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基于机器学习的一维流模型增强用于声带振动模拟。

A one-dimensional flow model enhanced by machine learning for simulation of vocal fold vibration.

机构信息

Department of Mechanical Engineering, Vanderbilt University, 2301 Vanderbilt Place, Nashville, Tennessee 37235-1592, USA.

Department of Communication Science and Disorders, University of Pittsburgh, Pittsburgh, Pennsylvania 15213, USA.

出版信息

J Acoust Soc Am. 2021 Mar;149(3):1712. doi: 10.1121/10.0003561.

Abstract

A one-dimensional (1D) unsteady and viscous flow model that is derived from the momentum and mass conservation equations is described, and to enhance this physics-based model, a machine learning approach is used to determine the unknown modeling parameters. Specifically, an idealized larynx model is constructed and ten cases of three-dimensional (3D) fluid-structure interaction (FSI) simulations are performed. The flow data are then extracted to train the 1D flow model using a sparse identification approach for nonlinear dynamical systems. As a result of training, we obtain the analytical expressions for the entrance effect and pressure loss in the glottis, which are then incorporated in the flow model to conveniently handle different glottal shapes due to vocal fold vibration. We apply the enhanced 1D flow model in the FSI simulation of both idealized vocal fold geometries and subject-specific anatomical geometries reconstructed from the magnetic resonance imaging images of rabbits' larynges. The 1D flow model is evaluated in both of these setups and shown to have robust performance. Therefore, it provides a fast simulation tool that is superior to the previous 1D models.

摘要

描述了一种从动量和质量守恒方程推导出来的一维非稳态粘性流模型,并使用机器学习方法来确定未知的建模参数,从而增强这个基于物理的模型。具体来说,构建了一个理想化的喉模型,并进行了十次三维流固耦合(FSI)模拟。然后提取流数据,使用非线性动力系统的稀疏辨识方法来训练一维流模型。通过训练,我们得到了声门入口效应和压力损失的解析表达式,然后将其纳入流模型中,以便于处理由于声带振动而导致的不同声门形状。我们将增强的一维流模型应用于理想化声带几何形状和从兔喉磁共振成像图像重建的特定于主体的解剖几何形状的 FSI 模拟中。在这两种设置中都评估了一维流模型,并证明它具有稳健的性能。因此,它提供了一个比以前的一维模型更快的模拟工具。

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Laryngeal Pressure Estimation With a Recurrent Neural Network.基于循环神经网络的喉压估计
IEEE J Transl Eng Health Med. 2018 Dec 27;7:2000111. doi: 10.1109/JTEHM.2018.2886021. eCollection 2019.

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