Title of article :
A hybrid fuzzy adaptive sampling – Run rules for Shewhart control charts
Author/Authors :
M.H. Fazel Zarandi، نويسنده , , A. Alaeddini، نويسنده , , I.B. Turksen، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2008
Abstract :
In crisp run control rules, usually it is stated that a process moves very sharply from in-control condition to out-of-control act. This causes an increase in both false-alarm rate and control chart sensitivity. Moreover, the classical run control rules are not implemented on an intelligent sampling strategy that changes control charts’ parameters to reduce error probability when the process appears to have a shift in parameter values. This paper presents a new hybrid method based on a combination of fuzzified sensitivity criteria and fuzzy adaptive sampling rules, which make the control charts more sensitive and proactive while keeping false alarms rate acceptably low. The procedure is based on a simple strategy that includes varying control chart parameters (sample size and sample interval) based on current fuzzified state of the process and makes inference about the state of process based on fuzzified run rules. Furthermore, in this paper, the performance of the proposed method is examined and compared with both conventional run rules and adaptive sampling schemes.
Keywords :
STATISTICAL PROCESS CONTROL , control charts , adaptive sampling , Fuzzy modeling , Run rules , Fuzzy inference , Genetic algorithms
Journal title :
Information Sciences
Journal title :
Information Sciences