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Tribological behaviour diagnostic and fault detection of mechanical seals based on acoustic emission measurements

Tribological behaviour diagnostic and fault detection of mechanical seals based on acoustic emission measurements
Tribological behaviour diagnostic and fault detection of mechanical seals based on acoustic emission measurements
Acoustic emission (AE) has been studied for monitoring the condition of mechanical seals by many researchers, however to the best knowledge of the authors, typical fault cases and their effects on tribological behaviour of mechanical seals have not yet been successfully investigated. In this paper, AE signatures from common faults of mechanical seals are studied in association with tribological behaviour of sealing gap to develop more reliable condition monitoring approaches. A purpose-built test rig was employed for recording AE signals from the mechanical seals under healthy and faulty conditions. The collected data was then processed using time domain and frequency domain analysis methods. The study has shown that AE signal parameters: root mean squared (RMS) along with AE spectrum, allows fault conditions including dry running, spring out and defective seal faces to be diagnosed under a wide range of operating conditions. However, when mechanical seals operate around their transition point, conventional signal processing methods may not allow a clear separation of the fault conditions from the healthy baseline. Therefore an auto-regressive (AR) model has been developed on recorded AE signals to classify different fault conditions of mechanical seals and satisfactory results have been perceived.
572-586
Towsyfyan, Hossein
f1f4fa2a-20e4-4519-a66b-2faecb50173d
Gu, Fengshou
41caa8bd-19cf-4932-b4e4-eb7a1855ee0c
Ball, Andrew D.
cdc41e1b-088d-4d4e-95e0-89daf961ded3
Liang, Bo
82898b3a-f814-4dcd-97d3-9d19e32a5910
Towsyfyan, Hossein
f1f4fa2a-20e4-4519-a66b-2faecb50173d
Gu, Fengshou
41caa8bd-19cf-4932-b4e4-eb7a1855ee0c
Ball, Andrew D.
cdc41e1b-088d-4d4e-95e0-89daf961ded3
Liang, Bo
82898b3a-f814-4dcd-97d3-9d19e32a5910

Towsyfyan, Hossein, Gu, Fengshou, Ball, Andrew D. and Liang, Bo (2019) Tribological behaviour diagnostic and fault detection of mechanical seals based on acoustic emission measurements. Friction, 7, 572-586. (doi:10.1007/s40544-018-0244-4).

Record type: Article

Abstract

Acoustic emission (AE) has been studied for monitoring the condition of mechanical seals by many researchers, however to the best knowledge of the authors, typical fault cases and their effects on tribological behaviour of mechanical seals have not yet been successfully investigated. In this paper, AE signatures from common faults of mechanical seals are studied in association with tribological behaviour of sealing gap to develop more reliable condition monitoring approaches. A purpose-built test rig was employed for recording AE signals from the mechanical seals under healthy and faulty conditions. The collected data was then processed using time domain and frequency domain analysis methods. The study has shown that AE signal parameters: root mean squared (RMS) along with AE spectrum, allows fault conditions including dry running, spring out and defective seal faces to be diagnosed under a wide range of operating conditions. However, when mechanical seals operate around their transition point, conventional signal processing methods may not allow a clear separation of the fault conditions from the healthy baseline. Therefore an auto-regressive (AR) model has been developed on recorded AE signals to classify different fault conditions of mechanical seals and satisfactory results have been perceived.

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More information

Accepted/In Press date: 27 August 2018
e-pub ahead of print date: 6 November 2018
Published date: December 2019

Identifiers

Local EPrints ID: 426435
URI: http://eprints.soton.ac.uk/id/eprint/426435
PURE UUID: 604b5fb0-2d1d-43ae-852b-6cef6e8f404d

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Date deposited: 27 Nov 2018 17:30
Last modified: 15 Mar 2024 22:54

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Contributors

Author: Hossein Towsyfyan
Author: Fengshou Gu
Author: Andrew D. Ball
Author: Bo Liang

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