Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis

Hydraulic brake in automobile engineering is considered to be one of the important components. Condition monitoring and fault diagnosis of such a component is very essential for safety of passengers, vehicles and to minimize the unexpected maintenance time. Vibration based machine learning approach...

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Main Authors: V. Indira, R. Vasanthakumari, R. Jegadeeshwaran, V. Sugumaran
Format: Article
Language:English
Published: Elsevier 2015-03-01
Series:Engineering Science and Technology, an International Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2215098614000780
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spelling doaj-e2bd2675257744c7a1be90791276e0f62020-11-25T02:41:36ZengElsevierEngineering Science and Technology, an International Journal2215-09862015-03-01181596910.1016/j.jestch.2014.09.007Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysisV. Indira0R. Vasanthakumari1R. Jegadeeshwaran2V. Sugumaran3Department of Mathematics, Sri Manakula Vinayagar Engineering College, Madagadipet, Puducherry, IndiaDepartment of Mathematics, Villianur College for Women, Villianur, Puducherry, IndiaSchool of Mechanical and Building Sciences, VIT University Chennai Campus, Chennai 600127, IndiaSchool of Mechanical and Building Sciences, VIT University Chennai Campus, Chennai 600127, IndiaHydraulic brake in automobile engineering is considered to be one of the important components. Condition monitoring and fault diagnosis of such a component is very essential for safety of passengers, vehicles and to minimize the unexpected maintenance time. Vibration based machine learning approach for condition monitoring of hydraulic brake system is gaining momentum. Training and testing the classifier are two important activities in the process of feature classification. This study proposes a systematic statistical method called power analysis to find the minimum number of samples required to train the classifier with statistical stability so as to get good classification accuracy. Descriptive statistical features have been used and the more contributing features have been selected by using C4.5 decision tree algorithm. The results of power analysis have also been verified using a decision tree algorithm namely, C4.5.http://www.sciencedirect.com/science/article/pii/S2215098614000780Fault diagnosisMachine learningPower analysisVibration signalsMinimum sample sizeStatistical features
collection DOAJ
language English
format Article
sources DOAJ
author V. Indira
R. Vasanthakumari
R. Jegadeeshwaran
V. Sugumaran
spellingShingle V. Indira
R. Vasanthakumari
R. Jegadeeshwaran
V. Sugumaran
Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
Engineering Science and Technology, an International Journal
Fault diagnosis
Machine learning
Power analysis
Vibration signals
Minimum sample size
Statistical features
author_facet V. Indira
R. Vasanthakumari
R. Jegadeeshwaran
V. Sugumaran
author_sort V. Indira
title Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
title_short Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
title_full Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
title_fullStr Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
title_full_unstemmed Determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
title_sort determination of minimum sample size for fault diagnosis of automobile hydraulic brake system using power analysis
publisher Elsevier
series Engineering Science and Technology, an International Journal
issn 2215-0986
publishDate 2015-03-01
description Hydraulic brake in automobile engineering is considered to be one of the important components. Condition monitoring and fault diagnosis of such a component is very essential for safety of passengers, vehicles and to minimize the unexpected maintenance time. Vibration based machine learning approach for condition monitoring of hydraulic brake system is gaining momentum. Training and testing the classifier are two important activities in the process of feature classification. This study proposes a systematic statistical method called power analysis to find the minimum number of samples required to train the classifier with statistical stability so as to get good classification accuracy. Descriptive statistical features have been used and the more contributing features have been selected by using C4.5 decision tree algorithm. The results of power analysis have also been verified using a decision tree algorithm namely, C4.5.
topic Fault diagnosis
Machine learning
Power analysis
Vibration signals
Minimum sample size
Statistical features
url http://www.sciencedirect.com/science/article/pii/S2215098614000780
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AT rvasanthakumari determinationofminimumsamplesizeforfaultdiagnosisofautomobilehydraulicbrakesystemusingpoweranalysis
AT rjegadeeshwaran determinationofminimumsamplesizeforfaultdiagnosisofautomobilehydraulicbrakesystemusingpoweranalysis
AT vsugumaran determinationofminimumsamplesizeforfaultdiagnosisofautomobilehydraulicbrakesystemusingpoweranalysis
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