Recognition performance of imputed control chart patterns using exponentially weighted moving average
Performance of control chart pattern recogniser (CCPR) is dependent on the quality of data. Furthermore, when data is partially missing, false alarms and misclassification rate are high. This paper studied CCPR with incomplete data and investigated effectiveness of the exponential smoothing in resto...
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Inderscience Enterprises Ltd.
2018
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my.utm.845002020-01-11T07:31:31Z http://eprints.utm.my/id/eprint/84500/ Recognition performance of imputed control chart patterns using exponentially weighted moving average Haghighati, Razieh Hassan, Adnan TJ Mechanical engineering and machinery Performance of control chart pattern recogniser (CCPR) is dependent on the quality of data. Furthermore, when data is partially missing, false alarms and misclassification rate are high. This paper studied CCPR with incomplete data and investigated effectiveness of the exponential smoothing in restoring the patterns aiming to increase the recognition accuracy. The results demonstrated that average overall recognition accuracy degrades from 99.57 (without missingness) to 76.33 in severe missingness. Classification errors in the incomplete random and trend patterns increased up to 38 and 44 times, respectively. Exponential smoothing with a constant of 0.9 is found to be an effective imputation technique. In 50% missingness, recognition accuracy of imputed dataset improved by 99.2% and 19.4% in stable and unstable patterns respectively. Type I error in trend and type II error in random and cyclic patterns were reduced significantly with EWMA imputation. Sensitivity tests proved pattern recognition using proposed imputation technique resulted in superior robustness performance. Inderscience Enterprises Ltd. 2018 Article PeerReviewed Haghighati, Razieh and Hassan, Adnan (2018) Recognition performance of imputed control chart patterns using exponentially weighted moving average. European Journal of Industrial Engineering, 12 (5). pp. 637-660. ISSN 1751-5254 http://dx.doi.org/10.1504/EJIE.2018.094599 DOI:10.1504/EJIE.2018.094599 |
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TJ Mechanical engineering and machinery Haghighati, Razieh Hassan, Adnan Recognition performance of imputed control chart patterns using exponentially weighted moving average |
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Performance of control chart pattern recogniser (CCPR) is dependent on the quality of data. Furthermore, when data is partially missing, false alarms and misclassification rate are high. This paper studied CCPR with incomplete data and investigated effectiveness of the exponential smoothing in restoring the patterns aiming to increase the recognition accuracy. The results demonstrated that average overall recognition accuracy degrades from 99.57 (without missingness) to 76.33 in severe missingness. Classification errors in the incomplete random and trend patterns increased up to 38 and 44 times, respectively. Exponential smoothing with a constant of 0.9 is found to be an effective imputation technique. In 50% missingness, recognition accuracy of imputed dataset improved by 99.2% and 19.4% in stable and unstable patterns respectively. Type I error in trend and type II error in random and cyclic patterns were reduced significantly with EWMA imputation. Sensitivity tests proved pattern recognition using proposed imputation technique resulted in superior robustness performance. |
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Article |
author |
Haghighati, Razieh Hassan, Adnan |
author_facet |
Haghighati, Razieh Hassan, Adnan |
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Haghighati, Razieh |
title |
Recognition performance of imputed control chart patterns using exponentially weighted moving average |
title_short |
Recognition performance of imputed control chart patterns using exponentially weighted moving average |
title_full |
Recognition performance of imputed control chart patterns using exponentially weighted moving average |
title_fullStr |
Recognition performance of imputed control chart patterns using exponentially weighted moving average |
title_full_unstemmed |
Recognition performance of imputed control chart patterns using exponentially weighted moving average |
title_sort |
recognition performance of imputed control chart patterns using exponentially weighted moving average |
publisher |
Inderscience Enterprises Ltd. |
publishDate |
2018 |
url |
http://eprints.utm.my/id/eprint/84500/ http://dx.doi.org/10.1504/EJIE.2018.094599 |
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1657487664819994624 |
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13.209306 |