A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis

Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along engine gas path to accurately identify engine performance failure. The rapid development of information processing technology has led to the use of multiple-source information fusion for fault diagnos...

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Main Authors: Feng Lu, Chunyu Jiang, Jinquan Huang, Yafan Wang, Chengxin You
Format: Article
Language:English
Published: MDPI AG 2016-10-01
Series:Energies
Subjects:
Online Access:http://www.mdpi.com/1996-1073/9/10/828
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spelling doaj-7fb0ebfabac64b21b30c7f434dcc882b2020-11-24T23:46:19ZengMDPI AGEnergies1996-10732016-10-0191082810.3390/en9100828en9100828A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault DiagnosisFeng Lu0Chunyu Jiang1Jinquan Huang2Yafan Wang3Chengxin You4Jiangsu Province Key Laboratory of Aerospace Power Systems, College of Energy & Power Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, Jiangsu, ChinaJiangsu Province Key Laboratory of Aerospace Power Systems, College of Energy & Power Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, Jiangsu, ChinaJiangsu Province Key Laboratory of Aerospace Power Systems, College of Energy & Power Engineering, Nanjing University of Aeronautics and Astronautics, Nanjing 210016, Jiangsu, ChinaAviation Motor Control System Institute, Aviation Industry Corporation of China, Wuxi 214063, Jiangsu, ChinaAviation Motor Control System Institute, Aviation Industry Corporation of China, Wuxi 214063, Jiangsu, ChinaGas path fault diagnosis involves the effective utilization of condition-based sensor signals along engine gas path to accurately identify engine performance failure. The rapid development of information processing technology has led to the use of multiple-source information fusion for fault diagnostics. Numerous efforts have been paid to develop data-based fusion methods, such as neural networks fusion, while little research has focused on fusion architecture or the fusion of different method kinds. In this paper, a data hierarchical fusion using improved weighted Dempster–Shaffer evidence theory (WDS) is proposed, and the integration of data-based and model-based methods is presented for engine gas-path fault diagnosis. For the purpose of simplifying learning machine typology, a recursive reduced kernel based extreme learning machine (RR-KELM) is developed to produce the fault probability, which is considered as the data-based evidence. Meanwhile, the model-based evidence is achieved using particle filter-fuzzy logic algorithm (PF-FL) by engine health estimation and component fault location in feature level. The outputs of two evidences are integrated using WDS evidence theory in decision level to reach a final recognition decision of gas-path fault pattern. The characteristics and advantages of two evidences are analyzed and used as guidelines for data hierarchical fusion framework. Our goal is that the proposed methodology provides much better performance of gas-path fault diagnosis compared to solely relying on data-based or model-based method. The hierarchical fusion framework is evaluated in terms to fault diagnosis accuracy and robustness through a case study involving fault mode dataset of a turbofan engine that is generated by the general gas turbine simulation. These applications confirm the effectiveness and usefulness of the proposed approach.http://www.mdpi.com/1996-1073/9/10/828gas turbineperformance fault diagnosisdata fusionextreme learning machineevidence theory
collection DOAJ
language English
format Article
sources DOAJ
author Feng Lu
Chunyu Jiang
Jinquan Huang
Yafan Wang
Chengxin You
spellingShingle Feng Lu
Chunyu Jiang
Jinquan Huang
Yafan Wang
Chengxin You
A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
Energies
gas turbine
performance fault diagnosis
data fusion
extreme learning machine
evidence theory
author_facet Feng Lu
Chunyu Jiang
Jinquan Huang
Yafan Wang
Chengxin You
author_sort Feng Lu
title A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
title_short A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
title_full A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
title_fullStr A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
title_full_unstemmed A Novel Data Hierarchical Fusion Method for Gas Turbine Engine Performance Fault Diagnosis
title_sort novel data hierarchical fusion method for gas turbine engine performance fault diagnosis
publisher MDPI AG
series Energies
issn 1996-1073
publishDate 2016-10-01
description Gas path fault diagnosis involves the effective utilization of condition-based sensor signals along engine gas path to accurately identify engine performance failure. The rapid development of information processing technology has led to the use of multiple-source information fusion for fault diagnostics. Numerous efforts have been paid to develop data-based fusion methods, such as neural networks fusion, while little research has focused on fusion architecture or the fusion of different method kinds. In this paper, a data hierarchical fusion using improved weighted Dempster–Shaffer evidence theory (WDS) is proposed, and the integration of data-based and model-based methods is presented for engine gas-path fault diagnosis. For the purpose of simplifying learning machine typology, a recursive reduced kernel based extreme learning machine (RR-KELM) is developed to produce the fault probability, which is considered as the data-based evidence. Meanwhile, the model-based evidence is achieved using particle filter-fuzzy logic algorithm (PF-FL) by engine health estimation and component fault location in feature level. The outputs of two evidences are integrated using WDS evidence theory in decision level to reach a final recognition decision of gas-path fault pattern. The characteristics and advantages of two evidences are analyzed and used as guidelines for data hierarchical fusion framework. Our goal is that the proposed methodology provides much better performance of gas-path fault diagnosis compared to solely relying on data-based or model-based method. The hierarchical fusion framework is evaluated in terms to fault diagnosis accuracy and robustness through a case study involving fault mode dataset of a turbofan engine that is generated by the general gas turbine simulation. These applications confirm the effectiveness and usefulness of the proposed approach.
topic gas turbine
performance fault diagnosis
data fusion
extreme learning machine
evidence theory
url http://www.mdpi.com/1996-1073/9/10/828
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