Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis

Fault diagnosis is essentially the identification of multiple fault modes. How to extract sensitive features and improve diagnostic accuracy is the key to fault diagnosis. In this paper, a new manifold learning method (Mass Laplacian Discriminant Analysis, MLDA) is proposed. Firstly, it is assumed t...

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Main Authors: Guangbin Wang, Ying Lv, Tengqiang Wang, Xiaohui Wang, Huanke Cheng
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:Shock and Vibration
Online Access:http://dx.doi.org/10.1155/2020/8826419
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spelling doaj-d557f77343b74939a83917ef0a7b65362020-11-25T03:23:36ZengHindawi LimitedShock and Vibration1070-96221875-92032020-01-01202010.1155/2020/88264198826419Mass Laplacian Discriminant Analysis and Its Application in Gear Fault DiagnosisGuangbin Wang0Ying Lv1Tengqiang Wang2Xiaohui Wang3Huanke Cheng4College of Mechanical Engineering, Lingnan Normal University, Zhanjiang 524048, ChinaCollege of Mechanical Engineering, Lingnan Normal University, Zhanjiang 524048, ChinaMechanical and Electrical Engineering, Hunan University of Science & Technology, Xiangtan 411210, ChinaCollege of Mechanical Engineering, Lingnan Normal University, Zhanjiang 524048, ChinaHunan Key Laboratory of Health Maintenance for Mechanical Equipment, Hunan University of Science & Technology, Xiangtan 411210, ChinaFault diagnosis is essentially the identification of multiple fault modes. How to extract sensitive features and improve diagnostic accuracy is the key to fault diagnosis. In this paper, a new manifold learning method (Mass Laplacian Discriminant Analysis, MLDA) is proposed. Firstly, it is assumed that each data point in the space is a point with mass, and the mass is defined as the number of data points in a certain area. Then, the idea of universal gravitation is introduced to calculate the virtual universal gravitation between data points. Based on the Laplace eigenmaps algorithm, the gravitational Laplacian matrix between the same kind of data and the heterogeneous data is obtained, and the discriminant function is constructed by the ratio of the virtual gravitation between the heterogeneous data and the virtual gravitation between the similar data; the projection function with the largest discriminant function value is the optimal feature mapping function. Finally, based on the mapping function, the eigenvalues of the training data and the test data are calculated, and the softmax algorithm is used to classify the test data. Experiments on gear fault diagnosis show that this method has higher diagnostic accuracy than other manifold learning algorithms.http://dx.doi.org/10.1155/2020/8826419
collection DOAJ
language English
format Article
sources DOAJ
author Guangbin Wang
Ying Lv
Tengqiang Wang
Xiaohui Wang
Huanke Cheng
spellingShingle Guangbin Wang
Ying Lv
Tengqiang Wang
Xiaohui Wang
Huanke Cheng
Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
Shock and Vibration
author_facet Guangbin Wang
Ying Lv
Tengqiang Wang
Xiaohui Wang
Huanke Cheng
author_sort Guangbin Wang
title Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
title_short Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
title_full Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
title_fullStr Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
title_full_unstemmed Mass Laplacian Discriminant Analysis and Its Application in Gear Fault Diagnosis
title_sort mass laplacian discriminant analysis and its application in gear fault diagnosis
publisher Hindawi Limited
series Shock and Vibration
issn 1070-9622
1875-9203
publishDate 2020-01-01
description Fault diagnosis is essentially the identification of multiple fault modes. How to extract sensitive features and improve diagnostic accuracy is the key to fault diagnosis. In this paper, a new manifold learning method (Mass Laplacian Discriminant Analysis, MLDA) is proposed. Firstly, it is assumed that each data point in the space is a point with mass, and the mass is defined as the number of data points in a certain area. Then, the idea of universal gravitation is introduced to calculate the virtual universal gravitation between data points. Based on the Laplace eigenmaps algorithm, the gravitational Laplacian matrix between the same kind of data and the heterogeneous data is obtained, and the discriminant function is constructed by the ratio of the virtual gravitation between the heterogeneous data and the virtual gravitation between the similar data; the projection function with the largest discriminant function value is the optimal feature mapping function. Finally, based on the mapping function, the eigenvalues of the training data and the test data are calculated, and the softmax algorithm is used to classify the test data. Experiments on gear fault diagnosis show that this method has higher diagnostic accuracy than other manifold learning algorithms.
url http://dx.doi.org/10.1155/2020/8826419
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