Smart Manufacturing in Rolling Process Based on Thermal Safety Monitoring by Fiber Optics Sensors Equipping Mill Bearings
Abstract
:1. Introduction
2. Materials and Methods
2.1. The Smart Bearing Technology and Its Application to Rolling Process
2.2. The Rolling Mill Architecture and Main Customer Needs
2.3. The Mill Accessibility and Analysis of Monitoring Paths and Technologies
2.4. Proposed System: FBG Sensors Applied to Health Monitoring of Rolling Mill
3. Results
3.1. Proposed Architecture and Operation of Monitoring System
3.2. Experimental Set-up for Thermal Monitoring
3.3. Effect of the Fixing Typology on the Temperature Response of the Sensor
3.4. Thermal Response and Sensibility Tests
4. Discussion
- In the cold rolling mill, the fixed pins of backup bearings are suitable to host the fiber optics sensors to monitor the temperature of the inner rings of bearings;
- In the hot rolling mill, the system constraining the outer rings of bearings allows access to the fiber optics sensors.
- The FBG sensors look suitable for this application, although the assembling system may be critical for measurement. Particularly, the FBG sensor suffers the effect of pressure and/or of structural deformation.
- Creating a cavity where the sensor measures temperature allows uncoupling of the effect of pressure and of temperature, respectively;
- Thermal measurement may benefit from filling the cavity with either a liquid or gas. In principle, this material might consist of air bubbles, but the performance in terms of promptness and uniformity of temperature is poorly evident. Demineralized water allows surrounding the fiber and transferring heat quite fast and uniformly, although the use of water must be verified for all industrial layouts currently used.
- If the system must never be operated above 70 °C, a sacrificial layer made of thermoplastic resin, whose melting point is around 75 °C, deposed on the surface of the cavity, might help in warning the operators when the maximum temperature is reached. In principle, above 100 °C boiling could add an intuitive alarm, provided that no other problems are foreseen.
5. Conclusions
Author Contributions
Funding
Conflicts of Interest
References
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Brusa, E.; Delprete, C.; Giorio, L. Smart Manufacturing in Rolling Process Based on Thermal Safety Monitoring by Fiber Optics Sensors Equipping Mill Bearings. Appl. Sci. 2022, 12, 4186. https://doi.org/10.3390/app12094186
Brusa E, Delprete C, Giorio L. Smart Manufacturing in Rolling Process Based on Thermal Safety Monitoring by Fiber Optics Sensors Equipping Mill Bearings. Applied Sciences. 2022; 12(9):4186. https://doi.org/10.3390/app12094186
Chicago/Turabian StyleBrusa, Eugenio, Cristiana Delprete, and Lorenzo Giorio. 2022. "Smart Manufacturing in Rolling Process Based on Thermal Safety Monitoring by Fiber Optics Sensors Equipping Mill Bearings" Applied Sciences 12, no. 9: 4186. https://doi.org/10.3390/app12094186
APA StyleBrusa, E., Delprete, C., & Giorio, L. (2022). Smart Manufacturing in Rolling Process Based on Thermal Safety Monitoring by Fiber Optics Sensors Equipping Mill Bearings. Applied Sciences, 12(9), 4186. https://doi.org/10.3390/app12094186