Deep learning-based wind noise prediction study for automotive clay model

被引:1
作者
Huang, Lina [1 ,2 ]
Wang, Dengfeng [1 ]
Cao, Xiaolin [1 ]
Zhang, Xiaopeng [1 ]
Huang, Bingtong [1 ]
He, Yang [1 ]
Grabner, Gottfried [3 ]
机构
[1] Jilin Univ, State Key Lab Automot Simulat & Control, Changchun, Peoples R China
[2] Changchun Univ, Sch Mech & Vehicle Engn, Changchun, Peoples R China
[3] Magna Steyr Fahrzeugtechn AG & CoKG, Graz, Austria
关键词
deep learning; wind noise prediction; clay model; wind tunnel experiments; TRANSMISSION; SELECTION; PRESSURE;
D O I
10.1088/1361-6501/ad1b34
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Analyzing and mitigating wind noise in automobiles is a significant issue within the realm of noise, vibration, and harshness. Due to the intricate nature of aeroacoustic generation mechanisms, current conventional methods for wind noise prediction exhibit limitations. Hence, deep learning methods are introduced to investigate wind noise in the side window area of an automotive clay model. During aeroacoustic wind tunnel experiments, side window vibration data and noise data from the driver were collected at experimental wind speeds of 100 km h-1, 120 km h-1, and 140 km h-1, respectively. These data samples were obtained to be used for training and validation of the wind noise model. Convolutional neural network (CNN), residual neural network (ResNet) and long short-term memory neural network (LSTM) algorithms were separately employed to reveal the complex nonlinear relationship between wind noise and its influencing factors, leading to the establishment of a wind noise prediction model. Simultaneously, these deep learning methods were compared with backpropagation neural network (BPNN), extreme learning machine (ELM), and support vector regression (SVR) methods. Conclusion indicates that the LSTM wind noise prediction model not merely exhibits higher accuracy, but furthermore demonstrates superior generalization capabilities, thereby substantiating the superiority of this method.
引用
收藏
页数:15
相关论文
共 56 条
  • [1] Adam J L., 2009, SAE NOIS VIBR C EXH, DOI [10.4271/2009-01-2234, DOI 10.4271/2009-01-2234]
  • [2] Ali Mohamed Sukri Mat, 2018, International Journal of Vehicle Noise and Vibration, V14, P38
  • [3] Sideglass Turbulence and Wind Noise Sources Measured with a High Resolution Surface Pressure Array
    Bremner, P.
    Todter, C.
    Clifton, S.
    [J]. SAE INTERNATIONAL JOURNAL OF PASSENGER CARS-MECHANICAL SYSTEMS, 2015, 8 (03): : 1063 - 1074
  • [4] Bremner P., 2014, P 14 C FRANC AC, P22
  • [5] Brunton S L., 2021, Advances in Critical Flow Dynamics Involving Moving/deformable Structures with Design Applications, P327
  • [6] Cerrato G, 2009, SOUND VIB, V43, P16
  • [7] GA-BP Neural Network Based Tire Noise Prediction
    Che Yong
    Xiao Wangxin
    Chen Lijun
    Huang Zhichu
    [J]. MANUFACTURING SCIENCE AND MATERIALS ENGINEERING, PTS 1 AND 2, 2012, 443-444 : 65 - +
  • [8] Practical selection of SVM parameters and noise estimation for SVM regression
    Cherkassky, V
    Ma, YQ
    [J]. NEURAL NETWORKS, 2004, 17 (01) : 113 - 126
  • [9] Cho M., 2014, INT NOIS CONC C P I, P3879
  • [10] DHooge A., 2015, SAE 2015 WORLD C EXH, DOI [10.4271/2015-01-1551, DOI 10.4271/2015-01-1551]