A Novel Differential Evolution Algorithm with Q-Learning for Economical and Statistical Design of X-Bar Control Charts
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Date
2020
Authors
Ahmad Abdulla Al-Buenain
Damla Kizilay
Ozge Buyukdagli
M. Fatih Tasgetiren
Journal Title
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Publisher
IEEE
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Abstract
This paper presents a novel differential evolution algorithm with Q-Learning (DE_QL) for the economical and statistical design of X-Bar control charts which has been commonly used in industry to control manufacturing processes. In X-Bar charts samples are taken from the production process at regular intervals for measurements of a quality characteristic and the sample means are plotted on this chart. When designing a control chart three parameters should be selected namely the sample size (n) the sampling interval (h) and the width of control limits (k). On the other hand when designing an economical and statistical design these three control chart parameters should be selected in such a way that the total cost of controlling the process should be minimized by finding optimal values of these three parameters. In this paper we develop a DE_QL algorithm for the global minimization of a loss cost function expressed as a function of three variables n h and k in an economic model of the X-bar chart. A problem instance that is commonly used in the literature has been solved and better results are found than the earlier published results.
Description
Keywords
Differential evolution, Q-learning, X-Bar control charts, Economical design of control charts, PARTICLE SWARM OPTIMIZATION, (X)OVER-BAR
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Source
IEEE Congress on Evolutionary Computation (CEC) as part of the IEEE World Congress on Computational Intelligence (IEEE WCCI)
