Multi-sensor cross-domain fault diagnosis method for leakage of ship pipeline valves

The operating environments of ship pipeline valves are complicated. A single sensor may struggle to comprehensively characterize the valve fault features. Pressure variations in the pipeline network may result in changes of the feature distribution of the valve leakage acoustic emission (AE) signals...

Full description

Saved in:
Bibliographic Details
Published inOcean engineering Vol. 299; p. 117211
Main Authors Liu, Zhengjie, Yang, Xiaohui, Xie, Yingchun, Wu, Mengmeng, Li, Zhixiong, Mu, Weilei, Liu, Guijie
Format Journal Article
LanguageEnglish
Published Elsevier Ltd 01.05.2024
Subjects
Online AccessGet full text
ISSN0029-8018
1873-5258
DOI10.1016/j.oceaneng.2024.117211

Cover

More Information
Summary:The operating environments of ship pipeline valves are complicated. A single sensor may struggle to comprehensively characterize the valve fault features. Pressure variations in the pipeline network may result in changes of the feature distribution of the valve leakage acoustic emission (AE) signals, which makes it challenging for traditional data-driven detection models to achieve satisfactory generalization performance. Unfortunately, there has been limited attention in the current literature on multi-sensor cross-domain fault diagnosis for the ship pipeline valves. To address this research gap, this study aims to develop a novel multi-sensor cross-domain fault diagnosis method. Firstly, the time-frequency-multisqueezing transform (TFMST) is employed for time-frequency analysis of the valve leakage AE signals. By accurately describing harmonic and pulse components in the AE signals, the time-frequency domain features of the valve leakage can be extracted. Subsequently, a multi-sensor deep transfer learning model based on multi-channel fusion convolutional neural network (MCFCNN) is proposed, which utilizes the domain adaptation strategy to minimize the maximum mean discrepancy between source domain data and target domain data, significantly improving the robustness of the fault detection to variations of operating environments. Experimental testing has been carried out to evaluate the performance of the proposed method, and the results indicate effective valve leakage detection. •A multi-sensor deep transfer learning fault diagnosis framework is proposed for leakage monitoring.•TFMST is utilized to generate a concentrated TFR of leakage sound emission signals from valve leaks.•A multi-sensor information fusion cross-domain fault diagnosis model is established.
ISSN:0029-8018
1873-5258
DOI:10.1016/j.oceaneng.2024.117211