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A novel methodology for online detection of bearing health status for naturally progressing defect

机译:在线检测自然发展的缺陷的轴承健康状况的新方法

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摘要

A methodology is proposed for the online detection of health status of rolling element bearing into various damage stages for naturally progressing defect. Various damage identification parameters are derived from processing vibration data in time domain, frequency domain and time-frequency domain. The parameters are fused into a single parameter, Mahalanobis distance, by application of Gram-Schmidt Orthogonalization process. Chebyshev's inequality is applied to the Mahalanobis distance for online monitoring and damage stage detection. A simulation study is first carried out to show working of the proposed methodology in presence of varying trends of damage identification parameters. The proposed methodology is then validated on experimental data. The first validation is on the vibration data acquired from a bearing having seeded defect. Later, two accelerated life tests are conducted on a specially designed test rig at different load and speed combinations on the bearings for ensuring naturally induced and progressed defects. The methodology is successfully verified on the vibration data acquired from the naturally induced and progressed defect experiments.
机译:提出了一种在线检测滚动轴承健康状态的方法,该滚动轴承处于自然发展的缺陷的各个损坏阶段。从时域,频域和时频域中的振动数据处理中得出各种损伤识别参数。通过应用Gram-Schmidt正交化过程,将这些参数融合为单个参数Mahalanobis距离。切比雪夫不等式适用于马哈拉诺比斯距离,用于在线监测和损伤阶段检测。首先进行了仿真研究,以显示所提出的方法在损坏识别参数变化趋势下的工作情况。然后在实验数据上验证提出的方法。第一个验证是关于从具有种子缺陷的轴承获取的振动数据。后来,在专门设计的测试台上对轴承进行了两次加速寿命测试,以不同的载荷和速度组合进行测试,以确保自然而然的缺陷和缺陷。该方法已成功验证了从自然诱发和进行中的缺陷实验中获得的振动数据。

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