A new artificial neural network-based failure determination system for electric motors
Özet
In this study, a new measurement system was developed to determine failures and to defne the level of failure that may
occur in bearings and rotor bearings or in foot of motor in single phase capacitor start motor. In the system, the vibratory
operation of the motor is provided by connecting diferent screws on the motor’s rotor mounted fywheel or by gradually
removing the nut bolts of motor foot. The VB3 vibration sensor outputs were recorded to the computer with LabVIEW program at 1 ms intervals for one minute. The changing characteristics of sensor output for each experiment had more than one
frequency component; therefore, Fast Fourier Transform (FFT) was performed for determining such components. When the
obtained FFT graphs were analyzed, it was determined that the vibrations had harmonics of 50 Hz and its multiples; and it
was observed that the frequency and amplitude values of frst 5 harmonics could be used for determining the presence, type
and level of failure but there was a nonlinear relation between each other. Therefore, 2 diferent artifcial neural networks
(ANN) customized separately were developed for determining the type and rate of the failure of motor. 80%, 10% and 10%
of available data were reserved for training, testing and verifcation, respectively, and the ANN was trained. Accuracy degree
for the ANN in the estimations following the training stage was calculated as R=0.97–0.98. Furthermore, the results of ANN
were compared with the results obtained using Sequential Minimal Optimization, Naive Bayes (NB) and J48 algorithms; and
it was determined that the accuracy degree of ANN was higher. After this, a program was developed in MATLAB in order
to work 2 ANNs with highest success together. Lastly, a system consisting of Raspberry Pi and a 7″ LCD screen, similar to
the multimedia system in cars, was created to use at industrial applications.