An Intelligent Detection Logic for Fan-Blade Damage to Wind Turbines Based on Mounted-Accelerometer Data

Author:

Hsu Ming-HungORCID,Zhuang Zheng-YunORCID

Abstract

Many wind turbines operate in harsh marine or shore environments. This study assists industry by establishing a real-time condition-monitoring and fault-detection system, with rules for recognizing a wind turbine’s abnormal operation mainly caused by different types of fan-blade damage. This system can ensure ideal wind turbine operation by monitoring the health status of the blades, detecting sudden anomalies, and performing maintenance almost in real time. This is especially significant for wind farms in areas subject to frequent natural disasters (e.g., earthquakes and typhoons). Turbines might fail to endure these because the manufacturers have built them according to the standards developed for areas less prone to natural disasters. The system’s rules are established by utilising concepts and methods from data analytics, digital signal processing (DSP) and statistics to analyse data from the accelerometer, which measures the vibration signals in three dimensions on the platform of the wind turbine’s base. The patterns for those cases involving fan-blade damage are found to establish the rules. With the anomalies detected and reported effectively, repairs and maintenance can be carried out on the faulty wind turbines. This enables ‘maintenance by prediction’ actions for unplanned maintenance as a supplement to the ‘predictive maintenance’ tasks for regular planned maintenance.

Funder

Ministry of Science and Technology

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

Reference30 articles.

1. Hsu, M.H., Hsia, S.Y., Chou, Y.T., Chu, H.M., and Cheng, J.W. Fault Diagnosis of Offshore Wind Power Generation Systems, 2014.

2. Tan, J.B., and Hsu, M.H. Diagnosis of Faults in Wind Power Generation Systems. Proceedings of the IEEE Conference on Industrial Electronics and Applications (ICIEA).

3. Tan, J.B., Chao, C.C., Lin, M.C.H., and Hsu, M.H. Wind Turbine Monitoring Warning Device. Proceedings of the IEEE Conference on Industrial Electronics and Applications.

4. Benbouzid, M., Berghout, T., Sarma, N., Djurović, S., Wu, Y., and Ma, X. Intelligent Condition Monitoring of Wind Power Systems: State of the Art Review. Energies, 2021. 14.

5. Natili, F., Daga, A.P., Castellani, F., and Garibaldi, L. Multi-Scale Wind Turbine Bearings Supervision Techniques Using Industrial SCADA and Vibration Data. Appl. Sci., 2021. 11.

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