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  4. A Bayesian approach to process model evaluation in short run SPC
 
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2018
Zeitschriftenaufsatz
Titel

A Bayesian approach to process model evaluation in short run SPC

Abstract
With the availability of Big Data in manufacturing, historical data to initially characterize a process is available in abundance. In fact, evaluating and selecting the best-fitted data set replaces data availability as major concern for setting up a short run SPC. We argue that due to the constant rise in computing power, it might not always be necessary to decide on one specific data set for a priori process characterization and modelling, but instead do most of the evaluation a posteriori. Thus, we introduce a new method to combine expert knowledge and Bayesian statistics for short run SPC in data-rich manufacturing environments. After a discussion on the methodology, its applicability and convergence, its application to turbine blade manufacturing is presented.
Author(s)
Permin, Eike
Fraunhofer-Institut für Produktionstechnologie IPT
Voigtmann, Christoph
WZL der RWTH Aachen
Schmitt, Robert H.
Fraunhofer-Institut für Produktionstechnologie IPT
Zeitschrift
International journal of engineering innovations and research : IJEIR
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Language
Englisch
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IPT
Tags
  • Bayesian statistic

  • Big Data

  • quality assurance

  • Statistical process c...

  • short run SPC

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