KOOPMAN OPERATOR BASED FAULT DIAGNOSTIC METHODS FOR MECHANICAL SYSTEMS

A. Nichifor, Yongzhi Qu
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引用次数: 1

Abstract

Traditionally, dynamical systems can be simulated with physics-based model when the design parameters and material property are pre-known. However, when a system is deployed in field and has suffered potential degradation, a physics-based model might be infeasible to obtain. Moreover, the non-linearity and unknown coupling between the system and contacting constraints are often hard to determine accurately. The analysis of those systems becomes practically problematic. In this paper, the Koopman operator is used to learn and represent a dynamic system in a data driven manner. This paper proposes two methods of using the Koopman operator to extract and classify critical parameters of a non-linear dynamic mechanical system for fault diagnosis. The first method proposes a model to extract key features from a dynamic system and feed the features to a neural network to classify the existence of a fault. The second method uses parameters derived from the Koopman operator to create a prediction model with healthy data. This prediction model is then used to predict future system dynamics for a measured time evolution and compare that with direct measurements when future dynamics become available. Both methods are then tested via an experimental case study and the results are discussed.
基于Koopman算子的机械系统故障诊断方法
传统上,在预先知道设计参数和材料特性的情况下,可以利用基于物理的模型对动力系统进行仿真。然而,当系统部署在现场并遭受潜在的退化时,基于物理的模型可能无法获得。此外,系统与接触约束之间的非线性和未知耦合往往难以准确确定。对这些系统的分析实际上是有问题的。本文采用Koopman算子以数据驱动的方式学习和表示动态系统。本文提出了两种利用库普曼算子提取和分类非线性动态机械系统关键参数的方法,用于故障诊断。第一种方法提出了一种从动态系统中提取关键特征的模型,并将这些特征馈送给神经网络来对故障的存在进行分类。第二种方法使用从Koopman算子派生的参数创建具有健康数据的预测模型。然后,该预测模型用于预测测量时间演变的未来系统动力学,并在未来动力学可用时将其与直接测量结果进行比较。然后通过实验案例研究对两种方法进行了测试,并对结果进行了讨论。
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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