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A non-tachometer method for Order Tracking technique in NVH analysis based on Deep Learning and rpm estimation

机译:基于深度学习和RPM估计的NVH分析中订购跟踪技术的非转速表方法

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This paper presents a new analysis method of automobile noise-vibration-harshness(NVH) analysis based on a discrete recurrent neural network(RNN) and generative adversarial network(GAN), which, can not only replace Short Fast Fourier Transform(SFFT) but also the entire tachometer data assembly system for our network's ability to obtain rpm from vibration signal. This method inherits the leading spirit of digital resampling and Time-Variant Discrete Fourier Transform(TVDFT), adjusting sampling rate concerning rpm changes and interpolation to obtain an equal time interval sequence out of identical angle interval sequence, as the setting parameter of these methods determines the quality of order tracking. The neural-network-based approach involves three steps: 1. Simulation and sampling of the vibration signal of a DeLaval rotor. 2. Determination of rpm, and instantaneous sampling rate, window size as well as resampling time and values through a discrete RNN-GAN learning system with the input vibration signal and output parameters. 3. Illustration of a dB-rpm graph obtained by D-RNN-GAN and further evaluation of system performance 4. The application to big data and its review.
机译:本文介绍了基于离散的经常性神经网络(RNN)和生成的对抗网络(GaN)的汽车噪声 - 振动(NVH)分析的新分析方法,这不仅可以替换短快速傅里叶变换(SFFT)但是此外,整个转速表数据组装系统对于我们网络从振动信号获得RPM的能力。该方法继承了数字重采样和时变离散傅立叶变换(TVDFT)的领先精神,调整了关于RPM的采样率和插值,以获得相同的角度间隔序列的相等时间间隔序列,因为这些方法的设置参数确定订单跟踪质量。基于神经网络的方法涉及三个步骤:1。脱水转子的振动信号的仿真和取样。 2.通过具有输入振动信号和输出参数的离散RNN-GaN学习系统确定RPM和瞬时采样率,窗口大小以及重采样时间和值。 3. D-RNN-GaN获得的DB-RPM图的图示以及对系统性能的进一步评估4.在大数据和审查中的应用。

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