A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram

Center spring wear faults in hydraulic pumps can cause fluid pressure fluctuations at the outlet, and the fault feature information on fluctuations is often contaminated by different types of fluid flow interferences. Aiming to resolve the above problems, a fluid pressure signal method for hydraulic...

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Bibliographic Details
Main Authors: Zhi Zheng, Xianze Li, Yong Zhu
Format: Article
Language:English
Published: MDPI AG 2019-10-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/7/10/695
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spelling doaj-17a0b523633743698163d2d2139bef432020-11-25T00:12:29ZengMDPI AGProcesses2227-97172019-10-0171069510.3390/pr7100695pr7100695A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on AutogramZhi Zheng0Xianze Li1Yong Zhu2College of Mechanical Engineering, North China University of Science and Technology, Tangshan 063210, ChinaCollege of Mechanical Engineering, North China University of Science and Technology, Tangshan 063210, ChinaNational Research Center of Pumps, Jiangsu University, Zhenjiang 212013, ChinaCenter spring wear faults in hydraulic pumps can cause fluid pressure fluctuations at the outlet, and the fault feature information on fluctuations is often contaminated by different types of fluid flow interferences. Aiming to resolve the above problems, a fluid pressure signal method for hydraulic pumps based on Autogram was applied to extract the fault feature information. Firstly, maximal overlap discrete wavelet packet transform (MODWPT) was adopted to decompose the contaminated fault pressure signal of center spring wear. Secondly, based on the squared envelope of each node, three kinds of kurtosis of unbiased autocorrelation (AC) were computed in order to describe the fault feature information comprehensively. These are known as standard Autogram, upper Autogram and lower Autogram. Then a node corresponding to the biggest kurtosis value was selected as a data source for further spectrum analysis. Lastly, the data source was processed by threshold values, and then the fault could be diagnosed based on the fluid pressure signal.https://www.mdpi.com/2227-9717/7/10/695hydraulic pumpfeature extractionfluid pressureautogramkurtosis
collection DOAJ
language English
format Article
sources DOAJ
author Zhi Zheng
Xianze Li
Yong Zhu
spellingShingle Zhi Zheng
Xianze Li
Yong Zhu
A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
Processes
hydraulic pump
feature extraction
fluid pressure
autogram
kurtosis
author_facet Zhi Zheng
Xianze Li
Yong Zhu
author_sort Zhi Zheng
title A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
title_short A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
title_full A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
title_fullStr A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
title_full_unstemmed A Fault Feature Extraction Method for the Fluid Pressure Signal of Hydraulic Pumps Based on Autogram
title_sort fault feature extraction method for the fluid pressure signal of hydraulic pumps based on autogram
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2019-10-01
description Center spring wear faults in hydraulic pumps can cause fluid pressure fluctuations at the outlet, and the fault feature information on fluctuations is often contaminated by different types of fluid flow interferences. Aiming to resolve the above problems, a fluid pressure signal method for hydraulic pumps based on Autogram was applied to extract the fault feature information. Firstly, maximal overlap discrete wavelet packet transform (MODWPT) was adopted to decompose the contaminated fault pressure signal of center spring wear. Secondly, based on the squared envelope of each node, three kinds of kurtosis of unbiased autocorrelation (AC) were computed in order to describe the fault feature information comprehensively. These are known as standard Autogram, upper Autogram and lower Autogram. Then a node corresponding to the biggest kurtosis value was selected as a data source for further spectrum analysis. Lastly, the data source was processed by threshold values, and then the fault could be diagnosed based on the fluid pressure signal.
topic hydraulic pump
feature extraction
fluid pressure
autogram
kurtosis
url https://www.mdpi.com/2227-9717/7/10/695
work_keys_str_mv AT zhizheng afaultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
AT xianzeli afaultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
AT yongzhu afaultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
AT zhizheng faultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
AT xianzeli faultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
AT yongzhu faultfeatureextractionmethodforthefluidpressuresignalofhydraulicpumpsbasedonautogram
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