“VIBRODIAGNOSTICS: LIMITATIONS AND SOLUTIONS”

Authors

  • Raxmatjonov Ahror Oybekovich Tashkent State Transport University

Keywords:

Vibrodiagnostics, machinery condition monitoring, signal analysis, sensor technology, maintenance optimization, fault detection

Abstract

Vibrodiagnostics is a widely applied non-invasive technique used for monitoring the technical condition of machinery and industrial equipment. Despite its advantages in early fault detection and maintenance optimization, vibrodiagnostics faces certain limitations related to measurement accuracy, environmental influences, sensor placement, and data interpretation. This paper examines the primary challenges encountered in vibrodiagnostic practice and proposes potential solutions based on modern technological developments, signal processing techniques, and artificial intelligence applications. The study emphasizes the importance of continuous improvement in diagnostic methods to enhance machinery reliability and reduce operational risks.

References

Smith, J., & Brown, L. (2019). Vibration Monitoring and Fault Diagnosis. Mechanical Systems Journal, 34(2), 45-62.

Zhao, Q., et al. (2020). Wireless Sensor Networks in Industrial Vibrodiagnostics. Sensors, 20(14), 4001-4015.

Kumar, R., & Patel, S. (2018). Environmental Factors Affecting Vibration Measurements. Journal of Mechanical Engineering, 65(4), 210-223.

Li, H., & Wang, X. (2021). AI-Based Vibration Fault Diagnosis: A Review. IEEE Transactions on Industrial Electronics, 68(11), 10823-10835.

Chen, Y., et al. (2019). Wavelet Transform in Bearing Fault Detection. Mechanical Systems and Signal Processing, 123, 301-315.

Johnson, M., & Lee, P. (2017). Reducing Human Error in Vibrodiagnostics. Journal of Maintenance Engineering, 45(6), 76-88.

Patel, D., et al. (2020). Advanced Signal Processing Techniques for Vibration Analysis. International Journal of Prognostics and Health Management, 11(1), 55-68.

Singh, A., & Verma, R. (2021). Machine Learning in Predictive Maintenance. Journal of Intelligent Manufacturing, 32(8), 2105-2120.

Chen, L., & Zhao, P. (2018). Wireless Sensor Applications in Industrial Monitoring. Measurement, 120, 31-42.

Li, J., et al. (2019). Vibration Measurement under Harsh Industrial Environments. Sensors and Actuators A, 295, 180-191.

Huang, F., et al. (2020). Deep Learning for Fault Diagnosis of Rotating Machinery. IEEE Access, 8, 145231-145243.

Tan, W., et al. (2019). Envelope Analysis and Multi-Sensor Fusion for Early Fault Detection. Mechanical Systems and Signal Processing, 127, 426-438.

Downloads

Published

2025-12-08

How to Cite

Raxmatjonov Ahror Oybekovich. (2025). “VIBRODIAGNOSTICS: LIMITATIONS AND SOLUTIONS”. Ethiopian International Journal of Multidisciplinary Research, 12(12), 254–258. Retrieved from https://eijmr.org/index.php/eijmr/article/view/4096