Validation of artificial neural networks to model the acoustic behaviour of induction motors
Author
Jiménez Romero, Francisco Javier
Guijo-Rubio, David
Lara Raya, Francisco Ramón
Ruiz-González, Antonio
Hervás-Martínez, César
Publisher
ElsevierDate
2020Subject
Artificial neural networksSigmoid units
Pulse width modulation
Sound quality
Induction motor
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Show full item recordAbstract
In the last decade, the sound quality of electric induction motors is a hot topic in the research field.
Specially, due to its high number of applications, the population is exposed to physical and psychological
discomfort caused by the noise emission. Therefore, it is necessary to minimise its psychological impact
on the population. In this way, the main goal of this work is to evaluate the use of multitask artificial neural networks as a modelling technique for simultaneously predicting psychoacoustic parameters of
induction motors. Several inputs are used, such as, the electrical magnitudes of the motor power signal
and the number of poles, instead of separating the noise of the electric motor from the environmental
noise. Two different kind of artificial neural networks are proposed to evaluate the acoustic quality of
induction motors, by using the equivalent sound pressure, the loudness, the roughness and the sharpness
as outputs. Concretely, two different topologies have been considered: simple models and more complex
models. The former are more interpretable, while the later lead to higher accuracy at the cost of hiding
the cause-effect relationship. Focusing on the simple interpretable models, product unit neural networks
achieved the best results: 38:77 for MSE and 13:11 for SEP. The main benefit of this product unit model is
its simplicity, since only 10 inputs variables are used, outlining the effective transfer mechanism of multitask artificial neural networks to extract common features of multiple tasks. Finally, a deep analysis of
the acoustic quality of induction motors in done using the best product unit neural networks.