Litcius/Paper detail

Feature Mode Decomposition: New Decomposition Theory for Rotating Machinery Fault Diagnosis

Yonghao Miao, Boyao Zhang, Chenhui Li, Jing Lin, Dayi Zhang

2022IEEE Transactions on Industrial Electronics438 citationsDOI

Abstract

In this article, a new decomposition theory, feature mode decomposition (FMD), is tailored for the feature extraction of machinery fault. The proposed FMD is essentially for the purpose of decomposing the different modes by the designed adaptive finite-impulse response (FIR) filters. Benefitting from the superiority of correlated Kurtosis, FMD takes the impulsiveness and periodicity of fault signal into consideration simultaneously. First, a designed FIR filter bank by Hanning window initialization is used to provide a direction for the decomposition. The period estimation and updating process are then used to lock the fault information. Finally, the redundant and mixing modes are removed in the process of mode selection. The superiority of the FMD is demonstrated to adaptively and accurately decompose the fault mode as well as robust to other interferences and noise using simulated and experimental data collected from bearing single and compound fault. Moreover, it has been demonstrated that FMD has superiority in feature extraction of machinery fault compared with the most popular variational mode decomposition.

Topics & Concepts

Feature extractionInitializationFinite impulse responsePattern recognition (psychology)Fault (geology)Hilbert–Huang transformControl theory (sociology)Computer scienceFeature selectionArtificial intelligenceAlgorithmFilter bankFilter (signal processing)Computer visionGeologyControl (management)SeismologyProgramming languageMachine Fault Diagnosis TechniquesFault Detection and Control SystemsEngineering Diagnostics and Reliability