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Study on tribo-dynamic behaviors of rolling bearing-rotor system based on neural network

机译:基于神经网络的滚动轴承转子系统摩擦动力学行为研究

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摘要

The tribo-dynamic model of the rolling bearing-rotor (RBR) system based on the radial basis function neural network (RBFNN) is proposed to effectively obtain tribo-dynamic performances of the system. In doing so, the thermal elastohydrodynamic lubrication (TEHL) and motion equations of the rolling bearing are solved simultaneously for the oil film forces, and the fast Fourier transform (FFT) is employed to accelerate the deformation computation. Further, the RBFNN is well trained to reconstruct the oil film forces of the bearing. By incorporating the oil film forces into the dynamic simulation module of the RBR system, its transient tribological and dynamic performances are predicted using the Matlab/Simulink module. Meanwhile, the efficiency and accuracy of the RBFNN in predicting the oil film forces are verified. Then, the tribo-dynamic performances of the RBR system such as the spiral structures of the film thickness, film pressure and film temperature are revealed.
机译:提出了基于径向基函数神经网络(RBFNN)的滚动轴承转子(RBR)系统摩擦动力学模型,以有效地获得系统的摩擦动力学性能。在此过程中,针对油膜力,同时求解了热弹流润滑(TEHL)和滚动轴承的运动方程,并采用快速傅立叶变换(FFT)加速变形计算。此外,RBFNN经过良好训练,可以重建轴承的油膜力。通过将油膜力纳入RBR系统的动态仿真模块,利用Matlab/Simulink模块预测了RBR系统的瞬态摩擦学和动力学性能。同时,验证了RBFNN预测油膜力的有效性和准确性。然后,揭示了RBR系统的摩擦动力学性能,如膜厚、膜压力和膜温度的螺旋结构。

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