A majority of those components where a
request for MSA could be considered come from the field of processing of
soft plastics where the potential effect of the operator can be even
higher due to the force on the stylus. Inconsistencies speed of touch
while operating by operator can be a significant source of uncertainty.
It is therefore certain that monitoring repeatability and
reproducibility of an automatic CMM in a supply chain of critical
components is more than advisable. It can help reveal weak spots of the
process which can ultimately lead to cost savings in production because
a smaller portion of the available tolerance will be used up by
measurement.
The investigation of effects of individual factors on the overall
outcome of measurement is part of the project no. LO1502 B16.
DOI: 10.2507/27th.daaam.proceedings.055
5. Acknowledgments
This paper was supported by the project SGS-2016-005.
6. References
[1] Antonio Piratelli-Filho, Benedito Di Giacomo, CMM uncertainty
analysis with factorial design, Precision Engineering, Volume 27, Issue
3, July 2003, Pages 283-288, ISSN 0141-6359,
http://dx.doi.org/10.1016/S0141-6359(03)00035-7
[2] http://www.six-sigma-material.com/MSA.html [online]. [cit.
2016-09-08]
[3] Https://www.moresteam.com/toolbox/measurement-system-analysis.cfm: Measurement System Analysis (MSA) [online]. [cit. 2016-09-08]
[4] Matthias Asplund, Jing Lin, Evaluating the capability of
measuring system for measuring the profile of the wheels using GR &
amp; R, vol. 92, October 2016, page 19-27, ISSN 0263-2241, 2016.05.090
[5] Burdick, Borror, Montgomery: A review of methods for
measurement systems capability analysis (2003) Journal of Quality
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[6] Wheeler: Problems with gauge R&R studies(1992) Annual
Quality Congress Transactions, 46, pp. 179-185.
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[7] http://www.rubymetrology.com/add_help_doc/MSA_Reference_Manual_4th_Edition.pdf [online]. [cit. 2016-10-06]
[8] Rewilak, J. MSA Planning--A proposition of a method (2015) Key
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This Publication has to be referred as: Melichar, M[artin];
Kubatova, D[ana] & Kutlwaser, J[an] (2016). CMM Measuring Cycle and
Human Factor, Proceedings of the 27th DAAAM International Symposium,
pp.0371-0376, B. Katalinic (Ed.), Published by DAAAM International, ISBN
978-3-902734-08-2, ISSN 1726-9679, Vienna, Austria
Caption: Fig. 1. MSA principle [2]
Caption: Fig. 2. Zeiss Prismo7 Navigator
Caption: Fig. 3. Touch the measurement
Caption: Fig. 4. Graph of scattering of the measured values
Table 1. Table of measured values for the three operators
in 10 repetitions
Part number
Operator
-- 1 2 3 4 5 6
Measure-
ment series
A 1 15,430 15,428 15,428 15,437 15,426 15,433
2 15,428 15,428 15,429 15,437 15,431 15,432
3 15,430 15,425 15,428 15,435 15,426 15,432
Average 15,429 15,427 15,428 15,436 15,428 15,432
Spread 0,002 0,003 0,001 0,002 0,005 0,001
B 1 15,427 15,428 15,427 15,437 15,430 15,434
2 15,429 15,427 15,427 15,436 15,431 15,437
3 15,430 15,428 15,429 15,437 15,430 15,432
Average 15,429 15,428 15,428 15,437 15,430 15,434
Spread 0,003 0,001 0,002 0,001 0,001 0,005
C 1 15,430 15,429 15,430 15,436 15,430 15,434
2 15,426 15,426 15,429 15,438 15,429 15,434
3 15,424 15,426 15,429 15,437 15,430 15,432
Average 15,427 15,427 15,429 15,437 15,430 15,433
Spread 0,006 0,003 0,001 0,002 0,001 0,002
Part number
Operator
-- 7 8 9 10
Measure-
ment series
A 1 15,438 15,436 15,438 15,428
2 15,439 15,436 15,437 15,428
3 15,440 15,436 15,436 15,427
Average 15,439 15,436 15,437 15,428
Spread 0,002 0,000 0,002 0,001
B 1 15,441 15,435 15,436 15,428
2 15,440 15,435 15,437 15,428
3 15,442 15,435 15,435 15,429
Average 15,441 15,435 15,436 15,428
Spread 0,002 0,000 0,002 0,001
C 1 15,440 15,435 15,438 15,427
2 15,440 15,437 15,438 15,427
3 15,440 15,437 15,436 15,429
Average 15,440 15,436 15,437 15,428
Spread 0,000 0,002 0,002 0,002
Table 2. Analysis measuring unit [7]
Analysis measuring unit Total variance (TV)
--Repeatability--scattering instrument (EV)
EV = [??] x [K.sub.1] %EV = 100[EV/TV]
EV = 0,001142213
Selections 3
[K.sub.1] 0,5908
--Reproducibility--scattering operator %AV = 100[AV/TV]
%AV = 0,16
AV = [square root of [[([[bar.X].sub.DIFF]
x [K.sub.2]).sup.2] - (E[V.sup.2]/nr)]]
AV = 0,00016
n = number of components
r = number of selections
operator 2 3
K2 0,7071 0,5231
--Repeatability and reproducibility (R&R) %GR&R = 1,15
R&R = [square root of (E[V.sup.2] +
A[V.sup.2])]
R&R = 0,00115
--Variance components (PV)
PV = [square root of [(TV).sup.2] -
[(R&R).sup.2]]
%PV=100,0066
PV = 0,1001
Part. 2 3 4
[K.sub.3] 0,7071 0,5231 0,4467
Part. 5 6 7
[K.sub.3] 0,403 0,3742 0,3534
Part. 8 9 10
[K.sub.3] 0,3375 0,3249 0,3146
--The total variance (TV) ndc=1,41 x (PV/R&R)
122,2903
TV = (USL - LSL)/6
TV = 0,1
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