Litcius/Paper detail

An Improved Multiple Signal Classification for Nonuniform Sampling in Blade Tip Timing

Zengkun Wang, Zhibo Yang, Shuming Wu, Haoqi Li, Shaohua Tian, Xuefeng Chen

2020IEEE Transactions on Instrumentation and Measurement108 citationsDOI

Abstract

Blade tip timing (BTT) is an effective noncontact measurement technology for rotating blade health monitoring. However, due to the mismatching between the high-speed rotation and the limited amount of probes, the signal collected from the BTT system is severely undersampled, which induces the difficulty in feature extraction. Multiple signal classification (MUSIC) has the potential to overcome the undersampled problem once the probes are properly placed. Whereas, if traditional MUSIC is directly used in BTT, the accuracy of frequency identification cannot be high enough and the identified number of frequency components is also severely restrained. To address these two problems, an improved MUSIC is proposed as an alternative methodology to extract the blade vibration frequency for BTT. Based on the orthogonality of the signal subspace and the noise subspace from undersampled signal, the presented method can effectively identify the vibration frequency components from the undersampled signal of BTT.

Topics & Concepts

SIGNAL (programming language)Blade (archaeology)Signal subspaceOrthogonalityNoise (video)AcousticsSignal reconstructionComputer scienceSubspace topologySampling (signal processing)VibrationFeature extractionTime–frequency analysisSignal processingElectronic engineeringArtificial intelligenceEngineeringMathematicsComputer visionPhysicsTelecommunicationsRadarStructural engineeringFilter (signal processing)GeometryProgramming languageImage (mathematics)Bladed Disk Vibration DynamicsStructural Health Monitoring TechniquesMachine Fault Diagnosis Techniques