Affiliation:
1. Laboratory for Reliability and Process Digitalization, Industrial Engineering Department, Universidad Técnica Federico Santa María, Valparaíso 2390123, Chile
Abstract
This article implements a hybrid Machine Learning (ML) model to classify stoppage events in a copper-crushing equipment, more specifically, a conveyor belt. The model combines Artificial Neural Networks (ANNs) and Support Vector Machines (SVMs) with Principal Component Analysis (PCA) to identify the type of stoppage event when they occur in an industrial sector that is significant for the Chilean economy. This research addresses the critical need to optimise maintenance management in the mining industry, highlighting the technological relevance and motivation for using advanced ML techniques. This study focusses on combining and implementing three ML models trained with historical data composed of information from various sensors, real and virtual, as well from maintenance reports that report operational conditions and equipment failure characteristics. The main objective of this study is to improve the efficiency when identifying the nature of a stoppage serving as a basis for the subsequent development of a reliable failure prediction system. The results indicate that this approach significantly increases information reliability, addressing the persistent challenges in data management within the maintenance area. With a classification accuracy of 96.2% and a recall of 96.3%, the model validates and automates the classification of stoppage events, significantly reducing dependency on interdepartmental interactions. This advancement eliminates the need for reliance on external databases, which have previously been prone to errors, missing critical data, or containing outdated information. By implementing this methodology, a robust and reliable foundation is established for developing a failure prediction model, fostering both efficiency and reliability in the maintenance process. The application of ML in this context produces demonstrably positive outcomes in the classification of stoppage events, underscoring its significant impact on industry operations.
Reference42 articles.
1. Preventive Maintenance Optims3 in Healthcare Domain: Status of Research and Perspective;Mahfoud;J. Qual. Reliab. Eng.,2016
2. Botero, C. (2024, September 02). Mantenimiento Preventivo. Available online: https://www.researchgate.net/publication/321356421_Manual_de_mantenimiento_Parte_V_mantenimiento_preventivo.
3. Wang, J., and Gao, R.X. (2022). Innovative Smart Scheduling and Predictive Maintenance Techniques. Design Operation of Procuction Networks for Mass Personalisation in the Era of Cloud Technology, Elsevier.
4. CASDD: Automatic Surface Defect Detection Using a Complementary Adversarial Network;Tian;IEEE Sens. J.,2022
5. Huang, P., Li, Y., Lv, X., Chen, W., and Liu, S. (2020). Recognition of Common Non-Normal Walking Actions Based on Relief-F Feature Selection and Relief-Bagging-SVM. Sensors, 20.