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首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part J. Journal of engineering tribology >Dynamics of rotors supported on fluid-film bearings using neural networks
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Dynamics of rotors supported on fluid-film bearings using neural networks

机译:使用神经网络的流体膜轴承上的转子动力学

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This paper deals with the determination of shaft centre response and oil-film forces of a rotating rotor-bearing assembly. The successive points in a long time history of the rotor-centre motion during a transient vibration period have been identified. Fluid-film forces are generally influenced by several design variables. The calculation of these forces is not straightforward because these equations of motion of the system contain non-linear terms. Initially the most influential parameters are identified. A supervised multi-layer neural network model is then trained with the input and output data using the back-propagation algorithm. The response characteristics and fluid-film forces are derived as the outputs of the neural network for different conditions of bearing parameters. The results are compared with the usual solution techniques.
机译:本文涉及旋转转子-轴承组件的轴心响应和油膜力的确定。已经确定了在瞬态振动期间转子中心运动的长时间历史中的连续点。液膜力通常受几个设计变量的影响。这些力的计算并不简单,因为系统的这些运动方程包含非线性项。最初,确定最具影响力的参数。然后使用反向传播算法使用输入和输出数据训练有监督的多层神经网络模型。对于轴承参数的不同条件,响应特性和液膜力作为神经网络的输出得出。将结果与常规解决方案技术进行比较。

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