Prediction of tire pattern noise in early design stage based on convolutional neural network

  • Lee, Sang-Kwon
  • Lee, Hwajin
  • Back, Jiseon
  • An, Kanghyun
  • Yoon, Youngsam
  • 외 3명
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36

초록

In early design stage of tire pattern, it is very useful to predict noise level associated with tire pattern. Artificial neural network (ANN) was used for development of the model for the prediction of tire pattern noise recently. The ANN used supervised training method which extracts the feature applying Gaussian curve fitting to the tread profile spectrum of tire pattern and used it as the input of ANN. This method requests laser scanning for tire pattern of a real tire. In early design, there is no real tire. In this study, the convolutional neural network (CNN) to predict tire pattern noise was developed based on non-supervised training method. Two Learning algorithms such as stochastic gradient descent (SGD) and RMSProp were studied in the CNN model for the comparison of their learning performance. RMSProp algorithm was suggested for the CNN model. In this case, a pattern image of a tire to be designed was used as the input of CNN. The CNN to predict tire pattern noise was developed and its utility in the early design stage of tire was discussed. In the study, pattern noise for 28 tires were measured in the semi-anechoic chamber and their pattern images were scanned. For the training of ANN and CNN, pattern noise for 24 tires and their pattern images were used. The trained ANN and CNN were validated respectively with 4 tires which were not used for the training of two neural networks. Finally, two networks were successfully developed and validated for the prediction of tire pattern noise. The trained CNN can be used for the prediction of pattern noise for a tire to be designed in early design stage using the only drawing image of tire whilst ANN can be used for the prediction of pattern noise for a real tire in development stage. (C) 2020 Elsevier Ltd. All rights reserved.

키워드

Artificial neural networkConvolutional neural networkTire pattern noise predictionRMSprop algorithm2D wavelet transformTire noise predictionTIME-FREQUENCY ANALYSISWAVELETREDUCTION
제목
Prediction of tire pattern noise in early design stage based on convolutional neural network
저자
Lee, Sang-KwonLee, HwajinBack, JiseonAn, KanghyunYoon, YoungsamYum, KihoKim, SungdaeHwang, Sung-Uk
DOI
10.1016/j.apacoust.2020.107617
발행일
2021-01-15
유형
Article
저널명
Applied Acoustics
172