DEVELOPMENT OF A VIBRATION AND TEMPERATURE-BASED DIGITAL TWIN FOR TEXTILE MACHINERY

Authors

  • Sardorbek Khonturaev TATUFF
  • Arslonbek Qayumov

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.

References

Tao, F., Qi, Q., Liu, A., & Kusiak, A. (2018). Digital twins and cyber–physical systems for future industrial systems. Engineering, 5(4), 516–523.

Grieves, M., & Vickers, J. (2017). Digital twin: Reducing uncertainty in simulation-based models. In Digital Twin Integrated Systems (pp. 85–113). Springer.

Randall, R. B. (2011). Vibration-based Condition Monitoring: Industrial, Aerospace and Automotive Applications. John Wiley & Sons.

Khonturaev, S., & Qayumov, A. (2025). ACCURATE REAL-TIME TRACKING IN GEOLOGY: A DATA-DRIVEN APPROACH. Techscience. uz-Texnika fanlarining dolzarb masalalari, 3(10), 18-21.

ISO 10816-3:2009. Mechanical vibration — Evaluation of machine vibration by measurements on non-rotating parts.

Хонтураев, С. (2025). ПРИМЕНЕНИЕ ДРОНОВ В СОВРЕМЕННОЙ ГЕОПРОСТРАНСТВЕННОЙ КАРТОГРАФИИ. Techscience. uz-Texnika fanlarining dolzarb masalalari, 3(4), 29-32.

Jardine, A. K. S., Lin, D., & Banjevic, D. (2006). A review on machinery diagnostics and prognostics implementing condition-based maintenance. Mechanical Systems and Signal Processing, 20(7), 1483–1510.

Sardorbek, K., & Shukronakhon, M. (2025). MATHEMATICAL FOUNDATIONS OF GPS AND RTK POSITIONING. Al-Farg’oniy avlodlari, 1(3), 164-168.

Mobley, R. K. (2002). An Introduction to Predictive Maintenance. Butterworth-Heinemann.

Xonto’rayev, S. (2023). IOT IN INDUSTRY 4.0: THE EVOLUTION OF SMART MANUFACTURING. In Conference on Digital Innovation:" Modern Problems and Solutions.

Khalilov, D., Bozorova, S., Khonturaev, S., Khoitkulov, A., Sotvoldieva, D., & Toshmatov, S. (2024). Self-learning system and methods of selection of weight coefficients of neural network. In E3S Web of Conferences (Vol. 508, p. 04011). EDP Sciences.

Lu, Y., Xu, X., & Wang, L. (2020). Smart manufacturing and intelligent manufacturing: A comparative review. Journal of Manufacturing Systems, 56, 332–343.

Published

2025-12-05

How to Cite

Khonturaev, S., & Qayumov, A. (2025). DEVELOPMENT OF A VIBRATION AND TEMPERATURE-BASED DIGITAL TWIN FOR TEXTILE MACHINERY. The Descendants of Al-Fargani, 1(4), 56–61. Retrieved from https://al-fargoniy.uz/index.php/journal/article/view/932

Issue

Section

Статьи

Categories

Most read articles by the same author(s)