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.

Authors and Affiliations

Eike Permin, et al.

Keywords

Related Articles

An Image Processing Based Optical Mark Recognition with the Help of Scanner

The Optical Mark Recognition (OMR) is very popular with schools and universities for the reading of multiple choice questions. In this article, we presented an automatic system used for correction the Multiple Choice Que...

Submarine Dynamic Stability Analysis in Shallow Waters Utilizing MATLAB

A MATLAB program was developed in order to simulate the dynamic stability of un-trenched submarine cables and pipelines resting on the bottom of a 14m depth sea (shallow waters), utilizing the Fourier Decomposition metho...

The Prediction on Beijing Rail Transit Passenger Capacity Based on Grey GM (1,1)

In the last few years, Chinese rail transit develops rapidly and the passenger capacity is the basement of the rail transit scheme, design and operation so that pressing ahead the passenger capacity prediction plays a si...

A Bayesian Approach to Process Model Evaluation in Short Run SPC

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...

Secured Key Menagement in Manufacturing Execution Systems of Cloud Connect

In manufacturing organizations, the flow of information often is essential to the functioning of critical design, processes, machinery, or systems on which the company depends. Thus, Cyber security rather than being an o...

Download PDF file
  • EP ID EP496590
  • DOI -
  • Views 71
  • Downloads 0

How To Cite

Eike Permin, et al. (2018). A Bayesian Approach to Process Model Evaluation in Short Run SPC. International Journal of Engineering Innovations and Research, 7(2), 92-97. https://europub.co.uk/articles/-A-496590