Machine health condition prediction via online dynamic fuzzy neural networks

Machine health condition (MHC) prediction is useful for preventing unexpected failures and minimizing overall maintenance costs in condition-based maintenance. The neural network (NN)-based data-driven method has been considered to be promising for MHC prediction due to the adaptability, nonlinearit...

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Main Authors: Pan, Yongping, Er, Meng Joo, Li, Xiang, Yu, Haoyong, Gouriveau, Rafael
Other Authors: School of Electrical and Electronic Engineering
Format: Article
Language:English
Published: 2016
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Online Access:https://hdl.handle.net/10356/84935
http://hdl.handle.net/10220/40893
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-849352020-03-07T12:47:12Z Machine health condition prediction via online dynamic fuzzy neural networks Pan, Yongping Er, Meng Joo Li, Xiang Yu, Haoyong Gouriveau, Rafael School of Electrical and Electronic Engineering A*STAR SIMTech Fuzzy neural network Machine health condition Machine health condition (MHC) prediction is useful for preventing unexpected failures and minimizing overall maintenance costs in condition-based maintenance. The neural network (NN)-based data-driven method has been considered to be promising for MHC prediction due to the adaptability, nonlinearity and universal approximation capability of NNs. This paper presents an online MHC prediction approach using online dynamic fuzzy NNs (OD-FNNs) with structure and parameters learning. To meet the requirement of real-time application, the original OD-FNN is simplified based on an extreme learning machine technique as follows: (1) initial fuzzy rules are randomly generated without the knowledge of training data; (2) fuzzy rules are added and pruned uniformly by fired strength-based criteria; (3) antecedent parameters are fixed after generation so that only consequent parameters are updated online. The modified OD-FNN is particularly suitable for MHC prediction since: (1) fuzzy rules can evolve as new training datum arrives, which enables us to cope with non-stationary processes in MHC; (2) learning mechanisms applied are simple and efficient for real-time implementation. The validity and superiority of the proposed MHC prediction approach has been evaluated by real-world monitoring data from the accelerated bearing life. ASTAR (Agency for Sci., Tech. and Research, S’pore) 2016-07-04T09:05:04Z 2019-12-06T15:53:56Z 2016-07-04T09:05:04Z 2019-12-06T15:53:56Z 2014 Journal Article Pan, Y., Er, M. J., Li, X., Yu, H., & Gouriveau, R. (2014). Machine health condition prediction via online dynamic fuzzy neural networks. Engineering Applications of Artificial Intelligence, 35, 105-113. 0952-1976 https://hdl.handle.net/10356/84935 http://hdl.handle.net/10220/40893 10.1016/j.engappai.2014.05.015 en Engineering Applications of Artificial Intelligence © 2014 Elsevier.
institution Nanyang Technological University
building NTU Library
country Singapore
collection DR-NTU
language English
topic Fuzzy neural network
Machine health condition
spellingShingle Fuzzy neural network
Machine health condition
Pan, Yongping
Er, Meng Joo
Li, Xiang
Yu, Haoyong
Gouriveau, Rafael
Machine health condition prediction via online dynamic fuzzy neural networks
description Machine health condition (MHC) prediction is useful for preventing unexpected failures and minimizing overall maintenance costs in condition-based maintenance. The neural network (NN)-based data-driven method has been considered to be promising for MHC prediction due to the adaptability, nonlinearity and universal approximation capability of NNs. This paper presents an online MHC prediction approach using online dynamic fuzzy NNs (OD-FNNs) with structure and parameters learning. To meet the requirement of real-time application, the original OD-FNN is simplified based on an extreme learning machine technique as follows: (1) initial fuzzy rules are randomly generated without the knowledge of training data; (2) fuzzy rules are added and pruned uniformly by fired strength-based criteria; (3) antecedent parameters are fixed after generation so that only consequent parameters are updated online. The modified OD-FNN is particularly suitable for MHC prediction since: (1) fuzzy rules can evolve as new training datum arrives, which enables us to cope with non-stationary processes in MHC; (2) learning mechanisms applied are simple and efficient for real-time implementation. The validity and superiority of the proposed MHC prediction approach has been evaluated by real-world monitoring data from the accelerated bearing life.
author2 School of Electrical and Electronic Engineering
author_facet School of Electrical and Electronic Engineering
Pan, Yongping
Er, Meng Joo
Li, Xiang
Yu, Haoyong
Gouriveau, Rafael
format Article
author Pan, Yongping
Er, Meng Joo
Li, Xiang
Yu, Haoyong
Gouriveau, Rafael
author_sort Pan, Yongping
title Machine health condition prediction via online dynamic fuzzy neural networks
title_short Machine health condition prediction via online dynamic fuzzy neural networks
title_full Machine health condition prediction via online dynamic fuzzy neural networks
title_fullStr Machine health condition prediction via online dynamic fuzzy neural networks
title_full_unstemmed Machine health condition prediction via online dynamic fuzzy neural networks
title_sort machine health condition prediction via online dynamic fuzzy neural networks
publishDate 2016
url https://hdl.handle.net/10356/84935
http://hdl.handle.net/10220/40893
_version_ 1681041067064950784