Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant

One method for on-line fault detection in synchronous generator is stator current harmonics analysis. In this paper, the flexible neural network with reconstruction structure during learning has been used to evaluate the stator current harmonics in different loads. Generator modeling, finite element...

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Main Authors: Mohammad Reza Yousefi, Mohammad Teshnehlab
Format: Article
Language:English
Published: Najafabad Branch, Islamic Azad University 2010-07-01
Series:Journal of Intelligent Procedures in Electrical Technology
Subjects:
Online Access:http://jipet.iaun.ac.ir/pdf_4470_1f407a59233a2717e732cbab666f2471.html
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spelling doaj-d1f7f5c4595644c89dbcdd01b992f13d2020-11-25T01:02:20ZengNajafabad Branch, Islamic Azad UniversityJournal of Intelligent Procedures in Electrical Technology2322-38712345-55942010-07-01121122Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power PlantMohammad Reza Yousefi0Mohammad Teshnehlab1Najafabad Branch, Islamic Azad UniversityK.N.Toosi University of TechnologyOne method for on-line fault detection in synchronous generator is stator current harmonics analysis. In this paper, the flexible neural network with reconstruction structure during learning has been used to evaluate the stator current harmonics in different loads. Generator modeling, finite element method and state space model make training set of flexible neural network. Many points from generator capability curve are used to complete this set. Flexible neural network that is used in this paper is a perception network with single hidden layer, flexible hidden layer neuron and back propagation algorithms. Results are show that the trained flexible neural network can identify stator current harmonics for desired load from the capability curve. The error is less than 10% in compared to the values obtained directly from the CFE-SS algorithms. The parameters of modeled generator are 43950(KVA), 11(kV), 3000(rpm), 50(HZ), (PF=0.5).http://jipet.iaun.ac.ir/pdf_4470_1f407a59233a2717e732cbab666f2471.htmlFinite element methodflexible neural networkcapability curve and synchronous generators
collection DOAJ
language English
format Article
sources DOAJ
author Mohammad Reza Yousefi
Mohammad Teshnehlab
spellingShingle Mohammad Reza Yousefi
Mohammad Teshnehlab
Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
Journal of Intelligent Procedures in Electrical Technology
Finite element method
flexible neural network
capability curve and synchronous generators
author_facet Mohammad Reza Yousefi
Mohammad Teshnehlab
author_sort Mohammad Reza Yousefi
title Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
title_short Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
title_full Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
title_fullStr Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
title_full_unstemmed Stator Current Harmonics Evaluation by Flexible Neural Network Method With Reconstruction Structure During Learning Step Based On CFE/SS Algorithm for ACEC Generator of Rey Power Plant
title_sort stator current harmonics evaluation by flexible neural network method with reconstruction structure during learning step based on cfe/ss algorithm for acec generator of rey power plant
publisher Najafabad Branch, Islamic Azad University
series Journal of Intelligent Procedures in Electrical Technology
issn 2322-3871
2345-5594
publishDate 2010-07-01
description One method for on-line fault detection in synchronous generator is stator current harmonics analysis. In this paper, the flexible neural network with reconstruction structure during learning has been used to evaluate the stator current harmonics in different loads. Generator modeling, finite element method and state space model make training set of flexible neural network. Many points from generator capability curve are used to complete this set. Flexible neural network that is used in this paper is a perception network with single hidden layer, flexible hidden layer neuron and back propagation algorithms. Results are show that the trained flexible neural network can identify stator current harmonics for desired load from the capability curve. The error is less than 10% in compared to the values obtained directly from the CFE-SS algorithms. The parameters of modeled generator are 43950(KVA), 11(kV), 3000(rpm), 50(HZ), (PF=0.5).
topic Finite element method
flexible neural network
capability curve and synchronous generators
url http://jipet.iaun.ac.ir/pdf_4470_1f407a59233a2717e732cbab666f2471.html
work_keys_str_mv AT mohammadrezayousefi statorcurrentharmonicsevaluationbyflexibleneuralnetworkmethodwithreconstructionstructureduringlearningstepbasedoncfessalgorithmforacecgeneratorofreypowerplant
AT mohammadteshnehlab statorcurrentharmonicsevaluationbyflexibleneuralnetworkmethodwithreconstructionstructureduringlearningstepbasedoncfessalgorithmforacecgeneratorofreypowerplant
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