Unbalance identification method based on SINDy applied to an SFD rotordynamic system

Maximiliano Zirion-Flores, J. O. Escobedo-Alva, Sergio Guillermo Torres-Cedillo, Alberto Reyes-Solís
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Abstract

In recent years, there has been an increasing interest in Data Science and Machine Learning in different topics like financial and health, this have led to start using these methods on engineer applications. This paper is focus on identify the equivalent unbalance on Squeeze Film Damper – SFD bearing using a recent machine learning technique “Sparse Identification of Nonlinear Dynamics – SINDy”. Four different cases will be examined from Bonello’s work, all of which we introduce 4 different conditions of noise to the acceleration of the system. The data for this work was obtained via a simulation of the SFD system reported on Bonello’s thesis. From the simulation only the last 20 cycles were used to feed the SINDy. This study uses a combinatorial polynomial search space over preselected functions with the purpose to identify the equivalent imbalances. Both hyperparameters: the degree of the combinatory k and the threshold value λ remaining static during all the study. There was no error between the original equations and the identified system.
基于SINDy的不平衡辨识方法应用于SFD转子动力系统
近年来,人们对金融和健康等不同主题的数据科学和机器学习越来越感兴趣,这导致开始在工程应用中使用这些方法。本文重点研究了利用最新的机器学习技术“非线性动力学稀疏识别- SINDy”识别挤压膜阻尼器- SFD轴承的等效不平衡。我们将从Bonello的工作中考察四种不同的情况,在所有这些情况下,我们都引入了4种不同的噪声条件来加速系统。这项工作的数据是通过模拟Bonello论文中报道的SFD系统获得的。从模拟来看,只有最后20个周期被用来馈送SINDy。本研究使用组合多项式搜索空间对预先选择的函数,目的是识别等效的不平衡。两个超参数:组合的程度k和阈值λ在整个研究过程中保持不变。原始方程与辨识系统之间没有误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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