Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network

Low power hub motors are widely used in electromechanical systems such as electrical bicycles and solar vehicles due to their robustness and compact structure. Such systems driven by hub motors (in wheel motors) encounter previously defined and undefined faults under operation. It may inevitably lea...

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Main Authors: Mehmet Şimşir, Raif Bayır, Yılmaz Uyaroğlu
Format: Article
Language:English
Published: Hindawi Limited 2016-01-01
Series:Computational Intelligence and Neuroscience
Online Access:http://dx.doi.org/10.1155/2016/7129376
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spelling doaj-4a81fd04c57b49dbae498af166f225f22020-11-24T22:13:38ZengHindawi LimitedComputational Intelligence and Neuroscience1687-52651687-52732016-01-01201610.1155/2016/71293767129376Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural NetworkMehmet Şimşir0Raif Bayır1Yılmaz Uyaroğlu2Sakarya University Institute of Natural Sciences, 54187 Sakarya, TurkeyKarabük University Technology Faculty, 78050 Karabük, TurkeySakarya University Engineering Faculty, 54187 Sakarya, TurkeyLow power hub motors are widely used in electromechanical systems such as electrical bicycles and solar vehicles due to their robustness and compact structure. Such systems driven by hub motors (in wheel motors) encounter previously defined and undefined faults under operation. It may inevitably lead to the interruption of the electromechanical system operation; hence, economic losses take place at certain times. Therefore, in order to maintain system operation sustainability, the motor should be precisely monitored and the faults are diagnosed considering various significant motor parameters. In this study, the artificial feedforward backpropagation neural network approach is proposed to real-time monitor and diagnose the faults of the hub motor by measuring seven main system parameters. So as to construct a necessary model, we trained the model, using a data set consisting of 4160 samples where each has 7 parameters, by the MATLAB environment until the best model is obtained. The results are encouraging and meaningful for the specific motor and the developed model may be applicable to other types of hub motors. The prosperous model of the whole system was embedded into Arduino Due microcontroller card and the mobile real-time monitoring and fault diagnosis system prototype for hub motor was designed and manufactured.http://dx.doi.org/10.1155/2016/7129376
collection DOAJ
language English
format Article
sources DOAJ
author Mehmet Şimşir
Raif Bayır
Yılmaz Uyaroğlu
spellingShingle Mehmet Şimşir
Raif Bayır
Yılmaz Uyaroğlu
Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
Computational Intelligence and Neuroscience
author_facet Mehmet Şimşir
Raif Bayır
Yılmaz Uyaroğlu
author_sort Mehmet Şimşir
title Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
title_short Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
title_full Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
title_fullStr Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
title_full_unstemmed Real-Time Monitoring and Fault Diagnosis of a Low Power Hub Motor Using Feedforward Neural Network
title_sort real-time monitoring and fault diagnosis of a low power hub motor using feedforward neural network
publisher Hindawi Limited
series Computational Intelligence and Neuroscience
issn 1687-5265
1687-5273
publishDate 2016-01-01
description Low power hub motors are widely used in electromechanical systems such as electrical bicycles and solar vehicles due to their robustness and compact structure. Such systems driven by hub motors (in wheel motors) encounter previously defined and undefined faults under operation. It may inevitably lead to the interruption of the electromechanical system operation; hence, economic losses take place at certain times. Therefore, in order to maintain system operation sustainability, the motor should be precisely monitored and the faults are diagnosed considering various significant motor parameters. In this study, the artificial feedforward backpropagation neural network approach is proposed to real-time monitor and diagnose the faults of the hub motor by measuring seven main system parameters. So as to construct a necessary model, we trained the model, using a data set consisting of 4160 samples where each has 7 parameters, by the MATLAB environment until the best model is obtained. The results are encouraging and meaningful for the specific motor and the developed model may be applicable to other types of hub motors. The prosperous model of the whole system was embedded into Arduino Due microcontroller card and the mobile real-time monitoring and fault diagnosis system prototype for hub motor was designed and manufactured.
url http://dx.doi.org/10.1155/2016/7129376
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AT raifbayır realtimemonitoringandfaultdiagnosisofalowpowerhubmotorusingfeedforwardneuralnetwork
AT yılmazuyaroglu realtimemonitoringandfaultdiagnosisofalowpowerhubmotorusingfeedforwardneuralnetwork
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