ログインしてください

文献・情報検索システム

日本語

ENGLISH

ヘルプ

ログインしてください

  • 詳細情報

Development of a Prediction Model for Tire Tread Pattern Noise Based on Convolutional Neural Network with RMSProp Algorithm

書誌事項

著者(英)1) Youngsam Yoon, 2) Jaehun Lee, 3) Kiho Yum, 4) Sang Kwon Lee, 5) Sunguk Hwang
勤務先(英)1) Hyundai Motor Company, 2) Hyundai Motor Company, 3) Hyundai Motor Company, 4) Inha University, 5) Nexen Tire Company
抄録(英)Tire tread pattern noise is a major source of road noise generated by motor vehicles. Recently, noise control technology has been developing, and low-noise motor vehicles, such as electric vehicles and hybrid vehicles, have been commercialized. The importance of low-noise tires has increased since regulations R117 for tire noise and R51.03 for motor vehicle noise have been strengthened. To evaluate the tire noise in the development stage of motor vehicles, finished products of tires are required; hence, financial and time costs should be invested. Therefore, it is highly useful to predict tire noise levels in the early stages. Recently, a technology to predict the tire pattern noise using a supervised training method of artificial neural network (ANN) has been developed. The tire tread depth is estimated using the shading of the full image of the actual tire, and the leading edge of the contact patch is calculated using tire contact patch images. This method creates an artificial intelligence learning model by scanning the entire tire image with the leading edge, making input factors by Gaussian curve fitting of the tread profile spectrum and air volume velocity spectrum according to the tire rotation speed and evaluating the vehicle road noise. However, because this method requires finished products of tires, it is difficult to use it for prediction in the early stage. In this study, a convolutional neural network based on the unsupervised training method was developed to predict the tire tread pattern noise. The prediction results of applying two learning algorithms, SGD and RMSProp, to the CNN model showed that the RMSProp algorithm displayed a good predictive power in the CNN model. The tire pattern image to be designed was used as the input of the CNN model. The pattern noises of 28 tires were measured in coast-down condition of R117 on the ISO10844 certified road surface, and pattern images were scanned. The tread pattern noises and pattern images for 24 tires were used for the ANN and CNN, and trained ANN and CNN models were used for the verification of the remaining four untrained tires. Two training models were successfully developed and verified for the prediction of tire tread pattern noise. The trained CNN model can be used to predict the tire tread pattern noise in the early stage using only drawn tire images. Furthermore, the ANN model can be used to predict the pattern noise of actual tires in the developing stage, and it was verified by the actual mold design.

翻訳

検索について

閉じる

検索ボックスの使い方

検索条件は最大5件まで入力可能です。検索ボックスの数は右側の「+」「−」ボタンで増減させることができます。
一つの検索ボックス内に、複数の語句をスペース(全角/半角)区切りで入力した場合、入力した語句の“すべてを含む”データが検索されます(AND検索)。
例)X(スペース)Y →「XかつY(を含む)」

「AND」「OR」プルダウンの使い方

「AND」を指定すると、前後の検索ボックスに入力された語句の“双方を含む”データが検索されます。また、「OR」を指定すると、前後の検索ボックスに入力された語句の“いずれかを含む”データが検索されます。
例)X AND Y →「XかつY(を含む)」  X OR Z →「XまたはZ(を含む)」
AND検索とOR検索が混在する場合は、OR検索が優先されます。
例)X AND Y OR Z → X AND (Y OR Z)
AND検索と複数のOR検索が混在する場合も、OR検索が優先されます。
例)W AND X OR Y OR Z → W AND (X OR Y OR Z)

検索フィルタの使い方

検索結果の件数が多すぎる場合など、さらに絞り込みしたいときに「検索フィルタ」を使います。各項目にチェックを入れると、その項目が含まれるデータのみに検索結果が絞り込まれます。
各項目後ろの「()」内の数字は、その項目が含まれるデータの件数です。

検索のコツ

著者名で検索するときは、「自動車 太郎」のように、姓名をスペースで区切って入力してください。