Machine learning model for predictive maintenance of modern manufacturing assets
Shaalan, Abdu, Baglee, David and Dixon, Derek (2024) Machine learning model for predictive maintenance of modern manufacturing assets. In: 2024 29th International Conference on Automation and Computing (ICAC). IEEE. (Submitted)
Item Type: | Book Section |
---|
Abstract
Predictive maintenance is considered a powerful practice for manufacturing assets health assessment, facilitating the identification of potential failure occurrences. By proactively addressing such failures, manufacturers can avoid unplanned downtime and allocate necessary resources for required maintenance activities. Machine Learning (ML) methods have emerged as a promising tool for preventing equipment failures in Predictive Maintenance applications. However, the effectiveness of Predictive Maintenance applications is largely determined by the Machine Learning techniques utilized and the quality of the data utilised. In this research, we adapted the cross-industry standard process for data mining to develop a predictive maintenance model for a unique, large, and complex manufacturing asset, utilizing various machine learning techniques. Specifically, the research incorporate Random Forest, Support Vector Machines, K-Nearest Neighbors, eXtreme Gradient Boost, and Logistic Regression algorithms to the asset failure records. Following the fitting of all models, Random Forest emerged as the best-performing model based on the recall parameter. However, the algorithm performance was not satisfactory due to the poor data quality. In addition, an exploratory data analysis process was conducted on the data to derive insights into the failure pattern of the machine.
PDF (Author Accepted Mansucript (Conference Proceedings))
Machine learning model for predictive maintenance of modern manufacturing assets.pdf Restricted to Repository staff only Download (525kB) | Request a copy |
More Information
Additional Information: Conference Proceedings The 29th International Conference on Automation and Computing (ICAC 2024) Sunderland, UK, 28-30 Aug. 2024. “© 20XX IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works.” |
Related URLs: |
Depositing User: Abdu Shaalan |
Identifiers
Item ID: 18106 |
URI: http://sure.sunderland.ac.uk/id/eprint/18106 |
Users with ORCIDS
Catalogue record
Date Deposited: 23 Sep 2024 14:24 |
Last Modified: 23 Sep 2024 14:30 |
Author: | Abdu Shaalan |
Author: | David Baglee |
Author: | Derek Dixon |
Author: | Abdu Shaalan |
University Divisions
Faculty of Technology > School of EngineeringSubjects
Computing > Data ScienceEngineering
Actions (login required)
View Item (Repository Staff Only) |