Sampling strategies and long term variation modelling for a statistical feed-forward controller
The Statistical Feed-Forward Control Model (SFFCM) relies on a sequence of specification adjustments made on subsets of a population to counter the influence of the long time component of the variation. The difficulty strives in finding a proper estimate for the measure of the central tendency of ea...
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EDP Sciences
2012-01-01
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Online Access: | https://www.metrology-journal.org/articles/ijmqe/pdf/2012/03/ijmqe120023.pdf |
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doaj-8b7b2695607f433eb0d6c91b777be2a12021-08-19T13:16:18ZengEDP SciencesInternational Journal of Metrology and Quality Engineering2107-68392107-68472012-01-013315115410.1051/ijmqe/2012023ijmqe120023Sampling strategies and long term variation modelling for a statistical feed-forward controllerHernández C.Tutsch R.The Statistical Feed-Forward Control Model (SFFCM) relies on a sequence of specification adjustments made on subsets of a population to counter the influence of the long time component of the variation. The difficulty strives in finding a proper estimate for the measure of the central tendency of each subset to minimize the number of the required adjustments. By means of simulating the assembly of two components having high dimensional variation, forty experiments were designed to compare the individual influence of different factors such as the number of adjustments, the sampling strategy and two measures of central tendency: the sample mean and the cumulative de-noised average. Simulation results showed that, regardless of the sampling strategy but keeping the inspection rate at 20%, the use of the cumulative de-noised average instead of the sample mean made possible to reduce the number of adjustments by 20%. Thus, while the shift mean of the resulting assembly was decreased by 90%; the standard deviation was reduced by 15%. Hence, the selection of a proper central tendency measure is crucial when modeling the long time variation. The cumulative de-noised average proved to be a valid alternative.https://www.metrology-journal.org/articles/ijmqe/pdf/2012/03/ijmqe120023.pdfstatistical feed-forward control modelstatistical dynamic specifications methodsampling strategysubset sizecentral tendency measures |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hernández C. Tutsch R. |
spellingShingle |
Hernández C. Tutsch R. Sampling strategies and long term variation modelling for a statistical feed-forward controller International Journal of Metrology and Quality Engineering statistical feed-forward control model statistical dynamic specifications method sampling strategy subset size central tendency measures |
author_facet |
Hernández C. Tutsch R. |
author_sort |
Hernández C. |
title |
Sampling strategies and long term variation modelling for a statistical feed-forward controller |
title_short |
Sampling strategies and long term variation modelling for a statistical feed-forward controller |
title_full |
Sampling strategies and long term variation modelling for a statistical feed-forward controller |
title_fullStr |
Sampling strategies and long term variation modelling for a statistical feed-forward controller |
title_full_unstemmed |
Sampling strategies and long term variation modelling for a statistical feed-forward controller |
title_sort |
sampling strategies and long term variation modelling for a statistical feed-forward controller |
publisher |
EDP Sciences |
series |
International Journal of Metrology and Quality Engineering |
issn |
2107-6839 2107-6847 |
publishDate |
2012-01-01 |
description |
The Statistical Feed-Forward Control Model (SFFCM) relies on a sequence of specification adjustments made on subsets of a population to counter the influence of the long time component of the variation. The difficulty strives in finding a proper estimate for the measure of the central tendency of each subset to minimize the number of the required adjustments. By means of simulating the assembly of two components having high dimensional variation, forty experiments were designed to compare the individual influence of different factors such as the number of adjustments, the sampling strategy and two measures of central tendency: the sample mean and the cumulative de-noised average. Simulation results showed that, regardless of the sampling strategy but keeping the inspection rate at 20%, the use of the cumulative de-noised average instead of the sample mean made possible to reduce the number of adjustments by 20%. Thus, while the shift mean of the resulting assembly was decreased by 90%; the standard deviation was reduced by 15%. Hence, the selection of a proper central tendency measure is crucial when modeling the long time variation. The cumulative de-noised average proved to be a valid alternative. |
topic |
statistical feed-forward control model statistical dynamic specifications method sampling strategy subset size central tendency measures |
url |
https://www.metrology-journal.org/articles/ijmqe/pdf/2012/03/ijmqe120023.pdf |
work_keys_str_mv |
AT hernandezc samplingstrategiesandlongtermvariationmodellingforastatisticalfeedforwardcontroller AT tutschr samplingstrategiesandlongtermvariationmodellingforastatisticalfeedforwardcontroller |
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1721202322304925696 |