Fault Diagnosis of Check Valve Based on KPLS Optimal Feature Selection and Kernel Extreme Learning Machine

Author:

Yuan XuyiORCID,Fan Yugang,Zhou ChengjiangORCID,Wang Xiaodong,Zhang Guanghui

Abstract

The check valve is the core part of high-pressure diaphragm pumps. It has complex operation conditions and has difficulty characterizing fault states completely with its single feature. Therefore, a fault signal diagnosis model based on the kernel extreme learning machine (KELM) was constructed to diagnose the check valve. The model adopts a multi-feature extraction method and reduces dimensionality through kernel partial least squares (KPLS). Firstly, we divided the check valve vibration signal into several non-overlapping samples. Then, we extracted 16 time-domain features, 13 frequency-domain features, 16 wavelet packet energy features, and energy entropy features from each sample to construct a multi-feature set characterizing the operation state of the check valve. Next, we used the KPLS method to optimize the 45 dimension multi-feature data and employed the processed feature set to establish a KELM fault diagnosis model. Experiments showed that the method based on KPLS optimal feature selection could fully characterize the operating state of the equipment with an accuracy rate of 96.88%. This result indicates the high accuracy and effectiveness of the multi-feature set constructed with the KELM fault diagnosis model.

Funder

Open Research Project of the State Key Laboratory of Industrial Control Technology, Zhejiang University, China

Publisher

MDPI AG

Subject

Materials Chemistry,Surfaces, Coatings and Films,Surfaces and Interfaces

Reference24 articles.

1. Mechanical fault diagnosis using Convolutional Neural Networks and Extreme Learning Machine

2. Fault classification method for rolling bearings based on the mlllti-feature extraction and modified Mahalanobis-Taguchi system;Peng;J. Vib. Shock,2020

3. Fault diagnosis of diesel engines based on wavelet packet energy spectrum feature extraction and fuzzy entropy feature selection;Jiang;J. Vib. Shock,2020

4. Study of scintillation detector fault diagnosis based on ELM method

5. Remaining Useful Life Estimation for Ball Bearings Using Feature Engineering and Extreme Learning Machine

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