DEVELOPMENT OF A VIBRATION AND TEMPERATURE-BASED DIGITAL TWIN FOR TEXTILE MACHINERY
Keywords:
Digital Twin; Textile Machinery; Predictive Maintenance; Vibration Analysis; Thermal Monitoring; Rotor Dynamics; Remaining Useful Life.Abstract
The textile industry relies on high-speed rotating and thermally loaded equipment such as spinning frames, carding cylinders, and weaving looms. To enhance reliability and reduce unplanned stoppages, this study develops a digital twin model of textile machinery by integrating vibration, temperature, and degradation data. A multi-sensor acquisition system records real-time signals, while a physics-based rotor dynamic model and thermal model simulate machine behavior.
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