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Design of new sound metric and its application for quantification of an axle gear whine sound by utilizing artificial neural network
Hyun-Hoo Lee
The Journal of Mechanical Science and Technology, vol. 23, no. 4, pp.1182-1193, 2009
Abstract : The gear whine sound of an axle system is one of the most important sound qualities in a sport utility vehicle (SUV).
Previous work has shown that, because of masking effects, it is difficult to evaluate the gear whine sound objectively
by using only the A-weighted sound pressure level. In this paper, a new objective evaluation method for this sound was
developed by using new sound metrics, which are developed based on the increment of signal to noise ration and the
psychoacoustic parameters in the paper, and the artificial neural network (ANN) used for the modeling of the correlation
between objective and subjective evaluation. This model developed by using ANN was applied to the objective
evaluation of the axle-gear whine sound for real SUVs and the output of the model was compared with subjective
evaluation. The results indicate a good correlation of over 90 percent between the subjective and objective evaluations.
Keyword : Sound quality metric; SNR index; Axle whine noise; Neural network |
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