Severity Estimation of Faulty Bearings Based on Strain Signals From Physical Models and FBG Measurements

Ravit Ohana, R. Klein, J. Bortman
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Abstract

Condition based maintenance (CBM) is the preferred approach in rotating machinery and aim to replace the commonly used approach of maintenance based on service time. To achieve an effective CBM, different types of sensors should be placed in the system for condition monitoring to detect the location of the fault and its severity. In this research, a Fiber Bragg Grating (FBG) has been used for condition monitoring on spalls in deep grove ball bearings. The motivation for using these sensors is the ability to get a high-noise signal (SNR) ratio. The usage of FBG sensors is relatively new for health monitoring systems of rotating machinery. Therefore, there is not enough understanding of the strain signature measured by the FBG. To examine the phenomena in the strain signals, a physics-based model of the strain signature has been developed. In this model, two complementary models were integrated, a finite element (FE) model and a dynamic model . The strain model describes the interaction between the rolling elements (REs) and the bearing housing and simulates the strain behavior measured on the bearing housing. The simulation results are validated with strain signals measured by the FBG sensor at different stages of an endurance test. The model allows simulation of a wide range of spall lengths and describes the behavior of the strain signals for different levels of misalignment. The insights from the model enabled the development of an automatic algorithm that assess the severity of the defect and to track spall length during bearing operation, based on strain signals.
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基于物理模型应变信号和光纤光栅测量的故障轴承严重程度估计
基于状态的维修(CBM)是旋转机械的首选维修方法,旨在取代常用的基于使用时间的维修方法。为了实现有效的CBM,需要在系统中放置不同类型的传感器进行状态监测,以检测故障的位置和严重程度。在这项研究中,光纤布拉格光栅(FBG)被用于深沟球轴承的状态监测。使用这些传感器的动机是能够获得高噪声信号(SNR)比。光纤光栅传感器在旋转机械健康监测系统中的应用相对较新。因此,对光纤光栅测量的应变特征还没有足够的理解。为了研究应变信号中的现象,建立了一个基于物理的应变信号模型。在该模型中,集成了两个互补的模型,即有限元模型和动态模型。该应变模型描述了滚动体与轴承座之间的相互作用,并模拟了在轴承座上测量到的应变行为。用光纤光栅传感器在耐久性试验的不同阶段测得的应变信号验证了仿真结果。该模型允许模拟大范围的小片长度,并描述了不同程度的错位应变信号的行为。从模型中获得的见解能够开发出一种自动算法,该算法可以评估缺陷的严重程度,并根据应变信号跟踪轴承运行过程中的小块长度。
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