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Acoustic behavior prediction for low-frequency sound quality based on finite element method and artificial neural network

机译:基于有限元和人工神经网络的低频音质声学行为预测

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In this paper, a hybrid approach called FEM-ANN model is proposed by combining the finite element method (FEM) and artificial neural network (ANN) to predict the acoustic behavior of an auditory system. Based on the scanned point cloud data, the three-dimensional numerical models of the external auditory canal, tympanic membrane and middle ear are established by using the reverse prototyping technology, as are the FEM models. Setting the interior noises of the vehicle as excitations, the assembled FEM model is used to calculate the responses of the stapes footplate. According to the auditory perception characteristics of the human, a modified one-third octave filter bank is designed to calculate the vibration energies of stapes footplate in the critical bands, and thereby an energy-based feature matrix is established. Further, the sound quality (SQ) indices of interior noises, such as A-weighted sound pressure level (SPL), loudness and sharpness are calculated. By considering the extracted feature matrices as inputs and the calculated SQ indices as outputs, a three-layer ANN model with the radial basis function (RBF) is established for mapping the stapes footplate vibration to the human auditory perception. Verifications show that, the simulated result from the FEM model is consistent with that of the classical Ferris' model. The error percentages of A-weighted SPL, loudness and sharpness predicted by the FEMANN are all less than 5%, which suggests that the FEM-ANN model is accurate and effective for SQ evaluation of a low-frequency sound. The proposed hybrid approach can be used to simulate the acoustic behavior of an auditory system, which helps in revealing the mechanism of human auditory perception. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文通过将有限元方法(FEM)和人工神经网络(ANN)相结合来预测听觉系统的声学行为,提出了一种称为FEM-ANN模型的混合方法。根据扫描的点云数据,使用反向原型技术建立外耳道,鼓膜和中耳的三维数值模型,FEM模型也是如此。将车辆的内部噪声设置为激励,然后使用组装的FEM模型来计算骨踏板的响应。根据人的听觉特征,设计了一种改进的三分之一倍频程滤波器组,以计算骨足踏板在关键带的振动能量,从而建立了基于能量的特征矩阵。此外,计算内部噪声的声音质量(SQ)指标,例如A加权声压级(SPL),响度和清晰度。通过将提取的特征矩阵作为输入,并将计算出的SQ指标作为输出,建立了具有径向基函数(RBF)的三层ANN模型,用于将骨踏板的振动映射到人类听觉上。验证表明,FEM模型的模拟结果与经典Ferris模型的模拟结果一致。 FEMANN预测的A加权SPL,响度和清晰度的误差百分比均小于5%,这表明FEM-ANN模型对于低频声音的SQ评估是准确有效的。所提出的混合方法可用于模拟听觉系统的声学行为,这有助于揭示人类听觉感知的机制。 (C)2017 Elsevier Ltd.保留所有权利。

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