Litcius/Paper detail

Early warning of damaged wind turbine blades using spatial–temporal spectral analysis of acoustic emission signals

Xiang Pan, Zhongdi Liu, Rong Xu, Jiehong Luo, Yining Shen, Jianjun Qiu, Liqiang Qi, Linxin Chen

2022Journal of Sound and Vibration33 citationsDOIOpen Access PDF

Abstract

A spatial–temporal processing framework is proposed to forecast the wind turbine blade damage in the early stage. The sparse Bayesian learning beamforming (SBL) is applied to data received by a microphone array for enhancement of weak signals and suppressing interference of environmental noise. Then short-time Fourier transform (STFT) is utilized to create a time–frequency spectrum and analyze the nonstationarity of acoustic emission signals. The period of radiation energy change and the cyclic modulation spectrum (CMS) are respectively calculated from the time–frequency spectrum. Blade fault detection is performed based on whether or not the presence of the periodicity or cyclostationary signatures in acoustic emission signals. Numerical simulations have shown that the natural frequencies of acoustic emission signals tend to decrease when there is a hole on the blade surface. The experimental results have verified the effectiveness and robustness of the proposed blade damage detection method.

Topics & Concepts

Acoustic emissionAcousticsRobustness (evolution)Short-time Fourier transformTime–frequency analysisMicrophoneFourier transformComputer sciencePhysicsFourier analysisSound pressureTelecommunicationsQuantum mechanicsBiochemistryRadarGeneChemistryStructural Health Monitoring TechniquesUltrasonics and Acoustic Wave PropagationMachine Fault Diagnosis Techniques