Abstract

The effective fault diagnosis in the prognostic and health management of reciprocating compressors has been a research hotspot for a long time. The vibration signal of reciprocating compressors is nonlinear and non-stationary. However, the traditional methods applied to processing such signals have three issues, including separating the useful frequency bands from overlapped signals, extracting fault features with strong subjectivity, and processing the massive data with limited learning abilities. To address the above issues, this paper, which is based on the idea of deep learning, proposed an intelligent fault diagnosis method combining Local Mean Decomposition (LMD) and the Stack Denoising Autoencoder (SDAE). The vibration signal is firstly decomposed by LMD and reconstructed based on the cross-correlation criterion. The virtual noise channel is constructed to reduce the noise of the vibration signal. Then, the de-noised signal is input into the trained SDAE model to learn the fault features adaptively. Finally, the conditions of the reciprocating compressor valve are classified by the proposed method. The results show that classification accuracy is 92.72% under the condition of a low signal-noise ratio, which is 5 percentage points higher than that of the traditional methods. This shows the effectiveness and robustness of the proposed method.

Highlights

  • Reciprocating compressor units are widely used in the petroleum and chemical industries for gas pressurization and transportation

  • Prognostics and Health Management (PHM) generally includes the ability of fault diagnosis, fault prognostics and health management; fault diagnosis is one of the most important applications in PHM

  • Tang et al [3] established a time-frequency distribution algorithm based on the concept of local frequency (LF), and applied it to the fault feature extraction of a reciprocating compressor gas valve vibration signal

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Summary

Introduction

Reciprocating compressor units are widely used in the petroleum and chemical industries for gas pressurization and transportation. Tang et al [3] established a time-frequency distribution algorithm based on the concept of local frequency (LF), and applied it to the fault feature extraction of a reciprocating compressor gas valve vibration signal. Some researchers have introduced the concept of LMD to the fault diagnosis of reciprocating compressors [22,23,24] This method reduces the endpoint effect and inaccuracy of the envelope, the follow-up studies are still based on conventional methods for vibration signal analysis and feature extraction. (3) Aiming at the problem of the dimension disaster and over-fitting in traditional machine learning-based classification algorithms, an intelligent fault diagnosis method combining LMD and SDAE is proposed.

Local Mean Decomposition
Stack Denoising Autoencoder
The Proposed Method
Data Description
Experimental setup
Fault Diagnosis Using the Proposed Method
Comparison and Analysis of Traditional Methods
Method
Findings
Conclusions
Full Text
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