Please use this identifier to cite or link to this item: http://hdl.handle.net/10553/128800
Title: Predictive Analytics-Based Methodology Supported by Wireless Monitoring for the Prognosis of Roller-Bearing Failure
Authors: Primera, Ernesto
Fernández, Daniel
Cacereño Ibáñez, Andrés 
Rodríguez-Prieto, Alvaro
UNESCO Clasification: 33 Ciencias tecnológicas
Keywords: Bearing Failure
Data Analytics
Predictive Maintenance
Prognostics
Statistical Modeling
Issue Date: 2024
Journal: Machines 
Abstract: Roller mills are commonly used in the production of mining derivatives, since one of their purposes is to reduce raw materials to very small sizes and to combine them. This research evaluates the mechanical condition of a mill containing four rollers, focusing on the largest cylindrical roller bearings as the main component that causes equipment failure. The objective of this work is to make a prognosis of when the overall vibrations would reach the maximum level allowed (2.5 IPS pk), thus enabling planned replacements, and achieving the maximum possible useful life in operation, without incurring unscheduled corrective maintenance and unexpected plant shutdown. Wireless sensors were used to capture vibration data and the ARIMA (Auto-Regressive Integrated Moving Average) and Holt–Winters methods were applied to forecast vibration behavior in the short term. Finally, the results demonstrate that the Holt–Winters model outperforms the ARIMA model in precision, allowing a 3-month prognosis without exceeding the established vibration limit.
URI: http://hdl.handle.net/10553/128800
DOI: 10.3390/machines12010069
Source: Machines[EISSN 2075-1702],v. 12 (1), (Enero 2024)
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