Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral

In order to improve and enhance the prediction accuracy and efficiency of aero-generator running trend, grasp its running condition, and avoid accidents happening, in this paper, auto-regressive and moving average model (ARMA) and least squares support vector machine (LSSVM) which are used to predic...

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Main Authors: Jianguo Cui, Huihua Li, Mingyue Yu, Liying Jiang, Wei Zheng
Format: Article
Language:English
Published: JVE International 2017-08-01
Series:Journal of Vibroengineering
Subjects:
PSO
Online Access:https://www.jvejournals.com/article/17917
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spelling doaj-fd85b265d6174669bc2e600a699438fe2020-11-24T21:38:03ZengJVE InternationalJournal of Vibroengineering1392-87162538-84602017-08-011953349336310.21595/jve.2017.1791717917Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integralJianguo Cui0Huihua Li1Mingyue Yu2Liying Jiang3Wei Zheng4Shenyang Aerospace University, Shenyang, ChinaShenyang Aerospace University, Shenyang, ChinaShenyang Aerospace University, Shenyang, ChinaShenyang Aerospace University, Shenyang, ChinaShanghai Aero Measurement and Control Technology Research Institute Aviation Key Laboratory of Science and Technology on Fault Diagnosis and Health Management, Shanghai, ChinaIn order to improve and enhance the prediction accuracy and efficiency of aero-generator running trend, grasp its running condition, and avoid accidents happening, in this paper, auto-regressive and moving average model (ARMA) and least squares support vector machine (LSSVM) which are used to predict its running trend have been optimized using particle swarm optimization (PSO) based on using features found in real aero-generator life test, which lasts a long period of time on specialized test platform and collects mass data that reflects aero-generator characteristics, to build new models of PSO-ARMA and PSO-LSSVM. And we use fuzzy integral methodology to carry out decision fusion of the predicted results of these two new models. The research shows that the prediction accuracy of PSO-ARMA and PSO-LSSVM has been much improved on that of ARMA and LSSVM, and the results of decision fusion based on fuzzy integral methodology show further substantial improvement in accuracy than each particle swarm optimized model. Conclusion can be drawn that the optimized model and the decision fusion method presented in this paper are available in aero-generator condition trend prediction and have great value of engineering application.https://www.jvejournals.com/article/17917aero-generatorcondition trend predictionPSOfuzzy integraloil-filled pressure
collection DOAJ
language English
format Article
sources DOAJ
author Jianguo Cui
Huihua Li
Mingyue Yu
Liying Jiang
Wei Zheng
spellingShingle Jianguo Cui
Huihua Li
Mingyue Yu
Liying Jiang
Wei Zheng
Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
Journal of Vibroengineering
aero-generator
condition trend prediction
PSO
fuzzy integral
oil-filled pressure
author_facet Jianguo Cui
Huihua Li
Mingyue Yu
Liying Jiang
Wei Zheng
author_sort Jianguo Cui
title Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
title_short Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
title_full Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
title_fullStr Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
title_full_unstemmed Condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
title_sort condition trend prediction of aero-generator based on particle swarm optimization and fuzzy integral
publisher JVE International
series Journal of Vibroengineering
issn 1392-8716
2538-8460
publishDate 2017-08-01
description In order to improve and enhance the prediction accuracy and efficiency of aero-generator running trend, grasp its running condition, and avoid accidents happening, in this paper, auto-regressive and moving average model (ARMA) and least squares support vector machine (LSSVM) which are used to predict its running trend have been optimized using particle swarm optimization (PSO) based on using features found in real aero-generator life test, which lasts a long period of time on specialized test platform and collects mass data that reflects aero-generator characteristics, to build new models of PSO-ARMA and PSO-LSSVM. And we use fuzzy integral methodology to carry out decision fusion of the predicted results of these two new models. The research shows that the prediction accuracy of PSO-ARMA and PSO-LSSVM has been much improved on that of ARMA and LSSVM, and the results of decision fusion based on fuzzy integral methodology show further substantial improvement in accuracy than each particle swarm optimized model. Conclusion can be drawn that the optimized model and the decision fusion method presented in this paper are available in aero-generator condition trend prediction and have great value of engineering application.
topic aero-generator
condition trend prediction
PSO
fuzzy integral
oil-filled pressure
url https://www.jvejournals.com/article/17917
work_keys_str_mv AT jianguocui conditiontrendpredictionofaerogeneratorbasedonparticleswarmoptimizationandfuzzyintegral
AT huihuali conditiontrendpredictionofaerogeneratorbasedonparticleswarmoptimizationandfuzzyintegral
AT mingyueyu conditiontrendpredictionofaerogeneratorbasedonparticleswarmoptimizationandfuzzyintegral
AT liyingjiang conditiontrendpredictionofaerogeneratorbasedonparticleswarmoptimizationandfuzzyintegral
AT weizheng conditiontrendpredictionofaerogeneratorbasedonparticleswarmoptimizationandfuzzyintegral
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