Approximation of forces of fluid film bearing lubricating layer using machine learning methods

Yu. N. Kazakov, I. N. Stebakov, D. V. Shutin, L. A. Savin
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Abstract

The article analyzes the application of various machine learning methods for solving the problem of approximating the forces of fluid film bearing lubricating layer in static formulation. The initial data on the values of lubricating layer forces for different shaft positions were obtained using a model of a rotor-bearing system based on the numerical solution of the Reynolds equation, with account for the cavitation effect. Methods for reducing the amount of calculation required to obtain the necessary data set are determined on the basis of analyzing solution approximation accuracy with artificial neural networks. After that, approximation models were constructed using a number of other machine learning methods, and the accuracy of predictions as well as the duration of the training process were analyzed. Finally, conclusions were drawn about the most effective approaches to building such models.
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用机器学习方法逼近油膜轴承润滑层受力
本文分析了各种机器学习方法在解决静态配方中流体膜轴承润滑层力近似问题中的应用。在考虑空化效应的基础上,建立了基于雷诺方程数值解的转子-轴承系统模型,得到了不同轴位润滑层力值的初始数据。在分析人工神经网络解逼近精度的基础上,确定了减少获得所需数据集所需计算量的方法。之后,使用许多其他机器学习方法构建近似模型,并分析预测的准确性以及训练过程的持续时间。最后,得出了构建此类模型的最有效方法的结论。
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审稿时长
12 weeks
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