Abstract:
Wind turbine blade bearings are often operated in harsh circumstances, which may easily be damaged causing the turbine to lose control and to further result in the reduct...Show MoreMetadata
Abstract:
Wind turbine blade bearings are often operated in harsh circumstances, which may easily be damaged causing the turbine to lose control and to further result in the reduction of energy production. However, for condition monitoring and fault diagnosis (CMFD) of wind turbine blade bearings, one of the main difficulties is that the rotation speeds of blade bearings are very slow (less than 5 r/min). Over the past few years, acoustic emission (AE) analysis has been used to carry out bearing CMFD. This article presents the results that reflect the potential of the AE analysis for diagnosing a slow-speed wind turbine blade bearing. To undertake this experiment, a 15-year-old naturally damaged industrial and slow-speed blade bearing is used for this study. However, due to very slow rotation speed conditions, the fault signals are very weak and masked by heavy noise disturbances. To denoise the raw AE signals, we propose a novel cepstrum editing method, discrete/random separation-based cepstrum editing liftering (DRS-CEL), to extract weak fault features from raw AE signals, where DRS is used to edit the cepstrum. Thereafter, the morphological envelope analysis is employed to further filter the residual noise leaked from DRS-CEL and demodulate the denoised signal, so the specific bearing fault type can be inferred in the frequency domain. The diagnostic framework combining DRS-CEL and morphological analysis is validated by comparing several methods and related studies, which offers a promising solution for wind-farm applications.
Published in: IEEE Transactions on Instrumentation and Measurement ( Volume: 69, Issue: 9, September 2020)
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- IEEE Keywords
- Index Terms
- Wind Turbine ,
- Fault Diagnosis ,
- Acoustic Emission ,
- Bearing Fault Diagnosis ,
- Acoustic Emission Analysis ,
- Morphological Analysis ,
- Frequency Domain ,
- Rotational Speed ,
- Fault Signal ,
- Wind Farm ,
- Residual Noise ,
- Slow Conditions ,
- Diagnostic Framework ,
- Reduced Energy Production ,
- Acoustic Emission Signals ,
- Weak Signal ,
- Repetition Rate ,
- Frequency Spectrum ,
- Frequency Components ,
- Independent Component Analysis ,
- Periodic Components ,
- Signal Denoising ,
- Inverse Discrete Fourier Transform ,
- Inner Ring ,
- Discrete Fourier Transform ,
- Ensemble Empirical Mode Decomposition ,
- Vibration Signals ,
- Envelope Method ,
- Diagnostic Results ,
- Raw Signal
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Wind Turbine ,
- Fault Diagnosis ,
- Acoustic Emission ,
- Bearing Fault Diagnosis ,
- Acoustic Emission Analysis ,
- Morphological Analysis ,
- Frequency Domain ,
- Rotational Speed ,
- Fault Signal ,
- Wind Farm ,
- Residual Noise ,
- Slow Conditions ,
- Diagnostic Framework ,
- Reduced Energy Production ,
- Acoustic Emission Signals ,
- Weak Signal ,
- Repetition Rate ,
- Frequency Spectrum ,
- Frequency Components ,
- Independent Component Analysis ,
- Periodic Components ,
- Signal Denoising ,
- Inverse Discrete Fourier Transform ,
- Inner Ring ,
- Discrete Fourier Transform ,
- Ensemble Empirical Mode Decomposition ,
- Vibration Signals ,
- Envelope Method ,
- Diagnostic Results ,
- Raw Signal
- Author Keywords