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A Deep Neural Network Based Glottal Flow Model for Predicting Fluid-Structure Interactions during Voice Production

机译:基于深度神经网络的基于神经网络的光学流动模型,用于预测语音生产过程中的流体结构相互作用

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This paper proposes a machine-learning based reduced-order model that can provide fast and accurate prediction of the glottal flow during voice production. The model is based on the Bernoulli equation with a viscous loss term predicted by a deep neural network (DNN) model. The training data of the DNN model is a Navier-Stokes (N-S) equation-based three-dimensional simulation of glottal flows in various glottal shapes generated by a synthetic shape function, which can be obtained by superimposing the instantaneous modal displacements during vibration on the prephonatory geometry of the glottal shape. The input parameters of the DNN model are the geometric and flow parameters extracted from discretized cross sections of the glottal shapes and the output target is the corresponding flow resistance coefficient. With this trained DNN-Bernoulli model, the flow resistance coefficient as well as the flow rate and pressure distribution in any given glottal shape generated by the synthetic shape function can be predicted. The model is further coupled with a finite-element method based solid dynamics solver for simulating fluid-structure interactions (FSI). The prediction performance of the model for both static shape and FSI simulations is evaluated by comparing the solutions to those obtained by the Bernoulli and N-S model. The model shows a good prediction performance in accuracy and efficiency, suggesting a promise for future clinical use.
机译:本文提出了一种基于机器学习的减少阶模型,可以在语音生产过程中提供快速准确地预测所引人注目的流量。该模型基于Bernoulli方程,具有深度神经网络(DNN)模型预测的粘性损耗术语。 DNN模型的训练数据是由合成形状函数产生的各种光栅形状的印刷流(NS)的三维模拟,其可以通过叠加在振动期间的瞬时模态位移来获得光泽形状的幽门几何形状。 DNN模型的输入参数是由光学形状的离散横截面提取的几何和流动参数,输出目标是相应的流动阻力系数。通过该训练的DNN-Bernoulli模型,可以预测由合成形状函数产生的任何给定的印刷形状中的流动性系数以及流量和压力分布。该模型进一步与基于有限元方法的固体动力学求解器相结合,用于模拟流体结构相互作用(FSI)。通过将解决方案与Bernoulli和N-S模型获得的那些进行比较来评估静态形状和FSI模拟模型的预测性能。该模型以准确性和效率显示出良好的预测性能,表明未来临床使用的承诺。

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