Enhancing manufacturing process by predicting component failures using machine learning

Manufacturers customize computer components upon receipt of sale orders. They perform burn-in tests on each unit of product before shipment to ensure a high standard of quality. Burn-in is normally associated with high production costs and slows down manufacturing operations. This study aims to enha...

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Main Authors: Saadat, Raihanus, Syed Mohamad, Sharifah Mashita, Azmi, Athira, Keikhosrokiani, Pantea
Format: Article
Published: Springer 2022
Online Access:http://psasir.upm.edu.my/id/eprint/101274/
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author Saadat, Raihanus
Syed Mohamad, Sharifah Mashita
Azmi, Athira
Keikhosrokiani, Pantea
author_facet Saadat, Raihanus
Syed Mohamad, Sharifah Mashita
Azmi, Athira
Keikhosrokiani, Pantea
author_sort Saadat, Raihanus
building UPM Institutional Repository
collection Online Access
description Manufacturers customize computer components upon receipt of sale orders. They perform burn-in tests on each unit of product before shipment to ensure a high standard of quality. Burn-in is normally associated with high production costs and slows down manufacturing operations. This study aims to enhance the manufacturing process by predicting test failure patterns using machine learning methods. By identifying the components that are likely to cause failures, manufacturers can accelerate the rectification process and improve delivery time which in turn leads to better customer service. This study hypothesized that the component of concern produces a higher test failure rate. To provide insight into the data and test the hypothesis, descriptive and predictive analytics are used at various stages. Predictive analytics was performed using machine learning via Naïve Bayes since it outperformed SVM and Random Forest classifier. For the descriptive analysis stage, a visual representation revealed many components (81) to be associated with a more than average test failure rate. Fisher’s exact test confirmed that 12 of them are statistically significant and worth studying their behaviour further. Moreover, an association rule mining exercise identified several combinations of modules that have a higher inclination with the test failure. For the predictive analytics stage, the Naïve Bayes classifier predicted test failure with 79% accuracy and 53% recall rate. Another Naïve Bayes classifier predicted error messages associated with a test failure with 68% recall rate over manually labelled error messages. However, a neural network-based automatic text classifier was developed and tested that yielded 66% accuracy. This analysis provides the foundation for a recommendation made that can reduce the burn test failure rate by 25% which is expected to increase further with the improved performance model upon training with a larger data set.
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spelling upm-1012742023-10-04T06:53:11Z http://psasir.upm.edu.my/id/eprint/101274/ Enhancing manufacturing process by predicting component failures using machine learning Saadat, Raihanus Syed Mohamad, Sharifah Mashita Azmi, Athira Keikhosrokiani, Pantea Manufacturers customize computer components upon receipt of sale orders. They perform burn-in tests on each unit of product before shipment to ensure a high standard of quality. Burn-in is normally associated with high production costs and slows down manufacturing operations. This study aims to enhance the manufacturing process by predicting test failure patterns using machine learning methods. By identifying the components that are likely to cause failures, manufacturers can accelerate the rectification process and improve delivery time which in turn leads to better customer service. This study hypothesized that the component of concern produces a higher test failure rate. To provide insight into the data and test the hypothesis, descriptive and predictive analytics are used at various stages. Predictive analytics was performed using machine learning via Naïve Bayes since it outperformed SVM and Random Forest classifier. For the descriptive analysis stage, a visual representation revealed many components (81) to be associated with a more than average test failure rate. Fisher’s exact test confirmed that 12 of them are statistically significant and worth studying their behaviour further. Moreover, an association rule mining exercise identified several combinations of modules that have a higher inclination with the test failure. For the predictive analytics stage, the Naïve Bayes classifier predicted test failure with 79% accuracy and 53% recall rate. Another Naïve Bayes classifier predicted error messages associated with a test failure with 68% recall rate over manually labelled error messages. However, a neural network-based automatic text classifier was developed and tested that yielded 66% accuracy. This analysis provides the foundation for a recommendation made that can reduce the burn test failure rate by 25% which is expected to increase further with the improved performance model upon training with a larger data set. Springer 2022-06-13 Article PeerReviewed Saadat, Raihanus and Syed Mohamad, Sharifah Mashita and Azmi, Athira and Keikhosrokiani, Pantea (2022) Enhancing manufacturing process by predicting component failures using machine learning. Neural Computing and Applications, 34 (20). pp. 18155-18169. ISSN 0941-0643; ESSN: 1433-3058 https://link.springer.com/article/10.1007/s00521-022-07465-1 10.1007/s00521-022-07465-1
spellingShingle Saadat, Raihanus
Syed Mohamad, Sharifah Mashita
Azmi, Athira
Keikhosrokiani, Pantea
Enhancing manufacturing process by predicting component failures using machine learning
title Enhancing manufacturing process by predicting component failures using machine learning
title_full Enhancing manufacturing process by predicting component failures using machine learning
title_fullStr Enhancing manufacturing process by predicting component failures using machine learning
title_full_unstemmed Enhancing manufacturing process by predicting component failures using machine learning
title_short Enhancing manufacturing process by predicting component failures using machine learning
title_sort enhancing manufacturing process by predicting component failures using machine learning
url http://psasir.upm.edu.my/id/eprint/101274/
http://psasir.upm.edu.my/id/eprint/101274/
http://psasir.upm.edu.my/id/eprint/101274/