Title of article
Fuzzy MaxGWMA chart for identifying abnormal variations of on-line manufacturing processes with imprecise information
Author/Authors
Shu، نويسنده , , Ming-Hung and Nguyen، نويسنده , , Thanh-Lam and Hsu، نويسنده , , Bi-Min، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2014
Pages
15
From page
1342
To page
1356
Abstract
The exponentially-weighted-moving-average (EWMA) control chart was developed to detect small shifts in mean and variability of a key quality characteristic in a manufacturing process. To improve its performance, several modified statistical schemes on manipulation of random samples of real data (precise numbers) collected from the quality characteristic have been proposed. Among them, the recently recommended control chart named the maximum generally weighted moving average (MaxGWMA) is found superior in recognition of its outstanding diagnostic abilities at warning abnormal-manufacturing variations swiftly. In this paper, based on the well-known fuzzy set theory, we develop a Fuzzy-MaxGWMA (F-MaxGWMA) chart, an extension of the MaxGWMA chart, to well accommodate the fuzzy environment where both the randomness and fuzziness of imprecise sample data (fuzzy numbers) are taken into consideration. Moreover, for identifying assignable variations of the on-line manufacturing process with fuzzy data, an index-of-optimism criterion is implemented to instantaneously monitoring as well as classifying the process conditions into multi-intermittent states between in control and out of control. It can overcome the constraints of binary classifications of the process condition used by the MaxGWMA chart when fuzzy data inevitably appear in practical manufacturing processes. Finally, a realistic example to control the coating thickness of an industrial cutting-tool manufacturing process is illustrated to demonstrate the adaptability and effectiveness of this newly extended approach.
Keywords
process monitoring , Fuzzy numbers , Index of optimism , Fuzzy-MaxGWMA chart , Left and right dominance
Journal title
Expert Systems with Applications
Serial Year
2014
Journal title
Expert Systems with Applications
Record number
2354358
Link To Document